An interactive visualization tool for educational outreach in protein contact map overlap analysis

Kevan Baker, Nathaniel Hughes, Sutanu Bhattacharya
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Abstract

Recent advancements in contact map-based protein three-dimensional (3D) structure prediction have been driven by the evolution of deep learning algorithms. However, the gap in accessible software tools for novices in this domain remains a significant challenge. This study introduces GoFold, a novel, standalone graphical user interface (GUI) designed for beginners to perform contact map overlap (CMO) problems for better template selection. Unlike existing tools that cater more to research needs or assume foundational knowledge, GoFold offers an intuitive, user-friendly platform with comprehensive tutorials. It stands out in its ability to visually represent the CMO problem, allowing users to input proteins in various formats and explore the CMO problem. The educational value of GoFold is demonstrated through benchmarking against the state-of-the-art contact map overlap method, map_align, using two datasets: PSICOV and CAMEO. GoFold exhibits superior performance in terms of TM-score and Z-score metrics across diverse qualities of contact maps and target difficulties. Notably, GoFold runs efficiently on personal computers without any third-party dependencies, thereby making it accessible to the general public for promoting citizen science. The tool is freely available for download at for macOS, Linux, and Windows.
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用于蛋白质接触图重叠分析教育推广的交互式可视化工具
深度学习算法的发展推动了基于接触图的蛋白质三维(3D)结构预测的最新进展。然而,在这一领域,面向新手的可访问软件工具的缺口仍然是一个重大挑战。本研究介绍了 GoFold,这是一种新颖的独立图形用户界面(GUI),专为初学者设计,用于处理接触图重叠(CMO)问题,以更好地选择模板。现有的工具更多地是为了满足研究需要或假设基础知识,与之不同的是,GoFold 提供了一个直观、用户友好的平台,并配有全面的教程。它的突出之处在于能够直观地表示 CMO 问题,允许用户输入各种格式的蛋白质并探索 CMO 问题。GoFold 的教育价值通过使用两个数据集与最先进的接触图重叠方法 map_align 进行基准测试得到了证明:PSICOV和CAMEO。在不同质量的接触地图和目标难度下,GoFold 在 TM 分数和 Z 分数指标方面表现出卓越的性能。值得注意的是,GoFold 可在个人电脑上高效运行,不需要任何第三方依赖,因此公众也可以使用它来促进公民科学。该工具可在 MacOS、Linux 和 Windows 上免费下载。
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