Advances in deep learning: From diagnosis to treatment.

IF 5.7 4区 生物学 Q1 BIOLOGY Bioscience trends Pub Date : 2023-07-11 DOI:10.5582/bst.2023.01148
Tianqi Huang, Longfei Ma, Boyu Zhang, Hongen Liao
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Abstract

Deep learning has brought about a revolution in the field of medical diagnosis and treatment. The use of deep learning in healthcare has grown exponentially in recent years, achieving physician-level accuracy in various diagnostic tasks and supporting applications such as electronic health records and clinical voice assistants. The emergence of medical foundation models, as a new approach to deep learning, has greatly improved the reasoning ability of machines. Characterized by large training datasets, context awareness, and multi-domain applications, medical foundation models can integrate various forms of medical data to provide user-friendly outputs based on a patien's information. Medical foundation models have the potential to integrate current diagnostic and treatment systems, providing the ability to understand multi-modal diagnostic information and real-time reasoning ability in complex surgical scenarios. Future research on foundation model-based deep learning methods will focus more on the collaboration between physicians and machines. On the one hand, developing new deep learning methods will reduce the repetitive labor of physicians and compensate for shortcomings in their diagnostic and treatment capabilities. On the other hand, physicians need to embrace new deep learning technologies, comprehend the principles and technical risks of deep learning methods, and master the procedures for integrating them into clinical practice. Ultimately, the integration of artificial intelligence analysis with human decision-making will facilitate accurate personalized medical care and enhance the efficiency of physicians.

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深度学习的进展:从诊断到治疗。
深度学习在医学诊断和治疗领域带来了一场革命。近年来,深度学习在医疗保健领域的应用呈指数级增长,在各种诊断任务中实现了医生级别的准确性,并支持电子健康记录和临床语音助手等应用程序。医学基础模型的出现,作为一种新的深度学习方法,大大提高了机器的推理能力。医学基础模型以大型训练数据集、上下文感知和多领域应用为特征,可以集成各种形式的医疗数据,以基于患者信息提供用户友好的输出。医学基础模型具有整合当前诊断和治疗系统的潜力,能够在复杂的手术场景中理解多模态诊断信息和实时推理能力。未来基于基础模型的深度学习方法的研究将更多地集中在医生和机器之间的协作上。一方面,开发新的深度学习方法将减少医生的重复劳动,弥补其诊断和治疗能力的不足。另一方面,医生需要接受新的深度学习技术,理解深度学习方法的原理和技术风险,并掌握将其融入临床实践的流程。最终,人工智能分析与人类决策的结合将有助于实现精准的个性化医疗,提高医生的工作效率。
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来源期刊
CiteScore
13.60
自引率
1.80%
发文量
47
审稿时长
>12 weeks
期刊介绍: BioScience Trends (Print ISSN 1881-7815, Online ISSN 1881-7823) is an international peer-reviewed journal. BioScience Trends devotes to publishing the latest and most exciting advances in scientific research. Articles cover fields of life science such as biochemistry, molecular biology, clinical research, public health, medical care system, and social science in order to encourage cooperation and exchange among scientists and clinical researchers.
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