The systems and methods disclosed herein are directed to surgical robotics, and more particularly to navigation of a medical instrument within a tubular network of a patient's body based at least in part on a path.
Bronchoscopy is a medical procedure that allows a physician to examine the inside conditions of a patient's lung airways, such as bronchi and bronchioles. The lung airways carry air from the trachea, or windpipe, to the lungs. During the medical procedure, a thin, flexible tubular tool, known as a bronchoscope, may be inserted into the patient's mouth and passed down the patient's throat into his/her lung airways, and patients are generally anesthetized in order to relax their throats and lung cavities for surgical examinations and operations during the medical procedure.
In the related art, a bronchoscope can include a light source and a small camera that allows a physician to inspect a patient's windpipe and airways, and a rigid tube may be used in conjunction with the bronchoscope for surgical purposes, e.g., when there is a significant amount of bleeding in the lungs of the patient or when a large object obstructs the throat of the patient. When the rigid tube is used, the patient is often anesthetized. Coincident with the rise of other advanced medical devices, the use of robotic bronchoscopes are increasingly becoming a reality. Robotic bronchoscopes provide tremendous advantages in navigation through tubular networks. They are easy to use and allow therapy and biopsies to be administered conveniently even during the bronchoscopy stage.
Apart from mechanical devices or platforms, e.g., robotic bronchoscopes described above, various methods and software models may be used to help with the surgical operations. As an example, a computerized tomography (CT) scan of the patient's lungs is often performed during pre-operation of a surgical examination. Data from the CT scan may be used to generate a three dimensional (3D) model of airways of the patient's lungs, and the generated 3D model enables a physician to access a visual reference that may be useful during the operative procedure of the surgical examination.
However, previous techniques for navigation of tubular networks still have challenges, even when employing medical devices (e.g., robotic bronchoscopes) and when using existing methods (e.g., performing CT scans and generating 3D models). As one example, motion estimation of a medical device (e.g., a bronchoscope tool) inside a patient's body may not be accurate based on location and orientation change of the device, and as a result the device's position may not be accurately or correctly localized inside the patient's body in real time. Inaccurate location information for such an instrument may provide misleading information to the physician that uses the 3D model as a visual reference during medical operation procedures.
Thus, there is a need for improved techniques for navigating through a network of tubular structures.
The systems, methods and devices of this disclosure each have several innovative aspects, no single one of which is solely responsible for the desirable attributes disclosed herein.
In one aspect, there is provided a medical robotic system, comprising a set of one or more processors; and at least one computer-readable memory in communication with the set of processors and having stored thereon a model of a luminal network of a patient, a position of a target with respect to the model, and a path along at least a portion of the model from an access point to the target, the memory further having stored thereon computer-executable instructions to cause the set of processors to: receive location data from at least one of a set of location sensors and a set of robot command inputs, the location data being indicative of a location of an instrument configured to be driven through the luminal network, determine a first estimate of the location of the instrument at a first time based on the location data, determine a second estimate of the location of the instrument at the first time based on the path, and determine the location of the instrument at the first time based on the first estimate and the second estimate.
In another aspect, there is provided a non-transitory computer readable storage medium having stored thereon instructions that, when executed, cause at least one computing device to: receive location data from at least one of a set of location sensors and a set of robot command inputs, the location data being indicative of a location of an instrument configured to be driven through a luminal network of a patient; determine a first estimate of the location of the instrument at a first time based on the location data; determine a second estimate of the location of the instrument at the first time based on a path stored on at least one computer-readable memory, the non-transitory computer readable storage medium further having stored thereon a model of the luminal network, a position of a target with respect to the model, and the path, the path defined along at least a portion of the model from an access point to the target, and determine the location of the instrument at the first time based on the first estimate and the second estimate.
In yet another aspect, there is provided a method of estimating a location of an instrument, comprising: receiving location data from at least one of a set of location sensors and a set of robot command inputs, the location data being indicative of a location of an instrument configured to be driven through a luminal network of a patient; determining a first estimate of the location of the instrument at a first time based on the location data; determining a second estimate of the location of the instrument at the first time based on a path stored on at least one computer-readable memory, at least one computer-readable memory having stored thereon a model of the luminal network, a position of a target with respect to the model, and the path, the path defined along at least a portion of the model from an access point to the target, and determining the location of the instrument at the first time based on the first estimate and the second estimate.
In still yet another aspect, there is provided a medical robotic system, comprising a set of one or more processors; and at least one computer-readable memory in communication with the set of processors and having stored thereon a model of a mapped portion of a luminal network of a patient, a position of a target with respect to the model, and a path along at least a portion of the model from an access point to the target, the memory further having stored thereon computer-executable instructions to cause the set of processors to: determine that the path leaves the mapped portion of the luminal network before reaching the target, display a current location of an instrument via at least a first modality, the first modality derives a location based on location data received from a set of one or more location sensors and the mapped portion of the model, the instrument is configured to be driven through the luminal network, determine, based on the current location, that the distal end of the instrument is within a threshold range of a point at which the path leaves the mapped portion of the luminal network, and in response to determining that that the distal end of the instrument is within the threshold range of the point, update the current location of the instrument based on a reduction of a weight given to the first modality.
In yet another aspect, there is provided non-transitory computer readable storage medium having stored thereon instructions that, when executed, cause at least one computing device to: determine that a path leaves a mapped portion of a luminal network of a patient before reaching a target, at least one computer-readable memory having stored thereon a model of the mapped portion of the luminal network, a position of the target with respect to the model, and the path along at least a portion of the model from an access point to the target; display a current location of an instrument via at least a first modality, the first modality derives a location based on location data received from a set of one or more location sensors and the mapped portion of the model, the instrument is configured to be driven through the luminal network; determine, based on the current location, that the distal end of the instrument is within a threshold range of a point at which the path leaves the mapped portion of the luminal network; and in response to determining that that the distal end of the instrument is within the threshold range of the point, update the current location of the instrument based on a reduction of a weight given to the first modality.
