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Digital intelligence technology: new quality productivity for precision traditional Chinese medicine

Affiliation
Shandong Key Laboratory of Digital Traditional Chinese Medicine ,Institute of Pharmaceutical Research ,Shandong University of Traditional Chinese Medicine ,Jinan ,China
Zhu, Junqing;
Affiliation
Shandong Key Laboratory of Digital Traditional Chinese Medicine ,Institute of Pharmaceutical Research ,Shandong University of Traditional Chinese Medicine ,Jinan ,China
Liu, Xiaonan;
Affiliation
Shandong Key Laboratory of Digital Traditional Chinese Medicine ,Institute of Pharmaceutical Research ,Shandong University of Traditional Chinese Medicine ,Jinan ,China
Gao, Peng

Traditional Chinese medicine is a complex medical system characterized by multiple metabolites, targets, and pathways, known for its low drug resistance and significant efficacy. However, challenges persist within Traditional Chinese medicine, including difficulties in assessing the quality of Botanical drugs, reliance on experiential knowledge for disease diagnosis and treatment, and a lack of clarity regarding the pharmacological mechanisms of Traditional Chinese medicine. The advancement of digital intelligence technology is driving a shift towards precision medicine within the Traditional Chinese medicine model. This transition propels Traditional Chinese medicine into an era of precision, intelligence, and digitalization. This paper introduces standard digital intelligence technologies and explores the application of digital intelligence technologies in quality control and evaluation of Traditional Chinese medicine, studies the research status of digital intelligence technologies in assisting diagnosis, treatment and prevention of diseases, and further promotes the application and development of digital intelligence technologies in the field of Traditional Chinese medicine.

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License Holder: Copyright © 2025 Zhu, Liu and Gao.

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