Abstract
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.
| Original language | English |
|---|---|
| Article number | 1605047 |
| Journal | International Journal of Public Health |
| Volume | 67 |
| DOIs | |
| Publication status | Published - 10 Nov 2022 |
Keywords
- birth cohort
- cognition
- machine learning
- prediction model
- random forest
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New Machine Learning Research from INFANT Research Centre Outlined (Predicting Low Cognitive Ability at Age 5-Feature Selection Using Machine Learning Methods and Birth Cohort Data)
Mccarthy, F., Lightbody, G., Murray, D. & Kiely, M.
29/11/22
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