The following relates generally to the fractionated radiation therapy arts, fractionated radiation therapy planning arts, oncology arts, and related arts.
In radiation therapy, a therapeutic dose of radiation is usually delivered to the patient over several radiation therapy sessions with recovery periods of typically one day scheduled between successive fractions. This approach is known as fractionated radiation therapy. The main idea behind fractionated delivery is that the tumor tissue is expected to recover worse from a fraction of dose than healthy tissue, therefore fractionated delivery allows larger total therapeutic dose. Increased dose in more fractions can consequently lead to better tumor control, however, this gain must always be balanced against the probability of normal tissue complications.
Both the positive killing effect of the radiation on the tumor and its negative damaging effect on healthy organs are affected by the fractionation scheme, i.e. the time schedule of dose delivery. These biological effects of fractionation generally depend on tissue type, and the most widely accepted method for investigating them has long been the Biologically Effective Dose (BED) model (see for instance Fowler JF. 21 years of Biologically Effective Dose. The British Journal of Radiology. 2010; 83(991):554-568. doi:10.1259/bjr/31372149.). The BED formalism states that the biological effect of a dose D given in N fractions is:
where the ratio α/β is an organ- or tissue-specific parameter characterizing sensitivity of the organ or tissue to fractionation for a certain biological end effect (e.g. cell survival rate). Equation (0) can also be applied to assess the impact of fractionation on the tumor itself, which is characterized by a tumor-specific α/β ratio. As can be seen from Equation (0), the same dose D has a smaller effect if given in more fractions (higher N) with a consequently smaller dose per fraction.
The number of fractions N is a design parameter in the planning of fractionated radiation therapy. Since target structures and healthy organs have generally different fractionation sensitivities and receive different dose distributions, the choice of the number of fractions N—and more generally the choice of the fractionation scheme—can have a differential impact on the tumor versus on organs-at-risk (OARs). A well-chosen fractionation could therefore increase the desired therapeutic effect (for example, the necrotizing of the tumor) while limiting undesired damage to OARs. In current clinical practice, however, the fractionation scheme is usually not chosen optimally, hence typically it does not balance the differential effects in an optimal way.
In a typical radiation therapy protocol, a computed tomography (CT), magnetic resonance (MR), or other medical image is acquired and contoured to delineate the tumor and any neighboring OARs. The physician then selects various dose objectives, e.g. the dose to be delivered to the tumor along with constraints on radiation exposure to neighboring OARs. The fractionation scheme is usually also selected at this time. These objectives, as well as the number of fractions N, are usually chosen based on the physician's professional judgment along with consideration of applicable clinical guidelines, taking into account available information such as tumor type, tumor size, and proximity of the tumor to OARs, and perhaps other factors such as patient age, medical condition and patient convenience. Next treatment planning is performed, during which a radiation therapy plan is developed which achieves the dose objectives for the specific anatomy of the patient as represented by the CT or MR image and the drawn tumor and OAR contours. For example, in intensity modulated external radiation therapy (IMRT) the radiation is delivered by a set of radiation beams each modulated by a multi-leaf collimator (MLC), and the radiation therapy planning entails selecting settings for the MLCs such that the set of intensity modulated radiation beams collectively delivers the desired fractional dose distribution for a single fraction of the fractionated radiation therapy, taking into account radiation energy absorption based on an attenuation map generated from the CT or MR image. IMRT planning—and in general, treatment planning—is computationally intensive, involving optimization of typically tens of thousands of parameters to optimize the dose distribution over the voxels (i.e. the small discrete cubic volumes) of a three-dimensional (3D) volume encompassing the tumor and OARs, and may be executed on a server computer, cluster or cloud computing resource, or other high-capacity computer system. The physician reviews the produced plan and makes final approval of the resulting (calculated) dose distribution.
