Department of Biostatistics and Bioinformatics, Duke University School of Medicine, Durham, North Carolina.
Department of Electrical and Computer Engineering, Duke University, Durham, North Carolina.
JAMA Netw Open. 2023 Feb 1;6(2):e2254303. doi: 10.1001/jamanetworkopen.2022.54303.
Autism detection early in childhood is critical to ensure that autistic children and their families have access to early behavioral support. Early correlates of autism documented in electronic health records (EHRs) during routine care could allow passive, predictive model-based monitoring to improve the accuracy of early detection.
To quantify the predictive value of early autism detection models based on EHR data collected before age 1 year.
DESIGN, SETTING, AND PARTICIPANTS: This retrospective diagnostic study used EHR data from children seen within the Duke University Health System before age 30 days between January 2006 and December 2020. These data were used to train and evaluate L2-regularized Cox proportional hazards models predicting later autism diagnosis based on data collected from birth up to the time of prediction (ages 30-360 days). Statistical analyses were performed between August 1, 2020, and April 1, 2022.
Prediction performance was quantified in terms of sensitivity, specificity, and positive predictive value (PPV) at clinically relevant model operating thresholds.
Data from 45 080 children, including 924 (1.5%) meeting autism criteria, were included in this study. Model-based autism detection at age 30 days achieved 45.5% sensitivity and 23.0% PPV at 90.0% specificity. Detection by age 360 days achieved 59.8% sensitivity and 17.6% PPV at 81.5% specificity and 38.8% sensitivity and 31.0% PPV at 94.3% specificity.
In this diagnostic study of an autism screening test, EHR-based autism detection achieved clinically meaningful accuracy by age 30 days, improving by age 1 year. This automated approach could be integrated with caregiver surveys to improve the accuracy of early autism screening.
在儿童早期发现自闭症对于确保自闭症儿童及其家庭能够获得早期行为支持至关重要。在常规护理中电子健康记录 (EHR) 中记录的自闭症早期相关因素,可以允许基于被动、预测模型的监测来提高早期检测的准确性。
量化基于 1 岁前收集的电子健康记录 (EHR) 数据的早期自闭症检测模型的预测价值。
设计、设置和参与者:这项回顾性诊断研究使用了 2006 年 1 月至 2020 年 12 月期间在杜克大学卫生系统就诊的年龄在 30 天以内的儿童的 EHR 数据。这些数据用于训练和评估 L2-正则化 Cox 比例风险模型,根据出生至预测时(30-360 天)收集的数据预测后来的自闭症诊断。统计分析于 2020 年 8 月 1 日至 2022 年 4 月 1 日进行。
以临床相关模型操作阈值的灵敏度、特异性和阳性预测值 (PPV) 来量化预测性能。
本研究共纳入 45080 名儿童的数据,其中 924 名(1.5%)符合自闭症标准。30 天龄时基于模型的自闭症检测达到 45.5%的灵敏度和 23.0%的 PPV,特异性为 90.0%。360 天龄时的检测达到 59.8%的灵敏度和 17.6%的 PPV,特异性为 81.5%,以及 38.8%的灵敏度和 31.0%的 PPV,特异性为 94.3%。
在这项自闭症筛查测试的诊断研究中,基于 EHR 的自闭症检测在 30 天龄时达到了有临床意义的准确性,到 1 岁时有所提高。这种自动化方法可以与照顾者调查相结合,以提高早期自闭症筛查的准确性。