Yang S Liu, Fernanda Talarico, Dan Metes, Yipeng Song, Mengzhe Wang, Lawrence Kiyang, Dori Wearmouth, Shelly Vik, Yifeng Wei, Yanbo Zhang, Jake Hayward, Ghalib Ahmed, Ashley Gaskin, Russell Greiner, Andrew Greenshaw, Alex Alexander, Magdalena Janus, Bo Cao
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引用次数: 0
摘要
注意力缺陷/多动障碍(ADHD)的体征和症状在学龄前就已出现,但往往无法识别,无法进行早期干预。我们的目标是利用人口一级的行政健康数据和儿童发育脆弱性监测工具,使用机器学习来早期检测幼儿园学龄儿童的多动症:早期发展工具(EDI)。研究队列由 23,494 名出生于加拿大艾伯塔省的儿童组成,这些儿童于 2016 年进入幼儿园,但未被诊断出患有多动症。在为期四年的随访中,有 1680 名儿童后来通过病例定义被确定患有多动症。我们对机器学习模型进行了训练和测试,以便对多动症进行前瞻性预测。使用管理数据和 EDI 数据的最佳模型可以可靠地预测多动症,在交叉验证中的曲线下面积 (AUC) 达到了 0.811。主要预测因素包括 EDI 子域得分、性别和社会经济地位。我们的研究结果表明,使用人群监测数据的机器学习算法可以成为早期识别多动症的重要工具。
Early identification of children with Attention-Deficit/Hyperactivity Disorder (ADHD).
Signs and symptoms of Attention-Deficit/Hyperactivity Disorder (ADHD) are present at preschool ages and often not identified for early intervention. We aimed to use machine learning to detect ADHD early among kindergarten-aged children using population-level administrative health data and a childhood developmental vulnerability surveillance tool: Early Development Instrument (EDI). The study cohort consists of 23,494 children born in Alberta, Canada, who attended kindergarten in 2016 without a diagnosis of ADHD. In a four-year follow-up period, 1,680 children were later identified with ADHD using case definition. We trained and tested machine learning models to predict ADHD prospectively. The best-performing model using administrative and EDI data could reliably predict ADHD and achieved an Area Under the Curve (AUC) of 0.811 during cross-validation. Key predictive factors included EDI subdomain scores, sex, and socioeconomic status. Our findings suggest that machine learning algorithms that use population-level surveillance data could be a valuable tool for early identification of ADHD.