Abstract
曹奕丰,王桂清,黄久仪,郭秀娥,郭佐,杨永举,冯春红.脑血管血液动力学参数脑卒中预测模型的建立[J].Chinese journal of Epidemiology,2003,24(9):798-800
脑血管血液动力学参数脑卒中预测模型的建立
Principal component analysis and integral methods of cerebral vascular hemodynamic parameters
Received:August 26, 2002  
DOI:
KeyWord: 脑血管疾病  血液动力学  预测模型
English Key Word: Cerebral vascular disease  Hemodynamic  Predictive model
FundProject:国家自然科学基金资助项目 (39370612) ;上海市科技发展基金资助项目 (934113060,944912014)
Author NameAffiliation
CAO Yi-feng Shanghai Institute of Cerebral Vascular Disease Prevention and Cure, Shanghai 200433, China 
WANG Gui-qing Shanghai Institute of Cerebral Vascular Disease Prevention and Cure, Shanghai 200433, China 
HUANG Jiu-yi Shanghai Institute of Cerebral Vascular Disease Prevention and Cure, Shanghai 200433, China 
GUO Xiu-e 第四军医大学卫生统计学教研室 
GUO Zuo Shanghai Institute of Cerebral Vascular Disease Prevention and Cure, Shanghai 200433, China 
YANG Yong-ju Shanghai Institute of Cerebral Vascular Disease Prevention and Cure, Shanghai 200433, China 
FENG Chun-hong Shanghai Institute of Cerebral Vascular Disease Prevention and Cure, Shanghai 200433, China 
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Abstract:
      目的 根据脑血管血液动力学参数 (CVHI)和脑卒中的主要危险因素建立脑卒中预测模型。方法 选择全国六大行政区脑卒中研究队列人群 2 5 35 5例,将基线调查时的CVHI检测结果进行主成分分析,再以各主成分和主要脑卒中危险因素为自变量,以随访中脑卒中发病为应变量进行回归分析,根据回归系数建立脑卒中预测模型,计算发病概率,绘制ROC曲线,确定最佳截断点,评价预测模型的预测效能。结果 四个主成分的累积贡献率依次为 5 8.1%、79.4 %、88.4 %和 94.6 %,被筛检进入logistic回归方程的变量分别为第一至第四主成分、高血压病史、年龄和性别,ROC曲线下面积为0.85 5,最佳截断点为预测概率≥ 0.0 5,预测脑卒中的敏感度、特异度和准确度分别为 80.7%,78.5 %,78.5 %。结论 通过主成分回归分析,可以建立具有良好效能的脑卒中预测模型。
English Abstract:
      Objective To establish a predicting model for stroke according to cerebral vascular hemodynamic indexes and major risk factors of stroke. Methods Participants selected from a stroke cohort with 25 355 population in China. The first step was to carry out principal component analysis using CVHI. Logistic regression with principal component and main risk factors of stroke were then served as independent variables and stroke come on as dependent variables. The predictive model was established according to coefficient of regression and probability of each participant was also estimated. Finally, ROC curve was protracted and predictive efficacy was measured. Results The accumulative contribution rates of four principal components were 58.1 %, 79.4 %, 88.4 % and 94.6 % respectively.Seven variables were being selected into the equation with the first to fourth principal component as history of hypertension, age and sex. Area under ROC curve was 0.855 and optimal cut- off point was probability over 0.05. Sensitivity, specificity and accuracy of stroke prediction were 80.7 %, 78.5 % and 78.5 % respectively. Conclusion The model established by principal component and regression could effectively predict the incidence of stroke coming on.
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