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Reporting and risk of bias of prediction models based on machine learning methods in preterm birth: A systematic review.

Authors :
Yang, Qiuyu
Fan, Xia
Cao, Xiao
Hao, Weijie
Lu, Jiale
Wei, Jia
Tian, Jinhui
Yin, Min
Ge, Long
Source :
Acta Obstetricia et Gynecologica Scandinavica. Jan2023, Vol. 102 Issue 1, p7-14. 8p.
Publication Year :
2023

Abstract

Introduction: There was limited evidence on the quality of reporting and methodological quality of prediction models using machine learning methods in preterm birth. This systematic review aimed to assess the reporting quality and risk of bias of a machine learning‐based prediction model in preterm birth. Material and methods: We conducted a systematic review, searching the PubMed, Embase, the Cochrane Library, China National Knowledge Infrastructure, China Biology Medicine disk, VIP Database, and WanFang Data from inception to September 27, 2021. Studies that developed (validated) a prediction model using machine learning methods in preterm birth were included. We used the Transparent Reporting of a multivariable prediction model for Individual Prognosis Or Diagnosis (TRIPOD) statement and Prediction model Risk of Bias Assessment Tool (PROBAST) to evaluate the reporting quality and the risk of bias of included studies, respectively. Findings were summarized using descriptive statistics and visual plots. The protocol was registered in PROSPERO (no. CRD 42022301623). Results: Twenty‐nine studies met the inclusion criteria, with 24 development‐only studies and 5 development‐with‐validation studies. Overall, TRIPOD adherence per study ranged from 17% to 79%, with a median adherence of 49%. The reporting of title, abstract, blinding of predictors, sample size justification, explanation of model, and model performance were mostly poor, with TRIPOD adherence ranging from 4% to 17%. For all included studies, 79% had a high overall risk of bias, and 21% had an unclear overall risk of bias. The analysis domain was most commonly rated as high risk of bias in included studies, mainly as a result of small effective sample size, selection of predictors based on univariable analysis, and lack of calibration evaluation. Conclusions: Reporting and methodological quality of machine learning‐based prediction models in preterm birth were poor. It is urgent to improve the design, conduct, and reporting of such studies to boost the application of machine learning‐based prediction models in preterm birth in clinical practice. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
00016349
Volume :
102
Issue :
1
Database :
Academic Search Index
Journal :
Acta Obstetricia et Gynecologica Scandinavica
Publication Type :
Academic Journal
Accession number :
160964094
Full Text :
https://doi.org/10.1111/aogs.14475