4.4 Article

A framework for validating AI in precision medicine: considerations from the European ITFoC consortium

Journal

Publisher

BMC
DOI: 10.1186/s12911-021-01634-3

Keywords

Artificial intelligence; Precision medicine; Personalized medicine; Computerized decision support systems; Cancer; Oncology

Funding

  1. ITFoC project (Information Technology for the Future of Cancer) -FLAG-ERA

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AI technologies have the potential to revolutionize healthcare systems, but their implementation is limited due to a lack of reliable validation procedures. The European ITFoC consortium has designed a framework for the clinical validation of AI technologies for predicting treatment response in oncology, based on seven key steps including intended use, target population, evaluation timing, datasets, data safety, performance metrics, and explainability. This framework forms the basis of a validation platform for assessing and comparing AI algorithms for predicting treatment response in triple-negative breast cancer with real-world data.
Background Artificial intelligence (AI) has the potential to transform our healthcare systems significantly. New AI technologies based on machine learning approaches should play a key role in clinical decision-making in the future. However, their implementation in health care settings remains limited, mostly due to a lack of robust validation procedures. There is a need to develop reliable assessment frameworks for the clinical validation of AI. We present here an approach for assessing AI for predicting treatment response in triple-negative breast cancer (TNBC), using real-world data and molecular -omics data from clinical data warehouses and biobanks. Methods The European ITFoC (Information Technology for the Future Of Cancer) consortium designed a framework for the clinical validation of AI technologies for predicting treatment response in oncology. Results This framework is based on seven key steps specifying: (1) the intended use of AI, (2) the target population, (3) the timing of AI evaluation, (4) the datasets used for evaluation, (5) the procedures used for ensuring data safety (including data quality, privacy and security), (6) the metrics used for measuring performance, and (7) the procedures used to ensure that the AI is explainable. This framework forms the basis of a validation platform that we are building for the ITFoC Challenge. This community-wide competition will make it possible to assess and compare AI algorithms for predicting the response to TNBC treatments with external real-world datasets. Conclusions The predictive performance and safety of AI technologies must be assessed in a robust, unbiased and transparent manner before their implementation in healthcare settings. We believe that the consideration of the ITFoC consortium will contribute to the safe transfer and implementation of AI in clinical settings, in the context of precision oncology and personalized care.

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