Explainable AI in Healthcare: Physicians Perspectives and Technical Evaluation of AI-Based Decision Support and Explainability Methods
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Författare
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Examensarbete för masterexamen
Master's Thesis
Master's Thesis
Modellbyggare
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Sammanfattning
Artificial intelligence (AI) is increasingly integrated into healthcare, particularly in
clinical decision support and predictive modeling. However, the limited interpretability
of many machine learning models remains a major challenge for clinical implementation,
motivating growing interest in explainable artificial intelligence (XAI).
This thesis investigates XAI in healthcare from both technical and clinical perspectives.
The clinical perspective was explored through qualitative interviews with
physicians focusing on AI-based decision support systems and the role of explainable
AI in clinical practice. The findings revealed a cautiously optimistic view of
AI-supported decision-making, while emphasizing that clinically useful explanations
should be concise, intuitive, and seamlessly integrated into existing workflows.
The technical part of the study investigated XAI methods for survival prediction
in lymphoma patients using both tabular clinical data and medical imaging data.
Multiple survival modelling approaches, including Cox regression, DeepSurv, and
convolutional neural network models, were implemented and evaluated using several
post-hoc explainability methods across the different data modalities. While
both modalities demonstrated strong predictive performance, the tabular models
achieved slightly stronger results with more stable, interpretable explanations. Furthermore,
different XAI approaches highlighted complementary but inconsistent patterns,
illustrating challenges related to the robustness and reliability of post-hoc
explanations.
Overall, the findings demonstrated that successful clinical integration of AI depends
as much on providing reliable, clinically meaningful explanations as it does on achieving
strong predictive performance.
Beskrivning
Ämne/nyckelord
Explainable AI, survival analysis, SHAP, Grad-CAM, Integrated Gradients, Occlusion Sensitivity, clinical decision support, deep learning, medical imaging
