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rtCAB: A tool for reducing unnecessary prostate biopsy cores

机译:rtCAB:减少不必要的前列腺活检核心的工具

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With more than 110.000 new cases/year in Europe, prostate cancer (PCa) is one of the most frequent neoplasy. When suspects arise from standard diagnostic methods (i.e. Digital Rectal Exam, Transrectal Ultrasonography (TRUS), PSA level) a prostate biopsy (PBx) is mandatory. As patient discomfort and adverse event probability both grows with core number, it is desirable to reduce the number of PBx cores without negative impinging on diagnose accuracy. The work describes an innovative processing technique called real-time Computer Aided Biopsy (rtCAB) which enhances TRUS video stream with a false color overlay image, and suggests the physician where to sample thus reducing the total number of cores. Our proposal consists in a real-time non-linear classifier which processes the output of an original Maximum Likelihood estimator of Nakagami parameters based on Pade´ Approximant. The resulting algorithm, implemented making full use of CUDA parallel processing capabilities, is capable to deliver frame rates as high as 30 fps. Classification model was trained on a prostate gland adenocarcinoma database (400 PBx cores, 8000 ROIs). Ground truth for each core was established by an expert physician, providing tissue description and illness percentage for each core. The system was tuned for reducing the number of false positives while preserving an acceptable number of false negatives. Comparing to a classical double sextant PBx, the positive prediction value (PPV) of our method is 65% better, with an overall sensitivity of 100%.
机译:在欧洲,每年有超过110.000的新病例,前列腺癌(PCa)是最常见的肿瘤。如果怀疑来自标准诊断方法(即直肠指检,经直肠超声检查(TRUS),PSA水平),则必须进行前列腺活检(PBx)。随着患者不适感和不良事件几率都随核心数的增加而增加,因此希望减少PBx核心数而又不影响诊断准确性。这项工作描述了一种称为实时计算机辅助活检(rtCAB)的创新处理技术,该技术可通过伪彩色叠加图像增强TRUS视频流,并建议医生在哪里进行采样,从而减少核的总数。我们的建议包括一个实时非线性分类器,该分类器基于Pade近似值处理Nakagami参数的原始最大似然估计器的输出。充分利用CUDA并行处理功能实施的结果算法能够提供高达30 fps的帧速率。分类模型在前列腺腺癌数据库(400 PBx核,8000 ROI)上训练。每个核心的地面真相由专业医师确定,并提供每个核心的组织描述和疾病百分比。对系统进行了调整,以减少假阳性的数量,同时保留可接受数量的假阴性。与经典的双六分体PBx相比,我们方法的阳性预测值(PPV)改善了65%,总灵敏度为100%。

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