泰国兰丰医院患者血清尿酸和血脂参数的相关性

J. Gatedee, Kanokwan Jaiping, Sumana Kasemsawasdi, Aungsana Yothinarak, J. Netsawang, Supanit Angsirikul, Rachasak Somyanonthanakul
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引用次数: 0

摘要

血脂异常可导致心血管疾病并伴有多种并发症,包括心源性猝死、急性心肌梗死和中风。血脂异常的主要评估工具是空腹脂质面板,由总胆固醇(TC)、(LDL-C)、(HDL-C)和甘油三酯(TG)组成。然而,空腹血脂与尿酸升高之间的关系尚未得到全面的研究。这项工作调查血清尿酸(SUA)和空腹脂质面板在泰国老年患者之间的关系。一种基于规则的机器学习技术被称为关联规则挖掘,用于在发现的规则中定义模式。结果显示,SUA与TG、TC和LDL呈显著正相关,与HDL呈负相关。早期预防高尿酸血症和血脂异常可能有助于减少相关心血管疾病的发生率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Association of Serum Uric Acid and Lipid Parameters in Patients at Lamphun Hospital, Thailand
Dyslipidemia leads to cardiovascular disease with several complications which include sudden cardiac death, acute myocardial infarction, and strokes. The primary evaluation tool for dyslipidemia is a fasting lipid panel which consists of total cholesterol (TC), (LDL-C), (HDL-C), and triglycerides (TG). However, the relationship between a fasting lipid panel and elevated uric acid has not been comprehensively investigated. This work investigates the relationship between serum uric acid (SUA) and a fasting lipid panel in the elderly patients in Thailand. A rule-based machine learning technique called association rule mining was used to define patterns in the rules discovered. The results showed a significant positive relationship for SUA with TG, TC and LDL levels, and an inverse relationship for SUA with HDL. Early prevention of hyperuricemia and dyslipidemia may be helpful to reduce the incidence of associated cardiovascular diseases.
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