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Machine learning approaches to analyze histological images of tissues from radical prostatectomies

机译:机器学习方法分析根治性前列腺切除术组织的组织学图像

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Computerized evaluation of histological preparations of prostate tissues involves identification of tissue components such as stroma (ST), benignormal epithelium (BN) and prostate cancer (PCa). Image classification approaches have been developed to identify and classify glandular regions in digital images of prostate tissues; however their success has been limited by difficulties in cellular segmentation and tissue heterogeneity. We hypothesized that utilizing image pixels to generate intensity histograms of hematoxylin (H) and eosin (E) stains deconvoluted from H&E images numerically captures the architectural difference between glands and stroma. In addition, we postulated that joint histograms of local binary patterns and local variance (LBPxVAR) can be used as sensitive textural features to differentiate benignormal tissue from cancer. Here we utilized a machine learning approach comprising of a support vector machine (SVM) followed by a random forest (RF) classifier to digitally stratify prostate tissue into ST, BN and PCa areas. Two pathologists manually annotated 210 images of low- and high-grade tumors from slides that were selected from 20 radical prostatectomies and digitized at high-resolution. The 210 images were split into the training (n = 19) and test (n = 191) sets. Local intensity histograms of H and E were used to train a SVM classifier to separate ST from epithelium (BN+PCa). The performance of SVM prediction was evaluated by measuring the accuracy of delineating epithelial areas. The Jaccard J = 59.5 +/- 14.6 and Rand Ri = 62.0 7.5 indices reported a significantly better prediction when compared to a reference method (Chen et al., Clinical Proteomics 2013, 10:18) based on the averaged values from the test set. To distinguish BN from PCa we trained a RF classifier with LBPxVAR and local intensity histograms and obtained separate performance values for BN and PCa: J(BN) = 35.2 +/- 24.9, O-BN = 49.6 +/- 32, J(PCa) = 49.5 +/- 18.5, O-PCa = 72.7 +/- 14.8 and Ri = 60.6 +/- 7.6 in the test set. Our pixel-based classification does not rely on the detection of lumens, which is prone to errors and has limitations in high-grade cancers and has the potential to aid in clinical studies in which the quantification of tumor content is necessary to prognosticate the course of the disease. The image data set with ground truth annotation is available for public use to stimulate further research in this area. (C) 2015 Elsevier Ltd. All rights reserved.
机译:前列腺组织的组织学准备的计算机化评估涉及鉴定组织成分,例如基质(ST),良性/正常上皮(BN)和前列腺癌(PCa)。已经开发出图像分类方法来识别和分类前列腺组织的数字图像中的腺体区域。然而,它们的成功受到细胞分裂和组织异质性困难的限制。我们假设利用图像像素生成从H&E图像反褶积的苏木精(H)和曙红(E)染色剂的强度直方图在数值上捕获了腺体和基质之间的结构差异。此外,我们假设局部二值模式和局部方差(LBPxVAR)的联合直方图可以用作敏感的纹理特征,以区分良性/正常组织与癌症。在这里,我们利用了一种包括支持向量机(SVM)和随机森林(RF)分类器的机器学习方法,将前列腺组织数字分层为ST,BN和PCa区域。两名病理学家从从20例根治性前列腺切除术中选择并以高分辨率数字化的载玻片上手动注释了210张低度和高度肿瘤的图像。将210张图像分为训练(n = 19)和测试(n = 191)集。 H和E的局部强度直方图用于训练SVM分类器以将ST与上皮(BN + PCa)分开。通过测量划定上皮区域的准确性来评估SVM预测的性能。根据测试集的平均值,与参考方法(Chen等人,Clinical Proteomics 2013,10:18)相比,Jaccard J = 59.5 +/- 14.6和Rand Ri = 62.0 7.5指数显示明显更好的预测。 。为了区分BN和PCa,我们训练了具有LBPxVAR和局部强度直方图的RF分类器,并获得了BN和PCa的单独性能值:J(BN)= 35.2 +/- 24.9,O-BN = 49.6 +/- 32,J(PCa )= 49.5 +/- 18.5,O-PCa = 72.7 +/- 14.8,Ri = 60.6 +/- 7.6。我们基于像素的分类不依赖于流明的检测,它很容易出错,并且在高级癌症中具有局限性,并且有可能有助于临床研究,其中需要量化肿瘤含量来预测肿瘤的发展过程这种病。带有地面真相注释的图像数据集可供公众使用,以激发对该领域的进一步研究。 (C)2015 Elsevier Ltd.保留所有权利。

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