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Automatic computer-aided detection of prostate cancer based on multiparametric magnetic resonance image analysis

机译:基于多参数磁共振图像分析的前列腺癌自动计算机辅助检测

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摘要

In this paper, a fully automatic computer-aided detection (CAD) method is proposed for the detection of prostate cancer. The CAD method consists of multiple sequential steps in order to detect locations that are suspicious for prostate cancer. In the initial stage, a voxel classification is performed using a Hessian-based blob detection algorithm at multiple scales on an apparent diffusion coefficient map. Next, a parametric multi-object segmentation method is applied and the resulting segmentation is used as a mask to restrict the candidate detection to the prostate. The remaining candidates are characterized by performing histogram analysis on multiparametric MR images. The resulting feature set is summarized into a malignancy likelihood by a supervised classifier in a two-stage classification approach. The detection performance for prostate cancer was tested on a screening population of 200 consecutive patients and evaluated using the free response operating characteristic methodology. The results show that the CAD method obtained sensitivities of 0.41, 0.65 and 0.74 at false positive (FP) levels of 1, 3 and 5 per patient, respectively. In conclusion, this study showed that it is feasible to automatically detect prostate cancer at a FP rate lower than systematic biopsy. The CAD method may assist the radiologist to detect prostate cancer locations and could potentially guide biopsy towards the most aggressive part of the tumour.
机译:本文提出了一种用于前列腺癌检测的全自动计算机辅助检测(CAD)方法。 CAD方法包括多个连续步骤,以检测对前列腺癌可疑的位置。在初始阶段,在视扩散系数图上,使用基于Hessian的斑点检测算法在多个尺度上执行体素分类。接下来,应用参数多对象分割方法,并将所得分割结果用作遮罩,以将候选检测限制到前列腺。通过对多参数MR图像执行直方图分析来表征其余候选对象。监督分类器采用两阶段分类方法将所得特征集概括为恶性可能性。在200名连续患者的筛查人群中测试了前列腺癌的检测性能,并使用自由反应操作特征方法进行了评估。结果表明,CAD方法在每位患者的假阳性(FP)分别为1、3和5时,灵敏度分别为0.41、0.65和0.74。总之,这项研究表明以低于系统活检的FP率自动检测前列腺癌是可行的。 CAD方法可以帮助放射科医生检测前列腺癌的位置,并可能将活检引导至肿瘤的最侵袭性部位。

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