PyComp:用于高通量虚拟药物筛选中高效数据提取、转换和管理的多功能工具。

Mohsen Sisakht, Mohammad Keyvanloo Shahrestanaki, Jafar Fallahi, Vahid Razban
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引用次数: 0

摘要

背景:虚拟筛选(VS)对于分析药物发现中的潜在候选药物至关重要。这通常需要将大量化合物数据转换成适合计算分析的特定格式。管理和处理这些丰富的信息,尤其是以名称、标识符或 SMILES 字符串等各种形式处理大量化合物时,可能会面临重大的后勤和技术挑战:为了简化这一过程,我们使用 Python 的 PyQt5 库开发了 PyComp 软件工具,并用 Pyinstaller 将其编译成可执行文件。PyComp 为用户提供了一种系统化的方法,用于检索化合物名称、ID(即使是在一定范围内)或 SMILES 字符串列表,并将其转换为所需的 3D 格式:PyComp 大大提高了 VS 所涉及的数据提取、转换和存储过程的效率。它能搜索相似的化合物,还能处理识别错误的化合物,为用户提供了一个易于使用、可定制的工具来管理大规模化合物数据。通过简化这些操作,PyComp 可使研究人员节省大量时间和精力,从而加快药物发现研究的步伐:PyComp 有效地解决了高通量 VS 面临的一些最紧迫的挑战:高效管理和转换大量化合物数据。PyComp 作为一款用户友好、可定制的软件工具,在提高大规模药物筛选工作的效率和成功率方面发挥着关键作用,为更快地发现潜在的治疗化合物铺平了道路。
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PyComp: A Versatile Tool for Efficient Data Extraction, Conversion, and Management in High-throughput Virtual Drug Screening.

Background: Virtual screening (VS) is essential for analyzing potential drug candidates in drug discovery. Often, this involves the conversion of large volumes of compound data into specific formats suitable for computational analysis. Managing and processing this wealth of information, especially when dealing with vast numbers of compounds in various forms, such as names, identifiers, or SMILES strings, can present significant logistical and technical challenges.

Methods: To streamline this process, we developed PyComp, a software tool using Python's PyQt5 library, and compiled it into an executable with Pyinstaller. PyComp provides a systematic way for users to retrieve and convert a list of compound names, IDs (even in a range), or SMILES strings into the desired 3D format.

Results: PyComp greatly enhances the efficiency of data extraction, conversion, and storage processes involved in VS. It searches for similar compounds coupled with its ability to handle misidentified compounds and offers users an easy-to-use, customizable tool for managing largescale compound data. By streamlining these operations, PyComp allows researchers to save significant time and effort, thus accelerating the pace of drug discovery research.

Conclusion: PyComp effectively addresses some of the most pressing challenges in highthroughput VS: efficient management and conversion of large volumes of compound data. As a user-friendly, customizable software tool, PyComp is pivotal in improving the efficiency and success of large-scale drug screening efforts, paving the way for faster discovery of potential therapeutic compounds.

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