Predicting drug-drug interactions (DDI) is the problem of predicting side effects (unwanted outcomes) of a pair of drugs using drug information and known side effects of many pairs. This problem can be formulated as predicting labels (i.e. side effects) for each pair of nodes in a DDI graph, of which nodes are drugs and edges are interacting drugs with known labels. State-of-the-art methods for this problem are graph neural networks (GNNs), which leverage neighborhood information in the graph to learn node representations. For DDI, however, there are many labels with complicated relationships due to the nature of side effects. Usual GNNs often fix labels as one-hot vectors that do not reflect label relationships and potentially do not obtain the highest performance in the difficult cases of infrequent labels. In this paper, we formulate DDI as a hypergraph where each hyperedge is a triple: two nodes for drugs and one node for a label. We then present CentSmoothie, a hypergraph neural network that learns representations of nodes and labels altogether with a novel central-smoothing formulation. We empirically demonstrate the performance advantages of CentSmoothie in simulations as well as real datasets.
翻译:预测药物-药物相互作用(DDI)是使用药物信息预测一对药物的副作用(未预期结果)的问题。这个问题可以作为DDI图形中每一对节点的预测标签(即副作用)来表述,其中节点是药物,边缘是与已知标签的相互作用药物。这一问题的先进方法是图形神经网络(GNN),它利用图表中的邻里信息学习节点表情。但是,DDI有许多标签由于副作用的性质而关系复杂。Usual GNN经常将标签改为不反映标签关系的单热矢量,在不常见标签的困难情况下可能得不到最高性能。在本文中,我们将DDI编成一个高度图,其中每种高度都有三倍:两个药物节点,一个节点用于标签。然后我们介绍CentSmoothie,一个高度神经网络,由于副作用的性质而具有复杂的关系。Usitual-momologal 网络经常将标签标定为不反映节点和高度数据模型的模型。