Xu Jun, Gong Lei, Wang Guanhao, Lu Cheng, Gilmore Hannah, Zhang Shaoting, Madabhushi Anant
Nanjing University of Information Science and Technology, Jiangsu Key Laboratory of Big Data Analysis Technique, Nanjing, China.
Case Western Reserve University, Department of Biomedical Engineering, Cleveland, Ohio, United States.
J Med Imaging (Bellingham). 2019 Jan;6(1):017501. doi: 10.1117/1.JMI.6.1.017501. Epub 2019 Feb 8.
Automated detection and segmentation of nuclei from high-resolution histopathological images is a challenging problem owing to the size and complexity of digitized histopathologic images. In the context of breast cancer, the modified Bloom-Richardson Grading system is highly correlated with the morphological and topological nuclear features are highly correlated with Modified Bloom-Richardson grading. Therefore, to develop a computer-aided prognosis system, automated detection and segmentation of nuclei are critical prerequisite steps. We present a method for automated detection and segmentation of breast cancer nuclei named a convolutional neural network initialized active contour model with adaptive ellipse fitting (CoNNACaeF). The CoNNACaeF model is able to detect and segment nuclei simultaneously, which consist of three different modules: convolutional neural network (CNN) for accurate nuclei detection, (2) region-based active contour (RAC) model for subsequent nuclear segmentation based on the initial CNN-based detection of nuclear patches, and (3) adaptive ellipse fitting for overlapping solution of clumped nuclear regions. The performance of the CoNNACaeF model is evaluated on three different breast histological data sets, comprising a total of 257 H&E-stained images. The model is shown to have improved detection accuracy of F-measure 80.18%, 85.71%, and 80.36% and average area under precision-recall curves (AveP) 77%, 82%, and 74% on a total of 3 million nuclei from 204 whole slide images from three different datasets. Additionally, CoNNACaeF yielded an F-measure at 74.01% and 85.36%, respectively, for two different breast cancer datasets. The CoNNACaeF model also outperformed the three other state-of-the-art nuclear detection and segmentation approaches, which are blue ratio initialized local region active contour, iterative radial voting initialized local region active contour, and maximally stable extremal region initialized local region active contour models.
由于数字化组织病理学图像的尺寸和复杂性,从高分辨率组织病理学图像中自动检测和分割细胞核是一个具有挑战性的问题。在乳腺癌的背景下,改良的布鲁姆-理查森分级系统与形态学和拓扑学核特征高度相关,而这些核特征与改良的布鲁姆-理查森分级高度相关。因此,要开发一个计算机辅助预后系统,细胞核的自动检测和分割是关键的先决步骤。我们提出了一种用于乳腺癌细胞核自动检测和分割的方法,称为具有自适应椭圆拟合的卷积神经网络初始化主动轮廓模型(CoNNACaeF)。CoNNACaeF模型能够同时检测和分割细胞核,它由三个不同的模块组成:用于精确细胞核检测的卷积神经网络(CNN),(2)基于区域的主动轮廓(RAC)模型,用于基于初始基于CNN的细胞核补丁检测进行后续细胞核分割,以及(3)用于重叠聚集细胞核区域解决方案的自适应椭圆拟合。在三个不同的乳腺组织学数据集上对CoNNACaeF模型的性能进行了评估,这些数据集总共包含257张苏木精-伊红染色图像。该模型在来自三个不同数据集的204张全切片图像的总共300万个细胞核上,显示出F值分别为80.18%、85.71%和80.36%的检测准确率提高,以及精确召回曲线下的平均面积(AveP)分别为77%、82%和74%。此外,对于两个不同的乳腺癌数据集,CoNNACaeF的F值分别为74.01%和85.36%。CoNNACaeF模型也优于其他三种先进的细胞核检测和分割方法,即蓝比率初始化局部区域主动轮廓、迭代径向投票初始化局部区域主动轮廓和最大稳定极值区域初始化局部区域主动轮廓模型。