Department of Paediatric Gastroenterology, Southampton Children's Hospital, Southampton, UK.
Human Genetics and Genomic Medicine, University of Southampton, Southampton, UK.
Pediatr Res. 2023 Jan;93(2):324-333. doi: 10.1038/s41390-022-02194-6. Epub 2022 Jul 29.
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.
机器学习在医疗保健领域的兴起对儿科具有重大意义。具有显著疾病异质性的长期疾病构成了儿科医生日常工作的很大一部分。通过发现疾病和治疗预测模型以及对患者进行新的亚组聚类来改善预后,是机器学习具有巨大潜力的一些领域。虽然人工智能已经通过广告算法、歌曲或电影选择以及垃圾邮件筛选渗透到我们的日常生活中,但机器学习利用高度复杂和多维数据的能力尚未在医疗保健领域充分发挥出来。在这篇综述文章中,我们讨论了机器学习的一些基础,包括一些基本算法。我们强调了正确利用机器学习的重要性,包括充分的数据准备和外部验证。我们以早产儿营养和儿童炎症性肠病为例,讨论了机器学习在儿科中的证据和潜在应用。最后,我们回顾了一些未来的应用,以及与人工智能应用相关的挑战和伦理考虑。影响:机器学习是一个广泛使用的术语;然而,人们对该过程及其在医疗保健中的应用了解甚少。本文使用临床示例来探索复杂的机器学习术语和算法。我们讨论了儿科和新生儿医学领域的局限性和潜在的未来应用。