The role of saliency maps in enhancing ophthalmologists' trust in artificial intelligence models.
Wong Carolyn Yu Tung, Antaki Fares, Woodward-Court Peter, Ong Ariel Yuhan, Keane Pearse A
AI Summary
This review found saliency maps, often used to validate AI in ophthalmology, are currently not beneficial for building clinician trust due to technical limitations and superficial assessment.
Abstract
Purpose
Saliency maps (SM) allow clinicians to better understand the opaque decision-making process in artificial intelligence (AI) models by visualising the important features responsible for predictions. This ultimately improves interpretability and confidence. In this work, we review the use case for SMs, exploring their impact on clinicians' understanding and trust in AI models. We use the following ophthalmic conditions as examples: (1) glaucoma, (2) myopia, (3) age-related macular degeneration, and (4) diabetic retinopathy.
Method
A multi-field search on MEDLINE, Embase, and Web of Science was conducted using specific keywords. Only studies on the use of SMs in glaucoma, myopia, AMD, or DR were considered for inclusion.
Results
Findings reveal that SMs are often used to validate AI models and advocate for their adoption, potentially leading to biased claims. Overlooking the technical limitations of SMs, and the conductance of superficial assessments of their quality and relevance, was discerned. Uncertainties persist regarding the role of saliency maps in building trust in AI. It is crucial to enhance understanding of SMs' technical constraints and improve evaluation of their quality, impact, and suitability for specific tasks. Establishing a standardised framework for selecting and assessing SMs, as well as exploring their relationship with other reliability sources (e.g. safety and generalisability), is essential for enhancing clinicians' trust in AI.
Conclusion
We conclude that SMs are not beneficial for interpretability and trust-building purposes in their current forms. Instead, SMs may confer benefits to model debugging, model performance enhancement, and hypothesis testing (e.g. novel biomarkers).
MeSH Terms
Shields Classification
Key Concepts5
Saliency maps (SMs) are not beneficial for interpretability and trust-building purposes in artificial intelligence (AI) models in their current forms.
Saliency maps (SMs) may confer benefits to model debugging, model performance enhancement, and hypothesis testing (e.g., novel biomarkers) in artificial intelligence (AI) models.
Uncertainties persist regarding the role of saliency maps (SMs) in building trust in artificial intelligence (AI) models, and it is crucial to enhance understanding of SMs' technical constraints and improve evaluation of their quality, impact, and suitability for specific tasks.
A multi-field search on MEDLINE, Embase, and Web of Science was conducted using specific keywords to review the use case for saliency maps (SMs) in ophthalmology.
Only studies on the use of saliency maps (SMs) in glaucoma, myopia, age-related macular degeneration (AMD), or diabetic retinopathy (DR) were considered for inclusion in a systematic review.
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