Traditional Chinese medicine: potential approaches from modern dynamical complexity theories
Received date: 11 Sep 2015
Accepted date: 10 Dec 2015
Published date: 31 Mar 2016
Copyright
Despite the widespread use of traditional Chinese medicine (TCM) in clinical settings, proving its effectiveness via scientific trials is still a challenge. TCM views the human body as a complex dynamical system, and focuses on the balance of the human body, both internally and with its external environment. Such fundamental concepts require investigations using system-level quantification approaches, which are beyond conventional reductionism. Only methods that quantify dynamical complexity can bring new insights into the evaluation of TCM. In a previous article, we briefly introduced the potential value of Multiscale Entropy (MSE) analysis in TCM. This article aims to explain the existing challenges in TCM quantification, to introduce the consistency of dynamical complexity theories and TCM theories, and to inspire future system-level research on health and disease.
Yan Ma , Kehua Zhou , Jing Fan , Shuchen Sun . Traditional Chinese medicine: potential approaches from modern dynamical complexity theories[J]. Frontiers of Medicine, 2016 , 10(1) : 28 -32 . DOI: 10.1007/s11684-016-0434-2
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