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首页> 外文期刊>Medical Physics >A computer‐aided diagnosis system for differentiation and delineation of malignant regions on whole‐slide prostate histopathology image using spatial statistics and multidimensional DenseNet
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A computer‐aided diagnosis system for differentiation and delineation of malignant regions on whole‐slide prostate histopathology image using spatial statistics and multidimensional DenseNet

机译:一种计算机辅助诊断系统,用于使用空间统计和多维典型组织对全载前列腺组织病理学形象的恶性区域分化和描绘

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Purpose Prostate cancer (PCa) is a major health concern in aging males, and proper management of the disease depends on accurately interpreting pathology specimens. However, reading prostatectomy histopathology slides, which is basically for staging, is usually time consuming and differs from reading small biopsy specimens, which is mainly used for diagnosis. Generally, each prostatectomy specimen generates tens of large tissue sections and for each section, the malignant region needs to be delineated to assess the amount of tumor and its burden. With the aim of reducing the workload of pathologists, in this study, we focus on developing a computer‐aided diagnosis (CAD) system based on a densely connected convolutional neural network (DenseNet) for whole‐slide histopathology images to outline the malignant regions. Methods We use an efficient color normalization process based on ranklet transformation to automatically correct the intensity of the images. Additionally, we use spatial probability to segment the tissue structure regions for different tissue recognition patterns. Based on the segmentation, we incorporate a multidimensional structure into DenseNet to determine if a particular prostatic region is benign or malignant. Results As demonstrated by the experimental results with a test set of 2,663 images from 32 whole‐slide prostate histopathology images, our proposed system achieved 0.726, 0.6306, and 0.5209 in the average of the Dice coefficient, Jaccard similarity coefficient, and Boundary F1 score measures, respectively. Then, the accuracy, sensitivity, specificity, and the area under the ROC curve (AUC) of the proposed classification method were observed to be 95.0% (2544/2663), 96.7% (1210/1251), 93.9% (1334/1412), and 0.9831, respectively. Discussions We provide a detailed discussion on how our proposed system demonstrates considerable improvement compared with similar methods considered in previous researches as well as how it can be used for delineating malignant regions.
机译:目的前列腺癌(PCA)是衰老男性的重大健康问题,并且对疾病的适当管理取决于准确解释病理标本。然而,读取前列腺切除术的组织病理学载玻片通常是耗时的,并且与读取小的活组织检查标本不同,主要用于诊断。通常,每个前列腺切除术样品产生几十个大型组织切片,每个部分都需要划定的恶性区域以评估肿瘤的量及其负担。在这项研究中,旨在减少病理学家的工作量,我们专注于基于致密连接的卷积神经网络(DENSENET)的计算机辅助诊断(CAD)系统,用于全载组织病理学图像,以概述恶性区域。方法采用基于Ranklet转换的高效色彩归一化过程,自动校正图像的强度。另外,我们使用空间概率来分割组织结构区域以进行不同的组织识别模式。基于分割,我们将多维结构纳入DENSENET,以确定特定前列腺区域是否是良性或恶性的。结果通过实验结果证明,使用来自32个全载前列腺组织病理学图像的2,663次图像的测试组,我们所提出的系统在骰子系数,Jaccard相似系数和边界的平均值中实现了0.726,0.6306和0.5209 , 分别。然后,观察到所提出的分类方法的ROC曲线(AUC)下的精度,敏感性,特异性和区域为95.0%(2544/2663),96.7%(1210/1251),93.9%(1334/1412)分别为0.9831。讨论我们提供了详细讨论我们所提出的系统如何表明与先前研究中考虑的类似方法相比,以及它如何用于描绘恶性区域。

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