Developing ChatGPT for biology and medicine: a complete review of biomedical question answering.

Qing Li, Lei Li, Yu Li
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Abstract

ChatGPT explores a strategic blueprint of question answering (QA) to deliver medical diagnoses, treatment recommendations, and other healthcare support. This is achieved through the increasing incorporation of medical domain data via natural language processing (NLP) and multimodal paradigms. By transitioning the distribution of text, images, videos, and other modalities from the general domain to the medical domain, these techniques have accelerated the progress of medical domain question answering (MDQA). They bridge the gap between human natural language and sophisticated medical domain knowledge or expert-provided manual annotations, handling large-scale, diverse, unbalanced, or even unlabeled data analysis scenarios in medical contexts. Central to our focus is the utilization of language models and multimodal paradigms for medical question answering, aiming to guide the research community in selecting appropriate mechanisms for their specific medical research requirements. Specialized tasks such as unimodal-related question answering, reading comprehension, reasoning, diagnosis, relation extraction, probability modeling, and others, as well as multimodal-related tasks like vision question answering, image captioning, cross-modal retrieval, report summarization, and generation, are discussed in detail. Each section delves into the intricate specifics of the respective method under consideration. This paper highlights the structures and advancements of medical domain explorations against general domain methods, emphasizing their applications across different tasks and datasets. It also outlines current challenges and opportunities for future medical domain research, paving the way for continued innovation and application in this rapidly evolving field. This comprehensive review serves not only as an academic resource but also delineates the course for future probes and utilization in the field of medical question answering.

为生物学和医学开发 ChatGPT:生物医学问题解答完整回顾。
ChatGPT 探索了问题解答(QA)的战略蓝图,以提供医疗诊断、治疗建议和其他医疗保健支持。这是通过自然语言处理(NLP)和多模态范例对医疗领域数据的不断整合来实现的。通过将文本、图像、视频和其他模式的分布从普通领域过渡到医疗领域,这些技术加快了医疗领域问题解答(MDQA)的进展。这些技术弥补了人类自然语言与复杂的医学领域知识或专家提供的人工注释之间的差距,可以处理大规模、多样化、不平衡甚至无标注的医学数据分析场景。我们的工作重点是利用语言模型和多模态范例来回答医学问题,旨在指导研究界选择适合其特定医学研究要求的机制。我们详细讨论了与单模态相关的问题解答、阅读理解、推理、诊断、关系提取、概率建模等专业任务,以及与多模态相关的视觉问题解答、图像字幕、跨模态检索、报告摘要和生成等任务。每一部分都深入探讨了相关方法的复杂细节。本文重点介绍了医学领域探索与一般领域方法相比的结构和进步,强调了它们在不同任务和数据集中的应用。它还概述了当前的挑战和未来医学领域研究的机遇,为这一快速发展领域的持续创新和应用铺平了道路。这篇全面的综述不仅可以作为学术资源,还为医学问题解答领域未来的探索和应用指明了方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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