In another aspect, there is provided a method of determining a location of an instrument, comprising: determining that a path leaves a mapped portion of a luminal network of a patient before reaching a target, at least one computer-readable memory having stored thereon a model of the mapped portion of the luminal network, a position of the target with respect to the model, and the path along at least a portion of the model from an access point to the target; displaying a current location of an instrument via at least a first modality, the first modality derives a location based on location data received from a set of one or more location sensors and the mapped portion of the model, the instrument is configured to be driven through the luminal network; determining, based on the current location, that the distal end of the instrument is within a threshold range of a point at which the path leaves the mapped portion of the luminal network; and in response to determining that that the distal end of the instrument is within the threshold range of the point, updating the current location of the instrument based on a reduction of a weight given to the first modality.
The disclosed aspects will hereinafter be described in conjunction with the appended drawings, provided to illustrate and not to limit the disclosed aspects, wherein like designations denote like elements.
Reference will now be made in detail to several embodiments, examples of which are illustrated in the accompanying figures. It is noted that wherever practicable similar or like reference numbers may be used in the figures and may indicate similar or like functionality. The figures depict embodiments of the described system (or method) for purposes of illustration only. One skilled in the art will readily recognize from the following description that alternative embodiments of the structures and methods illustrated herein may be employed without departing from the principles described herein.
I. Surgical Robotic System
In some embodiments, the base 101 includes wheels 115 to transport the surgical robotic system 100. Mobility of the surgical robotic system 100 helps accommodate space constraints in a surgical operating room as well as facilitate appropriate positioning and movement of surgical equipment. Further, the mobility allows the robotic arms 102 to be configured such that the robotic arms 102 do not interfere with the patient, physician, anesthesiologist, or any other equipment. During procedures, a user may control the robotic arms 102 using control devices such as the command console.
In some embodiments, the robotic arm 102 includes set up joints that use a combination of brakes and counter-balances to maintain a position of the robotic arm 102. The counter-balances may include gas springs or coil springs. The brakes, e.g., fail safe brakes, may be include mechanical and/or electrical components. Further, the robotic arms 102 may be gravity-assisted passive support type robotic arms.
Each robotic arm 102 may be coupled to an instrument device manipulator (IDM) 117 using a mechanism changer interface (MCI) 116. The IDM 117 can be removed and replaced with a different type of IDM, for example, a first type of IDM manipulates an endoscope, while a second type of IDM manipulates a laparoscope. The MCI 116 includes connectors to transfer pneumatic pressure, electrical power, electrical signals, and optical signals from the robotic arm 102 to the IDM 117. The MCI 116 can be a set screw or base plate connector. The IDM 117 manipulates surgical instruments such as the endoscope 118 using techniques including direct drive, harmonic drive, geared drives, belts and pulleys, magnetic drives, and the like. The MCI 116 is interchangeable based on the type of IDM 117 and can be customized for a certain type of surgical procedure. The robotic 102 arm can include a joint level torque sensing and a wrist at a distal end, such as the KUKA AG® LBR5 robotic arm.
The endoscope 118 is a tubular and flexible surgical instrument that is inserted into the anatomy of a patient to capture images of the anatomy (e.g., body tissue). In particular, the endoscope 118 includes one or more imaging devices (e.g., cameras or other types of optical sensors) that capture the images. The imaging devices may include one or more optical components such as an optical fiber, fiber array, or lens. The optical components move along with the tip of the endoscope 118 such that movement of the tip of the endoscope 118 results in changes to the images captured by the imaging devices. The endoscope 118 is further described with reference to
Robotic arms 102 of the surgical robotic system 100 manipulate the endoscope 118 using elongate movement members. The elongate movement members may include pull wires, also referred to as pull or push wires, cables, fibers, or flexible shafts. For example, the robotic arms 102 actuate multiple pull wires coupled to the endoscope 118 to deflect the tip of the endoscope 118. The pull wires may include both metallic and non-metallic materials such as stainless steel, Kevlar, tungsten, carbon fiber, and the like. The endoscope 118 may exhibit nonlinear behavior in response to forces applied by the elongate movement members. The nonlinear behavior may be based on stiffness and compressibility of the endoscope 118, as well as variability in slack or stiffness between different elongate movement members.
II. Command Console
The console base 201 may include a central processing unit, a memory unit, a data bus, and associated data communication ports that are responsible for interpreting and processing signals such as camera imagery and tracking sensor data, e.g., from the endoscope 118 shown in
The user 205 can control a surgical instrument such as the endoscope 118 using the command console 200 in a velocity mode or position control mode. In velocity mode, the user 205 directly controls pitch and yaw motion of a distal end of the endoscope 118 based on direct manual control using the control modules. For example, movement on the joystick 204 may be mapped to yaw and pitch movement in the distal end of the endoscope 118. The joystick 204 can provide haptic feedback to the user 205. For example, the joystick 204 vibrates to indicate that the endoscope 118 cannot further translate or rotate in a certain direction. The command console 200 can also provide visual feedback (e.g., pop-up messages) and/or audio feedback (e.g., beeping) to indicate that the endoscope 118 has reached maximum translation or rotation.
In position control mode, the command console 200 uses a three-dimensional (3D) map of a patient and pre-determined computer models of the patient to control a surgical instrument, e.g., the endoscope 118. The command console 200 provides control signals to robotic arms 102 of the surgical robotic system 100 to manipulate the endoscope 118 to a target location. Due to the reliance on the 3D map, position control mode requires accurate mapping of the anatomy of the patient.
In some embodiments, users 205 can manually manipulate robotic arms 102 of the surgical robotic system 100 without using the command console 200. During setup in a surgical operating room, the users 205 may move the robotic arms 102, endoscopes 118, and other surgical equipment to access a patient. The surgical robotic system 100 may rely on force feedback and inertia control from the users 205 to determine appropriate configuration of the robotic arms 102 and equipment.
The display modules 202 may include electronic monitors, virtual reality viewing devices, e.g., goggles or glasses, and/or other means of display devices. In some embodiments, the display modules 202 are integrated with the control modules, for example, as a tablet device with a touchscreen. Further, the user 205 can both view data and input commands to the surgical robotic system 100 using the integrated display modules 202 and control modules.
