Examining explainable clinical decision support systems with think aloud protocols.
Sabrina Gabrielle AnjaraAdrianna JanikAmy Dunford-StengerKenneth Mc KenzieAna Collazo-LorduyMaria TorrenteLuca CostabelloMariano ProvencioPublished in: PloS one (2023)
Machine learning tools are increasingly used to improve the quality of care and the soundness of a treatment plan. Explainable AI (XAI) helps users in understanding the inner mechanisms of opaque machine learning models and is a driver of trust and adoption. Explanation methods for black-box models exist, but there is a lack of user studies on the interpretability of the provided explanations. We used a Think Aloud Protocol (TAP) to explore oncologists' assessment of a lung cancer relapse prediction system with the aim of refining the purpose-built explanation model for better credibility and utility. Novel to this context, TAP is used as a neutral methodology to elicit experts' thought processes and judgements of the AI system, without explicit prompts. TAP aims to elicit the factors which influenced clinicians' perception of credibility and usefulness of the system. Ten oncologists took part in the study. We conducted a thematic analysis of their verbalized responses, generating five themes that help us to understand the context within which oncologists' may (or may not) integrate an explainable AI system into their working day.
Keyphrases
- artificial intelligence
- machine learning
- clinical decision support
- palliative care
- advanced cancer
- big data
- electronic health record
- deep learning
- healthcare
- quality improvement
- randomized controlled trial
- transcription factor
- case control
- health information
- binding protein
- affordable care act
- free survival
- social media
- smoking cessation
- clinical evaluation