AI Article Synopsis

  • Advances in artificial intelligence (AI) are leading to increased use of data-driven algorithms in medicine, but their complex behavior renders them unreliable for clinicians, prompting the need for explainable artificial intelligence (XAI).
  • A systematic review was conducted to analyze the application of XAI in breast cancer detection and risk prediction, covering studies from January 2017 to July 2023, identifying 30 relevant peer-reviewed studies.
  • The findings indicated that SHapley Additive exPlanations (SHAP) is the most commonly used model-agnostic XAI technique in this area, particularly effective for explaining predictions from tree-based ensemble machine learning models, enhancing the transparency and trustworthiness of AI in healthcare.

Article Abstract

With the advances in artificial intelligence (AI), data-driven algorithms are becoming increasingly popular in the medical domain. However, due to the nonlinear and complex behavior of many of these algorithms, decision-making by such algorithms is not trustworthy for clinicians and is considered a black-box process. Hence, the scientific community has introduced explainable artificial intelligence (XAI) to remedy the problem. This systematic scoping review investigates the application of XAI in breast cancer detection and risk prediction. We conducted a comprehensive search on Scopus, IEEE Explore, PubMed, and Google Scholar (first 50 citations) using a systematic search strategy. The search spanned from January 2017 to July 2023, focusing on peer-reviewed studies implementing XAI methods in breast cancer datasets. Thirty studies met our inclusion criteria and were included in the analysis. The results revealed that SHapley Additive exPlanations (SHAP) is the top model-agnostic XAI technique in breast cancer research in terms of usage, explaining the model prediction results, diagnosis and classification of biomarkers, and prognosis and survival analysis. Additionally, the SHAP model primarily explained tree-based ensemble machine learning models. The most common reason is that SHAP is model agnostic, which makes it both popular and useful for explaining any model prediction. Additionally, it is relatively easy to implement effectively and completely suits performant models, such as tree-based models. Explainable AI improves the transparency, interpretability, fairness, and trustworthiness of AI-enabled health systems and medical devices and, ultimately, the quality of care and outcomes.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11488119PMC
http://dx.doi.org/10.1002/cai2.136DOI Listing

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