Importance analysis of psychosociological variables in frailty syndrome in heart failure patients using machine learning approach

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作者
Aleksandra Helena Pasieczna
Remigiusz Szczepanowski
Janusz Sobecki
Radosław Katarzyniak
Izabella Uchmanowicz
Robbert J. J. Gobbens
Aleksander Kahsin
Anant Dixit
机构
[1] University of Lower Silesia DSW,Department of Computer Science and Systems Engineering, Faculty of Information and Communication Technology
[2] Wroclaw University of Science and Technology,Department of Nursing and Obstetrics, Faculty of Health Sciences
[3] Wroclaw Medical University,Faculty of Health, Sports and Social Work
[4] Inholland University of Applied Sciences,Department Family Medicine and Population Health, Faculty of Medicine and Health Sciences
[5] University of Antwerp,Tranzo, Tilburg School of Social and Behavioral Sciences
[6] Tilburg University,Faculty of Medicine
[7] Zonnehuisgroep Amstelland,undefined
[8] Medical University of Gdansk,undefined
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摘要
The prevention and diagnosis of frailty syndrome (FS) in cardiac patients requires innovative systems to support medical personnel, patient adherence, and self-care behavior. To do so, modern medicine uses a supervised machine learning approach (ML) to study the psychosocial domains of frailty in cardiac patients with heart failure (HF). This study aimed to determine the absolute and relative diagnostic importance of the individual components of the Tilburg Frailty Indicator (TFI) questionnaire in patients with HF. An exploratory analysis was performed using machine learning algorithms and the permutation method to determine the absolute importance of frailty components in HF. Based on the TFI data, which contain physical and psychosocial components, machine learning models were built based on three algorithms: a decision tree, a random decision forest, and the AdaBoost Models classifier. The absolute weights were used to make pairwise comparisons between the variables and obtain relative diagnostic importance. The analysis of HF patients’ responses showed that the psychological variable TFI20 diagnosing low mood was more diagnostically important than the variables from the physical domain: lack of strength in the hands and physical fatigue. The psychological variable TFI21 linked with agitation and irritability was diagnostically more important than all three physical variables considered: walking difficulties, lack of hand strength, and physical fatigue. In the case of the two remaining variables from the psychological domain (TFI19, TFI22), and for all variables from the social domain, the results do not allow for the rejection of the null hypothesis. From a long-term perspective, the ML based frailty approach can support healthcare professionals, including psychologists and social workers, in drawing their attention to the non-physical origins of HF.
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