4.7 Article

DenseRes-Unet: Segmentation of overlapped/clustered nuclei from multi organ histopathology images

期刊

COMPUTERS IN BIOLOGY AND MEDICINE
卷 143, 期 -, 页码 -

出版社

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.compbiomed.2022.105267

关键词

Deep learning; Histopathology; Nuclei segmentation; Overlapped nuclei; Dense blocks; Residual connections

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Cancer is the second deadliest disease globally, and early detection is crucial. This study proposes a model for nuclei segmentation, combining U-Net and DenseRes-Unet to effectively extract features. The distance map and binary threshold techniques enhance the interior and contour information of nuclei in the images. Evaluation on publicly available datasets shows that the proposed model achieves high accuracy and performance.
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).

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