Approximating facial expression effects on diagnostic accuracy via generative AI in medical genetics
Published in Bioinformatics, 2024
Recommended citation: Patel, Tanviben et al. "Approximating facial expression effects on diagnostic accuracy via generative AI in medical genetics." Bioinformatics. Oxford University Press, 2024 https://academic.oup.com/bioinformatics/article-abstract/40/Supplement_1/i110/7700869
SummaryArtificial intelligence (AI) is increasingly used in genomics research and practice, and generative AI has garnered significant recent attention. In clinical applications of generative AI, aspects of the underlying datasets can impact results, and confounders should be studied and mitigated. One example involves the facial expressions of people with genetic conditions. Stereotypically, Williams (WS) and Angelman (AS) syndromes are associated with a ‘‘happy’’ demeanor, including a smiling expression. Clinical geneticists may be more likely to identify these conditions in images of smiling individuals. To study the impact of facial expression, we analyzed publicly available facial images of approximately 3500 individuals with genetic conditions. Using a deep learning (DL) image classifier, we found that WS and AS images with non-smiling expressions had significantly lower prediction probabilities for …