The display modules 202 can display 3D images using a stereoscopic device, e.g., a visor or goggle. The 3D images provide an “endo view” (i.e., endoscopic view), which is a computer 3D model illustrating the anatomy of a patient. The “endo view” provides a virtual environment of the patient's interior and an expected location of an endoscope 118 inside the patient. A user 205 compares the “endo view” model to actual images captured by a camera to help mentally orient and confirm that the endoscope 118 is in the correct—or approximately correct—location within the patient. The “endo view” provides information about anatomical structures, e.g., the shape of an intestine or colon of the patient, around the distal end of the endoscope 118. The display modules 202 can simultaneously display the 3D model and computerized tomography (CT) scans of the anatomy the around distal end of the endoscope 118. Further, the display modules 202 may overlay the already determined navigation paths of the endoscope 118 on the 3D model and scans/images generated based on preoperative model data (e.g., CT scans).
In some embodiments, a model of the endoscope 118 is displayed with the 3D models to help indicate a status of a surgical procedure. For example, the CT scans identify a lesion in the anatomy where a biopsy may be necessary. During operation, the display modules 202 may show a reference image captured by the endoscope 118 corresponding to the current location of the endoscope 118. The display modules 202 may automatically display different views of the model of the endoscope 118 depending on user settings and a particular surgical procedure. For example, the display modules 202 show an overhead fluoroscopic view of the endoscope 118 during a navigation step as the endoscope 118 approaches an operative region of a patient.
III. Instrument Device Manipulator
In some embodiments, the IDM 117 includes additional sensors, e.g., inclinometers or accelerometers, to determine an orientation of the IDM 117. Based on measurements from the additional sensors and/or the strain gauge 334, the surgical robotic system 100 can calibrate readings from the strain gauge 334 to account for gravitational load effects. For example, if the IDM 117 is oriented on a horizontal side of the IDM 117, the weight of certain components of the IDM 117 may cause a strain on the motor mount 333. Accordingly, without accounting for gravitational load effects, the strain gauge 334 may measure strain that did not result from strain on the output shafts.
IV. Endoscope
Both the sheath base 414 and the leader base 418 include drive mechanisms (e.g., the independent drive mechanism further described with reference to
The endoscope 118 can navigate the anatomy of a patient with ease due to the multiple degrees of freedom provided by pull wires coupled to the sheath 411 and the leader 415. For example, four or more pull wires may be used in either the sheath 411 and/or the leader 415, providing eight or more degrees of freedom. In other embodiments, up to three pull wires may be used, providing up to six degrees of freedom. The sheath 411 and leader 415 may be rotated up to 360 degrees along a longitudinal axis 406, providing more degrees of motion. The combination of rotational angles and multiple degrees of freedom provides a user of the surgical robotic system 100 with a user friendly and instinctive control of the endoscope 118.
V. Registration Transform of EM System to 3D Model
V. A. Schematic Setup of an EM Tracking System
Additional fields may be applied by further field generators to aid in tracking instruments within the body. For example, a planar field generator (PFG) may be attached to a system arm adjacent to the patient and oriented to provide an EM field at an angle. Reference sensors 513 may be placed on the patient's body to provide local EM fields to further increase tracking accuracy. Each of the reference sensors 513 may be attached by cables 514 to a command module 515. The cables 514 are connected to the command module 515 through interface units 516 which handle communications with their respective devices as well as providing power. The interface unit 516 is coupled to a system control unit (SCU) 517 which acts as an overall interface controller for the various entities mentioned above. The SCU 517 also drives the field generators (e.g., WFG 512), as well as collecting sensor data from the interface units 516, from which it calculates the position and orientation of sensors within the body. The SCU 517 may be coupled to a personal computer (PC) 518 to allow user access and control.
The command module 515 is also connected to the various IDMs 519 coupled to the surgical robotic system 500 as described herein. The IDMs 519 are typically coupled to a single surgical robotic system (e.g., the surgical robotic system 500) and are used to control and receive data from their respective connected robotic components; for example, robotic endoscope tools or robotic arms. As described above, as an example, the IDMs 519 are coupled to an endoscopic tool (not shown here) of the surgical robotic system 500.
The command module 515 receives data passed from the endoscopic tool. The type of received data depends on the corresponding type of instrument attached. For example, example received data includes sensor data (e.g., image data, EM data), robot data (e.g., endoscopic and IDM physical motion data), control data, and/or video data. To better handle video data, a field-programmable gate array (FPGA) 520 may be configured to handle image processing. Comparing data obtained from the various sensors, devices, and field generators allows the SCU 517 to precisely track the movements of different components of the surgical robotic system 500, and for example, positions and orientations of these components.
In order to track a sensor through the patient's anatomy, the EM tracking system 505 may require a process known as “registration,” where the system finds the geometric transformation that aligns a single object between different coordinate systems. For instance, a specific anatomical site on a patient has two different representations in the 3D model coordinates and in the EM sensor coordinates. To be able to establish consistency and common language between these two different coordinate systems, the EM tracking system 505 needs to find the transformation that links these two representations, i.e., registration. For example, the position of the EM tracker relative to the position of the EM field generator may be mapped to a 3D coordinate system to isolate a location in a corresponding 3D model.
V. B. 3D Model Representation
In some embodiments, a pre-operative software package is also used to analyze and derive a navigation path based on the generated 3D model of the anatomical space. For example, the software package may derive a shortest navigation path to a single lesion (marked by a centerline coordinate) or to several lesions. This navigation path may be presented to the operator intra-operatively either in two-dimensions or three-dimensions depending on the operator's preference. In certain implementations, as discussed below, the navigation path (or at a portion thereof) may be pre-operatively selected by the operator. The path selection may include identification of one or more target locations (also simply referred to as a “target”) within the patient's anatomy.
In some embodiments, the distal end of the endoscopic tool within the patient's anatomy is tracked, and the tracked location of the endoscopic tool within the patient's anatomy is mapped and placed within a computer model, which enhances the navigational capabilities of the tubular network. In order to track the distal working end of the endoscopic tool, i.e., location and orientation of the working end, a number of approaches may be employed, either individually or in combination.
