Machine Learning for Fetal Growth Prediction

被引:34
作者
Naimi, Ashley I. [1 ]
Platt, Robert W. [2 ]
Larkin, Jacob C. [3 ]
机构
[1] Univ Pittsburgh, Dept Epidemiol, 130 DeSoto St,503 Parran Hall, Pittsburgh, PA 15261 USA
[2] McGill Univ, Dept Epidemiol Biostat & Occupat Hlth, Montreal, PQ, Canada
[3] Univ Pittsburgh, Magee Womens Res Inst, Pittsburgh, PA USA
关键词
GESTATIONAL-AGE; WEIGHT; LENGTH; HEAD;
D O I
10.1097/EDE.0000000000000788
中图分类号
R1 [预防医学、卫生学];
学科分类号
1004 ; 120402 ;
摘要
Birthweight is often used as a proxy for fetal weight. Problems with this practice have recently been brought to light. We explore whether data available at birth can be used to predict estimated fetal weight using linear and quantile regression, random forests, Bayesian additive regression trees, and generalized boosted models. We train and validate each approach using 18,517 pregnancies (31,948 ultrasound visits) from the Magee-Womens Obstetric Maternal and Infant data and 240 pregnancies in a separate dataset of high-risk pregnancies. We also quantify the relation between smoking and small-for-gestational-age birth, defined as a birthweight in the lower 10th percentile of a population birthweight standard and estimated and predicted fetal weight standard. Using mean squared error and median absolute deviation criteria, quantile regression performed best among the regression-based approaches, but generalized boosted models performed best overall. Using the birthweight standard, smoking during pregnancy increased the risk of small-for-gestational-age 3.84-fold (95% CI: 2.70, 5.47). This ratio dropped to 1.65 (95% CI: 1.50, 1.81) when using the correct fetal weight standard, which was no different from the machine learning-based predicted standards, but higher than the regression-based predicted standards. Machine learning algorithms show promise in recovering missing fetal weight information.
引用
收藏
页码:290 / 298
页数:9
相关论文
共 36 条
[1]   INTERGROWTH-21st vs customized birthweight standards for identification of perinatal mortality and morbidity [J].
Anderson, Ngaire H. ;
Sadler, Lynn C. ;
McKinlay, Christopher J. D. ;
McCowan, Lesley M. E. .
AMERICAN JOURNAL OF OBSTETRICS AND GYNECOLOGY, 2016, 214 (04) :509.e1-509.e7
[2]  
[Anonymous], QUANTREGFOREST QUANT
[3]  
[Anonymous], 2015, GBM GEN BOOSTED REGR
[4]  
[Anonymous], 2016, Quantreg: Quantile regression (r package version 5.29)
[5]  
[Anonymous], 2000, Linear Models in Statistics
[6]  
Bembom O, 2007, STAT APPL GENET MOL, V6
[7]  
Berk RA, 2008, SPRINGER SER STAT, P1, DOI 10.1007/978-0-387-77501-2_1
[8]  
Bernstein I M, 1996, J Matern Fetal Med, V5, P124
[9]   Obstetric determinants of neonatal survival: Influence of willingness to perform cesarean delivery on survival of extremely low-birth-weight infants [J].
Bottoms, SF ;
Paul, RH ;
Iams, JD ;
Mercer, BM ;
Thom, EA ;
Roberts, JM ;
Caritis, SN ;
Moawad, AH ;
VanDorsten, JP ;
Hauth, JC ;
Thurnau, GR ;
Miodovnik, M ;
Meis, PM ;
McNellis, D .
AMERICAN JOURNAL OF OBSTETRICS AND GYNECOLOGY, 1997, 176 (05) :960-966
[10]   Random forests [J].
Breiman, L .
MACHINE LEARNING, 2001, 45 (01) :5-32