In one disclosed embodiment, a fractionated radiation therapy planning device comprises a computer including a display component and at least one user input component. At least one non-transitory storage medium stores instructions readable and executable by the computer to perform fractionated radiation therapy planning operations including the following. Fractionation selection inputs are generated or received, including at least a radiation dose distribution to be delivered by the fractionated radiation therapy, a maximum number of fractions Nmax, a minimum number of fractions Nmin, and organ-at-risk (OAR) Biologically Effective Dose (BED) constraints for one or more organs-at-risk. Each OAR BED constraint represents a maximum BED that can be delivered by the fractionated radiation therapy to the corresponding OAR. A two-dimensional (2D) graph is displayed of a parameter X equal to or proportional to D=Σt=1Ndt versus a parameter Y equal to or proportional to SD=Σt=1Ndt2, where N is a number of fractions for delivering the dose distribution, total dose D is a total radiation dose to be delivered by the fractionated radiation therapy, and dt is the fractional dose of the total radiation dose D to be delivered in the fraction t. OAR BED lines are displayed on the 2D graph that depict each OAR BED constraint. A marker is displayed at a location on the 2D graph defined by a current total dose Dcurr and a current total squared dose SDcurr, from which the current number of fractions Ncurr and the current fractional doses dt,curr are calculated. A new value for at least one of the current total dose Dcurr and the current total squared dose SDcurr is received via the at least one user input component. The displaying of the marker is updated in accord with the updated values of the current total dose Dcurr and the current total squared dose SDcurr, furthermore the number of fractions Ncurr and the fractional doses dt,curr are recalculated and updated to their corresponding new values.
The fractionation selection inputs may further include a target BED for a tumor which is a target BED to be delivered by the fractionated radiation therapy to the tumor, and the fractionated radiation therapy planning operations further include displaying on the 2D graph a target BED line depicting the target BED for the tumor.
One advantage resides in providing more effective leveraging of the fractionation scheme in the planning of radiation therapy.
Another advantage resides in providing improved optimization of treatment parameters in fractionated radiation therapy, such as total prescribed radiation dose, number of fractions, fractional dose values, etc.
Another advantage resides in providing for the foregoing plan adjustments to be made by a physician after the computationally intensive optimization of the radiation therapy plan, without requiring re-optimizing the plan.
Another advantage resides in providing the physician with an intuitive graphical representation of the impact of possible changes in the fractionation and/or of the total prescribed dose on whether the various dose objectives are achieved.
Another advantage resides in providing the physician with such an intuitive graphical representation which also provides visualization of the extent to which a constraint would be violated by a change in fractionation and/or total prescribed dose.
A given embodiment may provide none, one, two, more, or all of the foregoing advantages, and/or may provide other advantages as will become apparent to one of ordinary skill in the art upon reading and understanding the present disclosure.
The invention may take form in various components and arrangements of components, and in various steps and arrangements of steps. The drawings are only for purposes of illustrating the preferred embodiments and are not to be construed as limiting the invention.
With reference to
The planning images are also typically used to generate a radiation attenuation map to be used for evaluating the absorption of the therapeutic radiation by tissues/organs of the patient. In the case of a CT planning image which is effectively an x-ray absorption map, this entails correcting for differences between x-ray absorption and absorption of the therapeutic radiation (e.g. higher energy x-rays, or accelerated particles such as protons or electrons). In the case of MR images the various tissues are suitably classified by segmenting the regions, e.g. using the contouring GUI 12, and assigning therapeutic radiation absorption values based on tissue type.
The physician also develops a set of dose objectives 24, typically including a minimum (or average, or other objective) therapeutic radiation dose to be delivered to the tumor and a maximum permissible therapeutic radiation dose that can be delivered to each OAR. These constraints on radiation exposure of the OARs may be hard constraints, which must be respected, or soft constraints, which are only desirable. The dose objectives 24 may include other parameters such as tumor margins and/or beam margins to account for various uncertainties. The tumor and OAR definitions 20, 22, together with the dose objectives 24 and the attenuation map generated from the planning images, are inputs to a radiation therapy plan optimizer 26 (for example an intensity modulated radiation therapy (IMRT) or an intensity modulated proton therapy (IMPT) plan optimizer), which optimizes physically realizable parameters such as multi-leaf collimator (MLC) settings for a set of therapeutic radiation beams (which may be physically separate beams or different angular orientations of a therapeutic radiation beam source; moreover, it is contemplated to employ a single radiation beam) to optimize a calculated dose distribution respective to the dose objectives 24. Various known forward or inverse planning techniques can be used depending upon the geometric setup of the radiation beam source(s) and other factors. In some approaches, the plan optimization is initially performed for virtual “beamlets” which are thereafter converted to physically realizable parameters such as MLC settings. The plan optimization is typically computationally intensive, and accordingly the plan optimizer 26 is typically implemented on a suitably powerful computer 28, e.g. a network server, computing cluster, cluster or cloud computing resource, or so forth, although the use of a sufficiently powerful desktop or other personal computer is also contemplated. The output of the radiation plan optimizer 26 is a calculated dose distribution 30 for the patient.
