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A Deep Learning Pipeline for Nucleus Segmentation

  1. Author:
    Zaki,George
    Gudla, Prabhakar R
    Lee, Kyunghun
    Kim, Justin
    Ozbun, Laurent
    Shachar, Sigal
    Gadkari, Manasi
    Sun, Jing
    Fraser, Iain D C
    Franco, Luis M
    Misteli, Tom
    Pegoraro, Gianluca [ORCID]
  2. Author Address

    Biomedical Informatics and Data Science Directorate, Frederick National Laboratory for Cancer Research (FNLCR), Frederick, MD, 21702., High-Throughput Imaging Facility (HiTIF), Center for Cancer Research (CCR), NCI/NIH, Bethesda, MD, 20892., Cell Biology of Genomes (CBGE), Center for Cancer Research (CCR), NCI/NIH, Bethesda, MD, 20892., Systemic Autoimmunity Branch, NIAMS/NIH, Bethesda, MD, 20892., Laboratory of Immune System Biology, NIAID/NIH, Bethesda, MD, 20892.,
    1. Year: 2020
    2. Date: NOV 19
    3. Epub Date: 2020 11 03
  1. Journal: CYTOMETRY PART A
  2. Type of Article: Article
  3. ISSN: 1552-4922
  1. Abstract:

    Deep learning is rapidly becoming the technique of choice for automated segmentation of nuclei in biological image analysis workflows. In order to evaluate the feasibility of training nuclear segmentation models on small, custom annotated image datasets that have been augmented, we have designed a computational pipeline to systematically compare different nuclear segmentation model architectures and model training strategies. Using this approach, we demonstrate that transfer learning and tuning of training parameters, such as the composition, size and pre-processing of the training image dataset, can lead to robust nuclear segmentation models, which match, and often exceed, the performance of existing, off-the-shelf deep learning models pre-trained on large image datasets. We envision a practical scenario where deep learning nuclear segmentation models trained in this way can be shared across a laboratory, facility, or institution, and continuously improved by training them on progressively larger and varied image datasets. Our work provides computational tools and a practical framework for deep learning-based biological image segmentation using small annotated image datasets. This article is protected by copyright. All rights reserved. This article is protected by copyright. All rights reserved.

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External Sources

  1. DOI: 10.1002/cyto.a.24257
  2. PMID: 33141508
  3. WOS: 000590359200001

Library Notes

  1. Fiscal Year: FY2020-2021
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