In a sensor-based approach to localization, a sensor, such as an electromagnetic (EM) tracker, may be coupled to the distal working end of the endoscopic tool to provide a real-time indication of the progression of the endoscopic tool. In EM-based tracking, an EM tracker, embedded in the endoscopic tool, measures the variation in the electromagnetic field created by one or more EM transmitters. The transmitters (or field generators), may be placed close to the patient (e.g., as part of the surgical bed) to create a low intensity magnetic field. This induces small-currents in sensor coils in the EM tracker, which are correlated to the distance and angle between the sensor and the generator. The electrical signal may then be digitized by an interface unit (on-chip or PCB) and sent via cables/wiring back to the system cart and then to the command module. The data may then be processed to interpret the current data and calculate the precise location and orientation of the sensor relative to the transmitters. Multiple sensors may be used at different locations in the endoscopic tool, for instance in leader and sheath in order to calculate the individual positions of those components. Accordingly, based on readings from an artificially-generated EM field, the EM tracker may detect changes in field strength as it moves through the patient's anatomy.
V. C. On-the-Fly EM Registration
The points on the 3D model may also be determined and adjusted based on correlation between the 3D model itself, image data received from optical sensors (e.g., cameras) and robot data from robot commands. The 3D transformation between these points and collected EM data points will determine the initial registration of the EM coordinate system to the 3D model coordinate system.
In some embodiments, each of the graphs shown in
VI. Navigation Configuration System
VI. A. High-Level Overview of Navigation Configuration System
The input data, as used herein, refers to raw data gathered from and/or processed by input devices (e.g., command module, optical sensor, EM sensor, IDM) for generating estimated state information for the endoscope as well as output navigation data. The multiple input data stores 910-945 include an image data store 910, an EM data store 920, a robot data store 930, a 3D model data store 940, and a path data store 945. Each type of the input data stores 910-945 stores the name-indicated type of data for access and use by a navigation module 905. Image data may include one or more image frames captured by the imaging device at the instrument tip, as well as information such as frame rates or timestamps that allow a determination of the time elapsed between pairs of frames. Robot data may include data related to physical movement of the medical instrument or part of the medical instrument (e.g., the instrument tip or sheath) within the tubular network. Example robot data includes command data instructing the instrument tip to reach a specific anatomical site and/or change its orientation (e.g., with a specific pitch, roll, yaw, insertion, and retraction for one or both of a leader and a sheath) within the tubular network, insertion data representing insertion movement of the part of the medical instrument (e.g., the instrument tip or sheath), IDM data, and mechanical data representing mechanical movement of an elongate member of the medical instrument, for example motion of one or more pull wires, tendons or shafts of the endoscope that drive the actual movement of the medial instrument within the tubular network. EM data may be collected by EM sensors and/or the EM tracking system as described above. 3D model data may be derived from 2D CT scans as described above. Path data includes the planned navigation path (e.g., the navigation path 702) which may be generated by a topological search of the tubular network to one or more targets. The multiple input data stores may also include other types of data stores such as an optional position sensor data store 947. In certain implementations, the position sensor data store 947 may store shape sensor data received from a shape sensing fiber positioned within the instrument. The navigation module 905 and/or the outside segmentation navigation module 907 may be configured to receive the position sensor data from the position sensor data store 947 depending on the embodiment.
The output navigation data store 990 receives and stores output navigation data provided by the navigation module 905 and/or the outside segmentation navigation module 907. As described in greater detail below, the system 900 may adjust the weights given to the output navigation data generated by the navigation module 905 and the outside segmentation navigation module 907 based on the position of the instrument with respect to the mapped portion of the luminal network. Output navigation data indicates information to assist in directing the medical instrument through the tubular network to arrive at a particular destination within the tubular network, and is based on estimated state information for the medical instrument at each instant time, the estimated state information including the location and orientation of the medical instrument within the tubular network. In one embodiment, as the medical instrument moves inside the tubular network, the output navigation data indicating updates of movement and location/orientation information of the medical instrument is provided in real time, which better assists its navigation through the tubular network.
To determine the output navigation data, the navigation module 905 and/or the outside segmentation navigation module 907 locates (or determines) the estimated state of the medical instrument within a tubular network. As shown in
VI. B. Navigation Module
With reference to the navigation module 905 shown in
VI. B. 1 State Estimator
The state estimator 980 included in the navigation module 905 receives various intermediate data and provides the estimated state of the instrument tip as a function of time, where the estimated state indicates the estimated location and orientation information of the instrument tip within the tubular network. The estimated state data are stored in the estimated data store 985 that is included in the state estimator 980.
The various stores introduced above represent estimated state data in a variety of ways. Specifically, bifurcation data refers to the location of the medical instrument with respect to the set of branches (e.g., bifurcation, trifurcation or a division into more than three branches) within the tubular network. For example, the bifurcation data can be set of branch choices elected by the instrument as it traverses through the tubular network, based on a larger set of available branches as provided, for example, by the 3D model which maps the entirety of the tubular network. The bifurcation data can further include information in front of the location of the instrument tip, such as branches (bifurcations) that the instrument tip is near but has not yet traversed through, but which may have been detected, for example, based on the tip's current position information relative to the 3D model, or based on images captured of the upcoming bifurcations.
Position data indicates three-dimensional position of some part of the medical instrument within the tubular network or some part of the tubular network itself. Position data can be in the form of absolute locations or relative locations relative to, for example, the 3D model of the tubular network. As one example, position data can include an indication of the position of the location of the instrument being within a specific branch. The identification of the specific branch may also be stored as a segment identification (ID) which uniquely identifies the specific segment of the model in which the instrument tip is located.
Depth data indicates depth information of the instrument tip within the tubular network. Example depth data includes the total insertion (absolute) depth of the medical instrument into the patient as well as the (relative) depth within an identified branch (e.g., the segment identified by the position data store 1087). Depth data may be determined based on position data regarding both the tubular network and medical instrument.
Orientation data indicates orientation information of the instrument tip, and may include overall roll, pitch, and yaw in relation to the 3D model as well as pitch, roll, raw within an identified branch.
Turning back to
As the state estimator 980 may use several different kinds of intermediate data to arrive at its estimates of the state of the medical instrument within the tubular network, the state estimator 980 is configured to account for the various different kinds of errors and uncertainty in both measurement and analysis that each type of underlying data (robotic, EM, image, path) and each type of algorithm module might create or carry through into the intermediate data used for consideration in determining the estimated state. To address these, two concepts are discussed, that of a probability distribution and that of confidence value.
