Avoiding a replication crisis in deep-learning-based bioimage analysis

Deep learning algorithms are powerful tools for analyzing, restoring and transforming bioimaging data. One promise of deep learning is parameter-free one-click image analysis with expert-level performance in a fraction of the time previously required. However, as with most emerging technologies, the...

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Veröffentlicht in:Nature methods Jg. 18; H. 10; S. 1136 - 1144
Hauptverfasser: Laine, Romain F, Arganda-Carreras, Ignacio, Henriques, Ricardo, Jacquemet, Guillaume
Format: Journal Article
Sprache:Englisch
Veröffentlicht: United States Nature Publishing Group 01.10.2021
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ISSN:1548-7091, 1548-7105, 1548-7105
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Zusammenfassung:Deep learning algorithms are powerful tools for analyzing, restoring and transforming bioimaging data. One promise of deep learning is parameter-free one-click image analysis with expert-level performance in a fraction of the time previously required. However, as with most emerging technologies, the potential for inappropriate use is raising concerns among the research community. In this Comment, we discuss key concepts that we believe are important for researchers to consider when using deep learning for their microscopy studies. We describe how results obtained using deep learning can be validated and propose what should, in our view, be considered when choosing a suitable tool. We also suggest what aspects of a deep learning analysis should be reported in publications to ensure reproducibility. We hope this perspective will foster further discussion among developers, image analysis specialists, users and journal editors to define adequate guidelines and ensure the appropriate use of this transformative technology.
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ISSN:1548-7091
1548-7105
1548-7105
DOI:10.1038/s41592-021-01284-3