Computer-Aided Diagnosis of Label-Free 3-D Optical Coherence Microscopy Images of Human Cervical Tissue
Yutao Ma, Tao Xu, Xiaolei Huang, Xiaofang Wang, Canyu Li, Jason, Jerwick, Yuan Ning, Xianxu Zeng, Baojin Wang, Yihong Wang, Zhan Zhang, Xiaoan, Zhang, Chao Zhou

TL;DR
This study develops a deep-learning based computer-aided diagnosis system for 3-D optical coherence microscopy images of human cervical tissue, achieving high accuracy and outperforming human experts, thus facilitating clinical adoption.
Contribution
Introduces a novel CADx method combining CNN features and patient data for classifying cervical tissue in OCM images, demonstrating superior performance over human experts.
Findings
Achieved 88.3% accuracy in five-class classification of cervical tissue.
Attained 0.959 AUC in binary classification of high-risk vs. low-risk lesions.
Outperformed three human experts in diagnostic accuracy.
Abstract
Objective: Ultrahigh-resolution optical coherence microscopy (OCM) has recently demonstrated its potential for accurate diagnosis of human cervical diseases. One major challenge for clinical adoption, however, is the steep learning curve clinicians need to overcome to interpret OCM images. Developing an intelligent technique for computer-aided diagnosis (CADx) to accurately interpret OCM images will facilitate clinical adoption of the technology and improve patient care. Methods: 497 high-resolution 3-D OCM volumes (600 cross-sectional images each) were collected from 159 ex vivo specimens of 92 female patients. OCM image features were extracted using a convolutional neural network (CNN) model, concatenated with patient information (e.g., age, HPV results), and classified using a support vector machine classifier. Ten-fold cross-validations were utilized to test the performance of the…
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