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Applications of Machine Learning to Improve the Clinical Viability of Compton Camera Based in vivo Range Verification in Proton Radiotherapy

Publication ,  Journal Article
Polf, JC; Barajas, CA; Peterson, SW; Mackin, DS; Beddar, S; Ren, L; Gobbert, MK
Published in: Frontiers in Physics
April 11, 2022

We studied the application of a deep, fully connected Neural Network (NN) to process prompt gamma (PG) data measured by a Compton camera (CC) during the delivery of clinical proton radiotherapy beams. The network identifies 1) recorded “bad” PG events arising from background noise during the measurement, and 2) the correct ordering of PG interactions in the CC to help improve the fidelity of “good” data used for image reconstruction. PG emission from a tissue-equivalent target during irradiation with a 150 MeV proton beam delivered at clinical dose rates was measured with a prototype CC. Images were reconstructed from both the raw measured data and the measured data that was further processed with a neural network (NN) trained to identify “good” and “bad” PG events and predict the ordering of individual interactions within the good PG events. We determine if NN processing of the CC data could improve the reconstructed PG images to a level in which they could provide clinically useful information about the in vivo range and range shifts of the proton beams delivered at full clinical dose rates. Results showed that a deep, fully connected NN improved the achievable contrast to noise ratio (CNR) in our images by more than a factor of 8x. This allowed the path, range, and lateral width of the clinical proton beam within a tissue equivalent target to easily be identified from the PG images, even at the highest dose rates of a 150 MeV proton beam used for clinical treatments. On average, shifts in the beam range as small as 3 mm could be identified. However, when limited by the amount of PG data measured with our prototype CC during the delivery of a single proton pencil beam (∼1 × 109 protons), the uncertainty in the reconstructed PG images limited the identification of range shift to ∼5 mm. Substantial improvements in CC images were obtained during clinical beam delivery through NN pre-processing of the measured PG data. We believe this shows the potential of NNs to help improve and push CC-based PG imaging toward eventual clinical application for proton RT treatment delivery verification.

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Published In

Frontiers in Physics

DOI

EISSN

2296-424X

Publication Date

April 11, 2022

Volume

10

Related Subject Headings

  • 51 Physical sciences
  • 49 Mathematical sciences
 

Citation

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Polf, J. C., Barajas, C. A., Peterson, S. W., Mackin, D. S., Beddar, S., Ren, L., & Gobbert, M. K. (2022). Applications of Machine Learning to Improve the Clinical Viability of Compton Camera Based in vivo Range Verification in Proton Radiotherapy. Frontiers in Physics, 10. https://doi.org/10.3389/fphy.2022.838273
Polf, J. C., C. A. Barajas, S. W. Peterson, D. S. Mackin, S. Beddar, L. Ren, and M. K. Gobbert. “Applications of Machine Learning to Improve the Clinical Viability of Compton Camera Based in vivo Range Verification in Proton Radiotherapy.” Frontiers in Physics 10 (April 11, 2022). https://doi.org/10.3389/fphy.2022.838273.
Polf JC, Barajas CA, Peterson SW, Mackin DS, Beddar S, Ren L, et al. Applications of Machine Learning to Improve the Clinical Viability of Compton Camera Based in vivo Range Verification in Proton Radiotherapy. Frontiers in Physics. 2022 Apr 11;10.
Polf, J. C., et al. “Applications of Machine Learning to Improve the Clinical Viability of Compton Camera Based in vivo Range Verification in Proton Radiotherapy.” Frontiers in Physics, vol. 10, Apr. 2022. Scopus, doi:10.3389/fphy.2022.838273.
Polf JC, Barajas CA, Peterson SW, Mackin DS, Beddar S, Ren L, Gobbert MK. Applications of Machine Learning to Improve the Clinical Viability of Compton Camera Based in vivo Range Verification in Proton Radiotherapy. Frontiers in Physics. 2022 Apr 11;10.

Published In

Frontiers in Physics

DOI

EISSN

2296-424X

Publication Date

April 11, 2022

Volume

10

Related Subject Headings

  • 51 Physical sciences
  • 49 Mathematical sciences