使用机器学习算法检测早期心血管疾病患者

Khairul Eahsun Fahim, Hayati Yassin, Md Hasnatul Amin, Priyanka Das Dewan, Aminul Islam
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摘要

根据世界卫生组织(WHO)的数据,在全球主要死亡原因中,心血管疾病(CVD)占孟加拉国等低收入和中等收入国家死亡人数的80%。在孟加拉国,艾滋病毒/艾滋病的流行率和与之相关的死亡率在过去几十年里大幅攀升。孟加拉国心血管疾病发病率的上升需要全面了解人口中心血管疾病风险的流行病学。对于处理心血管疾病的人来说,临床数据分析是一个重要的问题。当涉及到从医疗保健行业生成的大量数据中生成决策和预测时,机器学习(ML)将非常有用。本研究提出应用监督机器学习算法来早期检测个体的心血管疾病(CVD),使他们能够关注自己的医疗状况并避免重大疾病。在检测疾病时,使用了四种不同的机器学习方法。使用患者数据集,并使用各种机器学习方法,包括k近邻,随机森林,决策树和XGBoost,进行预测。作为测试的结果,XGBoost方法优于其他三种策略(73.72%)。此外,对于吸烟、饮酒和身体活动为正的修改数据集,该百分比为81.14%,表明吸烟和饮酒对身体活动的人心血管疾病的影响。此外,还对这些策略检测早期心血管疾病住院患者的能力进行了评估。本文检查了Kaggle数据集,以观察从孟加拉国患者收集的原始数据实施该系统的特征和适用性。
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Detection of Cardiovascular Disease of Patients at an Early Stage Using Machine Learning Algorithms
Among the significant causes of death worldwide, cardiovascular diseases (CVD) account for 80 percent of deaths in low- and middle-income countries such as Bangladesh, according to the World Health Organization (WHO). In Bangladesh, the prevalence of HIV/AIDS and the mortality linked with it have climbed considerably over the past few decades. The rising incidence of cardiovascular disease in Bangladesh needs a complete understanding of the epidemiology of CVD risk among the population. Clinical data analysis is a significant concern for someone dealing with cardiovascular illness. When it comes to generating decisions and making predictions from the vast volumes of data generated by the healthcare industry, machine learning (ML) is to be extremely useful. It is proposed in this research to apply a supervised machine learning algorithm to detect cardiovascular disease (CVD) in individuals early on, allowing them to become concerned about their medical status and avert significant illnesses. When it comes to detecting the disease, four different machine learning methods have been used. The dataset of patients was used, and various machine learning methods, including K-nearest neighbors, Random Forest, Decision trees, and XGBoost, were used to make predictions. As a consequence of the tests, the XGBoost method is superior to the other three tactics (73.72 percent). Moreover, for the modified dataset where smoking, alcohol intake, and physical activity are positive, the percentage is 81.14% to show the effect of smoking and alcohol consumption in a physically active person in terms of cardiovascular disease. Furthermore, these strategies have been evaluated regarding their ability to detect early-stage CVD inpatients. This paper examined the Kaggle dataset to observe the trait and suitability to implement the system for primary data collected from Bangladeshi patients.
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