Inicio  /  Informatics  /  Vol: 10 Par: 3 (2023)  /  Artículo
ARTÍCULO
TITULO

A Machine-Learning-Based Motor and Cognitive Assessment Tool Using In-Game Data from the GAME2AWE Platform

Michail Danousis and Christos Goumopoulos    

Resumen

With age, a decline in motor and cognitive functionality is inevitable, and it greatly affects the quality of life of the elderly and their ability to live independently. Early detection of these types of decline can enable timely interventions and support for maintaining functional independence and improving overall well-being. This paper explores the potential of the GAME2AWE platform in assessing the motor and cognitive condition of seniors based on their in-game performance data. The proposed methodology involves developing machine learning models to explore the predictive power of features that are derived from the data collected during gameplay on the GAME2AWE platform. Through a study involving fifteen elderly participants, we demonstrate that utilizing in-game data can achieve a high classification performance when predicting the motor and cognitive states. Various machine learning techniques were used but Random Forest outperformed the other models, achieving a classification accuracy ranging from 93.6% for cognitive screening to 95.6% for motor assessment. These results highlight the potential of using exergames within a technology-rich environment as an effective means of capturing the health status of seniors. This approach opens up new possibilities for objective and non-invasive health assessment, facilitating early detections and interventions to improve the well-being of seniors.

 Artículos similares

       
 
Wenwen Shi, Sharifah Salwa Syed Mahdzar and Weicong Li    
This study aims to optimize the evaluation system of inclusive design in urban parks, emphasizing the systemic nature of sensory, cognitive, and motor capacity support and exploring its role in park design practice. Based on the capability demand model, ... ver más
Revista: Applied Sciences

 
Letizia Castelli, Chiara Iacovelli, Siria Ciccone, Valerio Geracitano, Claudia Loreti, Augusto Fusco, Lorenzo Biscotti, Luca Padua and Silvia Giovannini    
Osteoarthritis is a common chronic condition in the elderly population and, with falls, represents a major public health problem. Patients with hip or knee osteoarthritis often have poor balance, which is considered an important risk factor for falls. In... ver más
Revista: Applied Sciences

 
Martha Spanou, Vasiliki Kaioglou, Caterina Pesce, Myrto F. Mavilidi and Fotini Venetsanou    
The inconsistent conclusions regarding the effects of physical activity (PA) on children?s executive functions (EFs) call for an investigation of the mediators that may explain this relationship during development. This study attempted to examine the pot... ver más
Revista: Applied Sciences

 
Doinita Oprea, Madalina Gabriela Iliescu, Elena Valentina Ionescu, Liliana Elena Stanciu, Lucian Petcu, Sorin Chiriac, Andra Maria Stefan, Diana Victoria Gidu, Antoanela Oltean, Viorela Mihaela Ciortea and Carmen Oprea    
The rehabilitation tools that are designed to improve the function of patients with spinal cord injury (SCI) have various effects. The goals of rehabilitation are to prevent secondary complications, maximize physical functioning, and integrate them into ... ver más
Revista: Applied Sciences

 
Kihyo Jung, Byung Hwa Lee, Sang Won Seo, Doo Sang Yoon, Baekhee Lee, Duk L. Na and Heecheon You    
Early detection of motor intentional disorders associated with dysfunction in the action?intention system of the brain is clinically important to provide timely intervention. This study developed a force tracking system that can record forces exerted by ... ver más
Revista: Applied Sciences