Using machine learning to impact on long-term clinical care: principles, challenges, and practicalities
The rise of machine learning in healthcare has significant implications for paediatrics. Long-term conditions with significant disease heterogeneity comprise large portions of the routine work performed by paediatricians. Improving outcomes through discovery of disease and treatment prediction model...
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Veröffentlicht in: | Pediatric research 2023-01, Vol.93 (2), p.324-333 |
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Format: | Artikel |
Sprache: | eng |
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Zusammenfassung: | The rise of machine learning in healthcare has significant implications for paediatrics. Long-term conditions with significant disease heterogeneity comprise large portions of the routine work performed by paediatricians. Improving outcomes through discovery of disease and treatment prediction models, alongside novel subgroup clustering of patients, are some of the areas in which machine learning holds significant promise. While artificial intelligence has percolated into routine use in our day to day lives through advertising algorithms, song or movie selections and sifting of spam emails, the ability of machine learning to utilise highly complex and dimensional data has not yet reached its full potential in healthcare. In this review article, we discuss some of the foundations of machine learning, including some of the basic algorithms. We emphasise the importance of correct utilisation of machine learning, including adequate data preparation and external validation. Using nutrition in preterm infants and paediatric inflammatory bowel disease as examples, we discuss the evidence and potential utility of machine learning in paediatrics. Finally, we review some of the future applications, alongside challenges and ethical considerations related to application of artificial intelligence.
Impact
Machine learning is a widely used term; however, understanding of the process and application to healthcare is lacking.
This article uses clinical examples to explore complex machine learning terms and algorithms.
We discuss limitations and potential future applications within paediatrics and neonatal medicine. |
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ISSN: | 0031-3998 1530-0447 |
DOI: | 10.1038/s41390-022-02194-6 |