Abstract

Personalised training of motor and cognitive abilities is fundamental to help older people maintain a good quality of life, especially in case of frailty conditions. However, the training activity can increase the stress level, especially in persons affected by a chronic stress condition. Wearable technologies and m-health solutions can support the person, the medical specialist, and long-term care facilities to efficiently implement personalised therapy solutions by monitoring the stress level of each subject during the motor and cognitive training. In this paper we present a comprehensive work on this topic, starting from a pilot study involving a group of frail older adults suffering from Mild Cognitive Impairment (MCI) who actively participated in cognitive and motor rehabilitation sessions equipped with wearable physiological sensors and a mobile application for physiological monitoring. We analyse the collected data to investigate the stress response of frail older subjects during the therapy, and how the cognitive training is positively affected by physical exercise. Then, we evaluated a stress detection system based on several machine learning algorithms in order to highlight their performances on the real dataset we collected. However, stress detection algorithms generally provide only the identification of a stressful/non stressful event, which is not sufficient to personalise the therapy. Therefore, we propose a mobile system architecture for online stress monitoring able to infer the stress level during a session. The obtained result is then used as input for a Decision Support System (DSS) in order to support the medical user in the definition of a personalised therapy for frail older adults.

Highlights

  • Today, ageing represents an increasing phenomenon, involving even more complex health conditions due to the coexistence of multiple chronic diseases

  • 1) COGNITIVE TESTS COMPARISON In order to highlight the effect of the physical activity on the cognitive performances of Mild Cognitive Impairment (MCI) frail older adults, and on their physiological stress response, we investigate the significant differences among the analysed cognitive outcomes and the physiological features obtained in both Rest and Exercise sessions, separately

  • Performances on the balanced dataset are in line with those obtained on the original dataset, with Random Forests (RFs) and AB algorithms outperforming the other classifiers (Figure 4d)

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Summary

Introduction

Today, ageing represents an increasing phenomenon, involving even more complex health conditions due to the coexistence of multiple chronic diseases. This generates a decreasing trend in the quality of life of both older people and their caregivers, often flowing in frailty condition. Common signs and symptoms of frailty are weight loss, fatigue, muscle weakness and reduced physical and mental performances [2]. This condition, in addition to a possible social isolation, can contribute to increase the psycho-physical stress, which can negatively affect sleep quality, mood, and cognitive performances [3]. MCI is frequently associated with physiological ageing, but it can often represent

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