Abstract:
Heart failure is a critical health condition that poses significant challenges to the medical community due to its high mortality rate and substantial healthcare costs. Early predictionofheart failure can greatly improve patient outcomes by enabling timely interventions andpersonalized treatment plans. This study focuses on leveraging machine learning algorithmsto predict heart failure at an early stage, utilizing a comprehensive set of clinical dataandpatient metrics. In this research, I employ various machine learning algorithms, with a particular emphasisonthe Random Forest algorithm, renowned for its robustness and accuracy in classificationtasks. Our model is trained and validated using multiple datasets, including those sourcedfromestablished medical repositories, to ensure its reliability and applicability across different patient populations. Key performance metrics such as accuracy, precision, recall, andF-measure are utilized to evaluate the model's effectiveness. The findings of our study indicate that the Random Forest algorithmexcels in predictingheart failure, delivering significant improvements in prediction accuracy and reliability. Themodel not only identifies high-risk patients but also provides actionable insights forhealthcare professionals to implement preventative measures and optimize treatment strategies early in the care continuum. The proposed machine learning-based approach to heart failure prediction offers a powerful tool for enhancing clinical decision-making processes. By integrating this predictive model into healthcare systems, medical practitioners can reduce hospital readmission, lowerhealthcare costs, and improve overall patient care quality