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Rule-based data-driven approach for computer aided diagnosis of the peripheral zone prostate cancer from multiparametric MRI: Proof of concept

机译:基于规则的数据驱动方法,用于计算机辅助诊断来自Multiparametric MRI的外周区域前列腺癌:概念证明

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In this paper, we present a new unsupervised prostate cancer (PCa) localization algorithm for the peripheral zone (PZ), utilizing well-established rules used in clinical PCa diagnosis from mpMRI data. We perform clustering on ADC and DWI images accompanied by T2W examination of clustered regions and then combined with DCE findings. For each of the 10 analysed patients, we obtain a likelihood map showing suspicious areas. We evaluate our method by comparison against radiological MR tumor segmentations and delineations in histopathological whole-mount sections automatically registered to the MR, using voxel-wise ROC analysis. The resulting mean AUC values for our algorithm were 0.81 and 0.67 with radiological and histopathological ground truth, respectively, while the mean AUC for the radiological segmentation with the histopathological segmentation as the ground truth was 0.60. We conclude that the proposed approach can localize PZ PCa with good accuracy and could be used as an aid for radiologists.
机译:在本文中,我们提出了一种新的无监督前列腺癌(PCA)本地化算法,用于外围区域(PZ),利用来自MPMRI数据的临床PCA诊断中使用的良好规则。我们在ADC和DWI图像上执行群集,伴随着聚类区域的T2W检查,然后与DCE调查结果组合。对于10名分析的患者中的每一个,我们获得了显示可疑地区的可能性图。通过使用体素-WISE ROC分析,我们通过对无线电MR肿瘤分割和描绘自动登记的组织病理学全架部分中的放射性MR肿瘤分割和描绘来评估我们的方法。我们的算法的所得到的平均AUC值分别为0.81和0.67,分别是放射学和组织病理学的基础,而具有组织病理细分的均匀AUC作为地面真理的放射性分割为0.60。我们得出结论,提出的方法可以以良好的准确度定位PZ PCA,可用作放射科医师的辅助工具。

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