Computational drug repositioning technology is an effective tool to accelerate drug development. Although this technique has been widely used and successful in recent decades, many existing models still suffer from multiple drawbacks such as the massive number of unvalidated drug-disease associations and the inner product. The limitations of these works are mainly due to the following two reasons: firstly, previous works used negative sampling techniques to treat unvalidated drug-disease associations as negative samples, which is invalid in real-world settings; secondly, the inner product cannot fully take into account the feature information contained in the latent factor of drug and disease. In this paper, we propose a novel PUON framework for addressing the above deficiencies, which models the risk estimator of computational drug repositioning only using validated (Positive) and unvalidated (Unlabelled) drug-disease associations without employing negative sampling techniques. The PUON also proposed an Outer Neighborhood-based classifier for modeling the cross-feature information of latent facotors of drugs and diseases. For a comprehensive comparison, we considered 8 popular baselines. Extensive experiments in three real-world datasets showed that PUON achieved the best performance based on 3 evaluation metrics.
翻译:尽管近几十年来,这一技术被广泛使用并取得了成功,但许多现有模型仍面临多种缺陷,例如大量未经验证的药物疾病协会和内产物,这些工程的局限性主要归因于以下两个原因:第一,以前的工作使用负面抽样技术,将未经验证的药物疾病协会作为负面样品处理,在现实世界环境中是无效的;第二,内产产品不能充分考虑到药物和疾病潜在因素所包含的特征信息。在本文件中,我们提出了解决上述缺陷的新型PUON框架,该框架建模计算药物重新定位的风险估测器仅使用经验证的(Positive)和未经验证的(未标注的)药物疾病协会,而没有采用负面取样技术。PUON还提议用一个外邻里堡基分类器,用于模拟药物和疾病潜在畸形者的交叉性信息。为了全面比较,我们考虑了八项流行基准,我们研究了在三个实际世界数据模型中进行的广泛实验,在三个实际数据模型上展示了最佳业绩。