Prospects for Theranostics in Neurosurgical Imaging: Empowering Confocal Laser Endomicroscopy Diagnostics via Deep Learning

被引:31
作者
Izadyyazdanabadi, Mohammadhassan [1 ,2 ]
Belykh, Evgenii [2 ,3 ]
Mooney, Michael A. [2 ]
Eschbacher, Jennifer M. [2 ]
Nakaji, Peter [2 ]
Yang, Yezhou [1 ]
Preul, Mark C. [2 ]
机构
[1] Arizona State Univ, Sch Comp Informat & Decis Syst Engn, Act Percept Grp, Tempe, AZ USA
[2] St Josephs Hosp, Dept Neurosurg, Barrow Neurol Inst, Neurosurg Res Lab, Phoenix, AZ 85013 USA
[3] Irkutsk State Med Univ, Dept Neurosurg, Irkutsk, Russia
关键词
brain neoplasm; brain tumor imaging; cancer; confocal laser endomicroscopy; convolutional neural networks; deep learning; fluorescence; theranostics; CONVOLUTIONAL NEURAL-NETWORKS; TUMOR MICROENVIRONMENT; CLASSIFICATION; MICROSCOPY; EXPERIENCE;
D O I
10.3389/fonc.2018.00240
中图分类号
R73 [肿瘤学];
学科分类号
100214 ;
摘要
Confocal laser endomicroscopy (CLE) is an advanced optical fluorescence imaging technology that has 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. CLE images can be distorted by motion artifacts, fluorescence signals out of detector dynamic range, or may be obscured by red blood cells, and thus interpreted as nondiagnostic (ND). However, just a single CLE image with a detectable pathognomonic histological tissue signature can suffice for intraoperative diagnosis. Dealing with the abundance of images from CLE is not unlike sifting through a myriad of genes, proteins, or other structural or metabolic markers to find something of commonality or uniqueness in cancer that might indicate a potential treatment scheme or target. 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 power of deep learning predictive models. Two major approaches reviewed in this paper include the models that can automatically classify CLE images into diagnostic/ND, glioma/nonglioma, tumor/injury/normal categories, and models that can localize histological features on the CLE images using weakly supervised methods. We also briefly review advances in the deep learning approaches used for CLE image analysis in other organs. Significant advances in speed and precision of automated diagnostic frame selection would augment the diagnostic potential of CLE, improve operative workflow, and integration into brain tumor surgery. Such technology and bioinformatics analytics lend themselves to improved precision, personalization, and theranostics in brain tumor treatment.
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页数:13
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