Test-time augmentation for deep learning-based cell segmentation on microscopy images

被引:0
|
作者
Nikita Moshkov
Botond Mathe
Attila Kertesz-Farkas
Reka Hollandi
Peter Horvath
机构
[1] Biological Research Centre,Institute for Molecular Medicine Finland
[2] University of Szeged,undefined
[3] National Research University,undefined
[4] Higher School of Economics,undefined
[5] University of Helsinki,undefined
来源
关键词
D O I
暂无
中图分类号
学科分类号
摘要
Recent advancements in deep learning have revolutionized the way microscopy images of cells are processed. Deep learning network architectures have a large number of parameters, thus, in order to reach high accuracy, they require a massive amount of annotated data. A common way of improving accuracy builds on the artificial increase of the training set by using different augmentation techniques. A less common way relies on test-time augmentation (TTA) which yields transformed versions of the image for prediction and the results are merged. In this paper we describe how we have incorporated the test-time argumentation prediction method into two major segmentation approaches utilized in the single-cell analysis of microscopy images. These approaches are semantic segmentation based on the U-Net, and instance segmentation based on the Mask R-CNN models. Our findings show that even if only simple test-time augmentations (such as rotation or flipping and proper merging methods) are applied, TTA can significantly improve prediction accuracy. We have utilized images of tissue and cell cultures from the Data Science Bowl (DSB) 2018 nuclei segmentation competition and other sources. Additionally, boosting the highest-scoring method of the DSB with TTA, we could further improve prediction accuracy, and our method has reached an ever-best score at the DSB.
引用
收藏
相关论文
共 50 条
  • [1] Test-time augmentation for deep learning-based cell segmentation on microscopy images
    Moshkov, Nikita
    Mathe, Botond
    Kertesz-Farkas, Attila
    Hollandi, Reka
    Horvath, Peter
    SCIENTIFIC REPORTS, 2020, 10 (01)
  • [2] Author Correction: Test-time augmentation for deep learning-based cell segmentation on microscopy images
    Nikita Moshkov
    Botond Mathe
    Attila Kertesz-Farkas
    Reka Hollandi
    Peter Horvath
    Scientific Reports, 11
  • [3] Test-time augmentation for deep learning-based cell segmentation on microscopy images (vol 10, 5068, 2020)
    Moshkov, Nikita
    Mathe, Botond
    Kertesz-Farkas, Attila
    Hollandi, Reka
    Horvath, Peter
    SCIENTIFIC REPORTS, 2021, 11 (01)
  • [4] A deep learning-based algorithm for 2-D cell segmentation in microscopy images
    Al-Kofahi, Yousef
    Zaltsman, Alla
    Graves, Robert
    Marshall, Will
    Rusu, Mirabela
    BMC BIOINFORMATICS, 2018, 19
  • [5] A deep learning-based algorithm for 2-D cell segmentation in microscopy images
    Yousef Al-Kofahi
    Alla Zaltsman
    Robert Graves
    Will Marshall
    Mirabela Rusu
    BMC Bioinformatics, 19
  • [6] TAAL: Test-Time Augmentation for Active Learning in Medical Image Segmentation
    Gaillochet, Melanie
    Desrosiers, Christian
    Lombaert, Herve
    DATA AUGMENTATION, LABELLING, AND IMPERFECTIONS (DALI 2022), 2022, 13567 : 43 - 53
  • [7] Learning Loss for Test-Time Augmentation
    Kim, Ildoo
    Kim, Younghoon
    ADVANCES IN NEURAL INFORMATION PROCESSING SYSTEMS 33, NEURIPS 2020, 2020, 33
  • [8] Deep Learning-Based Instance Segmentation of Neural Progenitor Cell Nuclei in Fluorescence Microscopy Images
    Perez, Gabriel
    Cecilia Russo, Claudia
    Laura Palumbo, Maria
    David Moroni, Alejandro
    CLOUD COMPUTING, BIG DATA AND EMERGING TOPICS, JCC-BD&ET 2024, 2025, 2189 : 17 - 29
  • [9] Ensemble learning and test-time augmentation for the segmentation of mineralized cartilage versus bone in high-resolution microCT images
    Leger, Jean
    Leyssens, Lisa
    Kerckhofs, Greet
    De Vleeschouwer, Christophe
    COMPUTERS IN BIOLOGY AND MEDICINE, 2022, 148
  • [10] Target-oriented deep learning-based image registration with individualized test-time adaptation
    Sang, Yudi
    McNitt-Gray, Michael
    Yang, Yingli
    Cao, Minsong
    Low, Daniel
    Ruan, Dan
    MEDICAL PHYSICS, 2023, 50 (11) : 7016 - 7026