Systematic review finds "spin" practices and poor reporting standards in studies on machine learning-based prediction models

J Clin Epidemiol. 2023 Jun:158:99-110. doi: 10.1016/j.jclinepi.2023.03.024. Epub 2023 Apr 5.

Abstract

Objectives: We evaluated the presence and frequency of spin practices and poor reporting standards in studies that developed and/or validated clinical prediction models using supervised machine learning techniques.

Study design and setting: We systematically searched PubMed from 01/2018 to 12/2019 to identify diagnostic and prognostic prediction model studies using supervised machine learning. No restrictions were placed on data source, outcome, or clinical specialty.

Results: We included 152 studies: 38% reported diagnostic models and 62% prognostic models. When reported, discrimination was described without precision estimates in 53/71 abstracts (74.6% [95% CI 63.4-83.3]) and 53/81 main texts (65.4% [95% CI 54.6-74.9]). Of the 21 abstracts that recommended the model to be used in daily practice, 20 (95.2% [95% CI 77.3-99.8]) lacked any external validation of the developed models. Likewise, 74/133 (55.6% [95% CI 47.2-63.8]) studies made recommendations for clinical use in their main text without any external validation. Reporting guidelines were cited in 13/152 (8.6% [95% CI 5.1-14.1]) studies.

Conclusion: Spin practices and poor reporting standards are also present in studies on prediction models using machine learning techniques. A tailored framework for the identification of spin will enhance the sound reporting of prediction model studies.

Keywords: Development; Diagnosis; Misinterpretation; Overextrapolation; Overinterpretation; Prognosis; Spin; Validation.

Publication types

  • Systematic Review
  • Review

MeSH terms

  • Humans
  • Machine Learning*
  • Prognosis