In fractionated radiation therapy employing N radiation therapy sessions (i.e. N fractions), the dose distribution 30 is delivered over N sessions with typically a 1/N fraction of the total dose delivered in each session (assuming equal fractionation; it is also contemplated to employ unequal fractionation in which some radiation delivery sessions deliver a higher proportion of the total dose than others). Conventionally, the number of fractions N, and more generally the fractionation scheme, is chosen by the physician early in the planning process, usually at the time the dose objectives 24 are developed. At this stage, the physician has available information including the contours 20, 22 and the dose objectives, along with various laboratory results such as biopsy results classifying the tumor. Hence, the physician knows the tumor type, size, and its proximity to various OARs. Based on this information the physician conventionally chooses the fractionation scheme based on medical expertise augmented by clinical guidelines, medical literature, comparison with past patients/outcomes, patient convenience, and so forth.
As recognized herein, this approach may not identify the optimal fractionation scheme for a particular patient. As previously noted, in fractionated radiation therapy the Biologically Effective Dose (BED) is different from the physical dose. The BED is typically calculated using the linear-quadratic BED model (Equation (0)). Since the tumor and organs-at-risk have generally different fractionation sensitivities and receive different dose distributions, the choice of fractionation scheme can have a differential impact on the tumor versus OARs, so that the number of fractions N and the total dose D (or in general the fractional doses dt) can be adjusted to increase the desired therapeutic effect tumor and decrease undesired damage to OARs. This, in turn, may enable a reduction in the total physical radiation dose D that is delivered to the patient. In approaches disclosed herein, the total dose D and/or the number of fractions N, and/or the fractional doses dt can be adjusted to improve the BED delivered to the tumor and OARs. Such adjustments are made after performing the computationally intensive treatment planning (e.g. IMRT or IMPT optimization), and advantageously do not require re-running the plan optimization.
With continuing reference to
The 2D graph 42 includes display of parabolic boundary curves indicating the maximum number of fractions Nmax and the minimum number of fractions Nmin, assuming equal fractional doses (i.e. dt=constant). More generally, a given number of fractions N with equal fractional doses will correspond to a parabolic curve on the 2D graph 42, and for fraction number values in the inclusive range of [Nmin, Nmax] the parabolic curves representing uniform fractionation schemes will lie in an operational region that is bounded by the parabolic boundary curves indicating the maximum number of fractions Nmax and the minimum number of fractions Nmin. Since the number of fractions N is a whole number, optionally the 2D graph has a discretization grid (not shown) comprising the set of parabolic curves defined by the set of integers in the inclusive range [Nmin, Nmax] assuming equal fractional doses.
A further feature is the display of iso-BED lines 44 to represent constraints on the upper limit of BED that the various OARs should receive, and/or to represent the tumor target BED. Because of the linear-quadratic form of the BED model (Equation (0)), these iso-BED lines 44 are straight lines on the 2D graph 42. Optionally, the iso-BED lines 44 may be drawn only in the operational region between the [Nmin, Nmax] parabolic curve boundaries. Furthermore, a marker 50 is displayed at a location on the 2D graph 42 defined by the current total dose Dcurr and the current total squared dose SDcurr, which determine the current number of fractions Ncurr and the current fractional doses dt,curr. By moving this marker 50, the user can adjust the current total dose Dcurr and the current total squared dose SDcurr, thereby adjusting the current number of fractions Ncurr and the current fractional doses dt,curr as well, and can immediately see this adjustment in the context of the iso-BED lines 44 representing the tumor target BED and the various OAR upper BED constraints. In this way, the user can select final values for the fractionation and total dose. When the user indicates that the current total dose Dcurr and the current total squared dose SDcurr are final, the final value for the number of fractions and the fractional doses are set to the corresponding current fraction number Ncurr and the current fractional dose dt,curr. Note that this processing does not alter the dose distribution 30 except to the extent that the dose distribution 30 is scaled uniformly upward or downward in amplitude by the current total dose Dcurr—but the shape of the dose distribution 30 is unaltered, and there is no need to re-run the plan optimizer 26. The resulting fractionated radiation therapy plan 52 includes the dose distribution 30 (or corresponding physically realizable parameters such as MLC settings), the final fractionation, and the final per-fraction radiation dose dt (corresponding to a physically realizable parameter such as beam attenuator setting).
