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Semantic Multi-Classifier Systems Identify Predictive Processes in Heart Failure Models across Species

机译:语义多分类器系统识别跨物种心力衰竭模型中的预测过程

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Genetic model organisms have the potential of removing blind spots from the underlying gene regulatory networks of human diseases. Allowing analyses under experimental conditions they complement the insights gained from observational data. An inevitable requirement for a successful trans-species transfer is an abstract but precise high-level characterization of experimental findings. In this work, we provide a large-scale analysis of seven weak contractility/heart failure genotypes of the model organism zebrafish which all share a weak contractility phenotype. In supervised classification experiments, we screen for discriminative patterns that distinguish between observable phenotypes (homozygous mutant individuals) as well as wild-type (homozygous wild-types) and carriers (heterozygous individuals). As the method of choice we use semantic multi-classifier systems, a knowledge-based approach which constructs hypotheses from a predefined vocabulary of high-level terms (e.g., Kyoto Encyclopedia of Genes and Genomes (KEGG) pathways or Gene Ontology (GO) terms). Evaluating these models leads to a compact description of the underlying processes and guides the screening for new molecular markers of heart failure. Furthermore, we were able to independently corroborate the identified processes in Wistar rats.
机译:遗传模型生物具有从人类疾病的潜在基因调控网络中去除盲点的潜力。允许在实验条件下进行分析,它们补充了从观测数据中获得的见解。成功的跨物种转移的必然要求是对实验发现进行抽象但精确的高水平表征。在这项工作中,我们对模型生物斑马鱼的七个弱收缩力/心力衰竭基因型进行了大规模分析,它们均具有弱的收缩力表型。在监督分类实验中,我们筛选区分可观察到的表型(纯合突变型个体)以及野生型(纯合野生型)和携带者(杂合型个体)的判别模式。作为选择的方法,我们使用语义多分类器系统,这是一种基于知识的方法,可以从预定义的高级术语词汇(例如,《京都议定书》中的基因和基因组百科全书(KEGG)途径或基因本体论(GO)术语)构建假设)。对这些模型进行评估可对基本过程进行紧凑描述,并指导筛选新的心力衰竭分子标记。此外,我们能够独立地证实Wistar大鼠中确定的过程。

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