Explainable medical imaging AI needs human-centered design: guidelines and evidence from a systematic review
Johns Hopkins University · Johns Hopkins Medicine · +1 more institution
Abstract
Transparency in Machine Learning (ML), often also referred to as interpretability or explainability, attempts to reveal the working mechanisms of complex models. From a human-centered design perspective, transparency is not a property of the ML model but an affordance, i.e., a relationship between algorithm and users. Thus, prototyping and user evaluations are critical to attaining solutions that afford transparency. Following human-centered design principles in highly specialized and high stakes domains, such as medical image analysis, is challenging due to the limited access to end users and the knowledge imbalance between those users and ML designers. To investigate the state of transparent ML in medical…
Citation impact
- FWCI
- 12.67
- Percentile
- 100%
- References
- 108
Authors
4Topics & keywords
- Transparency (behavior)
- Formative assessment
- Interpretability
- Affordance
- Computer science
- Guideline
- Inclusion (mineral)
- User-centered design
- Reduced inequalities