SPA-STOCSY: an automated tool for identifying annotated and non-annotated metabolites in high-throughput NMR spectra

Author:

Han Xu12,Wang Wanli13,Ma Li-Hua4,AI-Ramahi Ismael15,Botas Juan15ORCID,MacKenzie Kevin46,Allen Genevera I17,Young Damian W16,Liu Zhandong12ORCID,Maletic-Savatic Mirjana12

Affiliation:

1. Jan and Dan Duncan Neurological Research Institute at Texas Children’s Hospital , Houston, TX 77030, United States

2. Department of Pediatrics-Neurology, Baylor College of Medicine , Houston, TX 77030, United States

3. Graduate Program of Quantitative & Computational Biosciences, Baylor College of Medicine , Houston, TX 77030, United States

4. Advanced Technology Cores, Baylor College of Medicine , Houston, TX 77030, United States

5. Department of Molecular and Human Genetics, Baylor College of Medicine , Houston, TX 77030, United States

6. Center for Drug Discovery, Baylor College of Medicine , Houston, TX 77030, United States

7. Department of Electrical and Computer Engineering, Statistics, and Computer Science, Rice University , Houston, TX 77005-1827, United States

Abstract

Abstract Motivation Nuclear magnetic resonance spectroscopy (NMR) is widely used to analyze metabolites in biological samples, but the analysis requires specific expertise, it is time-consuming, and can be inaccurate. Here, we present a powerful automate tool, SPatial clustering Algorithm-Statistical TOtal Correlation SpectroscopY (SPA-STOCSY), which overcomes challenges faced when analyzing NMR data and identifies metabolites in a sample with high accuracy. Results As a data-driven method, SPA-STOCSY estimates all parameters from the input dataset. It first investigates the covariance pattern among datapoints and then calculates the optimal threshold with which to cluster datapoints belonging to the same structural unit, i.e. the metabolite. Generated clusters are then automatically linked to a metabolite library to identify candidates. To assess SPA-STOCSY’s efficiency and accuracy, we applied it to synthesized spectra and spectra acquired on Drosophila melanogaster tissue and human embryonic stem cells. In the synthesized spectra, SPA outperformed Statistical Recoupling of Variables (SRV), an existing method for clustering spectral peaks, by capturing a higher percentage of the signal regions and the close-to-zero noise regions. In the biological data, SPA-STOCSY performed comparably to the operator-based Chenomx analysis while avoiding operator bias, and it required <7 min of total computation time. Overall, SPA-STOCSY is a fast, accurate, and unbiased tool for untargeted analysis of metabolites in the NMR spectra. It may thus accelerate the use of NMR for scientific discoveries, medical diagnostics, and patient-specific decision making. Availability and implementation The codes of SPA-STOCSY are available at https://github.com/LiuzLab/SPA-STOCSY.

Funder

National Institute of General Medical Sciences

National Institute of Aging

Cynthia and Antony Petrello Endowment

Simons Foundation

Publisher

Oxford University Press (OUP)

Subject

Computational Mathematics,Computational Theory and Mathematics,Computer Science Applications,Molecular Biology,Biochemistry,Statistics and Probability

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