Strategies to Reduce the Expert Supervision Required for Deep Learning-Based Segmentation of Histopathological Images

被引:19
|
作者
Van Eycke, Yves-Remi [1 ,2 ]
Foucart, Adrien [2 ]
Decaestecker, Christine [1 ,2 ]
机构
[1] Univ Libre Bruxelles, Ctr Microscopy & Mol Imaging CMMI, Digital Image Anal Pathol DIAPath, Charleroi, Belgium
[2] Univ Libre Bruxelles, LISA, Ecole Polytech Bruxelles, Brussels, Belgium
关键词
histopathology; deep learning; image segmentation; image annotation; data augmentation; generative adversarial networks; transfer learning; weak supervision; CONVOLUTIONAL NEURAL-NETWORKS; CANCER; CLASSIFICATION; PATHOLOGY;
D O I
10.3389/fmed.2019.00222
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
The emergence of computational pathology comes with a demand to extract more and more information from each tissue sample. Such information extraction often requires the segmentation of numerous histological objects (e.g., cell nuclei, glands, etc.) in histological slide images, a task for which deep learning algorithms have demonstrated their effectiveness. However, these algorithms require many training examples to be efficient and robust. For this purpose, pathologists must manually segment hundreds or even thousands of objects in histological images, i.e., a long, tedious and potentially biased task. The present paper aims to review strategies that could help provide the very large number of annotated images needed to automate the segmentation of histological images using deep learning. This review identifies and describes four different approaches: the use of immunohistochemical markers as labels, realistic data augmentation, Generative Adversarial Networks (GAN), and transfer learning. In addition, we describe alternative learning strategies that can use imperfect annotations. Adding real data with high-quality annotations to the training set is a safe way to improve the performance of a well configured deep neural network. However, the present review provides new perspectives through the use of artificially generated data and/or imperfect annotations, in addition to transfer learning opportunities.
引用
收藏
页数:10
相关论文
共 50 条
  • [31] Resolving challenges in deep learning-based analyses of histopathological images using explanation methods
    Miriam Hägele
    Philipp Seegerer
    Sebastian Lapuschkin
    Michael Bockmayr
    Wojciech Samek
    Frederick Klauschen
    Klaus-Robert Müller
    Alexander Binder
    Scientific Reports, 10
  • [32] Deep Learning-Based Super-Resolution Reconstruction and Segmentation of Photoacoustic Images
    Jiang, Yufei
    He, Ruonan
    Chen, Yi
    Zhang, Jing
    Lei, Yuyang
    Yan, Shengxian
    Cao, Hui
    APPLIED SCIENCES-BASEL, 2024, 14 (12):
  • [33] Deep Learning-Based Real-Time Crack Segmentation for Pavement Images
    Wenjun Wang
    Chao Su
    KSCE Journal of Civil Engineering, 2021, 25 : 4495 - 4506
  • [34] Deep Learning-Based Corpus Callosum Segmentation from Brain Images: A Review
    Sarma, Padmanabha
    Saranya, G.
    WIRELESS PERSONAL COMMUNICATIONS, 2024, 138 (02) : 685 - 700
  • [35] Deep Learning-Based Real-Time Crack Segmentation for Pavement Images
    Wang, Wenjun
    Su, Chao
    KSCE JOURNAL OF CIVIL ENGINEERING, 2021, 25 (12) : 4495 - 4506
  • [36] Optimizing Glaucoma Diagnosis with Deep Learning-Based Segmentation and Classification of Retinal Images
    Alkhaldi, Nora A.
    Alabdulathim, Ruqayyah E.
    APPLIED SCIENCES-BASEL, 2024, 14 (17):
  • [37] Deep learning-based automatic segmentation of images in cardiac radiography: A promising challenge
    Song, Yucheng
    Ren, Shengbing
    Lu, Yu
    Fu, Xianghua
    Wong, Kelvin K. L.
    COMPUTER METHODS AND PROGRAMS IN BIOMEDICINE, 2022, 220
  • [38] Deep learning-based pelvic levator hiatus segmentation from ultrasound images
    Huang, Zeping
    Qu, Enze
    Meng, Yishuang
    Zhang, Man
    Wei, Qiuwen
    Bai, Xianghui
    Zhang, Xinling
    EUROPEAN JOURNAL OF RADIOLOGY OPEN, 2022, 9
  • [39] Deep learning-based fully automatic segmentation of wrist cartilage in MR images
    Brui, Ekaterina
    Efimtcev, Aleksandr Y.
    Fokin, Vladimir A.
    Fernandez, Remi
    Levchuk, Anatoliy G.
    Ogier, Augustin C.
    Samsonov, Alexey A.
    Mattei, Jean P.
    Melchakova, Irina V.
    Bendahan, David
    Andreychenko, Anna
    NMR IN BIOMEDICINE, 2020, 33 (08)
  • [40] Automatic deep learning-based pleural effusion segmentation in lung ultrasound images
    Damjan Vukovic
    Andrew Wang
    Maria Antico
    Marian Steffens
    Igor Ruvinov
    Ruud JG van Sloun
    David Canty
    Alistair Royse
    Colin Royse
    Kavi Haji
    Jason Dowling
    Girija Chetty
    Davide Fontanarosa
    BMC Medical Informatics and Decision Making, 23