论文标题
网络医学框架,用于确定COVID-19的药物重新利用机会
Network Medicine Framework for Identifying Drug Repurposing Opportunities for COVID-19
论文作者
论文摘要
当前的大流行强调了对可以快速可靠地对临床认可的化合物的优先排序的方法,以便其对SARS-COV-2感染的潜在有效性。在过去的十年中,网络医学已开发并验证了用于药物重新利用的多种预测算法,从而利用了药物靶标和疾病基因之间基于亚细胞网络的关系。在这里,我们部署了依靠人工智能,网络扩散和网络接近性的算法,任务每个人都将6,340种药物对SARS-COV-2的预期功效进行排名。为了测试预测,我们用作实验中对VEROE6细胞进行实验筛选的基础真理918药物,以及在临床试验下的药物清单,这些药物捕获了医学界对潜在的COVID-19疗效的药物的评估。我们发现,尽管大多数算法为这些基础真实数据提供了预测能力,但没有单一的方法在所有数据集和指标上提供一致的可靠结果。这促使我们开发了一种融合所有算法预测的多模式方法,表明不同预测方法之间的共识始终超过最佳单个管道的性能。我们发现,成功降低病毒感染的77种药物中有76种不会结合SARS-COV-2靶向的蛋白质,这表明这些药物依赖于基于网络的作用,这些作用无法使用基于对接的策略来识别。这些进步提供了一种方法论途径,可以识别未来病原体的可再现药物,并因成本和扩展的从头开发时间表而被忽视的疾病被忽视。
The current pandemic has highlighted the need for methodologies that can quickly and reliably prioritize clinically approved compounds for their potential effectiveness for SARS-CoV-2 infections. In the past decade, network medicine has developed and validated multiple predictive algorithms for drug repurposing, exploiting the sub-cellular network-based relationship between a drug's targets and disease genes. Here, we deployed algorithms relying on artificial intelligence, network diffusion, and network proximity, tasking each of them to rank 6,340 drugs for their expected efficacy against SARS-CoV-2. To test the predictions, we used as ground truth 918 drugs that had been experimentally screened in VeroE6 cells, and the list of drugs under clinical trial, that capture the medical community's assessment of drugs with potential COVID-19 efficacy. We find that while most algorithms offer predictive power for these ground truth data, no single method offers consistently reliable outcomes across all datasets and metrics. This prompted us to develop a multimodal approach that fuses the predictions of all algorithms, showing that a consensus among the different predictive methods consistently exceeds the performance of the best individual pipelines. We find that 76 of the 77 drugs that successfully reduced viral infection do not bind the proteins targeted by SARS-CoV-2, indicating that these drugs rely on network-based actions that cannot be identified using docking-based strategies. These advances offer a methodological pathway to identify repurposable drugs for future pathogens and neglected diseases underserved by the costs and extended timeline of de novo drug development.