小密低密度脂蛋白及微量元素对冠状动脉疾病的诊断价值。

Na Zhang, Yue Xu, Hao Liang, Qingsong Wang, Yu An, Haichao Gao, Jiangman Zhao, Hong Wang
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引用次数: 0

摘要

冠状动脉疾病(CAD)是世界范围内的主要死亡原因。考虑到20%-40%的CAD患者存在较长的动脉粥样硬化无症状期,探索早期诊断CAD的可行性已成为当务之急。这是一项观察性病例对照研究,共招募了489名连续的CAD患者和75名非CAD对照组。采用Quantimetrix lipopprint LDL系统检测血清低密度脂蛋白亚组分(LDLC1-7)水平。18种微量元素(钒、铬、锰、钴、镍、铜、锌、镓、砷、硒、锶、镉、锡、锑、钡、汞、铊和铅)的含量采用电感耦合等离子体质谱法进行检测。采用Logistic Regression、K Neighbors、GaussianNB、Random Forest、Decision Tree和XGBoost等6种机器学习算法构建CAD诊断模型。冠心病患者LDLC-3、LDLC-4、LDLC-5和铅水平显著升高,而LDLC-1、铬、锰、钴和锶水平较低(p < 0.01和p < 0.05)
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Diagnostic value of small dense low-density lipoprotein and trace elements in coronary artery disease.

Coronary artery disease (CAD) is a worldwide leading cause of death. Considering that 20%-40% of patients with CAD have a long asymptomatic period of atherosclerosis, it has become urgent to explore the feasibility of diagnosing CAD at an early stage. This is an observational, case-control study, a total of 489 consecutive CAD patients and 75 non-CAD controls were recruited. The levels of low-density lipoprotein subfractions (LDLC1-7) in serum were measured by the Quantimetrix Lipoprint LDL system. The levels of 18 trace elements (vanadium, chromium, manganese, cobalt, nickel, copper, zinc, gallium, arsenic, selenium, strontium, cadmium, tin, antimony, barium, mercury, thallium, and lead) were tested using inductively coupled plasma mass spectrometry. Six machine learning algorithms (Logistic Regression, K Neighbors, GaussianNB, Random Forest, Decision Tree and XGBoost) were used to construct CAD diagnostic models. The levels of LDLC-3, LDLC-4, LDLC-5, and lead were significantly higher in CAD patients, while the levels of LDLC-1, chromium, manganese, cobalt, and strontium were lower (p < 0.05 for all). Univariate logistic regression analysis indicates that LDLC-3, LDLC-4, and lead were the risk factors for CAD development (odds ratio >1 and p < 0.05 for all), while LDLC-1, chromium, manganese, cobalt, and strontium were the protective factors for CAD (odds ratio < 1 and p < 0.05 for all). XGBoost had the best overall diagnostic performance among the six algorithms. There are significant differences in the levels of several LDL subfractions and trace elements between non-CAD controls and CAD patients. These biomarkers may help the diagnostic of CAD while applying machine learning algorithms.

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