Obtaining genetics insights from deep learning via explainable artificial intelligence

被引:0
|
作者
Gherman Novakovsky
Nick Dexter
Maxwell W. Libbrecht
Wyeth W. Wasserman
Sara Mostafavi
机构
[1] University of British Columbia,Centre for Molecular Medicine and Therapeutics, Department of Medical Genetics, BC Children’s Hospital Research Institute
[2] University of British Columbia,Bioinformatics Graduate Program
[3] Simon Fraser University,Department of Mathematics
[4] Simon Fraser University,School of Computing Science
[5] University of Washington,Paul G. Allen School of Computer Science and Engineering
[6] Canadian Institute for Advanced Research,undefined
来源
Nature Reviews Genetics | 2023年 / 24卷
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摘要
Artificial intelligence (AI) models based on deep learning now represent the state of the art for making functional predictions in genomics research. However, the underlying basis on which predictive models make such predictions is often unknown. For genomics researchers, this missing explanatory information would frequently be of greater value than the predictions themselves, as it can enable new insights into genetic processes. We review progress in the emerging area of explainable AI (xAI), a field with the potential to empower life science researchers to gain mechanistic insights into complex deep learning models. We discuss and categorize approaches for model interpretation, including an intuitive understanding of how each approach works and their underlying assumptions and limitations in the context of typical high-throughput biological datasets.
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页码:125 / 137
页数:12
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