Philament:丝状物跟踪程序,用于快速准确地分析体外运动试验。

IF 2.7 Q3 BIOPHYSICS
Biophysical reports Pub Date : 2024-01-30 eCollection Date: 2024-03-13 DOI:10.1016/j.bpr.2024.100147
Ryan M Bowser, Gerrie P Farman, Carol C Gregorio
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引用次数: 0

摘要

体外运动(IVM)试验可以检验细胞骨架丝与分子马达之间的基本相互作用,以及许多生理因素对这种相互作用的影响。可研究的因素包括模拟疲劳的 ADP 和 pH 变化、疾病可能导致的磷酸化改变以及导致疾病的肌丝蛋白突变。虽然 IVM 检测可进行人工分析,但其主要局限性在于无法从收集到的视频中快速提取准确的数据,而不会产生个人偏见。虽然过去曾开发过一些程序来实现数据提取,但现在许多程序已经过时,或者需要使用专有软件。在此,我们报告了基于 Python 的跟踪程序 Philament 的生成情况,该程序可自动提取瞬时速度和平均速度数据,并可对 IVM 记录进行全自动分析。生成的数据以易于访问的基于电子表格的逗号分隔值文件形式呈现。Philament 还包含一种量化丝状运动平滑度的新方法。通过拟合速度和平均速度的标准偏差曲线,可以比较不同实验条件对彼此的影响。这种比较提供了蛋白质相互作用的定性衡量标准,斜率越陡表示相互作用越不稳定,斜率越浅表示肌丝内的相互作用越稳定。总之,Philament 的 IVM 自动化分析为进入心血管力学领域提供了便利,使用户能够创建真正的高通量实验数据分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Philament: A filament tracking program to quickly and accurately analyze in vitro motility assays.

In vitro motility (IVM) assays allow for the examination of the basic interaction between cytoskeletal filaments with molecular motors and the influence many physiological factors have on this interaction. Examples of factors that can be studied include changes in ADP and pH that emulate fatigue, altered phosphorylation that can occur with disease, and mutations within myofilament proteins that cause disease. While IVM assays can be analyzed manually, the main limitation is the ability to extract accurate data rapidly from videos collected without individual bias. While programs have been created in the past to enable data extraction, many are now out of date or require the use of proprietary software. Here, we report the generation of a Python-based tracking program, Philament, which automatically extracts data on instantaneous and average velocities, and allows for fully automated analysis of IVM recordings. The data generated are presented in an easily accessible spreadsheet-based, comma-separated values file. Philament also contains a novel method of quantifying the smoothness of filament motion. By fitting curves to standard deviations of velocity and average velocities, the influence of different experimental conditions can be compared relative to one another. This comparison provides a qualitative measure of protein interactions where steeper slopes indicate more unstable interactions and shallower slopes indicate more stable interactions within the myofilament. Overall, Philament's automation of IVM analysis provides easier entry into the field of cardiovascular mechanics and enables users to create a truly high-throughput experimental data analysis.

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来源期刊
Biophysical reports
Biophysical reports Biophysics
CiteScore
2.40
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审稿时长
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