纳米生物技术
杠杆(统计)
编码
计算机科学
纳米技术
抽象
限制
纳米尺度
领域(数学分析)
纳米颗粒
人工智能
材料科学
化学
工程类
数学
认识论
基因
机械工程
数学分析
生物化学
哲学
作者
Jacob C. Saldinger,Matt Raymond,Paolo Elvati,Angela Violi
标识
DOI:10.1101/2022.08.09.503361
摘要
Abstract The accurate and rapid prediction of generic nanoscale interactions is a challenging problem with broad applications. Much of biology functions at the nanoscale, and our ability to manipulate materials and engage biological machinery in a purposeful manner requires knowledge of nano-bio interfaces. While several protein-protein interaction models are available, they leverage protein-specific information, limiting their abstraction to other structures. Here, we present NeCLAS, a general, and rapid machine learning pipeline that predicts the location of nanoscale interactions, providing human-intelligible predictions. Two key aspects distinguish NeCLAS: coarsegrained representations, and the use of environmental features to encode the chemical neighborhood. We showcase NeCLAS with challenges for protein-protein, protein-nanoparticle and nanoparticle-nanoparticle systems, demonstrating that NeCLAS replicates computationally- and experimentally-observed interactions. NeCLAS outperforms current nanoscale prediction models and it shows cross-domain validity. We anticipate that our framework will contribute to both basic research and rapid prototyping and design of diverse nanostructures in nanobiotechnology.
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