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High-Throughput Prostate Cancer Gland Detection, Segmentation, and Classification from Digitized Needle Core Biopsies

机译:高通量前列腺癌腺体的检测,分割和数字化穿刺活检分类

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We present a high-throughput computer-aided system for the segmentation and classification of glands in high resolution digitized images of needle core biopsy samples of the prostate. It will allow for rapid and accurate identification of suspicious regions on these samples. The system includes the following three modules: 1) a hierarchical frequency weighted mean shift normalized cut (HNCut) for initial detection of glands; 2) a geodesic active contour (GAC) model for gland segmentation; and 3) a diffeomorphic based similarity (DBS) feature extraction for classification of glands as benign or cancerous. HNCut is a minimally supervised color based detection scheme that combines the frequency weighted mean shift and normalized cuts algorithms to detect the lu men region of candidate glands. A GAC model, initialized using the results of HNCut, uses a color gradient based edge detection function for accurate gland segmentation. Lastly, DBS features are a set of morpho- metric features derived from the nonlinear dimensionality reduction of a dissimilarity metric between shape models. The system integrates these modules to enable the rapid detection, segmentation, and classification of glands on prostate biopsy images. Across 23 H & E stained prostate studies of whole-slides, 105 regions of interests (ROIs) were selected for the evaluation of segmentation and classification. The segmentation re sults were evaluated on 10 ROIs and compared to manual segmentation in terms of mean distance (2.6 ± 0.2 pixels), overlap (62 ± 0.07%), sensitivity (85±0.01%), specificity (94±0.003%) and positive predictive value (68 ± 0.08%). Over 105 ROIs, the classification accuracy for glands automatically segmented was (82.5 ± 9.10%) while the accuracy for glands manually segmented was (82.89 ±3.97%); no statistically significant differences were identified between the classification results.
机译:我们提出了一种高通量的计算机辅助系统,用于对前列腺针芯活检样品的高分辨率数字化图像中的腺体进行分割和分类。这样可以快速,准确地识别这些样品上的可疑区域。该系统包括以下三个模块:1)用于初始检测腺体的分层频率加权平均漂移归一化割线(HNCut); 2)用于腺体分割的测地线活动轮廓(GAC)模型; 3)基于差异形态学的相似度(DBS)特征提取,用于将腺体分类为良性或癌性。 HNCut是一种基于最小监督颜色的检测方案,结合了频率加权均值偏移和归一化割算法来检测候选腺体的管腔区域。使用HNCut结果初始化的GAC模型使用基于颜色梯度的边缘检测功能进行精确的腺体分割。最后,DBS特征是从形态模型之间的非相似度量的非线性降维中导出的一组形态特征。该系统集成了这些模块,可以对前列腺活检图像上的腺体进行快速检测,分割和分类。在23份H&E染色的全玻片前列腺研究中,选择了105个感兴趣区域(ROI)用于评估分割和分类。在10个ROI上评估了分割结果,并与平均距离(2.6±0.2像素),重叠(62±0.07%),灵敏度(85±0.01%),特异性(94±0.003%)和手动分割进行了比较阳性预测值(68±0.08%)。在超过105个ROI的情况下,自动分割的腺体的分类精度为(82.5±9.10%),而手动分割的腺体的分类精度为(82.89±3.97%);分类结果之间未发现统计学上的显着差异。

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