核心概念
Artificial Intelligence enhances dermatological analysis with large language models.
摘要
Dermacen Analytica introduces a novel methodology integrating large language models and machine learning tools to assist in diagnosing skin lesions and conditions. The workflow combines vision transformers, segmentation algorithms, and classifiers for a comprehensive approach. Evaluation includes cross-model validation and expert assessment. The system achieved high scores for contextual understanding and diagnostic accuracy, proving its efficacy in enhancing dermatological analysis.
統計資料
"The proposed methodology achieved approximate (weighted) scores of 0.87 for both contextual understanding and diagnostic accuracy."
"The lesion has an asymmetry of 0.00823 (asymmetry plot 1) and 0.1062 (asymmetry plot 2), for an average asymmetry of 0.05722464257917816."
"Circularity Index: Determined to be 0.68, indicating an irregular shape that deviates from perfect circularity."
引述
"The image depicts a close-up view of a skin condition characterized by a reddish-pink background with irregular white patchy areas." - Initial Assessment
"Diagnosis - Darier Disease (Keratosis Follicularis)" - AI-generated Response