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Predicting Cardiovascular Risk in Athletes: Resampling Improves Classification Performance (CROSBI ID 285124)

Prilog u časopisu | ostalo | međunarodna recenzija

Barbieri, Davide ; Chawla, Nitesh ; Zaccagni, Luciana ; Grgurinović, Tonći ; Šarac, Jelena ; Čoklo, Miran ; Missoni, Saša Predicting Cardiovascular Risk in Athletes: Resampling Improves Classification Performance // International journal of environmental research and public health, 17 (2020), 21; 7923, 9. doi: doi.org/10.3390/ijerph17217923

Podaci o odgovornosti

Barbieri, Davide ; Chawla, Nitesh ; Zaccagni, Luciana ; Grgurinović, Tonći ; Šarac, Jelena ; Čoklo, Miran ; Missoni, Saša

engleski

Predicting Cardiovascular Risk in Athletes: Resampling Improves Classification Performance

Cardiovascular diseases are the main cause of death worldwide. The aim of the present study is to verify the performances of a data mining methodology in the evaluation of cardiovascular risk in athletes, and whether the results may be used to support clinical decision making. Anthropometric (height and weight), demographic (age and sex) and biomedical (blood pressure and pulse rate) data of 26, 002 athletes were collected in 2012 during routine sport medical examinations, which included electrocardiography at rest. Subjects were involved in competitive sport practice, for which medical clearance was needed. Outcomes were negative for the largest majority, as expected in an active population. Resampling was applied to balance positive/negative class ratio. A decision tree and logistic regression were used to classify individuals as either at risk or not. The receiver operating characteristic curve was used to assess classification performances. Data mining and resampling improved cardiovascular risk assessment in terms of increased area under the curve. The proposed methodology can be effectively applied to biomedical data in order to optimize clinical decision making, and—at the same time—minimize the amount of unnecessary examinations.

medical diagnostic ; decision tree ; logistic regression ; machine learning

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Podaci o izdanju

17 (21)

2020.

7923

9

objavljeno

1660-4601

doi.org/10.3390/ijerph17217923

Povezanost rada

Interdisciplinarne prirodne znanosti, Javno zdravstvo i zdravstvena zaštita, Temeljne medicinske znanosti

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