The fractionated radiation therapy plan 52 is executed in N radiation therapy sessions by a radiation therapy delivery device 54, such as a linear accelerator (linac), proton beam source, or so forth. Moreover, in alternative embodiments it is contemplated for the radiation therapy to be delivered as brachytherapy by way of implantation of radioactive seeds in a pattern designed to implement the optimized dose distribution 30. In this case the N fractions correspond to N different brachytherapy seed implantation sessions.
In the following, a detailed example of implementation of the fractionation and total dose adjustment GUI 40 is described. The skilled artisan can readily implement this example as programming code for programming a computer to implement the fractionation and total dose adjustment GUI 40. The following notation is used:
The dose distribution can be described in this notation is as follows. In the nominal plan with beam weights unominal the total average tumor dose is:
This dose is received in N fractions, where in each fraction dt dose is delivered to the tumor, i.e. DT=Σt=1Ndt. The dose sparing factor for a voxel j∈m in an OAR corresponding to constraint m is therefore:
The dose received in this voxel in fraction t is:
For the tumor voxels we can similarly define dose sparing factors as:
and can write the dose received in fraction t as:
For the nominal treatment the BED in the tumor voxels is given by:
where ρT=1/(α/(βT) was introduced. We similarly introduce ρm=1/(α/βm), which results in a basically identical formula for the BED in voxel j∈m for the OAR corresponding to constraints m:
It is desired to find the optimal fractionation scheme that maximizes the tumor dose and respects the tolerances on the OARs. Therefore we first investigate how the objective function and the constraints of this optimization problem can be formulated in terms of BED. To this end, the different constraint types associated to OARs and their corresponding BED formulation are considered.
Let us assume that constraints m∈1 (
1⊂
) state that a maximum dose of Dmaxm is tolerated by the corresponding OAR if given in Nm fractions. This is equivalent to a BED of:
and hence the BED constraint on voxels j∈m is:
Since the sjm dose sparing factors do not depend on the fractionation it is satisfactory to simply enforce the constraint on the voxel receiving the highest dose. Introducing
as a generalized dose sparing factor and Bm=BEDmaxm as a generalized BED tolerance, the final form of the maximum dose constraints is:
A maximum dose volume histogram (DVH) constraint can be formulated as follows. Let us assume that constraints m∈2 (
2⊂
) state that no more than Fm fraction of the corresponding OAR volume can receive a dose higher than Ddvm if given in Nm fractions. This is equivalent to a BED of:
By defining an indicator function ƒjm(d, N) for each voxel j∈m as:
the BED constraint can be formulated in the following way:
where [α] stands for the floor function, i.e. the biggest integer smaller than a. Since the dose sparing factors appearing in the definition of ƒjm(d, N) (through the BEDjm term defined by Equation (2)) do not depend on the fractionation scheme, we can reformulate the constraint similarly to the maximum point dose case. What we need is at least nm−└Fmnm┘ number of voxels for which BEDjm≤BED(Ddvm, Nm) holds, which we can ensure by enforcing the BED constraint on the voxel having the (nm−└Fmnm┘)th smallest dose sparing factor. If we order the dose sparing factors in an ascending series and denote it by sjm,⬆ (i.e. where ∀j∈m∃l:sjm,⬆=slm∧slm,+≥sjm,+∀l>j), we need to pick the voxel corresponding to the (nm−└Fmnm ┘)th value. Assigning the generalized dose sparing factor and BED tolerance as
and Bm=BED (Ddvm, Nm), the final BED constraint is:
A maximum absolute dose volume histogram constraint can be formulated as follows. Let us assume that constraints m∈3 (
3 ⊂
) state that no more than a Vm absolute volume of the corresponding OAR can receive a dose higher than Dadvm if given in Nm fractions. Denoting the total volume of the OAR by Vtotm, the constraint is equivalent to the maximum DVH case described above, with Fm=Vm/Vtotm.
