This study introduces an innovative approach using external planners augmented with large language models (LLMs) to develop a medical task-oriented dialogue system for conversational disease diagnosis. The system comprises a policy module for information gathering, and an LLM-based module for natural language understanding and generation, addressing the limitations of previous AI systems in these areas.
Tuning large language models with a diverse, machine-generated medical instruction-response dataset, MedInstruct-52k, can significantly boost their performance on medical applications while also improving their generalizability.
A novel computational bionic memory mechanism, equipped with a parameter-efficient fine-tuning schema, is proposed to personalize medical assistants and enhance their response quality by catering to user-specific needs.
Meerkat-7B, a novel 7-billion parameter open-source medical AI system, achieves state-of-the-art performance on medical benchmarks by leveraging chain-of-thought reasoning data synthesized from medical textbooks.
Significant biases exist in widely-used vision-language models, with Asian, Male, Non-Hispanic, and Spanish being the preferred subgroups across the protected attributes of race, gender, ethnicity, and language, respectively. FairCLIP, an optimal transport-based approach, achieves a favorable trade-off between performance and fairness by reducing the Sinkhorn distance between the overall sample distribution and the distributions corresponding to each demographic group.
Combining the strengths of Bayesian Networks and Deep Learning models can improve the accuracy and reliability of cancer imaging diagnosis.
ArgMed-Agents improves clinical decision reasoning accuracy and explainability through argumentation schemes.
Interpretable AI model for diagnosing choroid neoplasias with high accuracy and improved diagnostic performance for junior doctors.
개발된 Apollo은 61억 인구를 대상으로 하는 최첨단 다국어 의료 LLMs를 제공합니다.
SERVAL is an unsupervised learning pipeline that enhances zero-shot medical prediction by leveraging the synergy between large language models (LLMs) and vertical models.