Investigation of statistical methods used in prognostic prediction models for obstetric care: A 10 year‐span cross‐sectional study

Author:

Tan Jing1234ORCID,Liu Chunrong12,Yang Min56,Xiong Yiquan12,Huang Shiyao12,Qi Yana12,Chen Meng7,Thabane Lehana34,Liu Xinghui7ORCID,He Lin8,Sun Xin12ORCID

Affiliation:

1. Chinese Evidence‐based Medicine Center, West China Hospital Sichuan University Chengdu Sichuan China

2. NMPA Key Laboratory for Real World Data Research and Evaluation in Hainan Chengdu Sichuan China

3. Department of Health Research Methods, Evidence, and Impact McMaster University Hamilton Ontario Canada

4. Biostatistics Unit St Joseph's Healthcare—Hamilton Hamilton Ontario Canada

5. Department of Epidemiology and Biostatistics, West China School of Public Health Sichuan University Chengdu China

6. Faculty of Health, Design and Art Swinburne Technology University Melbourne Victoria Australia

7. Department of Obstetrics and Gynecology, and Key Laboratory of Birth Defects and Related Diseases of Women and Children (Sichuan University), Ministry of Education, West China Second University Hospital Sichuan University Chengdu Sichuan China

8. The Intelligence Library Center, Ministry of Science and Technology, Chinese Evidence‐Based Medicine Center, West China Hospital Sichuan University Chengdu Sichuan China

Abstract

AbstractIntroductionObstetric care is a highly active area in the development and application of prognostic prediction models. The development and validation of these models often require the utilization of advanced statistical techniques. However, failure to adhere to rigorous methodological standards could greatly undermine the reliability and trustworthiness of the resultant models. Consequently, the aim of our study was to examine the current statistical practices employed in obstetric care and offer recommendations to enhance the utilization of statistical methods in the development of prognostic prediction models.Material and methodsWe conducted a cross‐sectional survey using a sample of studies developing or validating prognostic prediction models for obstetric care published in a 10‐year span (2011–2020). A structured questionnaire was developed to investigate the statistical issues in five domains, including model derivation (predictor selection and algorithm development), model validation (internal and external), model performance, model presentation, and risk threshold setting. On the ground of survey results and existing guidelines, a list of recommendations for statistical methods in prognostic models was developed.ResultsA total of 112 eligible studies were included, with 107 reporting model development and five exclusively reporting external validation. During model development, 58.9% of the studies did not include any form of validation. Of these, 46.4% used stepwise regression in a crude manner for predictor selection, while two‐thirds made decisions on retaining or dropping candidate predictors solely based on p‐values. Additionally, 26.2% transformed continuous predictors into categorical variables, and 80.4% did not consider nonlinear relationships between predictors and outcomes. Surprisingly, 94.4% of the studies did not examine the correlation between predictors. Moreover, 47.1% of the studies did not compare population characteristics between the development and external validation datasets, and only one‐fifth evaluated both discrimination and calibration. Furthermore, 53.6% of the studies did not clearly present the model, and less than half established a risk threshold to define risk categories. In light of these findings, 10 recommendations were formulated to promote the appropriate use of statistical methods.ConclusionsThe use of statistical methods is not yet optimal. Ten recommendations were offered to assist the statistical methods of prognostic prediction models in obstetric care.

Funder

National Natural Science Foundation of China

National Science Fund for Distinguished Young Scholars

Publisher

Wiley

Subject

Obstetrics and Gynecology,General Medicine

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