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Accepted for/Published in: JMIR Medical Informatics

Date Submitted: Sep 27, 2021
Date Accepted: Feb 26, 2022

The final, peer-reviewed published version of this preprint can be found here:

Machine Learning Approach for Preterm Birth Prediction Using Health Records: Systematic Review

Sharifiheris Z, Laitala J, Airola A, Rahmani AM, Bender M

Machine Learning Approach for Preterm Birth Prediction Using Health Records: Systematic Review

JMIR Med Inform 2022;10(4):e33875

DOI: 10.2196/33875

PMID: 35442214

PMCID: 9069277

Warning: This is an author submission that is not peer-reviewed or edited. Preprints - unless they show as "accepted" - should not be relied on to guide clinical practice or health-related behavior and should not be reported in news media as established information.

EHR-based machine learning modeling for preterm birth prediction: A systematic review

  • Zahra Sharifiheris; 
  • Juho Laitala; 
  • Antti Airola; 
  • Amir M Rahmani; 
  • Miriam Bender

ABSTRACT

Background:

Preterm birth (PTB) as a common pregnancy complication is responsible for 35% of the 3.1 million pregnancy-related deaths each year and significantly impacts around 15 million children annually across the world. Conventional approaches to predict PTB may neither be applicable for first-time mothers nor possess reliable predictive power. Recently, machine learning (ML) models have shown the potential as an appropriate complementary approach for PTB prediction.

Objective:

In this article we systematically reviewed the literature concerned with PTB prediction using ML modeling.

Methods:

This systematic review was conducted in accordance with the PRISMA statement. A comprehensive search was performed in seven bibliographic databases up until 15 May 2021. The quality of studies was assessed, and the descriptive information including socio-demographic characteristics, ML modeling processes, and model performance were extracted and reported.

Results:

A total of 732 papers were screened through title and abstract. Of these, 23 studies were screened by full text resulting in 13 papers that met the inclusion criteria.

Conclusions:

We identified various ML models used for different EHR data resulting in a desirable performance for PTB prediction. However, evaluation metrics, software/package used, data size and type, and selected features, and importantly data management method often varied from study to study threatening the reliability and generalizability of the model. Clinical Trial: n.a.


 Citation

Please cite as:

Sharifiheris Z, Laitala J, Airola A, Rahmani AM, Bender M

Machine Learning Approach for Preterm Birth Prediction Using Health Records: Systematic Review

JMIR Med Inform 2022;10(4):e33875

DOI: 10.2196/33875

PMID: 35442214

PMCID: 9069277

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