揭开“组学”时代降维技术的神秘面纱:一种适用于生物科学学生的实用方法。

IF 1.2 4区 教育学 Q4 BIOCHEMISTRY & MOLECULAR BIOLOGY
Leonardo D. Garma, Nuno S. Osório
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引用次数: 0

摘要

降维技术在分析生物化学和分子生物学中的大型“组学”数据集时至关重要。主成分分析、t-分布随机邻域嵌入、均匀流形逼近和投影是数据可视化的常用方法。然而,对于没有强大数学背景的学生来说,这些方法可能具有挑战性。在这项研究中,使用新冠肺炎数据创建了直观的示例,以帮助学生理解这些技术背后的核心概念。在一个4小时的实践环节中,我们用这些例子向15名生物医学背景的研究生展示了降维技术。使用Python和Jupyter笔记本,我们的目标是解开这些通常被视为“黑匣子”的方法的神秘面纱,并使学生能够生成和解释自己的结果。为了评估我们的方法的影响,我们进行了一项匿名调查。大多数学生都认为使用电脑丰富了他们的学习经验(67%),Jupyter笔记本电脑是课堂上很有价值的一部分(66%)。此外,60%的学生表示对Python的兴趣增加,40%的学生对降维方法既感兴趣又有更好的理解。尽管课程持续时间很短,但40%的学生表示已经掌握了该领域所需的研究技能。虽然需要进一步分析这种方法的学习影响,但我们相信,分享我们生成的例子可以为其他人在互动教学环境中使用提供宝贵的资源。这些例子以一种易于理解的方式突出了现代生物信息学分析中使用的主要降维方法的优势和局限性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Demystifying dimensionality reduction techniques in the ‘omics’ era: A practical approach for biological science students

Dimensionality reduction techniques are essential in analyzing large ‘omics’ datasets in biochemistry and molecular biology. Principal component analysis, t-distributed stochastic neighbor embedding, and uniform manifold approximation and projection are commonly used for data visualization. However, these methods can be challenging for students without a strong mathematical background. In this study, intuitive examples were created using COVID-19 data to help students understand the core concepts behind these techniques. In a 4-h practical session, we used these examples to demonstrate dimensionality reduction techniques to 15 postgraduate students from biomedical backgrounds. Using Python and Jupyter notebooks, our goal was to demystify these methods, typically treated as “black boxes”, and empower students to generate and interpret their own results. To assess the impact of our approach, we conducted an anonymous survey. The majority of the students agreed that using computers enriched their learning experience (67%) and that Jupyter notebooks were a valuable part of the class (66%). Additionally, 60% of the students reported increased interest in Python, and 40% gained both interest and a better understanding of dimensionality reduction methods. Despite the short duration of the course, 40% of the students reported acquiring research skills necessary in the field. While further analysis of the learning impacts of this approach is needed, we believe that sharing the examples we generated can provide valuable resources for others to use in interactive teaching environments. These examples highlight advantages and limitations of the major dimensionality reduction methods used in modern bioinformatics analysis in an easy-to-understand way.

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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.
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