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Systems Theory-Driven Framework for AI Integration into the Holistic Material Basis Research of Traditional Chinese Medicine

Jingqi Zeng, Xiao‐Bin Jia

2024Engineering35 citationsDOIOpen Access PDF

Abstract

This research introduces a systems theory-driven framework to integration artificial intelligence (AI) into traditional Chinese medicine (TCM) research, enhancing the understanding of TCM’s holistic material basis while adhering to evidence-based principles. Utilizing the System Function Decoding Model (SFDM), the research progresses through define, quantify, infer, and validate phases to systematically explore TCM’s material basis. It employs a dual analytical approach that combines top-down, systems theory-guided perspectives with bottom-up, elements–structure–function methodologies, provides comprehensive insights into TCM’s holistic material basis. Moreover, the research examines AI’s role in quantitative assessment and predictive analysis of TCM’s material components, proposing two specific AI-driven technical applications. This interdisciplinary effort underscores AI’s potential to enhance our understanding of TCM’s holistic material basis and establishes a foundation for future research at the intersection of traditional wisdom and modern technology.

Topics & Concepts

Computer scienceFunction (biology)Dual (grammatical number)Intersection (aeronautics)Management scienceArtificial intelligenceData scienceEngineeringLiteratureBiologyEvolutionary biologyArtAerospace engineeringTraditional Chinese Medicine StudiesMetabolomics and Mass Spectrometry StudiesTraditional Chinese Medicine Analysis
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