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Computational Analysis and In silico Predictive Modeling for Inhibitors of PhoP Regulon in S. typhi on High-Throughput Screening Bioassay Dataset

机译:高通量筛选生物测定数据集上鼠伤寒沙门氏菌PhoP调节子抑制剂的计算分析和计算机预测模型

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摘要

There is emergence of multidrug-resistant Salmonella enterica serotype typhi in pandemic proportions throughout the world, and therefore, there is a necessity to speed up the discovery of novel molecules having different modes of action and also less influenced by the resistance formation that would be used as drug for the treatment of salmonellosis particularly typhoid fever. The PhoP regulon is well studied and has now been shown to be a critical regulator of number of gene expressions which are required for intracellular survival of S. enterica and pathophysiology of disease like typhoid. The evident roles of two-component PhoP-/PhoQ-regulated products in salmonella virulence have motivated attempts to target them therapeutically. Although the discovery process of biologically active compounds for the treatment of typhoid relies on hit-finding procedure, using high-throughput screening technology alone is very expensive, as well as time consuming when performed on large scales. With the recent advancement in combinatorial chemistry and contemporary technique for compounds synthesis, there are more and more compounds available which give ample growth of diverse compound library, but the time and endeavor required to screen these unfocused massive and diverse library have been slightly reduced in the past years. Hence, there is demand to improve the high-quality hits and success rate for high-throughput screening that required focused and biased compound library toward the particular target. Therefore, we still need an advantageous and expedient method to prioritize the molecules that will be utilized for biological screens, which saves time and is also inexpensive. In this concept, in silico methods like machine learning are widely applicable technique used to build computational model for high-throughput virtual screens to prioritize molecules for advance study. Furthermore, in computational analysis, we extended our study to identify the common enriched structural entities among the biologically active compound toward finding out the privileged scaffold.
机译:全世界都以大流行的比例出现了多药耐药的肠炎沙门氏菌血清型,因此,有必要加快发现具有不同作用方式且受耐药性影响较小的新型分子的发现。作为治疗沙门氏菌病特别是伤寒的药物。 PhoP调节子已经过充分研究,现已显示出是肠炎链球菌细胞内存活和伤寒等疾病病理生理所必需的基因表达数量的关键调节剂。两组分PhoP / PhoQ调节产品在沙门氏菌毒力中的明显作用促使人们尝试将其靶向治疗。尽管用于治疗伤寒的生物活性化合物的发现过程依赖命中过程,但仅使用高通量筛选技术非常昂贵,而且大规模进行时很费时间。随着组合化学的最新发展和现代化合物合成技术的发展,有越来越多的可用化合物使各种化合物的文库得到充分的增长,但是筛选这些未聚焦的庞大且多样化的文库所需的时间和精力已略有减少。历年。因此,需要提高高通量筛选的高质量命中率和成功率,这需要针对特定​​目标的集中且偏向的化合物库。因此,我们仍然需要一种有利且方便的方法来对将用于生物筛选的分子进行优先级排序,这既节省时间又便宜。在这个概念中,计算机学习之类的计算机方法是广泛适用的技术,可用于建立高通量虚拟屏幕的计算模型,从而优先考虑分子以进行进一步研究。此外,在计算分析中,我们扩展了研究范围,以找出具有生物活性的化合物中常见的富集结构实体,以寻找特权支架。

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