预测血脂异常妇女子痫前期的临床生物标志物:统计模式分类方法

Rashmi Mukherjee, C. D. Ray, C. Chakraborty, Swagata Dasgupta, K. Chaudhury
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引用次数: 6

摘要

孕妇血脂异常在子痫前期是确定的。血脂水平作为子痫前期的潜在预测指标还有待研究。基于脂质参数的贡献,采用判别分析和k均值聚类预测子痫前期(PE)。测定PE女性静脉血中血清总胆固醇(TC)、高密度脂蛋白(HDL-C)、低密度脂蛋白(LDL-C)和甘油三酯(TG)含量(A组;n=62)和血压正常的孕妇(B组;n = 54)。极低密度脂蛋白(VLDL)计算为TG的1/5。采用判别分析从这些参数中识别临床标志物。使用K-means聚类对识别的参数进行验证。A组TC、LDL-C、TG、VLDL水平显著高于B组,HDL-C水平显著低于B组。其中TG、VLDL和TC是区分A组和B组较为理想的临床指标,总体分类准确率分别为87.9%、87.9%和86.1%。聚类中心显示的TG、TC和VLDL的平均值在A组明显高于b组。我们使用判别分析来确定所有血脂参数中最有用的一组临床标志物。血清TG、VLDL和TC水平预测PE的准确率最高,k-means聚类进一步验证了这一点。
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Clinical biomarker for predicting preeclampsia in women with abnormal lipid profile: Statistical pattern classification approach
Maternal dyslipidemia in preeclampsia is well established. Serum lipid levels as potential predictors of preeclampsia are yet to be investigated. Discriminant analysis and k-means clustering were used to predict preeclampsia (PE) based on the contribution of lipid parameters. Serum total cholesterol (TC), high density lipoprotein (HDL-C), low density lipoprotein (LDL-C) and triglycerides (TG) were measured in venous blood samples of women with PE (Group A; n=62) and normotensive pregnant women (Group B; n=54). Very low density lipoprotein (VLDL) was calculated as 1/5 of TG. Discriminant analysis was used to identify the clinical markers amongst these parameters. k-means clustering was used to validate the parameters identified. TC, LDL-C, TG and VLDL levels were significantly higher and HDL-C significantly lower in Group A when compared with Group B. Amongst these, TG, VLDL and TC emerged as the ideal set of clinical markers in discriminating Group A and Group B with an overall classification accuracy of 87.9%, 87.9% and 86.1%, respectively. The clusters centers indicating mean values of TG, TC and VLDL were significantly higher in Group A as compared to Group B. Discriminant analysis was used to identify the most useful set of clinical markers amongst all the lipid parameters. Serum TG, VLDL and TC levels predicted PE with maximum accuracy, which was further verified by k-means clustering.
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