Machine Learning Solutions Integrated in an IoT Healthcare Platform for Heart Failure Risk Stratification
Aiman Faiz, Claudio Pascarelli, Gianvito Mitrano, Gianluca Fimiani, Marina Garofano, Mariangela Lazoi, Claudio Passino, Alessia Bramanti

TL;DR
This paper introduces an ensemble machine learning model integrated into an IoT healthcare platform to effectively identify heart failure risk, demonstrating high sensitivity and outperforming baseline models in patient stratification.
Contribution
The paper presents a novel ensemble stacking approach combining clinical and echocardiographic features for heart failure risk prediction, integrated into an IoT healthcare system.
Findings
High sensitivity (95%) in identifying high-risk patients
Achieved 84% overall accuracy in risk stratification
Outperformed baseline models considering features separately
Abstract
The management of chronic Heart Failure (HF) presents significant challenges in modern healthcare, requiring continuous monitoring, early detection of exacerbations, and personalized treatment strategies. In this paper, we present a predictive model founded on Machine Learning (ML) techniques to identify patients at HF risk. This model is an ensemble learning approach, a modified stacking technique, that uses two specialized models leveraging clinical and echocardiographic features and then a meta-model to combine the predictions of these two models. We initially assess the model on a real dataset and the obtained results suggest that it performs well in the stratification of patients at HR risk. Specifically, we obtained high sensitivity (95\%), ensuring that nearly all high-risk patients are identified. As for accuracy, we obtained 84\%, which can be considered moderate in some ML…
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