MetaboScope:用于分析人体临床研究 1H 核磁共振谱的统计工具箱。

IF 2.4 Q2 MATHEMATICAL & COMPUTATIONAL BIOLOGY Bioinformatics advances Pub Date : 2024-10-28 eCollection Date: 2024-01-01 DOI:10.1093/bioadv/vbae142
Ruey Leng Loo, Javier Osorio Mosquera, Michael Zasso, Jacqueline Mathews, Desmond G Johnston, Jeremy K Nicholson, Luc Patiny, Elaine Holmes, Julien Wist
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引用次数: 0

摘要

动机利用生物样本的高分辨率光谱分子指纹进行代谢表型分析,已在临床研究中显示出诊断、预后和机理价值。然而,由于缺乏可行的工作流程,以及将光谱数据转化为可用信息方面的挑战,临床转化受到了阻碍:MetaboScope 是一种分析和统计工作流程,用于学习、设计和分析临床相关的 1H 核磁共振数据。它具有模块化预处理管道、多元建模工具(包括主成分分析(PCA)、正交投影潜结构判别分析(OPLS-DA))和生物标记发现工具(多区块 PCA 和统计光谱学)。此外还提供了一个模拟工具,允许用户创建用于假设检验和功率计算的合成光谱:MetaboScope 以流水线的形式构建,每个模块都接受前一个模块生成的输出。这不仅提供了使用的灵活性和简便性,而且易于维护。该系统及其库使用 JavaScript 开发,以网络应用程序的形式运行;因此,所有操作都在本地计算机上执行,无需上传数据。MetaboScope 工具可在 https://www.cheminfo.org/flavor/metabolomics/index.html 上获取。代码是开源的,必要时可在本地部署。建模时会提供模块说明、视频教程和临床光谱数据集。
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MetaboScope: a statistical toolbox for analyzing 1H nuclear magnetic resonance spectra from human clinical studies.

Motivation: Metabolic phenotyping, using high-resolution spectroscopic molecular fingerprints of biological samples, has demonstrated diagnostic, prognostic, and mechanistic value in clinical studies. However, clinical translation is hindered by the lack of viable workflows and challenges in converting spectral data into usable information.

Results: MetaboScope is an analytical and statistical workflow for learning, designing and analyzing clinically relevant 1H nuclear magnetic resonance data. It features modular preprocessing pipelines, multivariate modeling tools including Principal Components Analysis (PCA), Orthogonal-Projection to Latent Structure Discriminant Analysis (OPLS-DA), and biomarker discovery tools (multiblock PCA and statistical spectroscopy). A simulation tool is also provided, allowing users to create synthetic spectra for hypothesis testing and power calculations.

Availability and implementation: MetaboScope is built as a pipeline where each module accepts the output generated by the previous one. This provides flexibility and simplicity of use, while being straightforward to maintain. The system and its libraries were developed in JavaScript and run as a web app; therefore, all the operations are performed on the local computer, circumventing the need to upload data. The MetaboScope tool is available at https://www.cheminfo.org/flavor/metabolomics/index.html. The code is open-source and can be deployed locally if necessary. Module notes, video tutorials, and clinical spectral datasets are provided for modeling.

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