Correlates and Predictors of NT-proBNP in Life Insurance Applicants.

Steven J Rigatti, Robert Stout
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Abstract

Objectives: -To document the various laboratory and demographic/historical correlates of NT-proBNP levels in applicants for life insurance, and to explore the accuracy of a prediction model based on those variables.

Method: -NT-proBNP blood test results were obtained from 1.34 million insurance applicants between the age of 50 and 85 years, beginning in 2003. Exploratory data analysis was carried out to document correlations with other laboratory variables, sex, age, and the presence of relevant diseases. Further, predictive models were used to quantify the proportion of the variance of NT-proBNP, which can be explained by a combination of these other, easier to determine variables.

Results: -NT-proBNP shows the expected, negative correlation with estimated glomerular filtration rate (eGFR) is markedly higher in those with a history of heart disease and is somewhat higher in those with a history of hypertension. A strong, unexpected, negative correlation between NT-proBNP and albumin was discovered. Of the variables evaluated, a multivariate adaptive regression spline (MARS) model automated selection procedure selected 7 variables (age, sex, albumin, eGFR, BMI, systolic blood pressure, cholesterol, and history of heart disease). Variable importance evaluation determined that age, albumin and eGFR were the 3 most important continuous variables in the prediction of NT-proBNP levels. An ordinary least squares (OLS) model using these same variables achieved a R-squared of 24.7%.

Conclusion: -Expected ranges of NT-proBNP may vary substantially depending on the value of other variables in the prediction equation. Albumin is significantly negatively correlated with NT-proBNP levels. The reasons for this are unclear.

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人寿保险申请人NT-proBNP的相关性和预测因素。
目的:记录人寿保险申请人NT-proBNP水平的各种实验室和人口统计学/历史相关性,并探索基于这些变量的预测模型的准确性。方法:从2003年开始,对134万年龄在50岁至85岁之间的保险申请人进行NT-proBNP血液检测。进行了探索性数据分析,以记录与其他实验室变量、性别、年龄和相关疾病存在的相关性。此外,预测模型被用于量化NT-proBNP的方差比例,这可以通过这些其他更容易确定的变量的组合来解释。结果:-NT-proBNP显示,有心脏病史的患者与估计肾小球滤过率(eGFR)的预期负相关性明显更高,有高血压病史的患者则略高。发现NT-proBNP与白蛋白之间存在强烈、出乎意料的负相关。在评估的变量中,多变量自适应回归样条(MARS)模型自动选择程序选择了7个变量(年龄、性别、白蛋白、eGFR、BMI、收缩压、胆固醇和心脏病史)。变量重要性评估确定年龄、白蛋白和eGFR是预测NT-proBNP水平的3个最重要的连续变量。使用这些相同变量的普通最小二乘法(OLS)模型的R平方为24.7%。结论:NT-proBNP的预期范围可能会因预测方程中其他变量的值而大幅变化。白蛋白与NT-proBNP水平呈显著负相关。原因尚不清楚。
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来源期刊
CiteScore
0.50
自引率
0.00%
发文量
6
期刊介绍: The Journal of Insurance Medicine is a peer reviewed scientific journal sponsored by the American Academy of Insurance Medicine, and is published quarterly. Subscriptions to the Journal of Insurance Medicine are included in your AAIM membership.
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