The “probability” of the “probability distribution”, as used herein, refers to a likelihood of an estimation of a possible location and/or orientation of the medical instrument being correct. For example, different probabilities may be calculated by one of the algorithm modules indicating the relative likelihood that the medical instrument is in one of several different possible branches within the tubular network. In one embodiment, the type of probability distribution (e.g., discrete distribution or continuous distribution) is chosen to match features of an estimated state (e.g., type of the estimated state, for example continuous position information vs. discrete branch choice). As one example, estimated states for identifying which segment the medical instrument is in for a trifurcation may be represented by a discrete probability distribution, and may include three discrete values of 20%, 30% and 50% representing chance as being in the location inside each of the three branches as determined by one of the algorithm modules. As another example, the estimated state may include a roll angle of the medical instrument of 40±5 degrees and a segment depth of the instrument tip within a branch may be is 4±1 mm, each represented by a Gaussian distribution which is a type of continuous probability distribution. Different methods or modalities can be used to generate the probabilities, which will vary by algorithm module as more fully described below with reference to later figures.
In contrast, the “confidence value,” as used herein, reflects a measure of confidence in the estimation of the state provided by one of the algorithms based one or more factors. For the EM-based algorithms, factors such as distortion to EM Field, inaccuracy in EM registration, shift or movement of the patient, and respiration of the patient may affect the confidence in estimation of the state. Particularly, the confidence value in estimation of the state provided by the EM-based algorithms may depend on the particular respiration cycle of the patient, movement of the patient or the EM field generators, and the location within the anatomy where the instrument tip locates. For the image-based algorithms, examples factors that may affect the confidence value in estimation of the state include illumination condition for the location within the anatomy where the images are captured, presence of fluid, tissue, or other obstructions against or in front of the optical sensor capturing the images, respiration of the patient, condition of the tubular network of the patient itself (e.g., lung) such as the general fluid inside the tubular network and occlusion of the tubular network, and specific operating techniques used in, e.g., navigating or image capturing.
For example one factor may be that a particular algorithm has differing levels of accuracy at different depths in a patient's lungs, such that relatively close to the airway opening, a particular algorithm may have a high confidence in its estimations of medical instrument location and orientation, but the further into the bottom of the lung the medical instrument travels that confidence value may drop. Generally, the confidence value is based on one or more systemic factors relating to the process by which a result is determined, whereas probability is a relative measure that arises when trying to determine the correct result from multiple possibilities with a single algorithm based on underlying data.
As one example, a mathematical equation for calculating results of an estimated state represented by a discrete probability distribution (e.g., branch/segment identification for a trifurcation with three values of an estimated state involved) can be as follows:
S1=CEM*P1,EM+CImage*P1,Image+CRobot*P1,Robot;
S2=CEM*P2,EM+CImage*P2,Image+CRobot*P2,Robot;
S3=CEM*P3,EM+CImage*P3,Image+CRobot*P3,Robot.
In the example mathematical equation above, Si(i=1,2,3) represents possible example values of an estimated state in a case where 3 possible segments are identified or present in the 3D model, CEM, CImage, and CRobot represents confidence value corresponding to EM-based algorithm, image-based algorithm, and robot-based algorithm and Pi,EM, Pi,Image, and Pi,Robot represent the probabilities for segment i.
To better illustrate the concepts of probability distributions and confidence value associated with estimate states, a detailed example is provided here. In this example, a user is trying to identify segment where an instrument tip is located in a certain trifurcation within a central airway (the predicted region) of the tubular network, and three algorithms modules are used including EM-based algorithm, image-based algorithm, and robot-based algorithm. In this example, a probability distribution corresponding to the EM-based algorithm may be 20% in the first branch, 30% in the second branch, and 50% in the third (last) branch, and the confidence value applied to this EM-based algorithm and the central airway is 80%. For the same example, a probability distribution corresponding to the image-based algorithm may be 40%, 20%, 40% for the first, second, and third branch, and the confidence value applied to this image-based algorithm is 30%; while a probability distribution corresponding to the robot-based algorithm may be 10%, 60%, 30% for the first, second, and third branch, and the confidence value applied to this image-based algorithm is 20%. The difference of confidence values applied to the EM-based algorithm and the image-based algorithm indicates that the EM-based algorithm may be a better choice for segment identification in the central airway, compared with the image-based algorithm. An example mathematical calculation of a final estimated state can be:
for the first branch: 20%*80%+40%*30%+10%*20%=30%; for the second branch: 30%*80%+20%*30%+60%*20%=42%; and for the third branch: 50%*80%+40%*30%+30%*20%=58%.
In this example, the output estimated state for the instrument tip can be the result values (e.g., the resulting 30%, 42% and 58%), or derivative value from these result values such as the determination that the instrument tip is in the third branch. Although this example describes the use of the algorithm modules include EM-based algorithm, image-based algorithm, and robot-based algorithm, the estimation of the state for the instrument tip can also be provided based on different combinations of the various algorithms modules, including the path-based algorithm.
As above the estimated state may be represented in a number of different ways. For example, the estimated state may further include an absolute depth from airway to location of the tip of the instrument, as well as a set of data representing the set of branches traversed by the instrument within the tubular network, the set being a subset of the entire set of branches provided by the 3D model of the patient's lungs, for example. The application of probability distribution and confidence value on estimated states allows improved accuracy of estimation of location and/or orientation of the instrument tip within the tubular network.
VI. B. 2 Overview of Path-Based Navigation
As shown in
The navigation configuration system 900 may operate in one of a plurality of modalities depending on the current location of the instrument tip, which may be defined based on the estimated state data (prior) received from the estimated state data store 985. Specifically, the navigation configuration system 900 may operate in one modality (e.g., using navigation module 905) when the current location of the instrument tip is determined to be within a mapped portion of the luminal network, which may be defined by the 3D model data stored in the 3D model data store 940. Further, in certain implementations, the path-based algorithm module 975 may operate in another modality (e.g., using outside segmentation navigation module 907) when the current location of the instrument tip is determined to be outside of the mapped portion of the luminal network or within a threshold distance of the unmapped portion of the luminal network. As will be described in greater detail below, the navigation configuration system 900 may transition between the first and second modalities based on the detection of certain threshold values, such as, the distance from the current location of the instrument to the edge of the mapped portion of the luminal network.
