Werner Marco
Leibniz-Institut für Polymerforschung Dresden e.V., Hohe Straße 6, 01069 Dresden, Germany.
ACS Macro Lett. 2021 Nov 16;10(11):1333-1338. doi: 10.1021/acsmacrolett.1c00325. Epub 2021 Oct 11.
The relation between chemical sequences and the properties of polymers is considered using artificial neural networks with a low-dimensional bottleneck layer of neurons. These encoder-decoder architectures may compress the input information into a meaningful set of physical variables that describe the correlation between distinct types of data. In this work, neural networks were trained to translate a sequence of hydrophilic and hydrophobic segments into the effective free energy landscape of a copolymer interacting with a lipid membrane. The training data were obtained by the sampling of coarse-grained polymer conformations in a given membrane density field. Neural networks that were split into separate channels have learned to decompose the free energy into independent components that are explainable by known concepts from polymer physics. The semantic information in the hidden layers was employed to predict polymer translocation events through a membrane for a more detailed dynamic model via a transfer learning procedure. The search for minimal translocation times in the compressed chemical space underlined that nontrivial sequence motifs may lead to optimal properties.
利用具有低维瓶颈神经元层的人工神经网络来研究化学序列与聚合物性质之间的关系。这些编码器-解码器架构可以将输入信息压缩成一组有意义的物理变量,这些变量描述了不同类型数据之间的相关性。在这项工作中,训练神经网络将亲水性和疏水性片段的序列转化为与脂质膜相互作用的共聚物的有效自由能景观。训练数据是通过在给定的膜密度场中对粗粒度聚合物构象进行采样获得的。被分割成单独通道的神经网络已经学会将自由能分解为独立的成分,这些成分可以用聚合物物理学中的已知概念来解释。隐藏层中的语义信息被用于通过迁移学习过程预测聚合物通过膜的转运事件,以建立更详细的动力学模型。在压缩化学空间中寻找最短转运时间强调了非平凡的序列基序可能导致最佳性能。