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mso-bidi-theme-font: minor-latin;">The CHIP 2024 Evaluation Track proceedings include 19 full papers which were carefully reviewed and grouped into these topical sections: syndrome differentiation thought in Traditional Chinese Medicine;
.- Syndrome Differentiation Thought in Traditional Chinese Medicine..- Overview of the evaluation task for syndrome differentiation thought in traditional Chinese medicine in CHIP2024..- Traditional Chinese Medicine Case Analysis System for High-Level Semantic Abstraction: Optimized with Prompt and RAG..- A TCM Syndrome Differentiation Thinking Method Based on Chain of Thought and Knowledge Retrieval Augmentation..- Fine-Tuning Large Language Models for Syndrome Differentiation in Traditional Chinese Medicine..- Iterative Retrieval Augmentation for Syndrome Differentiation via Large Language Models..- Lymphoma Information Extraction and Automatic Coding..- Benchmark for Lymphoma Information Extraction and Automated Coding..- Overview of the Lymphoma Information Extraction and Automatic Coding Evaluation Task in CHIP 2024..- Automatic ICD Code Generation for Lymphoma Using Large Language Models..- Lymphoma Tumor Coding and Information Extraction: A Comparative Analysis of Large Language Model-based Methods..- Leveraging Chain of Thought for Automated Medical Coding of Lymphoma Cases..- Harnessing Retrieval-Augmented LLMs for Training-Free Tumor Coding Classification..- Hierarchical Information Extraction and Classification of Lymphoma Tumor Codes Based On LLM..- Typical Case Diagnosis Consistenc..- Benchmark of the Typical Case Diagnosis Consistency Evaluation Task in CHIP2024..- Overview of the Typical Case Diagnosis Consistency Evaluation Task in CHIP2024..- The Diagnosis of Typical Medical Cases through Optimized Fine-Tuning of Large Language Models..- Utilizing Large Language Models Enhanced by Chain-of-Thought for the Diagnosis of Typical Medical Cases..- Assessing Diagnostic Consistency in Clinical Cases: A Fine-Tuned LLM Voting and GPT Error Correction Framework..- Typical Medical Case Diagnosis with Voting and Answer Discrimination using Fine-tuned LLM..- Reliable Typical Case Diagnosis via Optimized Retrieval-Augmented Generation Techniques.