Computer Science Department, The Graduate Center of the City University of NY, New York, NY, USA.
Department of Infant Development, NYS Institute for Basic Research in Developmental Disabilities, Staten Island, NY, USA.
Pediatr Res. 2024 Feb;95(3):668-678. doi: 10.1038/s41390-023-02713-z. Epub 2023 Jul 27.
Very preterm infants are at elevated risk for neurodevelopmental delays. Earlier prediction of delays allows timelier intervention and improved outcomes. Machine learning (ML) was used to predict mental and psychomotor delay at 25 months.
We applied RandomForest classifier to data from 1109 very preterm infants recruited over 20 years. ML selected key predictors from 52 perinatal and 16 longitudinal variables (1-22 mo assessments). SHapley Additive exPlanations provided model interpretability.
Balanced accuracy with perinatal variables was 62%/61% (mental/psychomotor). Top predictors of mental and psychomotor delay overlapped and included: birth year, days in hospital, antenatal MgSO days intubated, birth weight, abnormal cranial ultrasound, gestational age, mom's age and education, and intrauterine growth restriction. Highest balanced accuracy was achieved with 19-month follow-up scores and perinatal variables (72%/73%).
Combining perinatal and longitudinal data, ML modeling predicted 24 month mental/psychomotor delay in very preterm infants ½ year early, allowing intervention to start that much sooner. Modeling using only perinatal features fell short of clinical application. Birth year's importance reflected a linear decline in predicting delay as birth year became more recent.
Combining perinatal and longitudinal data, ML modeling was able to predict 24 month mental/psychomotor delay in very preterm infants ½ year early (25% of their lives) potentially advancing implementation of intervention services. Although cognitive/verbal and fine/gross motor delays require separate interventions, in very preterm infants there is substantial overlap in the risk factors that can be used to predict these delays. Birth year has an important effect on ML prediction of delay in very preterm infants, with those born more recently (1989-2009) being increasing less likely to be delayed, perhaps reflecting advances in medical practice.
极早产儿神经发育迟缓的风险较高。尽早预测发育迟缓可使干预措施更加及时,从而改善预后。本研究应用机器学习(ML)预测 25 月龄时的精神运动发育迟缓。
我们应用随机森林分类器分析了 20 余年来纳入的 1109 例极早产儿的数据。ML 从 52 项围产期和 16 项纵向变量(1-22 月龄评估)中选择关键预测指标。Shapley 加性解释提供了模型的可解释性。
基于围产期变量的平衡准确率为 62%/61%(精神运动/精神)。精神运动发育迟缓的主要预测因素重叠,包括:出生年份、住院天数、产前硫酸镁天数、气管插管天数、出生体重、异常头颅超声、胎龄、母亲年龄和受教育程度、宫内生长受限。采用 19 个月随访评分和围产期变量的准确率最高(72%/73%)。
结合围产期和纵向数据,ML 模型可提前半年预测极早产儿 24 月龄的精神运动发育迟缓,从而更早开始干预。仅使用围产期特征建模无法满足临床应用需求。出生年份的重要性反映了随着出生年份的临近,预测延迟的线性下降。
通过结合围产期和纵向数据,ML 模型能够提前半年(即 25%的生命期)预测极早产儿 24 月龄的精神运动发育迟缓,这可能会提前实施干预服务。尽管认知/语言和精细/粗大运动发育迟缓需要单独干预,但在极早产儿中,有许多共同的风险因素可用于预测这些发育迟缓。出生年份对 ML 预测极早产儿延迟的影响较大,出生年份较近(1989-2009 年)的婴儿发生延迟的可能性越来越小,这可能反映了医疗实践的进步。