Lingley-Papadopoulos Colleen A, Loew Murray H, Manyak Michael J, Zara Jason M
The George Washington University, Department of Electrical and Computer Engineering, Staughton 107, 707 22nd Street NW, Washington, DC 20052, USA.
J Biomed Opt. 2008 Mar-Apr;13(2):024003. doi: 10.1117/1.2904987.
The vast majority of bladder cancers originate within 600 microm of the tissue surface, making optical coherence tomography (OCT) a potentially powerful tool for recognizing cancers that are not easily visible with current techniques. OCT is a new technology, however, and surgeons are not familiar with the resulting images. Technology able to analyze and provide diagnoses based on OCT images would improve the clinical utility of OCT systems. We present an automated algorithm that uses texture analysis to detect bladder cancer from OCT images. Our algorithm was applied to 182 OCT images of bladder tissue, taken from 68 distinct areas and 21 patients, to classify the images as noncancerous, dysplasia, carcinoma in situ (CIS), or papillary lesions, and to determine tumor invasion. The results, when compared with the corresponding pathology, indicate that the algorithm is effective at differentiating cancerous from noncancerous tissue with a sensitivity of 92% and a specificity of 62%. With further research to improve discrimination between cancer types and recognition of false positives, it may be possible to use OCT to guide endoscopic biopsies toward tissue likely to contain cancer and to avoid unnecessary biopsies of normal tissue.
绝大多数膀胱癌起源于距组织表面600微米以内,这使得光学相干断层扫描(OCT)成为识别当前技术难以看清的癌症的潜在有力工具。然而,OCT是一项新技术,外科医生并不熟悉其生成的图像。能够基于OCT图像进行分析并提供诊断的技术将提高OCT系统的临床实用性。我们提出了一种利用纹理分析从OCT图像中检测膀胱癌的自动化算法。我们的算法应用于来自21名患者68个不同区域的182张膀胱组织OCT图像,以将图像分类为非癌、发育异常、原位癌(CIS)或乳头状病变,并确定肿瘤浸润情况。与相应病理结果相比,结果表明该算法在区分癌组织和非癌组织方面有效,灵敏度为92%,特异性为62%。通过进一步研究以改善癌症类型之间的区分以及对假阳性的识别,有可能利用OCT指导内镜活检针对可能含有癌症的组织,避免对正常组织进行不必要的活检。