Qi Xin, Pan Yinsheng, Sivak Michael V, Willis Joseph E, Isenberg Gerard, Rollins Andrew M
Biomed Opt Express. 2010 Sep 9;1(3):825-847. doi: 10.1364/BOE.1.000825.
Barrett's esophagus (BE) and associated adenocarcinoma have emerged as a major health care problem. Endoscopic optical coherence tomography is a microscopic sub-surface imaging technology that has been shown to differentiate tissue layers of the gastrointestinal wall and identify dysplasia in the mucosa, and is proposed as a surveillance tool to aid in management of BE. In this work a computer-aided diagnosis (CAD) system has been demonstrated for classification of dysplasia in Barrett's esophagus using EOCT. The system is composed of four modules: region of interest segmentation, dysplasia-related image feature extraction, feature selection, and site classification and validation. Multiple feature extraction and classification methods were evaluated and the process of developing the CAD system is described in detail. Use of multiple EOCT images to classify a single site was also investigated. A total of 96 EOCT image-biopsy pairs (63 non-dysplastic, 26 low-grade and 7 high-grade dysplastic biopsy sites) from a previously described clinical study were analyzed using the CAD system, yielding an accuracy of 84% for classification of non-dysplastic vs. dysplastic BE tissue. The results motivate continued development of CAD to potentially enable EOCT surveillance of large surface areas of Barrett's mucosa to identify dysplasia.
巴雷特食管(BE)及其相关腺癌已成为一个重大的医疗保健问题。内镜光学相干断层扫描是一种微观的表面下成像技术,已被证明能够区分胃肠道壁的组织层并识别黏膜发育异常,被提议作为辅助巴雷特食管管理的监测工具。在这项工作中,已经展示了一种用于使用内镜光学相干断层扫描(EOCT)对巴雷特食管发育异常进行分类的计算机辅助诊断(CAD)系统。该系统由四个模块组成:感兴趣区域分割、与发育异常相关的图像特征提取、特征选择以及部位分类和验证。评估了多种特征提取和分类方法,并详细描述了CAD系统的开发过程。还研究了使用多张EOCT图像对单个部位进行分类的情况。使用该CAD系统对先前一项临床研究中的96对EOCT图像 - 活检样本(63个非发育异常、26个低级别和7个高级别发育异常活检部位)进行了分析,对非发育异常与发育异常的巴雷特食管组织进行分类的准确率达到了84%。这些结果促使人们继续开发CAD,以潜在地实现对巴雷特黏膜大面积区域的EOCT监测,从而识别发育异常。