VI. B. 2. I. Path-Based Navigation—within Mapped Portion of Luminal Network
The method 1100 begins at block 1101. At block 1105, the system may receive location data from at least one of a set of location sensors and a set of robot command inputs. The location data may be indicative of a location of an instrument configured to be driven through a luminal network of a patient. As described above, the system may include at least one computer-readable memory having stored thereon a model of the luminal network (e.g., the 3D model data stored in 3D model data store 940), a position of a target with respect to the model, and a path along at least a portion of the model from an access point to the target. In certain embodiments, the path and the position of the target may be stored as path data in the path data store 945.
At block 1110, the system may determine a first estimate of the location of the instrument at a first time based on the location data. The first estimate of the location of the instrument may be based on, for example, data received from one or more of the image data store 910, the EM data store 920, the robot data store 930, and/or the 3D model data store 940.
At block 1115, the system may determine a second estimate of the location of the instrument at the first time based on the path. In certain implementations, the path-based estimated state data may include an indication of a segment along the path (e.g., path data received from the path data store 945) and a weight associated with the identified segment. Thus, the system may determine a weight associated with the path-based location estimate.
Depending on the embodiment, the system may select a segment of the luminal network along the path as the estimated location of the instrument based on depth data received from the depth data store 1088 of the estimated state data store 985. The system may, using the depth information, estimate the location of the instrument based on a distance along the path determined from the depth data (e.g., a distance defined by the depth data starting from the access point of the luminal network).
The system may employ one of a plurality of methods or modalities to determine the weight associated with the path-based estimate. In certain embodiments, the system may determine the weight based on the location of the instrument within the luminal network (e.g., based on the estimated state data (prior) received from the estimated state data store 985). As described in detail below, the weight associated with the path-based location estimate may be based on the probability that the operator will deviate from the path while driving the instrument. Various factors may influence the probability that the operator will drive the instrument down a segment of the luminal network that is not part of the path. Examples of these factors include: difficulty in visually identifying the correct segment for advancing the instrument, complexity of the branching system of the luminal network, operator determination to explore portions of the luminal network outside of the path, etc. Some or all of these factors may increase the probability that the operator will deviate from the path according to the insertion depth of the instrument into the luminal network. By proper selection of the weight, the system may increase the ability of the state estimator 980 to reliably use the path-based location estimation as a source of data on which to base the estimated state of the instrument.
In related aspects, further details and an example model relating to block 1115 are described below with reference to
Continuing with
In one implementation, the location of the instrument may be defined by identifying the segment in which the distal end of the instrument is currently located. In this implementation, the model may include a plurality of segments (e.g., segments 1221-1247 as illustrated in
In certain implementations, the system may estimate a current segment in which the instrument is located using a path-based location estimate and determine the weight associated with the path-based location estimate based on the generation count of the current segment. For example, when the instrument is positioned at the first location 1251, the segment count of the current segment 1231 may be two. The system may, in certain embodiments, decrease the weight for the path-based location estimate as the generation count increases. In other words, the weight given to the path-based estimate may be decreased (e.g., monotonically) as the generation count of the current segment increases. Referring to the example of
After the instrument has been advanced a sufficient distance into the luminal network, the system may reduce the weight assigned to the path-based location estimate to zero or another minimal value. In certain implementations, the system may determine whether to reduce the weight to zero or the minimal value based on the generation count of the current segment in which the instrument is located. For example, the system may determine that the generation count of the current segment is greater than a threshold generation count, and set the weight to zero, or the minimal value, in response to determining that the generation count of the first segment is greater than the threshold generation count.
Depending on the embodiment, the weight associated with the path-based location estimate may correspond to a confidence value associated with the estimate. As described above, the confidence value may reflect a measure of confidence in the estimation of the state provided by the path-based algorithm module 975. The system may determine the confidence value based on the likelihood that the operator of the robotic system will deviate from the navigation path. The likelihood that the operator will deviate from the navigation path may be determined empirically based on tracking the location of the instrument during actual medical procedures. In one example, the likelihood that the operator will deviate from the navigation path near the start of the procedure may be practically zero, such as when the operator is transitioning from the trachea to one of the main bronchi during a bronchoscopic procedure. However, as the instrument is advanced further into the airway, it may be more difficult for the operator to identify the correct segment of the network to drive the instrument into based on, for example, the images received from the camera. Alternatively, the operator may decide to deviate from the path when as the instrument approaches the target in order to investigate a portion of the luminal network or to perform a complex navigational maneuver (e.g., articulating the instrument around a tight curvature in the luminal network). Thus, it may be advantageous to lower the confidence level of the path-based location estimate to match the increasing probability that the operator will leave the navigation path as the instrument advances further into the luminal network.
VI. B. 2. II. Path-Based Navigation—Outside of Mapped Portion of Luminal Network
In addition to the use of the path in estimating the location of the instrument when within the mapped portion of the luminal network, the path may also be used as a data source in when the instrument is located outside of the mapped portion of the luminal network. In particular, the model of a given luminal network may not fully map the entirety of the luminal network.
For example, as shown in
Certain algorithms for estimating the location of the instrument may utilize the 3D model data received from the 3D model data store in order to generate estimated state data representative of the location of the instrument. For example, each of the EM-based algorithm module 950, the image-based algorithm module 960, and the robot-based algorithm module 970 may use 3D model data received from the 3D model data store 940 in estimating the state data. Accordingly, if the instrument is driven to an unmapped portion (e.g., unmapped portion 1330 of
The method 1400 begins at block 1401. At block 1405, the system may determine that the path leaves a mapped portion of a luminal network of a patient before reaching a target. In performing the method 1400, the system may include at least one computer-readable memory having stored thereon a model of the mapped portion of the luminal, a position of the target with respect to the model, and the path along at least a portion of the model from an access point to the target. Thus, block 1405 may involve the processor determining that at least a portion of the path extends through an unmapped portion of the luminal network to the target.
In related aspects, further details relating to block 1405 are described below with reference to
At block 1410, the system may display a current location of an instrument via at least a first modality (e.g., the navigation module 905 of
At block 1415, the system may determine, based on the current location of the instrument, that the distal end of the instrument is within a threshold range of a point at which the path leaves the mapped portion of the luminal network.
