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Integrated Computational Analysis of Genes Associated with Human Hereditary Insensitivity to Pain. A Drug Repurposing Perspective

机译:与人类遗传性疼痛敏感性相关的基因的综合计算分析。药物利用的观点

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摘要

Genes causally involved in human insensitivity to pain provide a unique molecular source of studying the pathophysiology of pain and the development of novel analgesic drugs. The increasing availability of “big data” enables novel research approaches to chronic pain while also requiring novel techniques for data mining and knowledge discovery. We used machine learning to combine the knowledge about n = 20 genes causally involved in human hereditary insensitivity to pain with the knowledge about the functions of thousands of genes. An integrated computational analysis proposed that among the functions of this set of genes, the processes related to nervous system development and to ceramide and sphingosine signaling pathways are particularly important. This is in line with earlier suggestions to use these pathways as therapeutic target in pain. Following identification of the biological processes characterizing hereditary insensitivity to pain, the biological processes were used for a similarity analysis with the functions of n = 4,834 database-queried drugs. Using emergent self-organizing maps, a cluster of n = 22 drugs was identified sharing important functional features with hereditary insensitivity to pain. Several members of this cluster had been implicated in pain in preclinical experiments. Thus, the present concept of machine-learned knowledge discovery for pain research provides biologically plausible results and seems to be suitable for drug discovery by identifying a narrow choice of repurposing candidates, demonstrating that contemporary machine-learned methods offer innovative approaches to knowledge discovery from available evidence.
机译:因果关系到人类对疼痛的不敏感性的基因为研究疼痛的病理生理学和开发新的止痛药提供了独特的分子来源。 “大数据”的可用性不断提高,从而为慢性疼痛提供了新颖的研究方法,同时还需要用于数据挖掘和知识发现的新颖技术。我们使用机器学习将有关人类遗传性疼痛敏感性的n = 20个基因的知识与成千上万个基因的功能知识相结合。一项综合的计算分析表明,在这组基因的功能中,与神经系统发育以及神经酰胺和鞘氨醇信号通路有关的过程特别重要。这与将这些途径用作疼痛的治疗靶点的早期建议是一致的。在鉴定出特征性的对疼痛的遗传不敏感性的生物学过程之后,将该生物学过程用于n = 4,834数据库查询药物的功能的相似性分析。使用新兴的自组织图谱,鉴定出n = 22的药物簇,它们具有对疼痛的遗传不敏感性的重要功能特征。在临床前实验中,该类的几个成员与疼痛有关。因此,用于疼痛研究的机器学习知识发现的当前概念提供了生物学上合理的结果,并且似乎可以通过确定重新选择候选者的狭窄选择而适用于药物发现,这表明当代机器学习方法为从可用的知识发现提供了创新的方法。证据。

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