Abstract

BackgroundMachine learning techniques, specifically classification algorithms, may be effective to help understand key health, nutritional, and environmental factors associated with cognitive function in aging populations.ObjectiveThis study aims to use classification techniques to identify the key patient predictors that are considered most important in the classification of poorer cognitive performance, which is an early risk factor for dementia.MethodsData were used from the Trinity-Ulster and Department of Agriculture study, which included detailed information on sociodemographic, clinical, biochemical, nutritional, and lifestyle factors in 5186 older adults recruited from the Republic of Ireland and Northern Ireland, a proportion of whom (987/5186, 19.03%) were followed up 5-7 years later for reassessment. Cognitive function at both time points was assessed using a battery of tests, including the Repeatable Battery for the Assessment of Neuropsychological Status (RBANS), with a score <70 classed as poorer cognitive performance. This study trained 3 classifiers—decision trees, Naïve Bayes, and random forests—to classify the RBANS score and to identify key health, nutritional, and environmental predictors of cognitive performance and cognitive decline over the follow-up period. It assessed their performance, taking note of the variables that were deemed important for the optimized classifiers for their computational diagnostics.ResultsIn the classification of a low RBANS score (<70), our models performed well (F1 score range 0.73-0.93), all highlighting the individual’s score from the Timed Up and Go (TUG) test, the age at which the participant stopped education, and whether or not the participant’s family reported memory concerns to be of key importance. The classification models performed well in classifying a greater rate of decline in the RBANS score (F1 score range 0.66-0.85), also indicating the TUG score to be of key importance, followed by blood indicators: plasma homocysteine, vitamin B6 biomarker (plasma pyridoxal-5-phosphate), and glycated hemoglobin.ConclusionsThe results suggest that it may be possible for a health care professional to make an initial evaluation, with a high level of confidence, of the potential for cognitive dysfunction using only a few short, noninvasive questions, thus providing a quick, efficient, and noninvasive way to help them decide whether or not a patient requires a full cognitive evaluation. This approach has the potential benefits of making time and cost savings for health service providers and avoiding stress created through unnecessary cognitive assessments in low-risk patients.

Highlights

  • The results suggest that it may be possible for a health care professional to make an initial evaluation, with a high level of confidence, of the potential for cognitive dysfunction using only a few short, noninvasive questions, providing a http://medinform.jmir.org/2020/9/e20995/

  • Initial investigation into cognitive function with the Trinity-Ulster and Department of Agriculture (TUDA) data set, as measured using the RBANS score, highlights that as expected RBANS decreases with age (Figure 5)

  • This paper focuses on key health, nutritional, and environmental predictors of cognitive dysfunction and rate of change of cognitive function using machine learning techniques, as part of the project, the research team sought input from personal and public involvement (PPI): patients, carers, and clinicians

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Summary

Introduction

By 2050, it is estimated that more than 2 billion people will be aged over 60 years [1]. Cognitive function generally declines with age and ranges in severity from mild cognitive impairment (MCI) to dementia. MCI can be defined as cognitive decline greater than that expected for an individual’s age and education level, but it does not interfere with activities of daily living, whereas dementia profoundly impacts normal functioning [2,3]. Dementia currently affects 50 million people worldwide, and it is estimated that this will increase to 152 million by 2050. Classification algorithms, may be effective to help understand key health, nutritional, and environmental factors associated with cognitive function in aging populations

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