Artificial Intelligence in Traditional Chinese Medicine: Multimodal Fusion and Machine Learning for Enhanced Diagnosis and Treatment Efficacy.

IF 1.5 4区 医学 Q3 MEDICINE, RESEARCH & EXPERIMENTAL
Jie Wang, Yong-Mei Liu, Jun Li, Hao-Qiang He, Chao Liu, Yi-Jie Song, Su-Ya Ma
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引用次数: 0

Abstract

Artificial intelligence (AI) serves as a key technology in global industrial transformation and technological restructuring and as the core driver of the fourth industrial revolution. Currently, deep learning techniques, such as convolutional neural networks, enable intelligent information collection in fields such as tongue and pulse diagnosis owing to their robust feature-processing capabilities. Natural language processing models, including long short-term memory and transformers, have been applied to traditional Chinese medicine (TCM) for diagnosis, syndrome differentiation, and prescription generation. Traditional machine learning algorithms, such as neural networks, support vector machines, and random forests, are also widely used in TCM diagnosis and treatment because of their strong regression and classification performance on small structured datasets. Future research on AI in TCM diagnosis and treatment may emphasize building large-scale, high-quality TCM datasets with unified criteria based on syndrome elements; identifying algorithms suited to TCM theoretical data distributions; and leveraging AI multimodal fusion and ensemble learning techniques for diverse raw features, such as images, text, and manually processed structured data, to increase the clinical efficacy of TCM diagnosis and treatment.

人工智能在中医中的应用:多模态融合和机器学习提高诊疗效果。
人工智能是全球产业转型和技术结构调整的关键技术,是第四次工业革命的核心驱动力。目前,深度学习技术,如卷积神经网络,由于其强大的特征处理能力,可以在舌头和脉搏诊断等领域实现智能信息收集。包括长短期记忆和变形在内的自然语言处理模型已被应用于中医的诊断、辨证和处方生成。传统的机器学习算法,如神经网络、支持向量机、随机森林等,由于在小型结构化数据集上具有较强的回归和分类性能,在中医诊疗中也得到了广泛的应用。未来人工智能在中医诊疗中的研究可侧重于基于证候要素构建具有统一标准的大规模、高质量中医数据集;适合中医理论数据分布的识别算法;利用人工智能多模态融合和集成学习技术,对图像、文本和人工处理的结构化数据等多种原始特征进行融合,提高中医诊疗的临床疗效。
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来源期刊
Current Medical Science
Current Medical Science Biochemistry, Genetics and Molecular Biology-Genetics
CiteScore
4.70
自引率
0.00%
发文量
126
期刊介绍: Current Medical Science provides a forum for peer-reviewed papers in the medical sciences, to promote academic exchange between Chinese researchers and doctors and their foreign counterparts. The journal covers the subjects of biomedicine such as physiology, biochemistry, molecular biology, pharmacology, pathology and pathophysiology, etc., and clinical research, such as surgery, internal medicine, obstetrics and gynecology, pediatrics and otorhinolaryngology etc. The articles appearing in Current Medical Science are mainly in English, with a very small number of its papers in German, to pay tribute to its German founder. This journal is the only medical periodical in Western languages sponsored by an educational institution located in the central part of China.
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