论文标题
DeepSiba:基于化学结构的生物学改变的推断
DeepSIBA: Chemical Structure-based Inference of Biological Alterations
论文作者
论文摘要
预测化学结构是否具有所需的生物学作用会对早期药物发现中的硅内化合物筛查产生重大影响。在这项研究中,我们开发了一个深度学习模型,其中复合结构表示为图形,然后与它们的生物足迹相关。为了使这个复杂的问题计算在计算中,使用暹罗图卷积神经网络将复合差异映射为生物学效应的改变。提出的模型能够从化学结构中学习新的表示,并确定以高精度影响相似生物学过程的结构不同的化合物。此外,通过利用深层集合来估计不确定性,我们能够为化学结构提供可靠,准确的预测,这些预测与训练过程中使用的结构非常不同。最后,我们提出了一种新颖的推理方法,其中使用训练有素的模型来估计特定细胞系中化合物扰动影响的信号传导途径,仅使用其化学结构作为输入。作为用例,该方法用于推断受FDA批准的抗癌药物影响的信号通路。
Predicting whether a chemical structure shares a desired biological effect can have a significant impact for in-silico compound screening in early drug discovery. In this study, we developed a deep learning model where compound structures are represented as graphs and then linked to their biological footprint. To make this complex problem computationally tractable, compound differences were mapped to biological effect alterations using Siamese Graph Convolutional Neural Networks. The proposed model was able to learn new representations from chemical structures and identify structurally dissimilar compounds that affect similar biological processes with high precision. Additionally, by utilizing deep ensembles to estimate uncertainty, we were able to provide reliable and accurate predictions for chemical structures that are very different from the ones used during training. Finally, we present a novel inference approach, where the trained models are used to estimate the signaling pathways affected by a compound perturbation in a specific cell line, using only its chemical structure as input. As a use case, this approach was used to infer signaling pathways affected by FDA-approved anticancer drugs.