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Deep Reinforcement Learning Based System for Intraoperative Hyperspectral Video Autofocusing

International Conference on Medical Image Computing and Computer-Assisted Intervention (MICCAI), 2023
21 July 2023
Charlie Budd
Jia-Gang Qiu
O. MacCormac
Martin Huber
Christopher E. Mower
M. Janatka
Théo Trotouin
J. Shapey
Mads S. Bergholt
Tom Vercauteren
ArXiv (abs)PDFHTML
Abstract

Hyperspectral imaging (HSI) captures a greater level of spectral detail than traditional optical imaging, making it a potentially valuable intraoperative tool when precise tissue differentiation is essential. Hardware limitations of current optical systems used for handheld real-time video HSI result in a limited focal depth, thereby posing usability issues for integration of the technology into the operating room. This work integrates a focus-tunable liquid lens into a video HSI exoscope, and proposes novel video autofocusing methods based on deep reinforcement learning. A first-of-its-kind robotic focal-time scan was performed to create a realistic and reproducible testing dataset. We benchmarked our proposed autofocus algorithm against traditional policies, and found our novel approach to perform significantly (p<0.05p<0.05p<0.05) better than traditional techniques (0.070±.0980.070\pm.0980.070±.098 mean absolute focal error compared to 0.146±.1480.146\pm.1480.146±.148). In addition, we performed a blinded usability trial by having two neurosurgeons compare the system with different autofocus policies, and found our novel approach to be the most favourable, making our system a desirable addition for intraoperative HSI.

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