论文标题

预测图形神经网络的概率模型选择的生物医学相互作用

Predicting Biomedical Interactions with Probabilistic Model Selection for Graph Neural Networks

论文作者

KC, Kishan, Li, Rui, Regmi, Paribesh, Haake, Anne R.

论文摘要

生物系统是一个复杂的异质分子实体网络及其相互作用,促进了系统的各种生物学特征。但是,当前的生物网络是嘈杂的,稀疏的和不完整的,限制了我们对生物系统的整体观点并了解生物学现象的能力。这种相互作用的实验识别既耗时又昂贵。随着高通量数据生成的最新进展和计算能力的显着改善,已经开发了各种计算方法来预测嘈杂网络中的新型相互作用。最近,诸如图形神经网络之类的深度学习方法表明它们在建模图形结构数据中的有效性并在生物医学相互作用预测中实现了良好的性能。但是,基于图神经网络的方法需要人类的专业知识和实验来设计模型的适当复杂性,并显着影响模型的性能。此外,深度图神经网络面临过度拟合的问题,并且对不正确的预测的信心较高,往往会受到校准。为了应对这些挑战,我们提出了图形卷积网络的贝叶斯模型选择,以共同推断数据保证的最合理数量的图形卷积层(深度)并同时执行辍学正则化。四个交互数据集的实验表明,我们提出的方法实现了准确和校准的预测。我们提出的方法使图形卷积网络能够动态调整其深度,以适应越来越多的相互作用。

A biological system is a complex network of heterogeneous molecular entities and their interactions contributing to various biological characteristics of the system. However, current biological networks are noisy, sparse, and incomplete, limiting our ability to create a holistic view of the biological system and understand the biological phenomena. Experimental identification of such interactions is both time-consuming and expensive. With the recent advancements in high-throughput data generation and significant improvement in computational power, various computational methods have been developed to predict novel interactions in the noisy network. Recently, deep learning methods such as graph neural networks have shown their effectiveness in modeling graph-structured data and achieved good performance in biomedical interaction prediction. However, graph neural networks-based methods require human expertise and experimentation to design the appropriate complexity of the model and significantly impact the performance of the model. Furthermore, deep graph neural networks face overfitting problems and tend to be poorly calibrated with high confidence on incorrect predictions. To address these challenges, we propose Bayesian model selection for graph convolutional networks to jointly infer the most plausible number of graph convolution layers (depth) warranted by data and perform dropout regularization simultaneously. Experiments on four interaction datasets show that our proposed method achieves accurate and calibrated predictions. Our proposed method enables the graph convolutional networks to dynamically adapt their depths to accommodate an increasing number of interactions.

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