Predicting Low Cognitive Ability at Age 5-Feature Selection Using Machine Learning Methods and Birth Cohort Data

被引:3
作者
Bowe, Andrea K. [1 ]
Lightbody, Gordon [1 ,2 ]
Staines, Anthony [3 ]
Kiely, Mairead E. [1 ,4 ]
McCarthy, Fergus P. [1 ,5 ]
Murray, Deirdre M. [1 ,6 ]
机构
[1] INFANT Res Ctr, Cork, Ireland
[2] Univ Coll Cork, Dept Elect & Elect Engn, Cork, Ireland
[3] Dublin City Univ, Sch Nursing Psychotherapy & Community Hlth, Dublin, Ireland
[4] Univ Coll Cork, Sch Food & Nutr Sci, Cork Ctr Vitamin D & Nutr Res, Cork, Ireland
[5] Cork Univ Matern Hosp, Dept Obstet & Gynaecol, Cork, Ireland
[6] Cork Univ Hosp, Dept Paediat, Cork, Ireland
基金
英国惠康基金;
关键词
machine learning; cognition; prediction model; birth cohort; random forest; MODELS; INTELLIGENCE; CHILDREN; IMPACT;
D O I
10.3389/ijph.2022.1605047
中图分类号
R1 [预防医学、卫生学];
学科分类号
1004 ; 120402 ;
摘要
Objectives: In this study, we applied the random forest (RF) algorithm to birth-cohort data to train a model to predict low cognitive ability at 5 years of age and to identify the important predictive features. Methods: Data was from 1,070 participants in the Irish population-based BASELINE cohort. A RF model was trained to predict an intelligence quotient (IQ) score <= 90 at age 5 years using maternal, infant, and sociodemographic features. Feature importance was examined and internal validation performed using 10-fold cross validation repeated 5 times. Results The five most important predictive features were the total years of maternal schooling, infant Apgar score at 1 min, socioeconomic index, maternal BMI, and alcohol consumption in the first trimester. On internal validation a parsimonious RF model based on 11 features showed excellent predictive ability, correctly classifying 95% of participants. This provides a foundation suitable for external validation in an unseen cohort. Conclusion: Machine learning approaches to large existing datasets can provide accurate feature selection to improve risk prediction. Further validation of this model is required in cohorts representative of the general population.
引用
收藏
页数:10
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