Literature DB >> 24809697

Predicting birth weight with conditionally linear transformation models.

Lisa Möst1, Matthias Schmid2, Florian Faschingbauer3, Torsten Hothorn4.   

Abstract

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.
© The Author(s) 2014.

Keywords:  component-wise boosting; conditional coverage; conditional transformation models; prediction intervals

Mesh:

Year:  2014        PMID: 24809697     DOI: 10.1177/0962280214532745

Source DB:  PubMed          Journal:  Stat Methods Med Res        ISSN: 0962-2802            Impact factor:   3.021


  1 in total

1.  Fetal birthweight prediction with measured data by a temporal machine learning method.

Authors:  Jing Tao; Zhenming Yuan; Li Sun; Kai Yu; Zhifen Zhang
Journal:  BMC Med Inform Decis Mak       Date:  2021-01-25       Impact factor: 2.796

  1 in total

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