BMJ open

Creating guidelines and bias tools for AI-based prediction model studies

Updated

Abstract

An extension to the and tool for machine learning-based prediction model studies is being developed.

  • Two systematic reviews will assess the quality of reporting in existing machine learning prediction model studies across all medical fields and specifically in oncology.
  • A diverse group of stakeholders will be consulted to identify important items for inclusion in the new guidelines and evaluation tool.
  • Virtual consensus meetings will prioritize key items for the TRIPOD-AI checklist and PROBAST-AI tool.
  • The TRIPOD-AI checklist and PROBAST-AI tool will provide researchers with guidelines to improve reporting of machine learning prediction model studies.
  • The aim is to enhance the ability of researchers and clinicians to appraise the quality and interpret findings of these studies.

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What this is

  • The TRIPOD-AI and -AI initiatives aim to enhance reporting and bias assessment in machine learning-based prediction model studies.
  • These guidelines will be developed through systematic reviews, stakeholder consultations, and consensus meetings.
  • The goal is to provide a standardized framework that improves transparency and quality in AI-related clinical predictions.

Essence

  • TRIPOD-AI and -AI will establish guidelines for reporting and evaluating machine learning-based prediction models in healthcare. This initiative addresses the unique challenges posed by AI methodologies to improve study quality and applicability.

Key takeaways

  • TRIPOD-AI will extend the existing to include specific guidelines for machine learning-based prediction models. This extension aims to ensure comprehensive reporting, addressing gaps in current practices.
  • -AI will provide a tool for assessing risk of bias in machine learning prediction model studies. This tool will help stakeholders critically evaluate the design and conduct of these studies.
  • The development process includes systematic reviews and a to gather input from diverse stakeholders. This collaborative approach aims to create guidelines that are relevant and widely accepted.

Caveats

  • The guidelines are in development and have not yet been validated in practice. Their effectiveness in improving reporting and bias assessment will need to be evaluated post-implementation.
  • The focus is primarily on machine learning methods, which may not fully encompass other predictive modeling techniques. This could limit the applicability of the guidelines to a broader range of prediction models.

Definitions

  • TRIPOD Statement: A checklist designed to improve the reporting of multivariable prediction models for diagnosis and prognosis.
  • PROBAST: A tool for assessing the risk of bias in prediction model studies, focusing on participants, predictors, outcomes, and analysis.
  • Delphi process: A structured communication technique that gathers expert opinions through multiple rounds of anonymous surveys to reach consensus.

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