ZMPY3D:通过矢量化三维泽尼克矩和基于 Python- 的 GPU 集成加速蛋白质结构体积分析

Jhih Siang Lai, Stephen K. Burley, José M. Duarte
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引用次数: 0

摘要

体积三维物体分析正被应用于结构生物信息学、生物物理学和结构生物学等研究领域,并有可能与人工智能/机器学习(AI/ML)技术相结合。其中一种方法,即三维 Zernike 矩,已被证明在分析蛋白质结构(如蛋白质折叠分类、蛋白质-蛋白质相互作用分析和分子动力学模拟)方面具有重要价值。其紧凑性和高效性使其适合于大规模分析。然而,推导三维 Zernike 矩的现有方法可能效率不高,尤其是在需要高阶项时,从而阻碍了更广泛的应用。随着实验和计算预测的蛋白质结构信息量不断增加,结构生物学已成为一门 "大数据 "科学,需要更高效的分析工具。 本应用笔记介绍了一个基于 Python 的软件包 ZMPY3D,通过矢量化数学公式和使用图形处理器(GPU)来加速三维 Zernike 矩的计算。该软件包提供 CuPy 和 TensorFlow 等流行的 GPU 支持库以及 NumPy 实现,旨在提高计算效率、适应性和未来算法开发的灵活性。ZMPY3D 软件包可通过 PyPI 安装,源代码可从 GitHub 获取。基于体积的蛋白质三维结构相似性得分和叠加变换矩阵功能都已实现,这将创建一个强大的计算工具,使研究界能够将三维 Zernike 矩与现有的人工智能/ML 工具结合起来,推动蛋白质结构生物信息学的研究和教育。 ZMPY3D 是用 Python 实现的,可在 GitHub (https://github.com/tawssie/ZMPY3D) 和 PyPI 上下载,以 GPL 许可发布。 补充数据可在 Bioinformatics Advances 在线查阅。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ZMPY3D: Accelerating protein structure volume analysis through vectorized 3D Zernike Moments and Python-based GPU Integration
Volumetric 3D object analyses are being applied in research fields such as structural bioinformatics, biophysics, and structural biology, with potential integration of Artificial Intelligence/Machine Learning (AI/ML) techniques. One such method, 3D Zernike moments, has proven valuable in analyzing protein structures (e.g., protein fold classification, protein-protein interaction analysis, and molecular dynamics simulations). Their compactness and efficiency make them amenable to large-scale analyses. Established methods for deriving 3D Zernike moments, however, can be inefficient, particularly when higher order terms are required, hindering broader applications. As the volume of experimental and computationally-predicted protein structure information continues to increase, structural biology has become a “big data” science requiring more efficient analysis tools. This application note presents a Python-based software package, ZMPY3D, to accelerate computation of 3D Zernike moments by vectorizing the mathematical formulae and using graphical processing units (GPUs). The package offers popular GPU-supported libraries such as CuPy and TensorFlow together with NumPy implementations, aiming to improve computational efficiency, adaptability, and flexibility in future algorithm development. The ZMPY3D package can be installed via PyPI, and the source code is available from GitHub. Volumetric-based protein 3D structural similarity scores and transform matrix of superposition functionalities have both been implemented, creating a powerful computational tool that will allow the research community to amalgamate 3D Zernike moments with existing AI/ML tools, to advance research and education in protein structure bioinformatics. ZMPY3D, implemented in Python, is available on GitHub (https://github.com/tawssie/ZMPY3D) and PyPI, released under the GPL License. Supplementary data are available at Bioinformatics Advances online.
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