Self-supervised learning in medicine and healthcare.
Rayan KrishnanPranav RajpurkarEric J TopolPublished in: Nature biomedical engineering (2022)
The development of medical applications of machine learning has required manual annotation of data, often by medical experts. Yet, the availability of large-scale unannotated data provides opportunities for the development of better machine-learning models. In this Review, we highlight self-supervised methods and models for use in medicine and healthcare, and discuss the advantages and limitations of their application to tasks involving electronic health records and datasets of medical images, bioelectrical signals, and sequences and structures of genes and proteins. We also discuss promising applications of self-supervised learning for the development of models leveraging multimodal datasets, and the challenges in collecting unbiased data for their training. Self-supervised learning may accelerate the development of medical artificial intelligence.
Keyphrases
- machine learning
- healthcare
- artificial intelligence
- electronic health record
- big data
- deep learning
- body composition
- clinical decision support
- magnetic resonance imaging
- genome wide
- computed tomography
- rna seq
- optical coherence tomography
- convolutional neural network
- single cell
- dna methylation
- health insurance
- affordable care act