Deep learning-aided decision support for diagnosis of skin disease across skin tones
Northwestern University · Kellogg's (Canada) · +4 more institutions
Abstract
Although advances in deep learning systems for image-based medical diagnosis demonstrate their potential to augment clinical decision-making, the effectiveness of physician-machine partnerships remains an open question, in part because physicians and algorithms are both susceptible to systematic errors, especially for diagnosis of underrepresented populations. Here we present results from a large-scale digital experiment involving board-certified dermatologists (n = 389) and primary-care physicians (n = 459) from 39 countries to evaluate the accuracy of diagnoses submitted by physicians in a store-and-forward teledermatology simulation. In this experiment, physicians were presented with 364 images spanning 46…
Citation impact
- FWCI
- 31.84
- Percentile
- 100%
- References
- 88
Authors
8Topics & keywords
- Medical diagnosis
- Teledermatology
- Diagnostic accuracy
- Board certification
- Artificial intelligence
- Certification
- Medicine
- Medical decision making
- Partnerships for the goals