2018
DOI: 10.1002/bdr2.1441
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A machine learning approach to investigate potential risk factors for gastroschisis in California

Abstract: Background To generate new leads about risk factors for gastroschisis, a birth defect that has been increasing in prevalence over time, we performed an untargeted data mining statistical approach. Methods Using data exclusively from the California Center of the National Birth Defects Prevention Study, we compared 286 cases of gastroschisis and 1,263 non‐malformed, live‐born controls. All infants had delivery dates between October 1997 and December 2011 and were stratified by maternal age at birth (<20 and ≥ 20… Show more

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Cited by 12 publications
(12 citation statements)
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“…35.7% (n = 5) of studies reported using imbalanced data sets [40], [44], [79]- [81]. K-means algorithm (unsupervised learning, clustering technique) was reported to be used in [79] for reducing the population of the majority class, and over-under sampling techniques have been used in [40].…”
Section: Birth Defectsmentioning
confidence: 99%
“…35.7% (n = 5) of studies reported using imbalanced data sets [40], [44], [79]- [81]. K-means algorithm (unsupervised learning, clustering technique) was reported to be used in [79] for reducing the population of the majority class, and over-under sampling techniques have been used in [40].…”
Section: Birth Defectsmentioning
confidence: 99%
“…Only one study reported finding no additional associations with the outcome of interest beyond what was already known (K. A. Weber et al, 2019). In comparison to traditional regression models, the CART and random forest algorithms offer a number of potential advantages.…”
Section: Discussionmentioning
confidence: 99%
“…CART is only as good as the variables provided to it; asking CART to choose important variables can lead to humorous results (K. A. Weber et al, 2019). While CART might optimize each split, the overall model may not be stable.…”
Section: Discussionmentioning
confidence: 99%
“…Investigation of complex teratogenic processes, likely involving non-linear and non-additive interactions of multiple genetic and environmental factors, are further supported by the development of novel methods within bioinformatics (Weber et al, 2019 ). Analyzing and deciphering such higher-order interactions prompts the application of machine learning models, which can detect patterns and predict drug teratogenicity and child outcomes.…”
Section: Discussionmentioning
confidence: 99%