Abstract
Mild cognitive impairment (MCI) is an indicative precursor of Alzheimer’s disease and its early detection is critical to restrain further cognitive deterioration through preventive measures. In this context, the capacity of serious games combined with machine learning for MCI detection is examined. In particular, a custom methodology is proposed, which consists of a series of steps to train and evaluate classification models that could discriminate healthy from cognitive impaired individuals on the basis of game performance and other subjective data. Such data were collected during a pilot evaluation study of a gaming platform, called COGNIPLAT, with 10 seniors. An exploratory analysis of the data is performed to assess feature selection, model overfitting, optimization techniques and classification performance using several machine learning algorithms and standard evaluation metrics. A production level model is also trained to deal with the issue of data leakage while delivering a high detection performance (92.14% accuracy, 93.4% sensitivity and 90% specificity) based on the Gaussian Naive Bayes classifier. This preliminary study provides initial evidence that serious games combined with machine learning methods could potentially serve as a complementary or an alternative tool to the traditional cognitive screening processes.
Highlights
Studies have shown that the cognitive functions of the elderly are negatively affected by a number of factors, such as heredity, lifestyle, and agerelated pathological conditions [1]
The current approach of Mild cognitive impairment (MCI) diagnosis is through a clinical check-up, performed by a specialist, that includes an interview with the subject, the collection of the subject’s medical history, a series of neurological examinations to test the mobility, the balance, the functionality of the nervous system and a cognitive assessment, such as the Mini
This work demonstrates that models trained on data gathered from serious games can distinguish, with sufficient accuracy, whether an individual belongs in the healthy or the MCI state in terms of cognitive competency
Summary
Studies have shown that the cognitive functions of the elderly are negatively affected by a number of factors, such as heredity, lifestyle (e.g., diet, smoking, alcohol), and agerelated pathological conditions [1]. Mental State Examination (MMSE) [5] or the Montreal Cognitive Assessment (MoCA) [6] This approach provides the specialist with a wealth of information, beyond an assessment score, which is assistive in drawing safe conclusions about the cognitive level of the subject, it presents some disadvantages. Given that the assessment is part of a clinical check-up, the potential anxiety of the subject along with other convoluted factors might result in a decreased performance. This situation combined with the low repeatability of the clinical check-ups may lead to distorted assessments [7]
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