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Using text mining to understand traditional Chinese medicine pathogenesis of nonalcoholic fatty liver disease

机译:利用文本挖掘来了解非酒精性脂肪肝的中医发病机制

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Non-alcoholic fatty liver disease (NAFLD) is a kind of prevalence diseases. Traditional Chinese medicine (TCM) has better efficacy on treating NAFLD. But there are also not known about the critical pathogenesis and the corresponding biological factors. Regarding this, we addressed a text mining approach to analyze the pattern profile, rule of medication, and the pathological factors of NAFLD from the opening database (SinoMed and PubMed). Based on canonical data source, we have our data treatment scheduled in 4 steps: (1) data retrieving, (2) data pretreating, (3) data analyzing, and (4) data visualization. And according to the TCM theory of formulae-pattern-disease' correlation, we partly understand the possible TCM pathogenesis of NAFLD which linked biological process of lipid metabolism disorder, inflammation, and metabolic regulation confusion.
机译:非酒精性脂肪肝是一种流行病。中药(TCM)在治疗NAFLD中有更好的疗效。但是还不清楚关键的发病机理和相应的生物学因素。关于这一点,我们提出了一种文本挖掘方法,用于从开放数据库(SinoMed和PubMed)中分析模式特征,用药规则以及NAFLD的病理因素。基于规范的数据源,我们将数据处理安排为4个步骤:(1)数据检索,(2)数据预处理,(3)数据分析和(4)数据可视化。并根据中医“公式-疾病-疾病”的相关理论,部分了解了NAFLD的中医发病机制,它可能与脂质代谢紊乱,炎症和代谢调控混乱的生物学过程有关。

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