Despite the recognized potential of Artificial Intelligence (AI)-based decision support systems for electrocardiogram (ECG) interpretation, the complex interactions between AI-generated advice and its presentation to physicians through user interfaces still need to be comprehensively understood. Clinical ECG interpretation, like many other healthcare scenarios, is challenging due to overlapping findings across different conditions, leading to inherent uncertainty that physicians must navigate. Despite this, AI-based systems typically present a single option as their advice. In contrast, set-valued support, which predicts a set of possible classes rather than a single outcome, may offer a more natural approach to addressing clinical uncertainty. In this paper, we report a comparative study investigating the impact of single-valued versus set-valued support systems on the accuracy of ECG interpretation. We conducted a Wizard-of-Oz study involving 62 cardiologists, divided into two groups receiving either single- or set-valued support, with an additional layer of textual explanations of the AI advice. Our results reveal that set-valued support significantly improved diagnostic accuracy, particularly in complex cases (Cohen’s d = .53) and for cardiologists with less than 10 years of experience (Cohen’s d = .67). Including case-pertinent textual explanations further enhanced the diagnostic accuracy (Cohen’s d = .62). These results highlight the potential of set-valued support in medical diagnostics, especially for clinical cases of high complexity. Set-valued support promotes human integration and control, offering a pathway for more robust and human-centered AI-assisted healthcare solutions.

Folgado, D., Famiglini, L., Campagner, A., Dores, H., Barandas, M., Gamboa, H., et al. (2025). Conformal Prediction for ECG Interpretation: A Study on Human-AI Collaboration in Clinical Decision Support. In Artificial Intelligence in Medicine 23rd International Conference, AIME 2025, Pavia, Italy, June 23–26, 2025, Proceedings, Part I (pp.140-149). Springer Science and Business Media Deutschland GmbH [10.1007/978-3-031-95838-0_14].

Conformal Prediction for ECG Interpretation: A Study on Human-AI Collaboration in Clinical Decision Support

Famiglini L.;Campagner A.;Cabitza F.
2025

Abstract

Despite the recognized potential of Artificial Intelligence (AI)-based decision support systems for electrocardiogram (ECG) interpretation, the complex interactions between AI-generated advice and its presentation to physicians through user interfaces still need to be comprehensively understood. Clinical ECG interpretation, like many other healthcare scenarios, is challenging due to overlapping findings across different conditions, leading to inherent uncertainty that physicians must navigate. Despite this, AI-based systems typically present a single option as their advice. In contrast, set-valued support, which predicts a set of possible classes rather than a single outcome, may offer a more natural approach to addressing clinical uncertainty. In this paper, we report a comparative study investigating the impact of single-valued versus set-valued support systems on the accuracy of ECG interpretation. We conducted a Wizard-of-Oz study involving 62 cardiologists, divided into two groups receiving either single- or set-valued support, with an additional layer of textual explanations of the AI advice. Our results reveal that set-valued support significantly improved diagnostic accuracy, particularly in complex cases (Cohen’s d = .53) and for cardiologists with less than 10 years of experience (Cohen’s d = .67). Including case-pertinent textual explanations further enhanced the diagnostic accuracy (Cohen’s d = .62). These results highlight the potential of set-valued support in medical diagnostics, especially for clinical cases of high complexity. Set-valued support promotes human integration and control, offering a pathway for more robust and human-centered AI-assisted healthcare solutions.
paper
Conformal Predictions; ECG interpretation; Explainable AI; Human-AI collaboration protocols; Human-centered AI; Set-valued support;
English
23rd International Conference, AIME 2025 - June 23–26, 2025
2025
Bellazzi, R; Juarez Herrero, JM; Sacchi, L; Zupan, B
Artificial Intelligence in Medicine 23rd International Conference, AIME 2025, Pavia, Italy, June 23–26, 2025, Proceedings, Part I
9783031958373
2025
15734
140
149
reserved
Folgado, D., Famiglini, L., Campagner, A., Dores, H., Barandas, M., Gamboa, H., et al. (2025). Conformal Prediction for ECG Interpretation: A Study on Human-AI Collaboration in Clinical Decision Support. In Artificial Intelligence in Medicine 23rd International Conference, AIME 2025, Pavia, Italy, June 23–26, 2025, Proceedings, Part I (pp.140-149). Springer Science and Business Media Deutschland GmbH [10.1007/978-3-031-95838-0_14].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/576002
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