A Study on Coronary Disease Prediction Using Boosting-based Ensemble Machine Learning Approaches

Al-Zadid Sultan Bin Habib, Tanpia Tasnim, M. Billah
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引用次数: 8

Abstract

In today’s world, a gigantic measure of information is generated in the medicinal services industry. In most cases, this information is underutilized and is not constantly made use to the full degree. Utilizing this gigantic measure of information, certain types of disease can be identified, anticipated or even restored. These diseases e.g. cardiovascular disease, malignant growth of cancer cells, tumor or Alzheimer’s disease can cause an enormous risk to mankind. In this paper, we attempt to focus on coronary heart disease prediction. Utilizing the Machine Learning (ML) approaches, the coronary disease can be anticipated. The medicinal information, for example, Blood Pressure (BP), hypertension, diabetes, the number of cigarettes smoked every day, etc. can cause coronary disease and they are taken as input and afterward, these data are used to forecast the possibility of occurring this disease for oneself. This model would then be able to be utilized to foresee future therapeutic information. Several boosting algorithms of ensemble techniques like Adaptive Boosting (AdaBoost), Extreme Gradient Boosting (XGBoost), Gradient Boosting Machine (GBM), Light GBM (LGBM), and Category Boosting (CatBoost). The accuracy of the model utilizing every one of these algorithms is determined. Their performance is shown using several other parameters. At that point, the one with a decent exactness is taken as the model for foreseeing the coronary disease.
基于boosting的集成机器学习方法在冠心病预测中的应用研究
在当今世界,医疗服务行业产生了大量的信息。在大多数情况下,这些信息没有得到充分利用,也没有经常得到充分利用。利用这一庞大的信息量,某些类型的疾病可以被识别、预测甚至恢复。这些疾病,如心血管疾病、癌细胞恶性生长、肿瘤或阿尔茨海默病,会给人类带来巨大的风险。在本文中,我们试图集中在冠心病的预测。利用机器学习(ML)方法,可以预测冠状动脉疾病。医学信息,如血压(BP)、高血压、糖尿病、每天吸烟的数量等都可以导致冠心病,并将这些信息作为输入,然后使用这些数据来预测自己发生这种疾病的可能性。这个模型可以用来预测未来的治疗信息。几种集成技术的增强算法,如自适应增强(AdaBoost),极限梯度增强(XGBoost),梯度增强机(GBM),轻型GBM (LGBM)和类别增强(CatBoost)。利用每一种算法确定模型的精度。使用其他几个参数来显示它们的性能。在这一点上,有一个相当精确的是作为预测冠状动脉疾病的模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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