预测心脏病危险因素的统计机器学习算法

Chaithra N, Shalini H. Doreswamy, Pallavi N
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引用次数: 0

摘要

心脏病是世界上主要的非传染性疾病之一,也是导致死亡的主要原因。据世界卫生组织称,心脏病每年夺走近1790万人的生命。其死亡率预测显示,到2020年,全球年死亡人数将上升至2050万人,到2030年将高达2420万人。风险因素是心脏病最有力的预测因素之一。这项研究包括改变和不改变的致病风险因素,如年龄、性别、家族史、高血压、糖尿病、肥胖、血压、吸烟、饮酒、运动和心率。机器学习是最有用的技术之一,它可以帮助研究人员、企业家和个人从数据集中提取有价值的信息。本研究的目的是强调机器学习技术在心脏病预测方面的实用性和应用,以促进医疗保健领域的专家。在JSS医院共检查了336名患者,并收集了他们的个人和医疗资料。这项前瞻性研究包括55%没有心脏病的患者和45%患有心脏病的患者。从结果来看,男性比女性更容易患心脏病,而且在老年人中很常见。Naïve贝叶斯模型的准确率为94%,肥胖对心脏病的发病起着至关重要的作用,其次是高血压,饮酒、吸烟、运动和年龄对心脏病的发病影响更大。
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Statistical Machine Learning Algorithm for Predicting the Risk Factors in Heart Disease
Heart disease is one of the major non-communicable disease and leading cause of mortality in the world. According to WHO heart disease is taking about nearly 17.9 million lives of people each year. Its mortality forecasts indicate a rise in global annual deaths to 20.5 million in 2020 and as high as 24.2 million by 2030. Risk factors are one of the most powerful predictors of heart disease. The study includes modified and non- modified risk factors that contribute to the disease such as Age, Gender, Family history, Hypertension, Diabetics, Obesity, Blood Pressure, Smoking, Alcohol intake, Exercise and Heart rate. Machine learning is one of the most useful techniques that can help researchers, entrepreneurs, and individuals for extracting valuable information from sets of data. The objective of this study is to highlight the utility and application of machine learning techniques for the prediction of heart disease to facilitate experts in the healthcare domain. A total of 336 patients were examined and their personal and medical data were collected in JSS hospital. This prospective study was consisting of 55% patients are free from the heart disease and 45% have heart disease. From the result, it has been determined that males are more likely to develop the heart diseases than females and very common in elderly persons. The accuracy of the Naïve Bayes model is found to be 94%, Obesity plays a vital role in getting the disease followed by hypertension, alcohol intake, smoking, exercise and age has more impact on developing the heart disease.
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