Centre for Cancer Research and Cell Biology, Queen's University Belfast, Belfast, United Kingdom.
PLoS One. 2011 Jan 31;6(1):e16382. doi: 10.1371/journal.pone.0016382.
Connectivity mapping is a recently developed technique for discovering the underlying connections between different biological states based on gene-expression similarities. The sscMap method has been shown to provide enhanced sensitivity in mapping meaningful connections leading to testable biological hypotheses and in identifying drug candidates with particular pharmacological and/or toxicological properties. Challenges remain, however, as to how to prioritise the large number of discovered connections in an unbiased manner such that the success rate of any following-up investigation can be maximised. We introduce a new concept, gene-signature perturbation, which aims to test whether an identified connection is stable enough against systematic minor changes (perturbation) to the gene-signature. We applied the perturbation method to three independent datasets obtained from the GEO database: acute myeloid leukemia (AML), cervical cancer, and breast cancer treated with letrozole. We demonstrate that the perturbation approach helps to identify meaningful biological connections which suggest the most relevant candidate drugs. In the case of AML, we found that the prevalent compounds were retinoic acids and PPAR activators. For cervical cancer, our results suggested that potential drugs are likely to involve the EGFR pathway; and with the breast cancer dataset, we identified candidates that are involved in prostaglandin inhibition. Thus the gene-signature perturbation approach added real values to the whole connectivity mapping process, allowing for increased specificity in the identification of possible therapeutic candidates.
连通性映射是一种最近开发的技术,用于根据基因表达相似性发现不同生物状态之间的潜在联系。sscMap 方法已被证明在绘制有意义的联系方面具有更高的灵敏度,这些联系可以导致可测试的生物学假设,并确定具有特定药理学和/或毒理学特性的药物候选物。然而,如何以无偏倚的方式对大量发现的连接进行优先级排序,以使任何后续调查的成功率最大化,仍然存在挑战。我们引入了一个新概念,即基因特征扰动,旨在测试所识别的连接是否足够稳定,可以抵抗基因特征的系统小变化(扰动)。我们将扰动方法应用于从 GEO 数据库获得的三个独立数据集:急性髓系白血病 (AML)、宫颈癌和接受来曲唑治疗的乳腺癌。我们证明,扰动方法有助于识别有意义的生物学联系,这些联系提示出最相关的候选药物。在 AML 的情况下,我们发现常见的化合物是维甲酸和 PPAR 激活剂。对于宫颈癌,我们的结果表明,潜在的药物可能涉及 EGFR 途径;而对于乳腺癌数据集,我们确定了涉及前列腺素抑制的候选药物。因此,基因特征扰动方法为整个连通性映射过程增加了实际价值,提高了识别可能的治疗候选物的特异性。