Assessment of CBCT based synthetic CT generation accuracy for adaptive radiotherapy planning
Christopher O'Hara,
United Kingdom
PD-0401
Abstract
Assessment of CBCT based synthetic CT generation accuracy for adaptive radiotherapy planning
Authors: Christopher O'Hara1, David Bird1, Richard Speight1, Sebastian Andersson2, Rasmus Nilsson2, Bashar Al-Qaisieh1
1Leeds Teaching Hospitals NHS Trust, Leeds Cancer Centre, Leeds, United Kingdom; 2RaySearch Laboratories, Research, Stockholm, Sweden
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Purpose or Objective
The
ability to calculate dose on CBCTs, using synthetic CTs (sCTs), has the
potential to make the adaptive radiotherapy (ART) pathway more efficient and
remove subjectivity from the process. Implementing sCTs generated from CBCTs
into the ART pathway would also reduce CT scanner workload and allow adaptive
treatment plans to be delivered more quickly.
This
study assessed the dosimetric and Hounsfield units (HU) similarity of CBCT-based
sCTs compared to CTs as well as the sCT generation time. sCTs were generated
using a commercially available treatment planning system.
Material and Methods
Fifteen
head and neck rescan patients were used to assess four methods of sCT
generation using RayStation Research version 9B. Each patient’s planning CT
(pCT), rescan CT (rCT), and the first CBCT after the rCT were obtained, using the
rCT as the comparator. The CBCT was deformed to the rCT geometry (dCBCT) and used
as the input for sCT generation.
Method
1 deformably registered the pCT to the dCBCT. Method 2 assigned the range of dCBCT
intensity values to six mass density values. Method 3 iteratively removed low-frequency
artefacts and assigned a HU function to the dCBCT values. Method 4 used a cycle
generative adversarial network (cycleGAN) machine learning model (independently
trained using 45 head and neck patient dCBCTs and pCTs) to generate an sCT. Methods
1, 3, and 4 are currently RayStation Research only scripted methods.
A
treatment plan conforming to the local clinical protocol was created on each
rCT and recalculated on each sCT. Planning target volume (PTV) and organ at
risk (OAR) structures were contoured by clinicians on the rCT to allow
assessment of dose-volume histogram (DVH) statistics. The mean absolute error (MAE) of
the HU, dose differences of PTV and OAR structures (high-dose PTV, low-dose
PTV, spinal canal, larynx, brainstem, and parotids) at clinically relevant DVH points,
and global gamma index analysis (2%/2 mm) were used to assess the differences
between the sCT and rCT. sCT generation time, including validation, was also recorded.
Results
For
methods 1, 2, 3, and 4 the MAE, gamma index analysis, and generation time were:
59.7 HU, 100.0%, and 143 s; 164.2 HU, 95.2%, and 232 s; 75.7 HU, 99.9%, and 153
s; and 79.4 HU, 99.8%, and 112 s respectively. All assessed dose differences were
<0.3 Gy except for method 2 (<0.5 Gy). An example of the dose differences
between the rCT and sCTs are shown in Figure 1.
Figure 1 - a) Dose distribution (Gy) on the rCT. b),
c), d), and e) Dose differences (% of prescription dose) vs. a) for methods 1,
2, 3, and 4 respectively. Positive values indicate an underdose relative to a).
Conclusion
All
methods were considered clinically viable. Method 4, the machine learning
method, was found to be most suitable for clinical implementation due to its
high dosimetric accuracy and short generation time.
Further
investigation is required to assess these methods in situations where the CBCT
and CT are significantly different and for other anatomical sites.