The Academic College of Tel Aviv-Yaffo, Tel Aviv-Yaffo, Israel.
IBM Research, Haif, Israel.
PLoS One. 2023 Mar 16;18(3):e0266572. doi: 10.1371/journal.pone.0266572. eCollection 2023.
The active global SARS-CoV-2 pandemic caused more than 426 million cases and 5.8 million deaths worldwide. The development of completely new drugs for such a novel disease is a challenging, time intensive process. Despite researchers around the world working on this task, no effective treatments have been developed yet. This emphasizes the importance of drug repurposing, where treatments are found among existing drugs that are meant for different diseases. A common approach to this is based on knowledge graphs, that condense relationships between entities like drugs, diseases and genes. Graph neural networks (GNNs) can then be used for the task at hand by predicting links in such knowledge graphs. Expanding on state-of-the-art GNN research, Doshi et al. recently developed the Dr-COVID model. We further extend their work using additional output interpretation strategies. The best aggregation strategy derives a top-100 ranking of 8,070 candidate drugs, 32 of which are currently being tested in COVID-19-related clinical trials. Moreover, we present an alternative application for the model, the generation of additional candidates based on a given pre-selection of drug candidates using collaborative filtering. In addition, we improved the implementation of the Dr-COVID model by significantly shortening the inference and pre-processing time by exploiting data-parallelism. As drug repurposing is a task that requires high computation and memory resources, we further accelerate the post-processing phase using a new emerging hardware-we propose a new approach to leverage the use of high-capacity Non-Volatile Memory for aggregate drug ranking.
全球范围内活跃的严重急性呼吸系统综合征冠状病毒 2 型(SARS-CoV-2)大流行导致全球超过 4.26 亿例病例和 580 万人死亡。针对这种新型疾病开发全新的药物是一个具有挑战性的、耗时的过程。尽管世界各地的研究人员都在致力于这项任务,但尚未开发出有效的治疗方法。这强调了药物重新定位的重要性,即在用于治疗不同疾病的现有药物中寻找治疗方法。一种常见的方法是基于知识图谱,将药物、疾病和基因等实体之间的关系进行压缩。然后,可以使用图神经网络(GNN)通过预测此类知识图谱中的链接来完成手头的任务。在最新的 GNN 研究的基础上,Doshi 等人最近开发了 Dr-COVID 模型。我们进一步扩展了他们的工作,使用了额外的输出解释策略。最佳聚合策略对 8070 种候选药物进行了前 100 名排名,其中 32 种药物目前正在 COVID-19 相关临床试验中进行测试。此外,我们提出了该模型的另一种应用,即基于给定的候选药物预选,使用协同过滤生成额外的候选药物。此外,我们通过利用数据并行性显著缩短推理和预处理时间来改进 Dr-COVID 模型的实现。由于药物重新定位是一项需要高计算和内存资源的任务,我们还通过使用新兴硬件来加速后处理阶段-我们提出了一种新的方法,利用大容量非易失性内存进行药物综合排名。