A Machine Learning Model for the Prediction of Heart Attack Risk in High-Risk Patients Utilizing Real-World Data

Ridwan B. Marqas, Abdulazeez Mousa, Fatih Özyurt, Rojhat Salih
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Abstract

Heart disease is a significant global public health concern that impacts a vast number of individuals worldwide. The early identification of patients at risk of heart attack can significantly reduce mortality rates. In this research study, we employed machine learning methods to develop a model that predicts the likelihood of a heart attack. To create the model, we collected a real-world dataset of patient features, including demographic information, medical history, and lifestyle factors. We pre-processed the data to eliminate any missing values and standardized the features to ensure uniformity across the dataset. Additionally, we utilized feature engineering techniques to identify the most significant factors that contribute to the development of heart attacks. We evaluated several machine learning algorithms such as logistic regression, decision trees, and random forest to identify the most effective ones based on traditional metrics including accuracy, precision, recall, F1-score, Mathew correlation, ROC, and AUC. Our algorithm produced highly accurate predictions for heart attack risk. Our results demonstrate that machine learning algorithms can effectively predict heart attacks and identify high-risk patients. The model can be integrated into electronic health records to facilitate prompt identification and intervention by healthcare providers. However, our study has limitations that need to be addressed, including the requirement for validation on a larger and more diverse dataset as well as the challenge of interpreting the model. Future research may incorporate additional data sources, advanced machine-learning techniques, and improved model interpretability. Our heart attack prediction model holds significant potential as a valuable tool for healthcare practitioners to identify high-risk patients and decrease heart attack rates.
利用真实世界数据预测高危患者心脏病发作风险的机器学习模型
心脏病是一个重大的全球公共卫生问题,影响着全世界大量的人。早期发现有心脏病发作危险的病人可以显著降低死亡率。在这项研究中,我们采用机器学习方法开发了一个预测心脏病发作可能性的模型。为了创建模型,我们收集了一个真实世界的患者特征数据集,包括人口统计信息、病史和生活方式因素。我们对数据进行预处理以消除任何缺失值,并对特征进行标准化以确保数据集的一致性。此外,我们利用特征工程技术来确定导致心脏病发作的最重要因素。我们评估了几种机器学习算法,如逻辑回归、决策树和随机森林,以确定基于传统指标(包括准确性、精密度、召回率、f1分数、马修相关、ROC和AUC)的最有效算法。我们的算法对心脏病发作风险做出了高度准确的预测。我们的研究结果表明,机器学习算法可以有效地预测心脏病发作并识别高危患者。该模型可集成到电子健康记录中,方便医疗保健提供者及时识别和干预。然而,我们的研究有一些需要解决的局限性,包括需要在更大、更多样化的数据集上进行验证,以及解释模型的挑战。未来的研究可能会纳入额外的数据源、先进的机器学习技术和改进的模型可解释性。我们的心脏病发作预测模型具有重要的潜力,作为医疗从业者识别高危患者和降低心脏病发作率的有价值的工具。
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