Longitudinal machine learning model for predicting systolic blood pressure in patients with heart failure

ObjectiveSystolic blood pressure (SBP) strongly indicates the prognosis of heart failure (HF) patients, as it is closely linked to the risk of death and readmission. Hence, maintaining control over blood pressure is a vital factor in the management of these patients. In order to determine significan...

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Veröffentlicht in:Journal of preventive medicine and hygiene 2023-06, Vol.64 (2), p.E226-E231
Hauptverfasser: Najafi-Vosough, Roya, Faradmal, Javad, Hosseini, Seyed Kianoosh, Moghimbeigi, Abbas, Mahjub, Hossein
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Sprache:eng
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Zusammenfassung:ObjectiveSystolic blood pressure (SBP) strongly indicates the prognosis of heart failure (HF) patients, as it is closely linked to the risk of death and readmission. Hence, maintaining control over blood pressure is a vital factor in the management of these patients. In order to determine significant variables associated with changes in SBP over time and assess the effectiveness of classical and machine learning models in predicting SBP, this study aimed to conduct a comparative analysis between the two. MethodsThis retrospective cohort study involved the analysis of data from 483 patients with HF who were admitted to Farshchian Heart Center located in Hamadan in the west of Iran, and hospitalized at least two times between October 2015 and July 2019. To predict SBP, we utilized a linear mixed-effects model (LMM) and mixed-effects least-square support vector regression (MLS-SVR). The effectiveness of both models was evaluated based on the mean absolute error and root mean squared error. ResultsThe LMM analysis revealed that changes in SBP over time were significantly associated with sex, body mass index (BMI), sodium, time, and history of hypertension (P-value < 0.05). Furthermore, according to the MLS-SVR analysis, the four most important variables in predicting SBP were identified as history of hypertension, sodium, BMI, and triglyceride. In both the training and testing datasets, MLS-SVR outperformed LMM in terms of performance. ConclusionsBased on our results, it appears that MLS-SVR has the potential to serve as a viable alternative to classical longitudinal models for predicting SBP in patients with HF.
ISSN:1121-2233
2421-4248
DOI:10.15167/2421-4248/jpmh2023.64.2.2887