Literature DB >> 33190012

NucleiSegNet: Robust deep learning architecture for the nuclei segmentation of liver cancer histopathology images.

Shyam Lal1, Devikalyan Das2, Kumar Alabhya2, Anirudh Kanfade2, Aman Kumar2, Jyoti Kini3.   

Abstract

The nuclei segmentation of hematoxylin and eosin (H&E) stained histopathology images is an important prerequisite in designing a computer-aided diagnostics (CAD) system for cancer diagnosis and prognosis. Automated nuclei segmentation methods enable the qualitative and quantitative analysis of tens of thousands of nuclei within H&E stained histopathology images. However, a major challenge during nuclei segmentation is the segmentation of variable sized, touching nuclei. To address this challenge, we present NucleiSegNet - a robust deep learning network architecture for the nuclei segmentation of H&E stained liver cancer histopathology images. Our proposed architecture includes three blocks: a robust residual block, a bottleneck block, and an attention decoder block. The robust residual block is a newly proposed block for the efficient extraction of high-level semantic maps. The attention decoder block uses a new attention mechanism for efficient object localization, and it improves the proposed architecture's performance by reducing false positives. When applied to nuclei segmentation tasks, the proposed deep-learning architecture yielded superior results compared to state-of-the-art nuclei segmentation methods. We applied our proposed deep learning architecture for nuclei segmentation to a set of H&E stained histopathology images from two datasets, and our comprehensive results show that our proposed architecture outperforms state-of-the-art methods. As part of this work, we also introduced a new liver dataset (KMC liver dataset) of H&E stained liver cancer histopathology image tiles, containing 80 images with annotated nuclei procured from Kasturba Medical College (KMC), Mangalore, Manipal Academy of Higher Education (MAHE), Manipal, Karnataka, India. The proposed model's source code is available at https://github.com/shyamfec/NucleiSegNet.
Copyright © 2020 Elsevier Ltd. All rights reserved.

Entities:  

Keywords:  Deep neural network; Histopathology image; Nuclei detection; Nuclei segmentation

Year:  2020        PMID: 33190012     DOI: 10.1016/j.compbiomed.2020.104075

Source DB:  PubMed          Journal:  Comput Biol Med        ISSN: 0010-4825            Impact factor:   4.589


  7 in total

1.  Semantic segmentation in medical images through transfused convolution and transformer networks.

Authors:  Tashvik Dhamija; Anunay Gupta; Shreyansh Gupta; Rahul Katarya; Ghanshyam Singh
Journal:  Appl Intell (Dordr)       Date:  2022-04-25       Impact factor: 5.019

Review 2.  Artificial intelligence in liver diseases: Improving diagnostics, prognostics and response prediction.

Authors:  David Nam; Julius Chapiro; Valerie Paradis; Tobias Paul Seraphin; Jakob Nikolas Kather
Journal:  JHEP Rep       Date:  2022-02-02

3.  Deep structured residual encoder-decoder network with a novel loss function for nuclei segmentation of kidney and breast histopathology images.

Authors:  Amit Kumar Chanchal; Shyam Lal; Jyoti Kini
Journal:  Multimed Tools Appl       Date:  2022-02-02       Impact factor: 2.577

Review 4.  Artificial Intelligence in Cervical Cancer Screening and Diagnosis.

Authors:  Xin Hou; Guangyang Shen; Liqiang Zhou; Yinuo Li; Tian Wang; Xiangyi Ma
Journal:  Front Oncol       Date:  2022-03-11       Impact factor: 6.244

5.  MSAL-Net: improve accurate segmentation of nuclei in histopathology images by multiscale attention learning network.

Authors:  Haider Ali; Imran Ul Haq; Lei Cui; Jun Feng
Journal:  BMC Med Inform Decis Mak       Date:  2022-04-04       Impact factor: 2.796

6.  Clinical Efficacy of Interventional Chemotherapy Embolization Combined with Monopolar Radiofrequency Ablation on Patients with Liver Cancer.

Authors:  Zhenhua Tian; Wei Zhang
Journal:  J Oncol       Date:  2022-04-29       Impact factor: 4.375

7.  GCLDNet: Gastric cancer lesion detection network combining level feature aggregation and attention feature fusion.

Authors:  Xu Shi; Long Wang; Yu Li; Jian Wu; Hong Huang
Journal:  Front Oncol       Date:  2022-08-29       Impact factor: 5.738

  7 in total

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