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Machine learning for real-time optical property recovery in interstitial photodynamic therapy: a stimulation-based study

Abdul‐Amir Yassine, Lothar Lilge, Vaughn Betz

2021Biomedical Optics Express24 citationsDOIOpen Access PDF

Abstract

With the continued development of non-toxic photosensitizer drugs, interstitial photodynamic therapy (iPDT) is showing more favorable outcomes in recent clinical trials. IPDT planning is crucial to further increase the treatment efficacy. However, it remains a major challenge to generate a high-quality, patient-specific plan due to uncertainty in tissue optical properties (OPs), µ a and µ s . These parameters govern how light propagates inside tissues, and any deviation from the planning-assumed values during treatment could significantly affect the treatment outcome. In this work, we increase the robustness of iPDT against OP variations by using machine learning models to recover the patient-specific OPs from light dosimetry measurements and then re-optimizing the diffusers’ optical powers to adapt to these OPs in real time. Simulations on virtual brain tumor models show that reoptimizing the power allocation with the recovered OPs significantly reduces uncertainty in the predicted light dosimetry for all tissues involved.

Topics & Concepts

Photodynamic therapyComputer scienceStimulationBiomedical engineeringMedical physicsMedicineOpticsChemistryInternal medicinePhysicsOrganic chemistryPhotoacoustic and Ultrasonic ImagingPhotodynamic Therapy Research StudiesOptical Coherence Tomography Applications
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