多模态医学问题解答调查

Hilmi Demirhan, Wlodek Zadrozny
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引用次数: 0

摘要

多模态医疗问题解答(MMQA)是连接医疗保健与人工智能(AI)的重要领域。本调查有条不紊地考察了近年来发表的多模态医学问题解答(MMQA)研究成果。我们通过谷歌学术收集学术文献,并对这些研究中使用的出版物和数据集进行文献计量分析。我们的分析表明,随着时间的推移,人们对 MMQA 的兴趣与日俱增,自然语言处理、计算机视觉和大型语言模型等不同领域的研究都为 MMQA 做出了贡献。医疗领域多模态问题解答中使用的人工智能方法以及 MMQA 在医疗领域的适用性是一个突出的重点。由于医学是一门涉及人类健康的科学,其敏感性使医学领域的 MMQA 面临着独特的挑战。调查显示,MMQA 研究正处于探索阶段,讨论了不同的方法、数据集和潜在的商业模式。预计未来的研究将侧重于大型科技公司(如 MedPalm)的应用开发。调查旨在深入了解多模态医学问题解答的现状,突出学术界和产业界日益增长的兴趣。已确定的研究差距和趋势将为未来的调查提供指导,并鼓励各方共同努力推动这一变革性领域的发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Survey of Multimodal Medical Question Answering
Multimodal medical question answering (MMQA) is a vital area bridging healthcare and Artificial Intelligence (AI). This survey methodically examines the MMQA research published in recent years. We collect academic literature through Google Scholar, applying bibliometric analysis to the publications and datasets used in these studies. Our analysis uncovers the increasing interest in MMQA over time, with diverse domains such as natural language processing, computer vision, and large language models contributing to the research. The AI methods used in multimodal question answering in the medical domain are a prominent focus, accompanied by applicability of MMQA to the medical field. MMQA in the medical field has its unique challenges due to the sensitive nature of medicine as a science dealing with human health. The survey reveals MMQA research to be in an exploratory stage, discussing different methods, datasets, and potential business models. Future research is expected to focus on application development by big tech companies, such as MedPalm. The survey aims to provide insights into the current state of multimodal medical question answering, highlighting the growing interest from academia and industry. The identified research gaps and trends will guide future investigations and encourage collaborative efforts to advance this transformative field.
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