We investigate molecular mechanisms of resistant or sensitive response of cancer drug combination therapies in an inductive and interpretable manner. Though deep learning algorithms are widely used in the drug synergy prediction problem, it is still an open problem to formulate the prediction model with biological meaning to investigate the mysterious mechanisms of synergy (MoS) for the human-AI collaboration in healthcare systems. To address the challenges, we propose a deep graph neural network, IDSP (Interpretable Deep Signaling Pathways), to incorporate the gene-gene as well as gene-drug regulatory relationships in synergic drug combination predictions. IDSP automatically learns weights of edges based on the gene and drug node relations, i.e., signaling interactions, by a multi-layer perceptron (MLP) and aggregates information in an inductive manner. The proposed architecture generates interpretable drug synergy prediction by detecting important signaling interactions, and can be implemented when the underlying molecular mechanism encounters unseen genes or signaling pathways. We test IDWSP on signaling networks formulated by genes from 46 core cancer signaling pathways and drug combinations from NCI ALMANAC drug combination screening data. The experimental results demonstrated that 1) IDSP can learn from the underlying molecular mechanism to make prediction without additional drug chemical information while achieving highly comparable performance with current state-of-art methods; 2) IDSP show superior generality and flexibility to implement the synergy prediction task on both transductive tasks and inductive tasks. 3) IDSP can generate interpretable results by detecting different salient signaling patterns (i.e. MoS) for different cell lines.
翻译:尽管深层次的学习算法在药物协同预测问题中被广泛使用,但制定具有生物意义的预测模型,以调查人类-AI在保健系统中协作的神秘协同机制(MOS),以研究人类-AI在保健系统中协作的神秘的协同机制(MOS),仍是一个尚未解决的问题。为了应对挑战,我们提议建立一个深图神经网络,IDSP(可解释的深信号路径),将基因基因基因基因和基因-药物监管关系纳入协同药物组合预测中。IDSP自动学习基于基因和药物节点关系边缘的重量,即通过多层次的透视(MLP)和以感化方式综合信息来显示互动。拟议结构通过探测重要的信号互动,产生可解释的药物协同性预测,当基本分子机制遇到看不见的基因或信号路径时,可以实施。我们测试IDWSP的信号网络,由46个核心癌症信号路径和药物节点关系,即信号互动,即通过多层次的多层次的透析(MLAS) 和高级分子任务显示当前预测结果,同时通过高层次的AS-MANSML) 显示高层次的精确的精确预测性数据,可以进行不同的化学分析。