| Literature DB >> 22675378 |
Jianye Dai1, Shujun Sun, Huijuan Cao, Ningning Zheng, Wenyu Wang, Xiaojun Gou, Shibing Su, Yongyu Zhang.
Abstract
With the hope to provide an effective approach for personalized diagnosis and treatment clinically, Traditional Chinese Medicine (TCM) is being paid increasing attention as a complementary and alternative medicine. It performs treatment based on ZHENG (TCM syndrome) differentiation, which could be identified as clinical special phenotypes by symptoms and signs of patients. However, it caused skepticism and criticism because ZHENG classification only depends on observation, knowledge, and clinical experience of TCM practitioners, which is lack of objectivity and repeatability. Scientists have done fruitful researches for its objectivity and standardization. Compared with traditional four diagnostic methods (looking, listening and smelling, asking, and touching), in this paper, the applications of new technologies and new methods on the ZHENG differentiation were systemically reviewed, including acquisition, analysis, and integration of clinical data or information. Furthermore, the characteristics and application range of these technologies and methods were summarized. It will provide reference for further researches.Entities:
Year: 2012 PMID: 22675378 PMCID: PMC3364574 DOI: 10.1155/2012/298014
Source DB: PubMed Journal: Evid Based Complement Alternat Med ISSN: 1741-427X Impact factor: 2.629
Brief introduction of “Omics” and bioinformatics.
| Omics | Objects | Technologies and methods | Advantages | Disadvantages | Literatures |
|---|---|---|---|---|---|
| Genomics | DNA, | Gene sequence, | Gene polymorphism | Nonassociation to | Wu et al. [ |
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| Proteomics | Amino acids, | Cleaving isotope-coded affinity tag, | Performer of life function | Instability | Liu et al. [ |
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| Metabonomics | Metabolites | NMR, GC-MS, LC-MS | Amplified action | Lack of beneficial | Van Wietmarschen et al. [ |
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| Bioinformatics | Data, | Data mining, network analysis, topological | Totally holism Exploration of | Needing | Li [ |
Brief introduction of data mining methods.
| Methods | Advantages | Disadvantages | Literatures |
|---|---|---|---|
| Logistic regression | Multifunction | Needing of sample size | Luo et al. [ |
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| Bayesian networks | Utilization of incomplete and inaccurate data | Needing of preceding researches as guidance | Qu et al. [ |
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| Rough sets theory | Without priori information; simplicity; handling ambiguous and uncertain information | Needing of self-development | Zhang et al. [ |
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| Association rules mining | Supporting indirect data mining | Nonselectivity; subjectivity | Wu et al. [ |
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| Set pair analysis | Suitability for changing systems | Handicap in handle relatively precise problems | Li et al. [ |
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| Structural equation modeling | Analyzing the causality between the latent variables | Needs of 200 samples at least | Chen et al. [ |
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| Cluster analysis | Minimization errors caused by subjective judgment | Too much calculation; handicap in clustering data with multidimensions and multilevel | Gu et al. [ |
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| Decision trees | Handling in nonnumeric data; Simplicity | Maybe misleading | Zhong et al. [ |
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| Principal component analysis | Dimension reduction; holism | Less specificity | Lu et al. [ |
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| Partial least squares method | Specificity | Handicap in deciding principal component | Van Wietmarschen et al. [ |
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| Artificial neural network | Simplicity; nonlinear | Handicap in obtaining the hidden information | Sun et al. [ |
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| Entropy cluster algorithm | Little demand on variances' types; analysis on any statistical dependence of the variances | Needing of self-development | Wang et al. [ |
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| Factor analysis | Correction capability; views to latent variables | Absence of domination and relationship between primary and secondary | Wang et al. [ |
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| Support vector machine | Classification without representing the feature space explicitly | Expressing the more complex prior information; analyzing limited samples | Yang et al. [ |
Figure 1Schematic diagram of research approach for ZHENG differentiation.