A maximum critical absolute dose volume constraint can be formulated as follows. Let us assume that constraints m∈4 (
4 ⊂
3) state that at least Vm absolute volume of the corresponding OAR has to receive a dose lower than Dcadvm a if given in Nm fractions. With Fm=(Vtotm−Vm)/Vtotm this is again equivalent to the maximum DVH case.
A maximum mean dose constraint can be formulated as follows. First consider the relation between the mean physical dose and the mean BED. Suppose that in a plan the voxel doses in an organ are Dj=sjDref (j=1, . . . , n), where sj are the dose sparing factors for some Dref reference dose given in N fractions with dtref dose per fraction values (i.e. Dref=Σt=1Ndtref). The mean physical dose in this organ is
The corresponding mean BED is:
where we introduced p=Σj=1nsj, q=Σj=1n(sj)2 the dose shape factor
and the fractionation modifying factor
The dose shape and the fractionation modifying factors take into account the effects of non-uniformity in the dose distribution and the fractionation. By definition φ>1 and φtref>1 hold, which have the following consequences. First, Non-uniformity in the dose distribution (φ) and the fractionation (φtref) both increase the mean BED. Second, the mean BED is always higher than or equal to the BED equivalent of the mean physical dose, as in the latter it is assumed that the dose distribution is uniform (i.e. φ=1). Therefore for uniform fractionation (φtref==1) the following holds:
A third consequence is that two dose distributions with identical mean physical doses (Dmean1=Dmean2) and fractionation schemes (φtref,1=φtref,2) are not necessarily iso-effective in terms of mean BED. BEDmean1=BEDmean2 only holds if the spatial distributions are similar too (i.e. φ1=φ2 is true).
Mean BED constraints are considered next. Let us now assume that constraints m∈5 (
5⊂
) state that a maximum mean dose of Dmeanm is tolerated by the corresponding OAR if given in Nm fractions. This is equivalent to a BED of:
Further assuming that this tolerance was derived in a plan with a dose shape factor of φm,ref the tolerated mean BED is:
The BED constraint can therefore be formulated as follows:
Introducing pm=Σj=1n
Since the φm,ref dose shape factors for the tolerance dose values are practically never known, in the following we will always assume that φm≤φm,ref ∀m ∈5 holds. Correspondingly the mean dose constraint is:
with pm=Σj=1n
being the generalized BED constraint.
For all the foregoing illustrative constraint examples, it was assumed that there is a single dose (and optionally volume) value for a given fractionation scheme that defines the tolerance. This allowed the constraints to be formulated as the BED equivalent of dose tolerance (with the help of the dose shape factor in case of the mean constraints). In practice however, in situations where multiple fractionation schemes are considered physicians often have separate sets of constraints for the different fraction numbers. This means that constraint m∈ states that Dim dose is tolerated by the corresponding OAR if given in Nim fractions, and there are Cm different fractionation schemes for which tolerance data is given (i={1, . . . , Cm}). While in theory these tolerances should be iso-effective, they are most often not BED equivalent, i.e.:
does not hold. This results in BED tolerances that depend on the number of fractions. From the optimization point of view this is manageable, however it is contradictory to the concept of Biologically Effective Dose making different fractionation schemes iso-effective.
Therefore in illustrative embodiments herein, two restrictions are placed on the allowed dose constraints. First, for any constraint m∈ tolerance doses can be given for at most Cm=2 different fractionation schemes. The reasoning behind this is that two dose values (D1m and D2m) given in distinct fraction numbers (N1m and N2m) can always be made BED equivalent, since
can always be satisfied with an α/βeqm ratio of:
(φm=1 for all constraints other than the mean in Equation (12)). Therefore in the constraint equations (Equations (3), (4), and (11)) one can use ρm=1/α/βeqm and calculate the Bm generalized BED tolerance from either of the two Dim, Ni pairs.
