Ochs Robert A, Abtin Fereidoun, Ghurabi Raffi, Rao Ajay, Ahmad Shama, Brown Matthew, Goldin Jonathan G
Department of Radiological Sciences, David Geffen School of Medicine, University of California-Los Angeles, Los Angeles, CA 90024-2926, USA.
Acad Radiol. 2009 Feb;16(2):172-80. doi: 10.1016/j.acra.2008.07.009.
The ability to automatically detect and monitor implanted devices may serve an important role in patient care by aiding the evaluation of device and treatment efficacy. The purpose of this research was to develop a system for the automated detection of one-way endobronchial valves that were implanted for less invasive lung volume reduction.
Volumetric thin-section computed tomographic data was obtained for 194 subjects; 95 subjects implanted with 246 devices were used for system development and 99 subjects implanted with 354 devices were reserved for testing. The detection process consisted of preprocessing, pattern recognition based detection, and a final device selection. Following the preprocessing, a set of classifiers was trained using AdaBoost to discriminate true devices from false positives. The classifiers in the cascade used two simple features (either the mean or maximum attenuation) of a local region computed at multiple fixed landmarks relative to a template model of the valve.
Free-response receiver-operating characteristic analysis was performed for the evaluation; the system could be set so the mean sensitivity was 96.5% with a mean of 0.18 false positives per subject. If knowledge of the number of implanted devices were incorporated, the sensitivity would be 96.9% with a mean of 0.061 false positives per subject; this corresponds to a total of 12 false negatives and six false positives for the 99 subjects in the test dataset.
Software was developed for automated detection of endobronchial valves on volumetric computed tomography. The proposed device modeling and detection techniques may be applicable to other devices as well as useful for evaluation of treatment response.
自动检测和监测植入设备的能力,通过辅助评估设备及治疗效果,在患者护理中可能发挥重要作用。本研究的目的是开发一种系统,用于自动检测为进行微创肺减容术而植入的单向支气管内瓣膜。
获取了194名受试者的容积薄层计算机断层扫描数据;95名植入246个设备的受试者用于系统开发,99名植入354个设备的受试者留作测试。检测过程包括预处理、基于模式识别的检测以及最终的设备选择。预处理后,使用AdaBoost训练一组分类器,以区分真实设备与假阳性。级联中的分类器使用相对于瓣膜模板模型在多个固定地标处计算的局部区域的两个简单特征(平均衰减或最大衰减)。
进行了自由响应接收器操作特征分析以进行评估;该系统可以设置为平均灵敏度为96.5%,平均每位受试者有0.18例假阳性。如果纳入植入设备数量的信息,灵敏度将为96.9%,平均每位受试者有0.061例假阳性;这对应于测试数据集中99名受试者共有12例假阴性和6例假阳性。
开发了用于在容积计算机断层扫描上自动检测支气管内瓣膜的软件。所提出的设备建模和检测技术可能适用于其他设备,也有助于评估治疗反应。