The present invention relates to a method for generation of training datasets for artificial intelligence applications in magnetic resonance imaging.
The present invention is directed to a method for generation of training datasets for artificial intelligence (AI) applications in MRI (Magnetic Resonance Imaging), said method comprising
As should be clear from above, the present invention is directed to AI applications for MRI. In particular, the method according to the present invention relates to using simulated MR images, i.e. artificial images, for training AI, i.e. obtaining a training dataset.
Furthermore, the method according to the present invention involves a repetition step in which something is changed in relation to the pulse sequence and/or the anatomical model and/or the characteristics of the MR simulation used in the first simulation. Either a different pulse sequence is used, or the characteristics of the same pulse sequence is altered. Another option is of course to both use a different pulse sequence and also amend the characteristics of this pulse sequence when comparing with the characteristics or design of the first pulse sequence used.
Moreover, in relation to the step of producing a label map, the expression “label map” may also be stated as “annotation map”. An example of a label map is shown in
Specific Embodiments of the Invention
Below some specific embodiments of the present invention are disclosed and explained further.
According to one specific embodiment of the present invention, the step of obtaining all produced MR images and producing a label map for each MR image are both performed in the MRI simulator. In relation to this it should be noted that according to the present invention, the “MRI simulator” is a software. This further implies that the step of producing a label map for each MR image may be produced by this software, but this does not imply that MR simulation is performed in this step.
Moreover, according to another embodiment of the present invention, the steps of obtaining produced MR images and producing a label map for each MR image are performed in connection to each other, preferably simultaneously or alternately. Suitably, once the position of the slice-of-interest in 3D space is defined, then the production of images and label maps can run in parallel.
As mentioned above, the method according to the present invention involves repetition by using a different pulse sequence or amending the characteristics of the same pulse sequence, or both. Moreover, according to one specific embodiment, the characteristics of the anatomical model is also amended. According to yet another embodiment, the position and/or orientation of a plane/volume of interest of the anatomical model is also amended.
According to yet another embodiment, the method involves amending the characteristics of the MR simulation/experiment when executing the MRI simulator. Non-limiting examples of parameters are the BO inhomogeneity, noise, artefacts, etc.
According to yet another embodiment, the method involves repeating the same procedure with different pulse sequences and/or the same pulse sequence, amending the characteristics of the anatomical model, and amending the position and/or orientation of a plane/volume of interest of the anatomical model.
As hinted above, the MRI simulator according to the present invention suitably is a software. According to one specific embodiment, the MRI simulator is web-based and cloud-based. This has advantages both for the user as such and in relation to data handling, transfer and storage.
Furthermore, according to yet another implementation embodiment of the present invention, the method involves simulation of a magnetic resonance (MR) scanner in the MRI simulator, said method comprising
input of data parameters into a web interface of the MRI simulator;
connection of the web interface with a cloud-based simulator engine of the MRI simulator for transfer of data parameters to the cloud-based simulator engine;
recalculation of the data parameters for the provision of one or more simulated MR signals, said recalculation being performed in the cloud;
reconstruction of an MR image based on said one or more simulated MR signals, said reconstruction of an MR image being performed in the cloud; and
sending the MR image to the web interface.
In relation to the web interface of the MRI simulator it should be noted that a corresponding web-service may be used instead of a specific web interface. Furthermore, in relation to the last step of sending the MR image to the web interface it should be noted that this step may also be performed instead by calling a web-service.
Furthermore, according to one specific embodiment, the cloud-based simulator engine performs the recalculation and sends recalculated data to one or more GPUs (graphics processing units) of the MRI simulator, which GPUs sends back said one or more simulated MR signals. Furthermore, according to yet another embodiment, the step of reconstruction of an MR image is performed by one or more CPUs (central processing units) and/or one or more GPUs (graphics processing units) of the MRI simulator in the cloud.
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As explained above, the method according to the present invention involves repeating the same process where conditions are altered. The repetition is performed for different:
A set of hundreds of artificial MR images and the corresponding map(s) are produced, and they are used as a training dataset for training a neural network. The neural network is then tested on true MR images (images from patients and volunteers).
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