Schechter C B
Department of Medicine, Mt. Sinai School of Medicine, New York, NY 10029.
Med Decis Making. 1988 Jul-Sep;8(3):191-6. doi: 10.1177/0272989X8800800307.
A sequential method for diagnosing or excluding hypertension based on the Bayesian model of diastolic blood pressure presented in a companion article is presented. The likelihood ratio method of Wald is modified to include the effects of a prior probability distribution and to constrain the strategy to achieve specified positive and negative predictive values. The resulting formulas for upper and lower limits to diagnose and exclude diastolic hypertension can be evaluated using a hand calculator and a table of areas of the standard normal distribution. The strategy is illustrated for a population having a blood pressure distribution similar to that of the cohort screened for participation in the Hypertension Detection and Follow-up Program, with 90 mm Hg as the cutoff defining hypertension and required positive and negative predictive values of 95%. The performance of the strategy was simulated using Monte Carlo methods. The median number of readings required for diagnosis is three, and 80% of subjects are diagnosed in 11 or fewer readings. In contrast to the strategy's 95% predictive values, a fixed-number-of-measurements strategy requiring the same mean number of measurements has a positive predictive value of only 83% and a negative predictive value of 96%. When the parameters of the model have been properly measured or estimated, this method is practical, efficient, and accurate for diagnosing hypertension in a known population.
本文介绍了一种基于配套文章中提出的舒张压贝叶斯模型诊断或排除高血压的序贯方法。对Wald的似然比方法进行了修改,以纳入先验概率分布的影响,并对策略进行约束,以实现指定的阳性和阴性预测值。用于诊断和排除舒张期高血压的上下限的最终公式可使用手持计算器和标准正态分布面积表进行评估。该策略针对血压分布与参与高血压检测与随访项目筛查队列相似的人群进行了说明,以90毫米汞柱作为定义高血压的临界值,要求阳性和阴性预测值均为95%。使用蒙特卡罗方法模拟了该策略的性能。诊断所需读数的中位数为三次,80%的受试者在11次或更少的读数中被诊断出来。与该策略95%的预测值相比,要求相同平均测量次数的固定测量次数策略的阳性预测值仅为83%,阴性预测值为96%。当模型参数得到正确测量或估计时,该方法对于在已知人群中诊断高血压是实用、高效且准确的。