Literature DB >> 33647783

Multi-scale fully convolutional neural networks for histopathology image segmentation: From nuclear aberrations to the global tissue architecture.

Rüdiger Schmitz1, Frederic Madesta2, Maximilian Nielsen2, Jenny Krause3, Stefan Steurer4, René Werner2, Thomas Rösch5.   

Abstract

Histopathologic diagnosis relies on simultaneous integration of information from a broad range of scales, ranging from nuclear aberrations (≈O(0.1μm)) through cellular structures (≈O(10μm)) to the global tissue architecture (⪆O(1mm)). To explicitly mimic how human pathologists combine multi-scale information, we introduce a family of multi-encoder fully-convolutional neural networks with deep fusion. We present a simple block for merging model paths with differing spatial scales in a spatial relationship-preserving fashion, which can readily be included in standard encoder-decoder networks. Additionally, a context classification gate block is proposed as an alternative for the incorporation of global context. Our experiments were performed on three publicly available whole-slide images of recent challenges (PAIP 2019: hepatocellular carcinoma segmentation; BACH 2020: breast cancer segmentation; CAMELYON 2016: metastasis detection in lymph nodes). The multi-scale architectures consistently outperformed the baseline single-scale U-Nets by a large margin. They benefit from local as well as global context and particularly a combination of both. If feature maps from different scales are fused, doing so in a manner preserving spatial relationships was found to be beneficial. Deep guidance by a context classification loss appeared to improve model training at low computational costs. All multi-scale models had a reduced GPU memory footprint compared to ensembles of individual U-Nets trained on different image scales. Additional path fusions were shown to be possible at low computational cost, opening up possibilities for further, systematic and task-specific architecture optimisation. The findings demonstrate the potential of the presented family of human-inspired, end-to-end trainable, multi-scale multi-encoder fully-convolutional neural networks to improve deep histopathologic diagnosis by extensive integration of largely different spatial scales.
Copyright © 2021. Published by Elsevier B.V.

Entities:  

Keywords:  Computational pathology; FCN; Fully-convolutional neural nets; Histopathology; Human-inspired computer vision; Multi-scale

Year:  2021        PMID: 33647783     DOI: 10.1016/j.media.2021.101996

Source DB:  PubMed          Journal:  Med Image Anal        ISSN: 1361-8415            Impact factor:   8.545


  7 in total

Review 1.  Recent Advances of Deep Learning for Computational Histopathology: Principles and Applications.

Authors:  Yawen Wu; Michael Cheng; Shuo Huang; Zongxiang Pei; Yingli Zuo; Jianxin Liu; Kai Yang; Qi Zhu; Jie Zhang; Honghai Hong; Daoqiang Zhang; Kun Huang; Liang Cheng; Wei Shao
Journal:  Cancers (Basel)       Date:  2022-02-25       Impact factor: 6.639

2.  A Comparison Between Single- and Multi-Scale Approaches for Classification of Histopathology Images.

Authors:  Marina D'Amato; Przemysław Szostak; Benjamin Torben-Nielsen
Journal:  Front Public Health       Date:  2022-07-04

3.  Development and operation of a digital platform for sharing pathology image data.

Authors:  Yunsook Kang; Yoo Jung Kim; Seongkeun Park; Gun Ro; Choyeon Hong; Hyungjoon Jang; Sungduk Cho; Won Jae Hong; Dong Un Kang; Jonghoon Chun; Kyoungbun Lee; Gyeong Hoon Kang; Kyoung Chul Moon; Gheeyoung Choe; Kyu Sang Lee; Jeong Hwan Park; Won-Ki Jeong; Se Young Chun; Peom Park; Jinwook Choi
Journal:  BMC Med Inform Decis Mak       Date:  2021-04-03       Impact factor: 2.796

4.  Deep Learning-Based Universal Expert-Level Recognizing Pathological Images of Hepatocellular Carcinoma and Beyond.

Authors:  Wei-Ming Chen; Min Fu; Cheng-Ju Zhang; Qing-Qing Xing; Fei Zhou; Meng-Jie Lin; Xuan Dong; Jiaofeng Huang; Su Lin; Mei-Zhu Hong; Qi-Zhong Zheng; Jin-Shui Pan
Journal:  Front Med (Lausanne)       Date:  2022-04-22

5.  Construction of Home Product Design System Based on Self-Encoder Depth Neural Network.

Authors:  Guangpu Lu
Journal:  Comput Intell Neurosci       Date:  2022-04-21

6.  H2G-Net: A multi-resolution refinement approach for segmentation of breast cancer region in gigapixel histopathological images.

Authors:  André Pedersen; Erik Smistad; Tor V Rise; Vibeke G Dale; Henrik S Pettersen; Tor-Arne S Nordmo; David Bouget; Ingerid Reinertsen; Marit Valla
Journal:  Front Med (Lausanne)       Date:  2022-09-14

7.  Deep Learning Assisted Diagnosis of Onychomycosis on Whole-Slide Images.

Authors:  Philipp Jansen; Adelaida Creosteanu; Viktor Matyas; Amrei Dilling; Ana Pina; Andrea Saggini; Tobias Schimming; Jennifer Landsberg; Birte Burgdorf; Sylvia Giaquinta; Hansgeorg Müller; Michael Emberger; Christian Rose; Lutz Schmitz; Cyrill Geraud; Dirk Schadendorf; Jörg Schaller; Maximilian Alber; Frederick Klauschen; Klaus G Griewank
Journal:  J Fungi (Basel)       Date:  2022-08-28
  7 in total

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