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St. Gallen International Breast Cancer Consensus-Based Clinical Decision Validation: Concordance Assessment Between Deep Large Language Model Outputs and Global Expert Panel Recommendations
1
Zitationen
12
Autoren
2026
Jahr
Abstract
DeepSeek models showed moderate concordance in following the consensus of breast cancer expert panel and showed significant advantages in answer robustness, suggesting that DeepSeek has great application potential in the field of clinical decision-making for breast cancer.
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