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Deep Reinforcement Learning Based System for Intraoperative Hyperspectral Video Autofocusing. | LitMetric

AI Article Synopsis

  • Hyperspectral imaging (HSI) offers detailed tissue analysis compared to traditional imaging, which is crucial for surgeries needing precise differentiation.
  • Current handheld optical systems face limitations in focal depth, making them less effective for operating room use.
  • By integrating a focus-tunable liquid lens and using deep reinforcement learning for video autofocusing, our new approach significantly outperformed traditional methods and received positive feedback from neurosurgeons in usability trials.

Article 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 realtime 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 ( < 0.05) better than traditional techniques (0.070 ±.098 mean absolute focal error compared to 0.146 ±.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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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC7616605PMC
http://dx.doi.org/10.1007/978-3-031-43996-4_63DOI Listing

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