Prospects for Theranostics in Neurosurgical Imaging: Empowering Confocal Laser Endomicroscopy Diagnostics via Deep Learning
Mohammadhassan Izadyyazdanabadi, Evgenii Belykh, Michael Mooney,, Jennifer Eschbacher, Peter Nakaji, Yezhou Yang, and Mark C. Preul

TL;DR
This paper reviews how deep learning models can enhance confocal laser endomicroscopy diagnostics in neurosurgery by automating image classification and localization, thereby improving intraoperative precision and personalized brain tumor treatment.
Contribution
It introduces deep learning approaches for automatic CLE image classification and localization, advancing intraoperative diagnostics in neurosurgical imaging.
Findings
Deep learning models improve diagnostic accuracy of CLE images.
Automated image classification enhances intraoperative workflow.
Weakly supervised methods enable localization of histological features.
Abstract
Confocal laser endomicroscopy (CLE) is an advanced optical fluorescence imaging technology that has the potential to increase intraoperative precision, extend resection, and tailor surgery for malignant invasive brain tumors because of its subcellular dimension resolution. Despite its promising diagnostic potential, interpreting the gray tone fluorescence images can be difficult for untrained users. In this review, we provide a detailed description of bioinformatical analysis methodology of CLE images that begins to assist the neurosurgeon and pathologist to rapidly connect on-the-fly intraoperative imaging, pathology, and surgical observation into a conclusionary system within the concept of theranostics. We present an overview and discuss deep learning models for automatic detection of the diagnostic CLE images and discuss various training regimes and ensemble modeling effect on the…
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