在药物发现中使用网络伙伴进行目标识别时要谨慎。

IF 3.3 Q2 GENETICS & HEREDITY
Dandan Tan, Yiheng Chen, Yann Ilboudo, Kevin Y H Liang, Guillaume Butler-Laporte, J Brent Richards
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引用次数: 0

摘要

确定新的、高产量的药物靶点是具有挑战性的,往往导致高失败率。然而,最近的数据表明,利用人类遗传证据来识别和验证这些靶点,大大增加了药物开发成功的可能性。Open Targets最近发表的两篇论文声称,fda批准的药物中,约有一半的靶点具有直接的人类基因证据。通过扩大目标识别范围,包括蛋白质网络伙伴——物理接触的分子——具有遗传证据支持的药物目标比例增加到三分之二。然而,利用这些网络伙伴进行目标识别的有效性并没有得到正式的测试。为了解决这个问题,我们在一个健壮的阳性控制基因列表上测试了这种方法。我们使用了完整的数据库来寻找通过外显子组关联研究(ExWAS)、全基因组关联研究(GWAS)以及称为效应指数(Effector Index)和遗传优先评分(Genetic Priority Score, GPS)的位点-基因定位算法鉴定的基因的物理相互作用蛋白,GPS整合了来自Open Targets和SIDER数据库的8种遗传特征和药物适应症。我们评估了包括与ExWAS、Effector Index和Genetic Priority Scores相互作用的基因识别阳性对照的准确性,重点关注精确度、灵敏度和特异性。我们的研究结果表明,尽管分子相互作用导致鉴定阳性对照基因的灵敏度更高,但其实际应用受到精度低的限制。将基因识别目标扩大到包括使用完好无损的网络伙伴并没有增加在412个测试特征中识别药物目标的可能性,这表明这样的结果应该谨慎解释。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Caution when using network partners for target identification in drug discovery.

Identifying novel, high-yield drug targets is challenging and often results in a high failure rate. However, recent data indicate that leveraging human genetic evidence to identify and validate these targets significantly increases the likelihood of success in drug development. Two recent papers from Open Targets claimed that around half of US Food and Drug Administration-approved drugs had targets with direct human genetic evidence. By expanding target identification to include protein network partners-molecules in physical contact-the proportion of drug targets with genetic evidence support increased to two-thirds. However, the efficacy of using these network partners for target identification was not formally tested. To address this, we tested the approach on a list of robust positive control genes. We used the IntAct database to find physically interacting proteins of genes identified by exome-wide association studies (ExWASs), genome-wide association studies (GWASs) combined with a locus-to-gene mapping algorithm called the Effector Index, and Genetic Priority Score (GPS), which integrated eight genetic features with drug indications from the Open Targets and SIDER databases. We assessed how accurately including interacting genes with the ExWAS-, Effector Index-, and GPS-selected genes identified positive controls, focusing on precision, sensitivity, and specificity. Our results indicated that although molecular interactions led to higher sensitivity in identifying positive control genes, their practical application is limited by low precision. Expanding genetically identified targets to include network partners using IntAct did not increase the likelihood of identifying drug targets across the 412 tested traits, suggesting that such results should be interpreted with caution.

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来源期刊
HGG Advances
HGG Advances Biochemistry, Genetics and Molecular Biology-Molecular Medicine
CiteScore
4.30
自引率
4.50%
发文量
69
审稿时长
14 weeks
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