4.6 Article

A Comprehensive Machine Learning Framework for the Exact Prediction of the Age of Onset in Familial and Sporadic Alzheimer's Disease

期刊

DIAGNOSTICS
卷 11, 期 5, 页码 -

出版社

MDPI
DOI: 10.3390/diagnostics11050887

关键词

age of onset; machine learning; Alzheimer's disease; genetic isolates; PSEN1; predictive genomics; natural history

资金

  1. COLCIENCIAS
  2. Department of Atlantico, project Desarrollo, Implementacion y Comparacion de Modelos Genomicos de Prediccion para la Edad de Inicio de la Enfermedad de Alzheimer [809-2018]

向作者/读者索取更多资源

This study evaluated the performance of machine learning algorithms for predicting Alzheimer's disease age of onset (ADAOO) in two cohorts. Boosting-based ML algorithms showed the best performance for predicting ADAOO in familial AD, while regularization methods performed best for unseen data in sporadic AD. Machine learning algorithms offer a feasible alternative for accurately predicting ADAOO with little human intervention, and may also be useful for predicting the speed of cognitive decline in cohorts.
Machine learning (ML) algorithms are widely used to develop predictive frameworks. Accurate prediction of Alzheimer's disease (AD) age of onset (ADAOO) is crucial to investigate potential treatments, follow-up, and therapeutic interventions. Although genetic and non-genetic factors affecting ADAOO were elucidated by other research groups and ours, the comprehensive and sequential application of ML to provide an exact estimation of the actual ADAOO, instead of a high-confidence-interval ADAOO that may fall, remains to be explored. Here, we assessed the performance of ML algorithms for predicting ADAOO using two AD cohorts with early-onset familial AD and with late-onset sporadic AD, combining genetic and demographic variables. Performance of ML algorithms was assessed using the root mean squared error (RMSE), the R-squared (R-2), and the mean absolute error (MAE) with a 10-fold cross-validation procedure. For predicting ADAOO in familial AD, boosting-based ML algorithms performed the best. In the sporadic cohort, boosting-based ML algorithms performed best in the training data set, while regularization methods best performed for unseen data. ML algorithms represent a feasible alternative to accurately predict ADAOO with little human intervention. Future studies may include predicting the speed of cognitive decline in our cohorts using ML.

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