Pritzker School of Medicine, University of Chicago, Chicago, IL.
Department of Medicine, Section of Hematology/Oncology, University of Chicago, Chicago, IL.
JCO Clin Cancer Inform. 2021 Dec;5:1208-1219. doi: 10.1200/CCI.21.00102.
There is a need for an improved understanding of clinical and biologic risk factors in pediatric cancer to improve patient outcomes. Machine learning (ML) represents the application of computational inference from advanced statistical methods that can be applied to increasing amount of data available for study in pediatric oncology. The goal of this systematic review was to systematically characterize the state of ML in pediatric oncology and highlight advances and opportunities in the field.
We conducted a systematic review of the Embase, Scopus, and MEDLINE databases for applications of ML in pediatric oncology. Query results from all three databases were aggregated and duplicate studies were removed.
A total of 42 unique articles that examined the applications of ML in pediatric oncology met inclusion criteria for review. We identified 20 studies of CNS tumors, 13 of solid tumors, and nine of leukemia. ML tasks included classification, prediction of treatment response, and dose optimization with a variety of methods being used including neural network, k-nearest neighbor, random forest, naive Bayes, and support vector machines. Strengths of the identified studies included matching or outperforming physician comparators via automated analysis and predicting therapeutic response. Common limitations included significant heterogeneity in reporting standards, clinical applicability, small sample sizes, and missing external validation cohorts.
We identified areas where ML can enhance clinical care in ways that may not otherwise be achievable. Although ML promises enormous potential in improving diagnostics, decision making, and monitoring for children with cancer, the field remains in early stages and future work will be aided by standards and guidelines to ensure rigorous methodologic design and maximizing clinical utility.
需要深入了解儿科癌症的临床和生物学风险因素,以改善患者的预后。机器学习 (ML) 代表了应用先进统计方法进行计算推理的技术,可应用于越来越多的儿科肿瘤学研究数据。本系统评价的目的是系统地描述 ML 在儿科肿瘤学中的现状,并强调该领域的进展和机遇。
我们对 Embase、Scopus 和 MEDLINE 数据库进行了系统检索,以查找 ML 在儿科肿瘤学中的应用。汇总了来自所有三个数据库的查询结果,并去除了重复的研究。
共有 42 篇独特的文章符合儿科肿瘤学中 ML 应用的纳入标准,进行了综述。我们确定了 20 项关于中枢神经系统肿瘤的研究、13 项关于实体瘤的研究和 9 项关于白血病的研究。ML 任务包括分类、治疗反应预测和剂量优化,使用了各种方法,包括神经网络、k-最近邻、随机森林、朴素贝叶斯和支持向量机。已确定研究的优势包括通过自动分析与医生进行匹配或超越,以及预测治疗反应。常见的局限性包括报告标准、临床适用性、样本量小和缺少外部验证队列方面存在显著的异质性。
我们确定了 ML 可以增强临床护理的领域,这些领域可能无法通过其他方式实现。尽管 ML 在提高儿童癌症的诊断、决策制定和监测方面具有巨大的潜力,但该领域仍处于早期阶段,未来的工作将受益于标准和指南,以确保严格的方法设计并最大限度地提高临床实用性。