Toward characterizing cardiovascular fitness using machine learning based on unobtrusive data

Resumo

Cardiopulmonary exercise testing (CPET) is a non-invasive approach to measure the maximum oxygen uptake (VO2 max), which is an index to assess cardiovascular fitness (CF). However, CPET is not available to all populations and cannot be obtained continuously. Thus, wearable sensors are associated with machine learning (ML) algorithms to investigate CF. Therefore, this study aimed to predict CF by using ML algorithms using data obtained by wearable technologies. For this purpose, 43 volunteers with different levels of aerobic power, who wore a wearable device to collect unobtrusive data for 7 days, were evaluated by CPET. Eleven inputs (sex, age, weight, height, and body mass index, breathing rate, minute ventilation, total hip acceleration, walking cadence, heart rate, and tidal volume) were used to predict the VO2 max by support vector regression (SVR). Afterward, the SHapley Additive exPlanations (SHAP) method was used to explain their results. SVR was able to predict the CF, and the SHAP method showed that the inputs related to hemodynamic and anthropometric domains were the most important ones to predict the CF. Therefore, we conclude that the cardiovascular fitness can be predicted by wearable technologies associated with machine learning during unsupervised activities of daily living.

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Citação

FRADE, Maria Cecília Moraes; BELTRAME, Thomas; GOIS, Mariana de Oliveira; PINTO, Allan; TONELLO, Silvia Cristina Garcia de Moura; TORRES, Ricardo da Silva; CATAI, Aparecida Maria. Toward characterizing cardiovascular fitness using machine learning based on unobtrusive data. PLoS One, v. 18, n. 3, p. 1-18, 2023. Disponível em: https://repositorio.ufscar.br/handle/20.500.14289/20902.

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