Evaluating Explanatory Capabilities of Machine Learning Models in Medical Diagnostics: A Human-in-the-Loop Approach

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Bobes-Bascarán, José
Fernández-Leal, Ángel
Figueirido Arnoso, Israel
Vidal-Ínsua, Yolanda

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Bobes-Bascarán, J., Mosqueira-Rey, E., Fernández-Leal, Á., Alonso-Ríos, D., Figueirido-Arnoso, I., & Vidal-Ínsua, Y. (2026). Evaluating Explanatory Capabilities of Machine Learning Models in Medical Diagnostics: A Human-in-the-Loop Approach. Mathematics, 14(3), 497. https://doi.org/10.3390/math14030497

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[Abstract]: This paper presents a broad study on the evaluation of explanatory capabilities of machine learning models, with a focus on Decision Trees, Random Forest, and XGBoost using a pancreatic cancer data set. We use Human-in-the-Loop-related techniques and medical guidelines as a source of domain knowledge to establish the importance of the different features that are relevant to select a pancreatic cancer treatment. These features are not only used as a dimensionality reduction approach for the machine learning models but also as a way to evaluate the explainability capabilities of the different models using agnostic and non-agnostic explainability techniques. To facilitate the interpretation of explanatory results, we propose the use of similarity measures such as the Weighted Jaccard Similarity coefficient. The goal is to select not only the best performing model but also the one that can best explain its conclusions and better aligns with human domain knowledge.

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The results published here are in whole or part based upon data generated by the TCGA Research Network: https://www.cancer.gov/tcga, accessed on 5 January 2024.

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Attribution 4.0 International
Attribution 4.0 International

Except where otherwise noted, this item's license is described as Attribution 4.0 International