In one embodiment, the system may determine that the instrument is within a threshold range of a point at which the path leaves the mapped portion of the luminal network based on determining that the instrument is located within the second to last segment 1525 as illustrated in the example of
In another embodiment, the system may determine that the distal end of the instrument is within a threshold range of a point at which the path leaves the mapped portion of the luminal network based on identifying the location(s) of one of more unmapped intersections between the last segment 1520 and one or more unmapped segments 1530 of the luminal network 1310. In one implementation, the system may use images captured using a camera located at or near the distal end of the instrument. The system may be configured to identify visual objects within the image that are representative of an intersection (e.g., a bifurcation) in the luminal network 1310. The system may use the detected visual objects to estimate the location of the intersection between the last segment 1520 and the unmapped segment(s) 1530.
The system may also determine the distal end of the instrument is within a threshold range of a point at which the path leaves the mapped portion of the luminal network based on the distance between the current location of the instrument and the location of the intersection. In certain embodiments, the system may determine that the current location of the instrument is within a defined distance from the location of the one of more unmapped intersections.
At block 1420, the system may, in response to determining that that the distal end of the instrument is within the threshold range of the point, update the current location of the instrument based on a reduction of a weight given to the first modality. In addition to or in place of reducing the weight given to the first modality based on the threshold range, the system may also use one or more other conditions for reducing the weight given to the first modality. For example, one such condition may include determining that the instrument is located within the second to last segment (e.g., the second to last segment 1525 of
The system may also be configured to increase the weight given to the first modality in response to the instrument returning to the mapped portion of the luminal network. This increase in the weight given to the first modality may include returning the weight to the original value prior to reducing the weight in block 1420.
In certain implementations, the system may determine, based on the current location of the instrument, that the distal end of the instrument has returned to the mapped portion of the luminal network from outside of the mapped portion of the luminal network (e.g., from the unmapped portion of the luminal network). In response to determining that the distal end of the instrument has returned to the mapped portion of the luminal network, the system may update the current location of the instrument based on an increase in the weight given to the first modality. That is, the system may return to the use of the 3D model data from the 3D model data store 940 in one or more of the EM-based algorithm module 950, the image-based algorithm module 960, and the robot-based algorithm module 970.
The determination that the instrument has returned to the mapped portion of the luminal network may also involve the system storing an indication of the location at which the instrument left the mapped portion of the luminal network. For example, the system may determine a location of the instrument at which the estimation of location of the instrument was first based on the reduced weight given to the first modality. In response to determining that the instrument is retracted to the above-mentioned location, the system may then determine that the instrument has been retracted to within the mapped portion of the luminal network.
In some implementations, the reduction of the weight given to the first modality may include entering a path tracing mode. The path tracing mode may include, for example, the system displaying, on a user display, visual indicia indicative of previous locations of the instrument with respect to the model. The path tracing mode may also be referred to as a “breadcrumb” mode where new visual indicia are displayed on the user display at regular intervals. In certain implementations, the visual indicia may be indicative of historical positions of the instrument within the luminal network, and particularly, within the unmapped portion of the luminal network. Depending on the embodiment, the system may determine the location of the instrument without reference to at least one of the image data, the EM data, and the robot data when in the path tracing mode. Certain embodiments which may be used to calculate and apply an offset to EM data are described in U.S. Application No. 62/572,285, filed on Oct. 13, 2017, and U.S. patent application Ser. No. 16/143,362, now U.S. Pat. No. 11,058,493, filed on Sep. 26, 2018, each of which is incorporated herein by reference in its entirety.
In other implementations, the reduction of the weight given to the first modality may include entering a second modality for determining the location of the distal end of the instrument. Referring back to
The system may determine the location of the instrument in the second modality via, for example, deriving the location of the instrument based on location data (e.g., EM data, and robot data) independent of the mapped portion of the model (e.g., 3D model data). In particular, the outside segmentation navigation module 907 may use data received from each of the EM data store 920, the robot data store 930, and the 3D model data store 940 to determine a registration for the EM data. Additionally, outside segmentation navigation module 907 may use the robot data to track the amount of insertion and/or retraction of the instrument. The outside segmentation navigation module 907 may use insertion and/or retraction data to determine whether the instrument has been retracted to the point at which the second modality was entered and switch back to the first modality based on the instrument being retracted to this point.
The outside segmentation navigation module 907 may also use the 3D model data to apply an offset to the registered EM data when transitioning from the use of the navigation module 905 to the outside segmentation navigation module 907. The offset may prevent a sudden jump in the output navigation data which may otherwise occur during the transition. Certain embodiments which may be used to calculate and apply an offset to EM data are described in U.S. Application No. 62/607,246, filed on Dec. 18, 2017, and U.S. patent application Ser. No. 16/221,020, now U.S. Pat. No. 11,160,615, filed on Dec. 14, 2018, each of which is incorporated herein by reference in its entirety. In certain implementations, the outside segmentation navigation module 907 may produce output navigation data using registered EM data. Thus, the outside segmentation navigation module 907 may first determine the registration for the EM data prior to determining the output navigation data. In some implementations, the system 900 may determine the registration based on the instrument being driven a predetermined distance into the luminal network (e.g., into a third-generation segment). Thus, the outside segmentation navigation module 907 may begin producing the output navigation data in response to the instrument being driven into a third-generation segment (e.g., the third generation segments 1241, 1243, 1245, and 1247 of
A number of example embodiments which may be used to determine whether the path leaves the mapped portion of the luminal network will be discussed in connection with
As shown in
In certain embodiments, the system may determine a point at which the path 1505 leaves the mapped portion 1320 of the luminal network 1310 based on an identification of the last and/or second to last segments 1520 and/or 1525. Thus, the system may determine that the path 1505 leaves the mapped portion 1320 of the luminal network 1310 before reaching the target 1510 based on a determination that the path 1505 leaves the mapped portion 1320 of the luminal network 1310 from the last segment 1520 of the model 1300.
