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An automated high-throughput system for phenotypic screening of chemical libraries on C. elegans and parasitic nematodes

机译:用于对秀丽隐杆线虫和寄生线虫进行化学表型筛选的自动化高通量系统

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摘要

Parasitic nematodes infect hundreds of millions of people and farmed livestock. Further, plant parasitic nematodes result in major crop damage. The pipeline of therapeutic compounds is limited and parasite resistance to the existing anthelmintic compounds is a global threat. We have developed an INVertebrate Automated Phenotyping Platform (INVAPP) for high-throughput, plate-based chemical screening, and an algorithm (Paragon) which allows screening for compounds that have an effect on motility and development of parasitic worms. We have validated its utility by determining the efficacy of a panel of known anthelmintics against model and parasitic nematodes: Caenorhabditis elegans, Haemonchus contortus, Teladorsagia circumcincta, and Trichuris muris. We then applied the system to screen the Pathogen Box chemical library in a blinded fashion and identified compounds already known to have anthelmintic or anti-parasitic activity, including tolfenpyrad, auranofin, and mebendazole; and 14 compounds previously undescribed as anthelmintics, including benzoxaborole and isoxazole chemotypes. This system offers an effective, high-throughput system for the discovery of novel anthelmintics.
机译:寄生线虫感染数亿人口和养殖牲畜。此外,植物寄生线虫导致严重的农作物损害。治疗性化合物的生产渠道有限,并且对现有驱虫药的寄生虫耐药性已成为全球性威胁。我们开发了用于高通量,基于板的化学筛选的INVertebrate自动表型分析平台(INVAPP),以及一种算法(Paragon),该算法可以筛选对蠕虫蠕动和发育有影响的化合物。我们已经通过确定一组已知的驱虫药对模型线虫和寄生线虫的功效来验证其效用:线虫秀丽隐杆线虫,旋扭线虫,圆环变形虫和粘虫曲霉。然后,我们将该系统以盲法筛选了病原盒化学库,并鉴定了已知具有驱虫或抗寄生虫活性的化合物,包括托芬吡拉德,金诺芬和甲苯达唑;和14种先前未描述为驱虫药的化合物,包括苯并x硼烷和异恶唑化学型。该系统为发现新型驱虫药提供了有效的高通量系统。

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