揭示R的力量:实验室医学数据分析的综合视角。

IF 3.8 2区 医学 Q1 MEDICAL LABORATORY TECHNOLOGY
Chaochao Ma, Ling Qiu
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引用次数: 0

摘要

R语言因其强大的统计能力和动态工具(如RMarkdown和RShiny)在实验室医学中获得了吸引力。然而,总结为检验医学量身定制的R包和功能的文献有限,这使得临床实验室工作人员难以使用这些工具。此外,跨R包的不同算法可能导致发布的报告不一致。本文通过概述R的发展及其关键特性来解决这些挑战,然后总结在R中实现的统计方法,包括平台比较,精度验证,因子分析和参考区间(RIs)的建立。我们还强调了使用线性和逻辑回归、决策树、随机森林、支持向量机、朴素贝叶斯、k-近邻、k-均值聚类和反向传播神经网络等技术的预测模型的开发和验证,这些技术都是在R中实现的。为了确保研究的透明度和可重复性,我们为使用R进行实验室医学数据分析的论文作者提供了一份清单。在最后一部分,我们将探讨R在大数据分析中的潜力,重点是通过RMarkdown实现标准化报告,以及使用RShiny创建用户友好的数据可视化平台。此外,还讨论了大型语言模型(llm)的集成,如ChatGPT,因为它们在增强R编程、自动化报告和提供数据分析见解方面的好处,从而提高了实验室数据分析的效率和准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unveiling the power of R: a comprehensive perspective for laboratory medicine data analysis.

R language has gained traction in laboratory medicine for its statistical power and dynamic tools like RMarkdown and RShiny. However, there is limited literature summarizing R packages and functions tailored for laboratory medicine, making it difficult for clinical laboratory workers to access these tools. Additionally, varying algorithms across R packages can lead to inconsistencies in published reports. This review addresses these challenges by providing an overview of R's evolution and its key features, followed by a summary of statistical methods implemented in R, including platform comparisons, precision verification, factor analysis, and the establishment of reference intervals (RIs). We also highlight the development and validation of predictive models using techniques such as linear and logistic regression, decision trees, random forests, support vector machines, naive Bayes, K-Nearest Neighbors, k-means clustering, and backpropagation neural networks - all implemented in R. To ensure transparency and reproducibility in research, a checklist is provided for authors publishing papers using R for data analysis in laboratory medicine. In the final section, the potential of R in big data analytics is explored, focusing on standardized reporting through RMarkdown and the creation of user-friendly data visualization platforms with RShiny. Moreover, the integration of large language models (LLMs), such as ChatGPT, is discussed for their benefits in enhancing R programming, automating reporting, and offering insights from data analysis, thus improving the efficiency and accuracy of laboratory data analysis.

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来源期刊
Clinical chemistry and laboratory medicine
Clinical chemistry and laboratory medicine 医学-医学实验技术
CiteScore
11.30
自引率
16.20%
发文量
306
审稿时长
3 months
期刊介绍: Clinical Chemistry and Laboratory Medicine (CCLM) publishes articles on novel teaching and training methods applicable to laboratory medicine. CCLM welcomes contributions on the progress in fundamental and applied research and cutting-edge clinical laboratory medicine. It is one of the leading journals in the field, with an impact factor over 3. CCLM is issued monthly, and it is published in print and electronically. CCLM is the official journal of the European Federation of Clinical Chemistry and Laboratory Medicine (EFLM) and publishes regularly EFLM recommendations and news. CCLM is the official journal of the National Societies from Austria (ÖGLMKC); Belgium (RBSLM); Germany (DGKL); Hungary (MLDT); Ireland (ACBI); Italy (SIBioC); Portugal (SPML); and Slovenia (SZKK); and it is affiliated to AACB (Australia) and SFBC (France). Topics: - clinical biochemistry - clinical genomics and molecular biology - clinical haematology and coagulation - clinical immunology and autoimmunity - clinical microbiology - drug monitoring and analysis - evaluation of diagnostic biomarkers - disease-oriented topics (cardiovascular disease, cancer diagnostics, diabetes) - new reagents, instrumentation and technologies - new methodologies - reference materials and methods - reference values and decision limits - quality and safety in laboratory medicine - translational laboratory medicine - clinical metrology Follow @cclm_degruyter on Twitter!
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