DrugCLIP: Contrastive Drug-Disease Interaction For Drug Repurposing

Yingzhou Lu, Yaojun Hu, Chenhao Li
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Abstract

Bringing a novel drug from the original idea to market typically requires more than ten years and billions of dollars. To alleviate the heavy burden, a natural idea is to reuse the approved drug to treat new diseases. The process is also known as drug repurposing or drug repositioning. Machine learning methods exhibited huge potential in automating drug repurposing. However, it still encounter some challenges, such as lack of labels and multimodal feature representation. To address these issues, we design DrugCLIP, a cutting-edge contrastive learning method, to learn drug and disease's interaction without negative labels. Additionally, we have curated a drug repurposing dataset based on real-world clinical trial records. Thorough empirical studies are conducted to validate the effectiveness of the proposed DrugCLIP method.
DrugCLIP:用于药物再设计的药物-疾病对比相互作用
将一种新药从最初的想法推向市场通常需要十多年的时间和数十亿美元的资金。为了减轻这一沉重负担,一个自然的想法是重新使用已获批准的药物来治疗新的疾病。这一过程也被称为药物再利用或药物再定位。机器学习方法在自动药物再利用方面展现出巨大的潜力。然而,它仍然遇到了一些挑战,如缺乏标签和多模态特征表示。为了解决这些问题,我们设计了一种前沿的对比学习方法--DrugCLIP,在没有负面标签的情况下学习药物与疾病的相互作用。此外,我们还根据真实世界的临床试验记录策划了一个药物再利用数据集。我们进行了深入的实证研究,以验证所提出的 DrugCLIP 方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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