Mason Daniel J, Eastman Richard T, Lewis Richard P I, Stott Ian P, Guha Rajarshi, Bender Andreas
Department of Chemistry, Centre for Molecular Informatics, University of Cambridge, Cambridge, United Kingdom.
Healx Ltd., Cambridge, United Kingdom.
Front Pharmacol. 2018 Oct 2;9:1096. doi: 10.3389/fphar.2018.01096. eCollection 2018.
The parasite is the most lethal species of Plasmodium to cause serious malaria infection in humans, and with resistance developing rapidly novel treatment modalities are currently being sought, one of which being combinations of existing compounds. The discovery of combinations of antimalarial drugs that act synergistically with one another is hence of great importance; however an exhaustive experimental screen of large drug space in a pairwise manner is not an option. In this study we apply our machine learning approach, Combination Synergy Estimation (CoSynE), which can predict novel synergistic drug interactions using only prior experimental combination screening data and knowledge of compound molecular structures, to a dataset of 1,540 antimalarial drug combinations in which 22.2% were synergistic. Cross validation of our model showed that synergistic CoSynE predictions are enriched 2.74 × compared to random selection when both compounds in a predicted combination are known from other combinations among the training data, 2.36 × when only one compound is known from the training data, and 1.5 × for entirely novel combinations. We prospectively validated our model by making predictions for 185 combinations of 23 entirely novel compounds. CoSynE predicted 20 combinations to be synergistic, which was experimentally validated for nine of them (45%), corresponding to an enrichment of 1.70 × compared to random selection from this prospective data set. Such enrichment corresponds to a 41% reduction in experimental effort. Interestingly, we found that pairwise screening of the compounds CoSynE individually predicted to be synergistic would result in an enrichment of 1.36 × compared to random selection, indicating that synergy among compound combinations is not a random event. The nine novel and correctly predicted synergistic compound combinations mainly (where sufficient bioactivity information is available) consist of efflux or transporter inhibitors (such as hydroxyzine), combined with compounds exhibiting antimalarial activity alone (such as sorafenib, apicidin, or dihydroergotamine). However, not all compound synergies could be rationalized easily in this way. Overall, this study highlights the potential for predictive modeling to expedite the discovery of novel drug combinations in fight against antimalarial resistance, while the underlying approach is also generally applicable.
该寄生虫是导致人类严重疟疾感染的最致命疟原虫种类,随着耐药性迅速发展,目前正在寻找新的治疗方法,其中之一是现有化合物的组合。因此,发现彼此协同作用的抗疟药物组合非常重要;然而,以两两组合的方式对庞大的药物空间进行详尽的实验筛选并非可行之策。在本研究中,我们将我们的机器学习方法——组合协同效应估计(CoSynE)应用于一个包含1540种抗疟药物组合的数据集,该方法仅使用先前的实验组合筛选数据和化合物分子结构知识就能预测新的协同药物相互作用,其中22.2%的组合具有协同作用。我们模型的交叉验证表明,当预测组合中的两种化合物在训练数据中的其他组合中都已知时,协同CoSynE预测的富集度比随机选择高2.74倍;当训练数据中仅已知一种化合物时,富集度为2.36倍;对于全新组合,富集度为1.5倍。我们通过对23种全新化合物的185种组合进行预测,对我们的模型进行了前瞻性验证。CoSynE预测有20种组合具有协同作用,其中9种(45%)经实验验证,与从该前瞻性数据集中随机选择相比,富集度为1.70倍。这种富集相当于实验工作量减少了41%。有趣的是,我们发现对CoSynE单独预测为具有协同作用的化合物进行两两筛选,与随机选择相比,富集度为1.36倍,这表明化合物组合之间的协同作用不是随机事件。九个新的且预测正确的协同化合物组合主要(在有足够生物活性信息的情况下)由外排或转运抑制剂(如羟嗪)与单独具有抗疟活性的化合物(如索拉非尼、阿皮西丁或双氢麦角胺)组成。然而,并非所有化合物协同作用都能轻易以这种方式得到合理解释。总体而言,本研究突出了预测建模在加速发现对抗疟耐药性的新药物组合方面的潜力,而其基本方法也普遍适用。