Second, for all constraints only such dose value/fraction number pairs are allowed which can be made BED equivalent with a positive α/β value. Although Equation (12) ensures that the two schemes have the same BED, this value is not necessarily positive. For example D1=25 in N1=5 fractions and D2=45 in N2=15 fractions are only BED equivalent with α/βeq=−0.5, at a BED value of
Such unphysical situations highlight a limit of the Linear-Quadratic model based BED. It is also worth noting that whenever the equivalent α/β value is negative, it is also highly sensitive to the dose values D1 and D2, therefore typically small (≈5%) adjustments of these lead to positive α/βeq values.
The foregoing two restrictions limit applicability; however, even with these limitations the formulation effectively fits current clinical practice, where most often only a limited range of fractionation schemes is considered. A physician might chose for example between N1=5 and N2=15 fractions (and correspondingly may have a different set of constraints for the two schemes), but will almost never consider all number of fractions between N1=1 and N2=45. Furthermore it is reasonable to assume that the two constraint sets are interpreted as iso-effective, therefore taking them into account with an α/βeq value making them BED equivalent typically follows the physician's original intent.
The optimization of the tumor dose is next considered. Since we are aiming to maximize the tumor dose the objective function of the optimization problem is based on the tumor BED. In the following, three different approaches are considered as illustrative examples: optimizing the minimum and the mean tumor BED, as well as optimizing the BED equivalent of the average tumor dose.
Minimum dose optimization can be formulated as follows. In this approach the dose in the “coldest spot” of the tumor is maximized, i.e. maximize the BED in the voxel having the smallest BED. Since BED is monotone in the dose and we are only optimizing the fractionation scheme, this is equivalent to maximizing the BED in the voxel with the lowest dose “sparing” factor in the tumor. Introducing
the objective function to maximize is:
Mean dose optimization can be formulated as follows. The mean tumor BED can be calculated the same way as the mean BED in the OARs. Using the s dose “sparing” factors for the tumor voxels j∈T we can define pT=Σj=1n
The dose shape factor φT does not depend on the fractionation scheme, therefore can be omitted from the objective function.
Uniform dose optimization can be formulated as follows. Assuming that the dose in the tumor is uniform the mean tumor BED is given by:
Defining σT=1, Equation (15) can be written in a form similar to Equations (13) and (14) as:
Having provided some illustrative constraint and tumor dose formulations, the optimization problem to be solved is next considered. Using the OAR constraints defined by Equations (3), (4), and (11) together with the α/β ratios given by Equation (12) where applicable and the tumor BED given by Equation (13), (14), or (16), the BED based optimization problem can be formulated as follows:
subject to the following constraints:
Introducing the total dose X=Σt=1Ndt and the total squared dose Y=Σt=1Ndt2, Equations (17) and (18) can be rewritten as:
The constraint given by Equation (25) is a consequence of the definitions of X and Y (Equation (23)) whereas Equation (26) represents practical limits on the number of fractions N.
With continuing reference to
Since N≥1 and X≤√{square root over (NY)} (Equation (25)), Y>X2 defines a parabolic limit labeled N=1 in
Similarly, since N≤Nmax, Y<X2/Nmax defines another parabolic limit labeled Nmax in
For any given fraction number N, Y<X2/N is always infeasible. However this does not mean that the region above the Y=X2/Nmin line (labeled as Nmin in
One practical approach for the above problem is to limit the allowed dose per fraction values to two distinct figures, i.e. to impose a further constraint as:
dt=∈{dhigh,dlow}∀t=1, . . . ,N (27)
The choice may seem to be limiting, however it can be shown that even with only allowing two distinct dose values any feasible (X, Y) point satisfying Equation (25) remain feasible, therefore optimality is not lost. Furthermore by allowing Nlow number of low dose fractions in an N fraction treatment the corresponding (X, Y) points are all in the region defined by X2/N≤Y≤X2/(N−Nlow), therefore between the lines of equal dose per fraction treatments with N and N−Nlow number of fractions.
