Shifting machine learning for healthcare from development to deployment and from models to data

In the past decade, the application of machine learning (ML) to healthcare has helped drive the automation of physician tasks as well as enhancements in clinical capabilities and access to care. This progress has emphasized that, from model development to model deployment, data play central roles. I...

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Bibliographic Details
Published inNature biomedical engineering Vol. 6; no. 12; pp. 1330 - 1345
Main Authors Zhang, Angela, Xing, Lei, Zou, James, Wu, Joseph C
Format Journal Article
LanguageEnglish
Published England Nature Publishing Group 01.12.2022
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Summary:In the past decade, the application of machine learning (ML) to healthcare has helped drive the automation of physician tasks as well as enhancements in clinical capabilities and access to care. This progress has emphasized that, from model development to model deployment, data play central roles. In this Review, we provide a data-centric view of the innovations and challenges that are defining ML for healthcare. We discuss deep generative models and federated learning as strategies to augment datasets for improved model performance, as well as the use of the more recent transformer models for handling larger datasets and enhancing the modelling of clinical text. We also discuss data-focused problems in the deployment of ML, emphasizing the need to efficiently deliver data to ML models for timely clinical predictions and to account for natural data shifts that can deteriorate model performance.
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ISSN:2157-846X
2157-846X
DOI:10.1038/s41551-022-00898-y