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Prevention and Control of Pathogens Based on Big-Data Mining and Visualization Analysis

机译:基于大数据挖掘和可视化分析的病原体预防和控制

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Morbidity and mortality caused by infectious diseases rank first among all human illnesses. Many pathogenic mechanisms remain unclear, while misuse of antibiotics has led to the emergence of drug-resistant strains. Infectious diseases spread rapidly and pathogens mutate quickly, posing new threats to human health. However, with the increasing use of high-throughput screening of pathogen genomes, research based on big data mining and visualization analysis has gradually become a hot topic for studies of infectious disease prevention and control. In this paper, the framework was performed on four infectious pathogens (Fusobacterium, Streptococcus, Neisseria and Streptococcus salivarius) through five functions: 1 genome annotation, 2 phylogeny analysis based on core genome, 3 analysis of structure differences between genomes, 4 prediction of virulence genes/factors with their pathogenic mechanisms, and 5 prediction of resistance genes/factors with their signaling pathways. The experiments were carried out from three angles: phylogeny (macro perspective), structure differences of genomes (micro perspective), and virulence and drug-resistance characteristics (prediction perspective). Therefore, the framework can not only provide evidence to support the rapid identification of new or unknown pathogens and thus plays a role in the prevention and control of infectious diseases, but also help to recommend the most appropriate strains for clinical and scientific research. This paper presented a new genome information visualization analysis process framework based on big data mining technology with the accommodation of the depth and breadth of pathogens in molecular level research.
机译:传染病引起的发病率和死亡率在所有人类疾病中排名第一。许多致病机制仍然尚不清楚,而滥用抗生素导致耐药菌株的出现。传染病迅速扩散,病原体迅速变异,对人类健康构成了新的威胁。然而,随着高通量筛查病原体基因组的使用,基于大数据挖掘和可视化分析的研究逐渐成为传染病预防和控制研究的热门话题。本文在四种传染病(Fusobacterium,Streptococcus,Neisseria和Streptococcus唾液)上进行了框架,通过五个功能:1基因组注释,基于核心基因组的系统发育分析,3分析基因组结构差异,4毒力预测基因/因素具有其致病机制,以及5预测其信号通路的抗性基因/因素。从三个角度进行实验:系统发育(宏观观点),基因组(微观角度)和毒力和耐药特性的结构差异(预测视角)。因此,该框架不仅可以提供证据支持新的或未知病原体的快速鉴定,因此起到预防和控制传染病的作用,也有助于为临床和科学研究推荐最合适的菌株。本文介绍了基于大数据挖掘技术的新基因组信息可视化分析过程框架,分子水平研究中病原体的深度和广度的住宿。

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