Department of Pathology, St. Jude Children's Research Hospital, Memphis, TN, USA.
Department of Electrical and Computer Engineering, University of Dayton, Dayton, OH, USA.
Diagn Pathol. 2022 Apr 19;17(1):38. doi: 10.1186/s13000-022-01189-5.
Nuclei classification, segmentation, and detection from pathological images are challenging tasks due to cellular heterogeneity in the Whole Slide Images (WSI).
In this work, we propose advanced DCNN models for nuclei classification, segmentation, and detection tasks. The Densely Connected Neural Network (DCNN) and Densely Connected Recurrent Convolutional Network (DCRN) models are applied for the nuclei classification tasks. The Recurrent Residual U-Net (R2U-Net) and the R2UNet-based regression model named the University of Dayton Net (UD-Net) are applied for nuclei segmentation and detection tasks respectively. The experiments are conducted on publicly available datasets, including Routine Colon Cancer (RCC) classification and detection and the Nuclei Segmentation Challenge 2018 datasets for segmentation tasks. The experimental results were evaluated with a five-fold cross-validation method, and the average testing results are compared against the existing approaches in terms of precision, recall, Dice Coefficient (DC), Mean Squared Error (MSE), F1-score, and overall testing accuracy by calculating pixels and cell-level analysis.
The results demonstrate around 2.6% and 1.7% higher performance in terms of F1-score for nuclei classification and detection tasks when compared to the recently published DCNN based method. Also, for nuclei segmentation, the R2U-Net shows around 91.90% average testing accuracy in terms of DC, which is around 1.54% higher than the U-Net model.
The proposed methods demonstrate robustness with better quantitative and qualitative results in three different tasks for analyzing the WSI.
由于全切片图像(WSI)中细胞的异质性,对病理图像中的细胞核进行分类、分割和检测是具有挑战性的任务。
在这项工作中,我们提出了用于细胞核分类、分割和检测任务的先进 DCNN 模型。密集连接神经网络(DCNN)和密集连接递归卷积网络(DCRN)模型应用于细胞核分类任务。递归残差 U-Net(R2U-Net)和基于 R2U-Net 的名为代顿大学网络(UD-Net)的回归模型分别应用于细胞核分割和检测任务。实验在公开可用的数据集上进行,包括常规结肠癌(RCC)分类和检测以及细胞核分割挑战 2018 数据集的分割任务。使用五重交叉验证方法评估实验结果,并根据像素和细胞级分析,通过计算精度、召回率、Dice 系数(DC)、均方误差(MSE)、F1 分数和整体测试准确率,将平均测试结果与现有方法进行比较。
与最近发表的基于 DCNN 的方法相比,细胞核分类和检测任务的 F1 分数分别提高了约 2.6%和 1.7%。此外,对于细胞核分割,R2U-Net 的 DC 平均测试准确率约为 91.90%,比 U-Net 模型高约 1.54%。
所提出的方法在分析 WSI 的三个不同任务中表现出了更好的稳健性,具有更好的定量和定性结果。