Kiran Iqra, Raza Basit, Ijaz Areesha, Khan Muazzam A
Department of Computer Science, COMSATS University Islamabad (CUI), Islamabad, Pakistan.
Department of Computer Science, Quaid-i-Azam University, Islamabad, Pakistan.
Comput Biol Med. 2022 Apr;143:105267. doi: 10.1016/j.compbiomed.2022.105267. Epub 2022 Jan 25.
Cancer is the second deadliest disease globally that can affect any human body organ. Early detection of cancer can increase the chances of survival in humans. Morphometric appearances of histopathology images make it difficult to segment nuclei effectively. We proposed a model to segment overlapped nuclei from H&E stained images. U-Net model achieved state-of-the-art performance in many medical image segmentation tasks; however, we modified the U-Net to learn a distinct set of consistent features. In this paper, we proposed the DenseRes-Unet model by integrating dense blocks in the last layers of the encoder block of U-Net, focused on relevant features from previous layers of the model. Moreover, we take advantage of residual connections with Atrous blocks instead of conventional skip connections, which helps to reduce the semantic gap between encoder and decoder paths. The distance map and binary threshold techniques intensify the nuclei interior and contour information in the images, respectively. The distance map is used to detect the center point of nuclei; moreover, it differentiates among nuclei interior boundary and core area. The distance map lacks a contour problem, which is resolved by using a binary threshold. Binary threshold helps to enhance the pixels around nuclei. Afterward, we fed images into the proposed DenseRes-Unet model, a deep, fully convolutional network to segment nuclei in the images. We have evaluated our model on four publicly available datasets for Nuclei segmentation to validate the model's performance. Our proposed model achieves 89.77% accuracy 90.36% F1-score, and 78.61% Aggregated Jaccard Index (AJI) on Multi organ Nucleus Segmentation (MoNuSeg).
癌症是全球第二大致命疾病,可影响人体的任何器官。癌症的早期检测可以增加人类的生存几率。组织病理学图像的形态计量外观使得有效分割细胞核变得困难。我们提出了一种从苏木精-伊红(H&E)染色图像中分割重叠细胞核的模型。U-Net模型在许多医学图像分割任务中取得了领先的性能;然而,我们对U-Net进行了修改,以学习一组独特的一致特征。在本文中,我们通过在U-Net编码器块的最后几层中集成密集块,提出了DenseRes-Unet模型,专注于模型前几层的相关特征。此外,我们利用带有空洞块的残差连接代替传统的跳跃连接,这有助于减少编码器和解码器路径之间的语义差距。距离图和二值阈值技术分别增强了图像中细胞核的内部和轮廓信息。距离图用于检测细胞核的中心点;此外,它还区分细胞核的内部边界和核心区域。距离图存在轮廓问题,通过使用二值阈值来解决。二值阈值有助于增强细胞核周围的像素。之后,我们将图像输入到提出的DenseRes-Unet模型中,这是一个深度全卷积网络,用于分割图像中的细胞核。我们在四个公开可用的细胞核分割数据集上评估了我们的模型,以验证模型的性能。我们提出的模型在多器官细胞核分割(MoNuSeg)上达到了89.77%的准确率、90.36%的F1分数和78.61%的聚合杰卡德指数(AJI)。