Dai Xudong, De Souza Angus T, Dai Hongyue, Lewis David L, Lee Chang-kyu, Spencer Andy G, Herweijer Hans, Hagstrom Jim E, Linsley Peter S, Bassett Douglas E, Ulrich Roger G, He Yudong D
Informatics, Rosetta Inpharmatics, Seattle, Washington, United States of America.
PLoS Comput Biol. 2007 Mar 2;3(3):e30. doi: 10.1371/journal.pcbi.0030030. Epub 2007 Jan 2.
Uncovering pathways underlying drug-induced toxicity is a fundamental objective in the field of toxicogenomics. Developing mechanism-based toxicity biomarkers requires the identification of such novel pathways and the order of their sufficiency in causing a phenotypic response. Genome-wide RNA interference (RNAi) phenotypic screening has emerged as an effective tool in unveiling the genes essential for specific cellular functions and biological activities. However, eliciting the relative contribution of and sufficiency relationships among the genes identified remains challenging. In the rodent, the most widely used animal model in preclinical studies, it is unrealistic to exhaustively examine all potential interactions by RNAi screening. Application of existing computational approaches to infer regulatory networks with biological outcomes in the rodent is limited by the requirements for a large number of targeted permutations. Therefore, we developed a two-step relay method that requires only one targeted perturbation for genome-wide de novo pathway discovery. Using expression profiles in response to small interfering RNAs (siRNAs) against the gene for peroxisome proliferator-activated receptor alpha (Ppara), our method unveiled the potential causal sufficiency order network for liver hypertrophy in the rodent. The validity of the inferred 16 causal transcripts or 15 known genes for PPARalpha-induced liver hypertrophy is supported by their ability to predict non-PPARalpha-induced liver hypertrophy with 84% sensitivity and 76% specificity. Simulation shows that the probability of achieving such predictive accuracy without the inferred causal relationship is exceedingly small (p < 0.005). Five of the most sufficient causal genes have been previously disrupted in mouse models; the resulting phenotypic changes in the liver support the inferred causal roles in liver hypertrophy. Our results demonstrate the feasibility of defining pathways mediating drug-induced toxicity from siRNA-treated expression profiles. When combined with phenotypic evaluation, our approach should help to unleash the full potential of siRNAs in systematically unveiling the molecular mechanism of biological events.
揭示药物诱导毒性的潜在途径是毒理基因组学领域的一个基本目标。开发基于机制的毒性生物标志物需要识别此类新途径及其在引起表型反应中的充分性顺序。全基因组RNA干扰(RNAi)表型筛选已成为揭示特定细胞功能和生物活性所必需基因的有效工具。然而,确定已识别基因之间的相对贡献和充分性关系仍然具有挑战性。在临床前研究中最广泛使用的动物模型啮齿动物中,通过RNAi筛选详尽地检查所有潜在相互作用是不现实的。应用现有的计算方法来推断啮齿动物中具有生物学结果的调控网络受到大量靶向排列要求的限制。因此,我们开发了一种两步接力方法,该方法仅需一次靶向扰动即可进行全基因组从头途径发现。利用针对过氧化物酶体增殖物激活受体α(Ppara)基因的小干扰RNA(siRNA)的表达谱,我们的方法揭示了啮齿动物肝脏肥大的潜在因果充分性顺序网络。推断出的16个因果转录本或15个已知的PPARα诱导肝脏肥大基因的有效性得到了它们以84%的敏感性和76%的特异性预测非PPARα诱导肝脏肥大能力的支持。模拟表明,在没有推断出的因果关系的情况下达到这种预测准确性的概率极小(p < 0.005)。五个最具充分性的因果基因先前已在小鼠模型中被破坏;肝脏中产生的表型变化支持了在肝脏肥大中推断出的因果作用。我们的结果证明了从siRNA处理的表达谱中定义介导药物诱导毒性途径的可行性。当与表型评估相结合时,我们的方法应有助于充分发挥siRNA在系统揭示生物事件分子机制方面的全部潜力。