利用机器学习进行心血管疾病风险评估

Nikkila Prakash, Mohitth Mahesh, P. Gouthaman
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摘要

心血管疾病(CVD)是世界上最高的死亡原因之一。早期发现心脏危险是正确诊断和治疗的关键因素。通过这种方式,有紧急需求的患者可以优先获得医生和医疗保健系统的服务。在本研究中,使用Logistic回归算法开发了一个心脏风险评估系统,这是一种精度高且易于解释的机器学习模型。本研究中使用的数据包括来自不同患者的信息。总共使用了13个特征来训练Logistic回归模型,包括年龄、性别、血压和胆固醇水平。结果表明Logistic回归算法在预测心血管疾病风险方面具有较高的准确性,准确率为86.89。当涉及到心血管疾病风险评估的主要挑战是算法的复杂性,这使得它难以为医疗从业者解释结果。有些系统要求人员通过额外的培训来使用风险评估系统,这可能会耗费时间。逻辑回归是直接和简单的。它很容易解释,使其适用于临床环境。它也有一个完善的框架,这使得它非常实用和可靠。这项研究展示了机器学习在医疗保健领域的重要性,并强调了逻辑回归算法在预测心脏风险方面的有效性。该模型的高准确性使心血管疾病风险的早期识别成为可能。这使其成为医疗保健行业和公共卫生倡议的有用工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cardiovascular Disease Risk Assessment using Machine Learning
Cardiovascular diseases (CVD) are one of the highest causes of death in the world. The early detection of cardiac risk is a critical factor in proper diagnosis and treatment. This way, patients with critical needs get priority access to doctors and healthcare systerns. In this study, a cardiac risk assessment system was developed using the Logistic Regression algorithm, a machine learning model that has a high accuracy and is easy to interpret. The datasetused in this study included information from various patients. A total of 13 features were used to train the Logistic Regression model, including age, gender, blood pressure, and cholesterol levels. The results demonstrated that the Logistic Regression algorithm achieved high accuracy in predicting CVD risk, with an accuracy of 86.89. The main challenge when it comes to CVD risk assessment is the complexity of algorithms which makes it difficult for healthcare practitioners to interpret the results. Some systems require the personnel to go through additional training to use the risk assessment system, which can be time consuming. Logistic Regression is straightforward and simple. It is easy to interpret, making it suitable for clinical settings. It also has a well-established framework, which makes it very practical and reliable. This study showcases the importance of machine learning in the field of healthcare and highlights the effectiveness of the Logistic Regression algorithm in predicting cardiac risk. The high accuracy achieved by the model enables the early identification of cardiovascular disease risk. This makes it a useful tool for the healthcare industry and public health initiatives.
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