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Diagnostic Performance of ChatGPT‐4o and DeepSeek‐3 Differential Diagnosis of Complex Oral Lesions: A Multimodal Imaging and Case Difficulty Analysis
21
Zitationen
7
Autoren
2025
Jahr
Abstract
BACKGROUND: AI models like ChatGPT-4o and DeepSeek-3 show diagnostic promise, but their reliability in complex, image-based oral lesions remains unclear. This study aimed to evaluate and compare the diagnostic accuracy of ChatGPT-4o and DeepSeek-3 despite their differing modalities against oral medicine (OM) experts across varied lesion types and case difficulty levels. METHODS: Eighty standardized clinical vignettes derived from real-world oral disease cases, including clinical images/radiographs, were evaluated. Differential diagnoses were generated by ChatGPT-4o, DeepSeek-3, and four board-certified OM specialists, with accuracy assessed at Top-1, Top-3, and Top-5 levels. RESULTS: OM specialists consistently achieved the highest diagnostic accuracy. However, DeepSeek-3 significantly outperformed ChatGPT-4o at the Top-3 level (p = 0.0153) and showed greater robustness in high-difficulty and inflammatory cases despite its text-only modality. Multimodal imaging enhanced diagnostic accuracy. Regression analysis indicated lesion type and imaging modality as positive predictors, while diagnostic difficulty negatively impacted Top-1 performance. CONCLUSIONS: Remarkably, the text-only DeepSeek-3 model exceeded the diagnostic performance of the multimodal ChatGPT-4o model for complex oral lesions, highlighting its structured reasoning capabilities and reduced hallucination rate. These findings underscore the potential of non-vision LLMs in diagnostic support, emphasizing the critical need for expert oversight in complex scenarios.
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