Medication Usage Record-Based Predictive Modeling of Neurodevelopmental Abnormality in Infants under One Year: A Prospective Birth Cohort Study

Author:

Zhou Tianyi12,Shen Yaojia12,Lyu Jinlang12ORCID,Yang Li3,Wang Hai-Jun12ORCID,Hong Shenda4,Ji Yuelong12ORCID

Affiliation:

1. Department of Maternal and Child Health, School of Public Health, Peking University, Beijing 100191, China

2. Peking University Health Science Center-Weifang Joint Research Center for Maternal and Child Health, Beijing 100191, China

3. Tongzhou Maternal and Child Health Care Hospital of Beijing, Beijing 101101, China

4. National Institute of Health Data Science, Peking University, Beijing 100191, China

Abstract

Early identification of children with neurodevelopmental abnormality is a major challenge, which is crucial for improving symptoms and preventing further decline in children with neurodevelopmental abnormality. This study focuses on developing a predictive model with maternal sociodemographic, behavioral, and medication-usage information during pregnancy to identify infants with abnormal neurodevelopment before the age of one. In addition, an interpretable machine-learning approach was utilized to assess the importance of the variables in the model. In this study, artificial neural network models were developed for the neurodevelopment of five areas of infants during the first year of life and achieved good predictive efficacy in the areas of fine motor and problem solving, with median AUC = 0.670 (IQR: 0.594, 0.764) and median AUC = 0.643 (IQR: 0.550, 0.731), respectively. The final model for neurodevelopmental abnormalities in any energy region of one-year-old children also achieved good prediction performance. The sensitivity is 0.700 (IQR: 0.597, 0.797), the AUC is 0.821 (IQR: 0.716, 0.833), the accuracy is 0.721 (IQR: 0.696, 0.739), and the specificity is 0.742 (IQR: 0.680, 0.748). In addition, interpretable machine-learning methods suggest that maternal exposure to drugs such as acetaminophen, ferrous succinate, and midazolam during pregnancy affects the development of specific areas of the offspring during the first year of life. This study established predictive models of neurodevelopmental abnormality in infants under one year and underscored the prediction value of medication exposure during pregnancy for the neurodevelopmental outcomes of the offspring.

Funder

National Natural Science Foundation of China

Peking University Health Science Center-Weifang Joint Research Center for Maternal and Child Health

Publisher

MDPI AG

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