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Modeling analysis of the relationship between atherosclerosis and related inflammatory factors

机译:动脉粥样硬化与相关炎症因子关系的模型分析

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摘要

Objective: To establish early diagnosis model of inflammatory factors for atherosclerosis (AS), providing theoretical evidence for early detection of AS and development of plaques. Methods: Serum samples were collected to detect the inflammatory factors including CysC, Hcy, hs-CRP, UA, FIB, D-D, LP (a), IL-6, SAA, sCD40L and MDA. Using Logistic regression analysis, the inflammatory factors used for modeling were screened out, and then the AS early diagnosis models were established based on receiver operating characteristic (ROC) curve, support vector machine and BP neural network respectively. Results: No significant difference exists between the general materials of two groups. All 11 inflammatory factors had higher level in AS group than in control group. As shown in ROC curve, all inflammatory factors were helpful in AS diagnosis. In terms of sensitivity, UA ranked first (98) and FIB ranked last (55.5); in terms of specificity, UA ranked first (99) and FIB ranked last (78); in terms of area under the curve, UA and SAA ranked first (both were 0.995) and FIB ranked last (0.721). Based on Logistic regression equation, six factors were screened out, including Hcy, Hs-CRP, IL-6, D-D, CysC and MDA. According to classification, the final sixth steps had a prediction accuracy of 99%. When six inflammatory factors included in Logistic regression equation were detected jointly, the sensitivity, specificity and area under the curve were 57%, 97% and 0.821 respectively, while those of the model excluding D-D were 64%, 90% and 0.828, generally superior to results of joint detection including six factors. The ROC curve based on Hcy, Hs-CRP and MDA had a sensitivity of 87%, a specificity of 94% and an area under the curve of 0.869, being inferior to those of the ROC curve based on IL-6, D-D and Cys C, which were 87%, 92% and 0.936 respectively. The accuracy of SVM-AS diagnosis model and BP neural network model were 82.5% and 77.5% respectively. Conclusion: All 11 inflammatory factors are valuable in AS diagnosis. AS early diagnosis models based on Logistic regression analysis, ROC curve, support vector machine and BP neural network possess diagnostic value and can provide reference for clinical diagnosis.
机译:目的:建立动脉粥样硬化(AS)炎性因子的早期诊断模型,为AS的早期发现和斑块的形成提供理论依据。方法:收集血清样本,检测CysC,Hcy,hs-CRP,UA,FIB,D-D,LP(a),IL-6,SAA,sCD40L和MDA等炎症因子。采用Logistic回归分析,筛选出用于建模的炎症因子,然后分别基于受试者工作特征曲线,支持向量机和BP神经网络建立AS早期诊断模型。结果:两组普通材料之间无显着差异。 AS组所有11种炎症因子的水平均高于对照组。如ROC曲线所示,所有炎性因子均有助于AS的诊断。在敏感性方面,UA排名第一(98),FIB排名最后(55.5);就特异性而言,UA排名第一(99),FIB排名最后(78);就曲线下面积而言,UA和SAA排名第一(均为0.995),FIB排名最后(0.721)。基于Logistic回归方程,筛选出六种因子:Hcy,Hs-CRP,IL-6,D-D,CysC和MDA。根据分类,最后的第六步的预测准确性为99%。联合检测Logistic回归方程中包含的六个炎症因子时,敏感性,特异性和曲线下面积分别为57%,97%和0.821,而不包括DD的模型的敏感性,特异性和曲线下面积分别为64%,90%和0.828,通常优于联合检测的结果包括六个因素。基于Hcy,Hs-CRP和MDA的ROC曲线的灵敏度为87%,特异性为94%,曲线下面积为0.869,不如基于IL-6,DD和Cys的ROC曲线C,分别为87%,92%和0.936。 SVM-AS诊断模型和BP神经网络模型的准确性分别为82.5%和77.5%。结论:所有11种炎性因子均在AS诊断中有价值。基于Logistic回归分析,ROC曲线,支持向量机和BP神经网络的AS早期诊断模型具有诊断价值,可为临床诊断提供参考。

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