Drug membrane interaction is a very significant bioprocess to consider in drug discovery. Here, we propose a novel deep learning framework coined DMInet to study drug-membrane interactions that leverages large-scale Martini coarse-grained molecular simulations of permeation of drug-like molecules across six different lipid membranes. The network of DMInet receives three inputs, viz, the drug-like molecule, membrane type, and spatial distance across membrane thickness, and predicts the potential of mean force with structural resolution across the lipid membrane and membrane selectivity. Inheriting from coarse-grained Martini representation of organic molecules and combined with deep learning, DMInet has the potential for more accelerated high throughput screening in drug discovery across a much larger chemical space than that can be explored by physics-based simulations alone. Moreover, DMInet is highly flexible in its nature and holds the possibilities for other properties prediction without significant changes in the architecture. Last but not least, the architecture of DMInet is general and can be applied to other membrane problems involving permeation and selection.
翻译:药物膜互动是一个非常重要的生物过程,需要考虑药物发现。在这里,我们提出一个新的深层次学习框架,即DMInet(DMInet),以研究药物膜互动,利用大规模马提尼粗颗粒分子模拟器,在六种不同的脂质薄膜中进行药物类分子渗透。DMInet网络有三种输入,即药物类分子、薄膜类型和隔膜厚的空间距离,并预测通过脂质薄膜和膜膜选择性结构分辨率产生的平均力量的潜在潜力。DMInet(DMInet)由有机分子粗糙的马提尼代表制成,与深层学习相结合,有可能在一个比物理学模拟本身可以探索的更大得多的化学空间进行更快的药物发现中加速高量的吞量筛选。此外,DMInet的性质非常灵活,在不显著改变结构的情况下可以进行其他特性预测。最后但并非最不重要的一点是,DMInet的结构是一般性的,可以应用于其他的膜选择和选择。