@inproceedings{c11148c92e734c4fbcbf09662c0132ba,
title = "Drug Repurposing Using Link Prediction on Knowledge Graphs with Applications to Non-volatile Memory",
abstract = "The active global SARS-CoV-2 pandemic caused more than 167 million cases and 3.4 million deaths worldwide. The development of completely new drugs for such a novel disease is a challenging, time intensive process and 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 candidate drugs, 32 of which currently being 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.",
keywords = "Collaborative filtering, Drug repurposing, Knowledge graphs, Link prediction, MCAS, NVM, Non-votile memory, PyMM, Python",
author = "Sarel Cohen and Moshik Hershcovitch and Martin Taraz and Otto Ki{\ss}ig and Andrew Wood and Daniel Waddington and Peter Chin and Tobias Friedrich",
note = "Publisher Copyright: {\textcopyright} 2022, The Author(s), under exclusive license to Springer Nature Switzerland AG.; 10th International Conference on Complex Networks and Their Applications, COMPLEX NETWORKS 2021 ; Conference date: 30-11-2021 Through 02-12-2021",
year = "2022",
doi = "10.1007/978-3-030-93413-2_61",
language = "אנגלית",
isbn = "9783030934125",
series = "Studies in Computational Intelligence",
publisher = "Springer Science and Business Media Deutschland GmbH",
pages = "742--753",
editor = "Benito, {Rosa Maria} and Chantal Cherifi and Hocine Cherifi and Esteban Moro and Rocha, {Luis M.} and Marta Sales-Pardo",
booktitle = "Complex Networks and Their Applications X - Volume 2, Proceedings of the 10th International Conference on Complex Networks and Their Applications COMPLEX NETWORKS 2021",
address = "גרמניה",
}