Gosnell Martin E, Polikarpov Dmitry M, Goldys Ewa M, Zvyagin Andrei V, Gillatt David A
ARC Centre of Excellence for Nanoscale BioPhotonics, MQ Photonics, Macquarie University, Sydney, Australia; Quantitative Pty Ltd, Sydney, New South Wales, Australia.
ARC Centre of Excellence for Nanoscale BioPhotonics, MQ Photonics, Macquarie University, Sydney, Australia; Department of Clinical Medicine, Faculty of Medicine and Health Sciences, Macquarie University, Sydney, Australia; Laboratory of Optical Theranostics, Institute for Biology and Biomedicine, Lobachevsky State University of Nizhny Novgorod, Nizhny Novgorod, Russia; Young Urology Researchers Organisation (YURO), Melbourne, Victoria, Australia.
Urol Oncol. 2018 Jan;36(1):8.e9-8.e15. doi: 10.1016/j.urolonc.2017.08.026. Epub 2017 Sep 25.
One of the most reliable methods for diagnosing bladder cancer is cystoscopy. Depending on the findings, this may be followed by a referral to a more experienced urologist or a biopsy and histological analysis of suspicious lesion. In this work, we explore whether computer-assisted triage of cystoscopy findings can identify low-risk lesions and reduce the number of referrals or biopsies, associated complications, and costs, although reducing subjectivity of the procedure and indicating when the risk of a lesion being malignant is minimal.
Cystoscopy images taken during routine clinical patient evaluation and supported by biopsy were interpreted by an expert clinician. They were further subjected to an automated image analysis developed to best capture cancer characteristics. The images were transformed and divided into segments, using a specialised color segmentation system. After the selection of a set of highly informative features, the segments were separated into 4 classes: healthy, veins, inflammation, and cancerous. The images were then classified as healthy and diseased, using a linear discriminant, the naïve Bayes, and the quadratic linear classifiers. Performance of the classifiers was measured by using receiver operation characteristic curves.
The classification system developed here, with the quadratic classifier, yielded 50% false-positive rate and zero false-negative rate, which means, that no malignant lesions would be missed by this classifier.
Based on criteria used for assessment of cystoscopy images by medical specialists and features that human visual system is less sensitive to, we developed a computer program that carries out automated analysis of cystoscopy images. Our program could be used as a triage to identify patients who do not require referral or further testing.
诊断膀胱癌最可靠的方法之一是膀胱镜检查。根据检查结果,可能会转诊给更有经验的泌尿科医生,或者对可疑病变进行活检和组织学分析。在这项研究中,我们探讨计算机辅助的膀胱镜检查结果分类能否识别低风险病变,减少转诊或活检的次数、相关并发症及费用,同时降低该检查程序的主观性,并指出病变为恶性的风险何时最小。
由一名专家临床医生解读在常规临床患者评估期间拍摄并经活检支持的膀胱镜检查图像。这些图像进一步接受为最佳捕捉癌症特征而开发的自动图像分析。使用专门的颜色分割系统对图像进行变换和分割。在选择一组信息量丰富的特征后,将这些片段分为4类:健康、静脉、炎症和癌变。然后使用线性判别法、朴素贝叶斯法和二次线性分类器将图像分类为健康和患病两类。通过使用受试者工作特征曲线来衡量分类器的性能。
此处开发的分类系统,采用二次分类器,产生了50%的假阳性率和零假阴性率,这意味着该分类器不会漏诊任何恶性病变。
基于医学专家评估膀胱镜检查图像所使用的标准以及人类视觉系统不太敏感的特征,我们开发了一个对膀胱镜检查图像进行自动分析的计算机程序。我们的程序可作为一种分类方法,用于识别不需要转诊或进一步检查的患者。