首页> 外文期刊>Pharmacological research: The official journal of The Italian Pharmacological Society >Network topology and machine learning analyses reveal microstructural white matter changes underlying Chinese medicine Dengzhan Shengmai treatment on patients with vascular cognitive impairment
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Network topology and machine learning analyses reveal microstructural white matter changes underlying Chinese medicine Dengzhan Shengmai treatment on patients with vascular cognitive impairment

机译:网络拓扑和机器学习分析揭示了中医邓先兴盛马治疗血管认知障碍患者的微观结构白质变化

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With the increasing incidence of cerebrovascular diseases and dementia, considerable efforts have been made to develop effective treatments on vascular cognitive impairment (VCI), among which accumulating practice-based evidence has shown great potential of the traditional Chinese medicine (TCM). Current randomized double-blind controlled trial has been designed to evaluate the 6-month treatment effects of Dengzhan Shengmai (DZSM) capsules, one TCM herbal preparations on VCI, and to explore the underlying neural mechanisms with graph theory-based analysis and machine learning method based on diffusion tensor imaging (DTI) data. A total of 82 VCI patients were recruited and randomly assigned to drug (45 with DZSM) and placebo (37 with placebo) groups, and neuropsychological and neuroimaging data were acquired at baseline and after 6-month treatment. After treatment, compared to the placebo group, the drug groups showed significantly improved performance in Alzheimer's Disease Assessment Scale-Cognitive subscale (ADAS-cog) score (p < 0.001) and the other cognitive domains. And with the reconstruction of white matter structural network, there were more streamlines connecting the left thalamus and right hippocampus in the drug groups (p < 0.001 uncorrected), with decreasing nodal efficiency of the right olfactory associated with slower decline in the general cognition (r = 0.364, p = 0.048). Moreover, support vector machine classification analyses revealed significant white matter network alterations after treatment in the drug groups (accuracy of baseline vs. 6-month later, 68.18 %). Taking together, the present study showed significant efficacy of DZSM treatment on VCI, which might result from white matter microstructure alterations and the topological changes in brain structural network.
机译:随着脑血管疾病和痴呆症的发病率越来越大,已经对血管认知障碍(VCI)的有效治疗产生了相当大的努力,其中累积的实践证据表明了中医(TCM)的巨大潜力。目前的随机双盲对照试验旨在评估邓志盛麦(DZSM)胶囊的6个月治疗效果,在VCI上进行TCM草药制剂,并探讨了基于图形理论的分析和机器学习方法的潜在神经机制基于扩散张量成像(DTI)数据。招募了82名VCI患者,并随机分配给药物(用DZSM)和安慰剂(37带安慰剂)组,在基线和6个月治疗后获得神经心理学和神经影像数据。在治疗后,与安慰剂组相比,药物组在阿尔茨海默病评估规模 - 认知次级(ADAS-COG)得分(P <0.001)和其他认知结构域中表现出显着提高的性能。随着白质结构网络的重建,还有更多的简化在药物组中连接左丘脑和右海马(P <0.001未纠正),随着右侧嗅觉的右嗅觉的节点效率降低(R. = 0.364,p = 0.048)。此外,支持向量机分类分析显示在药物组治疗后显着的白质网络改变(基线与6个月后的准确性,68.18%)。在一起,本研究表明DZSM治疗对VCI的显着功效,这可能是由于白质微观结构改变和脑结构网络的拓扑变化导致。

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