酶动力学分析:用于分析酶初始速率数据和酶动力学教学的在线工具。

IF 1.2 4区 教育学 Q4 BIOCHEMISTRY & MOLECULAR BIOLOGY Biochemistry and Molecular Biology Education Pub Date : 2024-02-24 DOI:10.1002/bmb.21823
Daniel A. Mak, Sebastian Dunn, David Coombes, Carlo R. Carere, Jane R. Allison, Volker Nock, André O. Hudson, Renwick C. J. Dobson
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引用次数: 0

摘要

酶是自然界的催化剂,介导生命系统中的化学过程。酶的功能和机理研究包括确定最大催化速率和对底物的亲和力(以及其他因素),称为酶动力学。酶动力学是生物化学课程和其他学科(从分子和细胞生物学到药理学)的主要内容。然而,由于酶动力学涉及生物学其他领域很少使用的概念,因此对学生和研究人员来说具有挑战性。传统的图形分析被计算分析所取代,而计算分析需要的另一项技能并非许多生命科学课程的核心内容。使用免费软件(如 R)或昂贵的软件(如 GraphPad Prism)进行计算分析可能既耗时又困难。我们介绍的酶动力学分析(EKA)是一种网络工具,可增强教学效果并简化酶动力学分析。EKA 是一款免费的交互式工具,用于分析酶动力学数据,并通过模拟提高学生的学习效果,该工具使用 R 和 RStudio 的 ShinyApps 构建。EKA 提供动力学模型(Michaelis-Menten、Hill、简单可逆抑制模型、三元复合物和乒乓模型)供用户拟合实验数据,并提供图形结果和统计数据。此外,EKA 还能让用户输入参数并创建数据和图表,直观显示参数(如 K M $$ {K}_M $$ 或测量次数)的变化。该功能专为学习动力学的学生设计,也可供研究人员设计实验。EKA(enzyme-kinetics.shinyapps.io/enzkinet_webpage/)为教师、学生和研究人员探索酶动力学提供了一个简单的交互式界面。它使研究人员能够设计实验和分析数据,而无需特定的软件要求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Enzyme Kinetics Analysis: An online tool for analyzing enzyme initial rate data and teaching enzyme kinetics

Enzymes are nature's catalysts, mediating chemical processes in living systems. The study of enzyme function and mechanism includes defining the maximum catalytic rate and affinity for substrate/s (among other factors), referred to as enzyme kinetics. Enzyme kinetics is a staple of biochemistry curricula and other disciplines, from molecular and cellular biology to pharmacology. However, because enzyme kinetics involves concepts rarely employed in other areas of biology, it can be challenging for students and researchers. Traditional graphical analysis was replaced by computational analysis, requiring another skill not core to many life sciences curricula. Computational analysis can be time-consuming and difficult in free software (e.g., R) or require costly software (e.g., GraphPad Prism). We present Enzyme Kinetics Analysis (EKA), a web-tool to augment teaching and learning and streamline EKA. EKA is an interactive and free tool for analyzing enzyme kinetic data and improving student learning through simulation, built using R and RStudio's ShinyApps. EKA provides kinetic models (Michaelis–Menten, Hill, simple reversible inhibition models, ternary-complex, and ping-pong) for users to fit experimental data, providing graphical results and statistics. Additionally, EKA enables users to input parameters and create data and graphs, to visualize changes to parameters (e.g., K M or number of measurements). This function is designed for students learning kinetics but also for researchers to design experiments. EKA (enzyme-kinetics.shinyapps.io/enzkinet_webpage/) provides a simple, interactive interface for teachers, students, and researchers to explore enzyme kinetics. It gives researchers the ability to design experiments and analyze data without specific software requirements.

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来源期刊
Biochemistry and Molecular Biology Education
Biochemistry and Molecular Biology Education 生物-生化与分子生物学
CiteScore
2.60
自引率
14.30%
发文量
99
审稿时长
6-12 weeks
期刊介绍: The aim of BAMBED is to enhance teacher preparation and student learning in Biochemistry, Molecular Biology, and related sciences such as Biophysics and Cell Biology, by promoting the world-wide dissemination of educational materials. BAMBED seeks and communicates articles on many topics, including: Innovative techniques in teaching and learning. New pedagogical approaches. Research in biochemistry and molecular biology education. Reviews on emerging areas of Biochemistry and Molecular Biology to provide background for the preparation of lectures, seminars, student presentations, dissertations, etc. Historical Reviews describing "Paths to Discovery". Novel and proven laboratory experiments that have both skill-building and discovery-based characteristics. Reviews of relevant textbooks, software, and websites. Descriptions of software for educational use. Descriptions of multimedia materials such as tutorials on various aspects of biochemistry and molecular biology.
期刊最新文献
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