With the constraint given by Equation (27) it is possible to have a practical upper limit for the feasible region: allowing at most Nlow number of low dose fractions Y>X2/(Nmin−Nlow) becomes infeasible (area above the Nmin parabola in
With the above limitations the practical feasible region of the fractionation problem is X2/Nmax≤Y≤X2/(Nmin−Nlow), that is, the area between the parabolas labeled Nmin and Nmax in
Taking into account these practical considerations the final form of the optimization problem that has to be solved is:
Inputs to the optimization problem include the dose distribution (so that the generalized dose sparing factors σT and σm, as well as the dose shape factors appearing in Bm can be calculated), the dose constraints (for obtaining the Bm generalized BED constraints), and the limits on the considered fractionation schemes (Nmin, Nmax and Nlow). The solution provides the optimal total dose X and total squared dose Y, as well as a fractionation scheme in terms of dhigh and dlow achieving these values.
Since both the objective function and the OAR constraints are linear in the total dose and the total squared dose, furthermore the constraints coming from the limited number of allowed fractions are second order polynomials, the problem has a convenient graphical representation on the 2D graph 42. The constraint given in Equation (29) can be reformulated as:
With reference again to
Since the number of low dose fractions (Nlow) does not significantly impact the analysis, in the following the low dose fractions are generally neglected by simply assuming Nlow=1. Similarly, the term “minimum number of fractions” or the like should be interpreted with the understanding that one of those can have a lower (possibly zero) fractional dose than the others, effectively making the minimum number of fractions Nmin−1. This technicality is introduced in order to conform to a physician's actual intent with having a lower limit on the number of fractions; to best approach current clinical practice of having equal fractional doses; and to enable realizing any feasible point of the X-Y plane, not only the ones corresponding to the parabolas representing uniform fractionation schemes. In general therefore, the minimum fractions Nmin in examples described herein assumes a single low dose fraction Nlow=1 except where explicitly indicated otherwise.
Furthermore, in implementing the fractional optimization GUI 40 it is generally assumed that the fractional doses dt of the total radiation dose D to be delivered in each fraction t other than the low dose fraction are the same and are equal to dhigh given later, whereas the low dose fractional dose is equal to dlow, although neither of these assumptions are required.
In illustrative
In general, the target BED line depicting the target BED for the tumor is given by σTX+ρT (σT)2Y=BT where BT is the target BED to be delivered by the fractionated radiation therapy to the tumor, σT is a constant, and ρT is the inverse of the α/β ratio of the tumor in a linear-quadratic BED model. Suitable values for the parameters σT and ρT have been described previously. In similar fashion, the constraint BED line depicting BED constraint m is given by σmX+ρm(σm)2Y=Bm where Bm is the upper constraint on the BED to be delivered by the fractionated radiation therapy to the corresponding organ at risk, σm is a constant, and ρm is the inverse of the α/β ratio of the corresponding organ at risk in a linear-quadratic BED model.
The marker 50 is positioned at a location on the 2D graph 42 of
In a variant embodiment, the 2D graph 42 can display two markers 50 (second marker not shown in
In a variant embodiment, the 2D graph 42 has a discretization grid comprising the set of parabolic curves defined by the set of integers in the inclusive range [Nmin, Nmax] assuming uniform fractionation, i.e. equal fractional dose values, and the user selection of a new location (Xnew, Ynew) is locked to the nearest parabola representing the nearest integer N. Other guidance can be provided, such as not accepting a new location (Xnew, Ynew) that is outside of the feasible range bounded by Nmin and Nmax.
Additionally or alternatively, a further graphical guide that can be shown to display on the 2D graph 42 a parabolic curve defined by a target fraction number Ntarget(where Nmin≤Ntarget≤Nmax). Such a parabola can show the clinician the range of values attainable for the target fraction Ntarget assuming uniform fractional doses.
