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机器学习方法在高胆固醇血症长期风险预测中的应用。

Machine Learning Methods for Hypercholesterolemia Long-Term Risk Prediction.

机构信息

Department of Computer Engineering and Informatics, University of Patras, 26504 Patras, Greece.

出版信息

Sensors (Basel). 2022 Jul 18;22(14):5365. doi: 10.3390/s22145365.

Abstract

Cholesterol is a waxy substance found in blood lipids. Its role in the human body is helpful in the process of producing new cells as long as it is at a healthy level. When cholesterol exceeds the permissible limits, it works the opposite, causing serious heart health problems. When a person has high cholesterol (hypercholesterolemia), the blood vessels are blocked by fats, and thus, circulation through the arteries becomes difficult. The heart does not receive the oxygen it needs, and the risk of heart attack increases. Nowadays, machine learning (ML) has gained special interest from physicians, medical centers and healthcare providers due to its key capabilities in health-related issues, such as risk prediction, prognosis, treatment and management of various conditions. In this article, a supervised ML methodology is outlined whose main objective is to create risk prediction tools with high efficiency for hypercholesterolemia occurrence. Specifically, a data understanding analysis is conducted to explore the features association and importance to hypercholesterolemia. These factors are utilized to train and test several ML models to find the most efficient for our purpose. For the evaluation of the ML models, precision, recall, accuracy, F-measure, and AUC metrics have been taken into consideration. The derived results highlighted Soft Voting with Rotation and Random Forest trees as base models, which achieved better performance in comparison to the other models with an AUC of 94.5%, precision of 92%, recall of 91.8%, F-measure of 91.7% and an accuracy equal to 91.75%.

摘要

胆固醇是一种存在于血液脂质中的蜡状物质。只要处于健康水平,它在人体中的作用有助于新细胞的生成。当胆固醇超过允许的限度时,它就会产生相反的作用,导致严重的心脏健康问题。当一个人胆固醇过高(高胆固醇血症)时,脂肪会阻塞血管,从而使动脉循环变得困难。心脏无法获得所需的氧气,心脏病发作的风险增加。如今,机器学习 (ML) 因其在与健康相关问题(如风险预测、预后、各种疾病的治疗和管理)方面的关键能力而引起了医生、医疗中心和医疗保健提供者的特别关注。在本文中,概述了一种有监督的 ML 方法,其主要目标是创建具有高效性的高胆固醇血症发生风险预测工具。具体来说,进行了数据理解分析,以探索特征与高胆固醇血症的关联和重要性。利用这些因素来训练和测试几种 ML 模型,以找到最适合我们目的的模型。为了评估 ML 模型,考虑了精度、召回率、准确性、F 度量和 AUC 度量。得出的结果突出了软投票与旋转和随机森林树作为基础模型的优势,它们的 AUC 为 94.5%、精度为 92%、召回率为 91.8%、F 度量为 91.7%和准确性为 91.75%,性能优于其他模型。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/572a/9322993/0bd4fab5a22f/sensors-22-05365-g001.jpg

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