CARDIO PREDICT: HARNESSING MACHINE LEARNING FOR ADVANCED HEART DISEASE RISK ASSESSMENT

Prof. M. S. Patil, Benkar Anuradha, Gaikwad Madhuri, Sawant Supriya
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Abstract

Heart disease prediction using machine learning algorithms has gained significant attention due to its potential to improve diagnosis and treatment. This study explores various machine learning techniques and an algorithm applied to heart disease prediction. We analyze the performance of popular algorithms such as logistic regression, decision trees, random forests, support vector machines, and artificial neural networks on heart disease datasets. Additionally, we investigate the impact of feature selection, data preprocessing techniques, and model evaluation metrics on the predictive performance. The results demonstrate the heart disease risk, providing valuable insights for medical practitioner and researchers in the field of Cardiovascular health. The datasets used comprises a collection of patient data, including age, gender, blood pressure, cholesterol levels, and other relevant medical indicators. Neural networks are trained and evaluated to assess their performance in predicting the presence investigates the impact feature selection hyper parameter tuning. The results obtained provide insights into the strengths and limitations of different machine learning approaches for heart disease prediction, offering valuable guidance for healthcare practitioners and researchers in the field. Heart disease is prevalent and life-threatening condition worldwide. We analyze the performance of these algorithms using relevant metrics such as accuracy, precision, recall, and Fr-score. Additionally, we investigate feature importance to understand the factors contributing most to heart disease prediction. Our findings demonstrate the potential of machine learning in assisting healthcare professionals in early detection and prevention of heart disease, ultimately improving penitent outcomes and quality of life.
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心脏病预测:利用机器学习进行高级心脏病风险评估
使用机器学习算法预测心脏病因其改善诊断和治疗的潜力而备受关注。本研究探讨了各种机器学习技术和一种应用于心脏病预测的算法。我们分析了逻辑回归、决策树、随机森林、支持向量机和人工神经网络等流行算法在心脏病数据集上的表现。此外,我们还研究了特征选择、数据预处理技术和模型评估指标对预测性能的影响。结果显示了心脏病风险,为心血管健康领域的医疗从业者和研究人员提供了有价值的见解。使用的数据集包括一系列患者数据,包括年龄、性别、血压、胆固醇水平和其他相关医疗指标。对神经网络进行了训练和评估,以评估其预测存在的性能,研究特征选择超参数调整的影响。研究结果深入揭示了不同机器学习方法在心脏病预测方面的优势和局限性,为该领域的医疗从业人员和研究人员提供了宝贵的指导。心脏病是全球普遍存在的威胁生命的疾病。我们使用准确率、精确度、召回率和 Fr-score 等相关指标分析了这些算法的性能。此外,我们还调查了特征的重要性,以了解对心脏病预测贡献最大的因素。我们的研究结果证明了机器学习在协助医疗保健专业人员早期检测和预防心脏病方面的潜力,并最终改善了患者的治疗效果和生活质量。
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