机器学习算法对人类心脏动脉硬化预测精度的评价

Kiran Ingale, Neel Madane, Pradyna Patil
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引用次数: 0

摘要

机器学习的出现和统计学的发展使得从调查中获得的大量数据中获得至关重要的见解成为可能。它使解释巨大的数字变得容易,并使在无数领域做出极其准确的预测成为可能。医疗保健就是这样一个领域,该技术可以广泛应用于根据患者的医疗信息对疾病进行早期和精确的预测。人类心脏动脉硬化是全世界关注的主要问题,因为它是造成大多数死亡的原因。根据患者的健康和生活方式参数预测人类心脏动脉硬化的早期迹象可以证明是挽救生命的。这项研究旨在创建和训练一个机器学习模型,该模型可以预测个人是否面临动脉硬化的风险。logistic回归预测准确率最高,为86.8293%。
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An Evaluation of Prediction Accuracy of Machine Learning Algorithms for Arteriosclerosis of the Human Heart
The advent of Machine Learning and development in statistics has made it possible to gain crucial insights from immense data obtained from surveys. It has made it easy to interpret huge numbers and made it possible to make predictions with extreme accuracy in a myriad of fields. Healthcare is one such field in which this technology can be extensively applied to make early and precise predictions of diseases based on the medical information of the patient. Arteriosclerosis of the human heart is a major concern worldwide as it is responsible for the majority of deaths. Early signs of arteriosclerosis of human heart prediction based on the health and lifestyle parameters of a patient can prove lifesaving. This research aims to create and train a machine learning model which can predict whether an individual faces a risk of arteriosclerosis. The highest prediction accuracy obtained was 86.8293% by logistic regression.
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