In some embodiments, the fractional optimization tool 40 is used to actually set the fractionation and the total dose. In these embodiments, the user indicates via the at least one user input component that the current total dose Dcurr and current total squared dose SDcurr, as well as the implicitly defined current number of fractions Ncurr and current fractional doses dt,curr are final. Alternatively, the fractional optimization tool 40 may be used as an exploration tool to explore the space of feasible fractionation/total dose settings, with the final values being manually chosen by the user (e.g. typed into a radiation therapy physician's order).
With reference now to
holds. Hence to maximize the tumor BED the corresponding “Tumor” line in
In
To maximize the tumor BED its line in
The OAR constraints that form the boundary are all represented by straight lines having an increasing steepness (i.e. if we go through them according to their abscissas, a constraint with a higher abscissa value also has a higher steepness). Since the tumor BED is again increased as we move its line to right and up in
As discussed previously, any (X, Y) pair in the feasible region between Nmin and Nmax can be achieved by having only two distinct dose per fraction values. An easy choice is to allow only Nlow=1 low dose fractions and try to approximate a uniform fractionation scheme. Supposing that the (X, Y) intersection point is located between the N and N+1 fraction uniform schemes, the appropriate dose values are:
To use the developed fractionation optimization tool the following information serves as input. The dose distribution for the treatment is one input. Since only the temporal aspect of the treatment is optimized, the dose sparing factors in the voxels is sufficient, which can be obtained from scaling the dose distribution to some reference value. A convenient choice is to use the mean dose in the target region (identified as all regions belonging to the GTVs in the current implementation), but one could use an entered prescription dose as well.
A further input is the dose constraints for the different organs. The optimal fractionation scheme depends on what OAR constraints are considered acceptable by the physician. In the illustrative examples a fixed set of constraints were used, focusing on liver cases, however an option can be provided to allow a user to interactively enter a chosen set of constraints for a choice of OARs (with the limitation that for the same constraint at most two dose values can be given for two distinctive fraction numbers, as discussed previously).
A further input is the OAR structures and their corresponding index map (e.g. the set of voxels belonging to the structures) in order to associate the different parts of the patient anatomy with the appropriate OARs to obtain the generalized dose sparing factors and BED tolerances. A further input is the minimum and maximum number of fractions, as well as optionally the number of low dose fractions a physician would consider (otherwise it is simply set to 1).
The 2D graph 42 is preferably implemented as an interactive, “clickable” GUI, in which the user selects a new location and the dose and fractionation is computed. This allows physicians to choose a permissible point on the map, for which all relevant dose constraint values could be calculated on-the-fly and displayed (e.g. as an equivalent dose difference from the nominal scenario, as explained previously).
In the illustrative examples, the OAR constraints are treated as “objectives”, in the sense that they do not necessarily have to be satisfied (e.g., in
In general, the one or more computers 14, 28 are operatively connected with at least one non-transitory storage medium that stores instructions readable and executable by the computer(s) to perform the disclosed fractionated radiation therapy planning operations. The at least one non-transitory storage medium may, for example, include a hard disk or other magnetic storage medium, an optical disk or other optical storage medium, a solid state drive, flash memory, or other electronic storage medium, various combinations thereof, or so forth.
The invention has been described with reference to the preferred embodiments. Modifications and alterations may occur to others upon reading and understanding the preceding detailed description. It is intended that the invention be construed as including all such modifications and alterations insofar as they come within the scope of the appended claims or the equivalents thereof.
This application is the U.S. National Phase application under 35 U.S.C. § 371 of International Application No. PCT/EP2017/058477, filed Apr. 10, 2017, published as WO 2017/182300 on Oct. 26, 2017, which claims the benefit of U.S. Provisional Patent Application No. 62/324,039 filed Apr. 18, 2016. These applications are hereby incorporated by reference herein.
Filing Document | Filing Date | Country | Kind |
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PCT/EP2017/058477 | 4/10/2017 | WO |
Publishing Document | Publishing Date | Country | Kind |
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WO2017/182300 | 10/26/2017 | WO | A |
Number | Name | Date | Kind |
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20080240351 | Bohsung | Oct 2008 | A1 |
20090052623 | Tome | Feb 2009 | A1 |
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Number | Date | Country | |
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20200289848 A1 | Sep 2020 | US |
Number | Date | Country | |
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62324039 | Apr 2016 | US |