Möst Lisa, Schmid Matthias, Faschingbauer Florian, Hothorn Torsten
Institut für Statistik, Ludwig-Maximilians-Universität, München, Germany.
Institut für Medizinische Biometrie, Informatik und Epidemiologie, Bonn, Germany.
Stat Methods Med Res. 2016 Dec;25(6):2781-2810. doi: 10.1177/0962280214532745. Epub 2014 May 8.
Low and high birth weight (BW) are important risk factors for neonatal morbidity and mortality. Gynecologists must therefore accurately predict BW before delivery. Most prediction formulas for BW are based on prenatal ultrasound measurements carried out within one week prior to birth. Although successfully used in clinical practice, these formulas focus on point predictions of BW but do not systematically quantify uncertainty of the predictions, i.e. they result in estimates of the conditional mean of BW but do not deliver prediction intervals. To overcome this problem, we introduce conditionally linear transformation models (CLTMs) to predict BW. Instead of focusing only on the conditional mean, CLTMs model the whole conditional distribution function of BW given prenatal ultrasound parameters. Consequently, the CLTM approach delivers both point predictions of BW and fetus-specific prediction intervals. Prediction intervals constitute an easy-to-interpret measure of prediction accuracy and allow identification of fetuses subject to high prediction uncertainty. Using a data set of 8712 deliveries at the Perinatal Centre at the University Clinic Erlangen (Germany), we analyzed variants of CLTMs and compared them to standard linear regression estimation techniques used in the past and to quantile regression approaches. The best-performing CLTM variant was competitive with quantile regression and linear regression approaches in terms of conditional coverage and average length of the prediction intervals. We propose that CLTMs be used because they are able to account for possible heteroscedasticity, kurtosis, and skewness of the distribution of BWs.
低出生体重和高出生体重是新生儿发病和死亡的重要风险因素。因此,妇科医生必须在分娩前准确预测出生体重。大多数出生体重预测公式是基于出生前一周内进行的产前超声测量。尽管这些公式在临床实践中得到了成功应用,但它们侧重于出生体重的点预测,而没有系统地量化预测的不确定性,即它们得出的是出生体重条件均值的估计值,而没有给出预测区间。为克服这一问题,我们引入条件线性变换模型(CLTM)来预测出生体重。CLTM不是只关注条件均值,而是对给定产前超声参数的出生体重的整个条件分布函数进行建模。因此,CLTM方法既给出了出生体重的点预测,也给出了特定胎儿的预测区间。预测区间是一种易于解释的预测准确性度量,可用于识别预测不确定性高的胎儿。利用德国埃尔朗根大学诊所围产期中心8712例分娩的数据集,我们分析了CLTM的变体,并将它们与过去使用的标准线性回归估计技术以及分位数回归方法进行了比较。在预测区间的条件覆盖率和平均长度方面,表现最佳的CLTM变体与分位数回归和线性回归方法具有竞争力。我们建议使用CLTM,因为它们能够考虑出生体重分布可能存在的异方差性、峰度和偏度。