In another embodiment, the system may determine that the instrument leaves the mapped portion 1320 of the luminal network 1310 before reaching the target 1510 based on a determination that the instrument is within a threshold distance from the second segment 1525. Thus, the system may determine the distance between the current location of the instrument and the point at which the path leaves the mapped portion 1320 of the luminal network 1310 and compare the distance to the threshold distance. In one embodiment, the system may determine the distance between the current location of the instrument and the point at which the path 1505 leaves the mapped portion 1320 of the luminal network 1310 as the length of the path 1505 between current location of the instrument and the point at which the path 1505 leaves the mapped portion 1320 of the luminal network 1310. In other embodiment, the system may determine the Euclidean distance between current location of the instrument and the point at which the path 1505 leaves the mapped portion 1320 of the luminal network 1310.
The first set of tracked estimated locations 1605 represent the estimated location of the distal end of the instrument as estimated by the first modality as described in connection with
In the example of
VII. Pre-Operative Path Planning for Navigation Preparation
Navigating to a particular point in a tubular network of a patient's body may involve taking certain steps pre-operatively to generate the information used to create the 3D model of the tubular network and to determine a navigation path.
Initially, at block 1705, a scan/image generated based on preoperative model data (e.g., CT scan) of the tubular network is obtained, and the data from the CT scan provides 3D information about the structure and connectivity of the tubular network. For example, the image at block 1705 shows a tomographic slice of a patient's lungs.
At block 1710, a 3D model is generated based on the obtained CT scan data, and the generated 3D model can be used to assign each branch of the tubular network with a unique identity, enabling convenient navigation within the network. For example, the image at block 1710 shows a 3D model of a patient's bronchial network.
At block 1715, a target 1716 is selected, and this target may be, for example, a lesion to biopsy, or a portion of organ tissue to repair surgically. In one embodiment, the system provides a user capability for selecting the location of the target by interfacing with a computer display that can show the 3D model, such as by clicking with a mouse or touching a touchscreen. The selected target may then be displayed to the user. For example, the target 1716 is marked within the 3D bronchial model generated from step 1710.
At block 1720, a path 1721 is automatically planned from an entry point 1722 to the target 1716, and the path 1721 identifies a sequence of branches within the network to travel through, so as to reach the target 1716. In one embodiment, the tubular network may be tree-like, the path 1721 may be uniquely determined by the structure of the tubular network, while in another embodiment, the tubular network may be cyclic, and the path may be found by an appropriate algorithm such as a shortest-path algorithm.
Once the path 1721 has been determined, virtual endoscopy 1725 may be performed to give the user a preview of the endoscopic procedure. The 3D model generated from step 1710 is used to generate a sequence of 2D images as though seen by an endoscope tip while navigating the network corresponding to the 3D model. The path 1721 may be shown as a curve that may be followed to get from the entry point 1722 to the target 1716.
Once the virtual endoscope tip has arrived at the target 1716, a virtual tool alignment procedure 1730 may be performed to illustrate to the user how to manipulate endoscopic tools in order to perform a surgical procedure at the target. For example, in the illustration, a virtual endoscopic biopsy needle 1731 is maneuvered by the user in order to biopsy a lesion 1732 located beneath the surface of a bronchial tube. The lesion location is highlighted so that the user can align the needle to it, and then use the needle to pierce the surface of the bronchial tube and access the lesion underneath. This mimics the steps that will be taken during the actual surgical procedure, allowing the user to practice before performing surgery.
VIII. Implementing Systems and Terminology
Implementations disclosed herein provide systems, methods and apparatuses for path-based navigation of tubular networks.
It should be noted that the terms “couple,” “coupling,” “coupled” or other variations of the word couple as used herein may indicate either an indirect connection or a direct connection. For example, if a first component is “coupled” to a second component, the first component may be either indirectly connected to the second component via another component or directly connected to the second component.
The path-based navigational functions described herein may be stored as one or more instructions on a processor-readable or computer-readable medium. The term “computer-readable medium” refers to any available medium that can be accessed by a computer or processor. By way of example, and not limitation, such a medium may comprise random access memory (RAM), read-only memory (ROM), electrically erasable programmable read-only memory (EEPROM), flash memory, compact disc read-only memory (CD-ROM) or other optical disk storage may comprise RAM, ROM, EEPROM, flash memory, CD-ROM or other optical disk storage, magnetic disk storage or other magnetic storage devices, or any other medium that can be used to store desired program code in the form of instructions or data structures and that can be accessed by a computer. It should be noted that a computer-readable medium may be tangible and non-transitory. As used herein, the term “code” may refer to software, instructions, code or data that is/are executable by a computing device or processor.
The methods disclosed herein comprise one or more steps or actions for achieving the described method. The method steps and/or actions may be interchanged with one another without departing from the scope of the claims. In other words, unless a specific order of steps or actions is required for proper operation of the method that is being described, the order and/or use of specific steps and/or actions may be modified without departing from the scope of the claims.
As used herein, the term “plurality” denotes two or more. For example, a plurality of components indicates two or more components. The term “determining” encompasses a wide variety of actions and, therefore, “determining” can include calculating, computing, processing, deriving, investigating, looking up (e.g., looking up in a table, a database or another data structure), ascertaining and the like. Also, “determining” can include receiving (e.g., receiving information), accessing (e.g., accessing data in a memory) and the like. Also, “determining” can include resolving, selecting, choosing, establishing and the like.
The phrase “based on” does not mean “based only on,” unless expressly specified otherwise. In other words, the phrase “based on” describes both “based only on” and “based at least on.”
The previous description of the disclosed implementations is provided to enable any person skilled in the art to make or use the present invention. Various modifications to these implementations will be readily apparent to those skilled in the art, and the generic principles defined herein may be applied to other implementations without departing from the scope of the invention. For example, it will be appreciated that one of ordinary skill in the art will be able to employ a number corresponding alternative and equivalent structural details, such as equivalent ways of fastening, mounting, coupling, or engaging tool components, equivalent mechanisms for producing particular actuation motions, and equivalent mechanisms for delivering electrical energy. Thus, the present invention is not intended to be limited to the implementations shown herein but is to be accorded the widest scope consistent with the principles and novel features disclosed herein.
This application is a continuation of U.S. patent application Ser. No. 16/424,188, now U.S. Pat. No. 10,898,286, filed May 28, 2019, which claims the benefit of U.S. Provisional Application No. 62/678,970, filed May 31, 2018, each of which is hereby incorporated by reference in its entirety.
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