Gaussian binning: a new kernel-based method for processing NMR spectroscopic data for metabolomics

被引:51
|
作者
Anderson, Paul E. [1 ]
Reo, Nicholas V. [2 ]
DelRaso, Nicholas J. [3 ]
Doom, Travis E. [1 ]
Raymer, Michael L. [1 ]
机构
[1] Wright State Univ, Dept Comp Sci & Engn, Dayton, OH 45435 USA
[2] Wright State Univ, Boonshoft Sch Med, Dept Biochem & Mol Biol, Dayton, OH 45429 USA
[3] USAF, Wright Patterson AFB, Human Performance Wing 711, Wright Patterson AFB, OH 45433 USA
关键词
Gaussian; binning; pattern recognition; quantification; nuclear magnetic resonance;
D O I
10.1007/s11306-008-0117-3
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
In many metabolomics studies, NMR spectra are divided into bins of fixed width. This spectral quantification technique, known as uniform binning, is used to reduce the number of variables for pattern recognition techniques and to mitigate effects from variations in peak positions; however, shifts in peaks near the boundaries can cause dramatic quantitative changes in adjacent bins due to non-overlapping boundaries. Here we describe a new Gaussian binning method that incorporates overlapping bins to minimize these effects. A Gaussian kernel weights the signal contribution relative to distance from bin center, and the overlap between bins is controlled by the kernel standard deviation. Sensitivity to peak shift was assessed for a series of test spectra where the offset frequency was incremented in 0.5 Hz steps. For a 4 Hz shift within a bin width of 24 Hz, the error for uniform binning increased by 150%, while the error for Gaussian binning increased by 50%. Further, using a urinary metabolomics data set (from a toxicity study) and principal component analysis (PCA), we showed that the information content in the quantified features was equivalent for Gaussian and uniform binning methods. The separation between groups in the PCA scores plot, measured by the J(2) quality metric, is as good or better for Gaussian binning versus uniform binning. The Gaussian method is shown to be robust in regards to peak shift, while still retaining the information needed by classification and multivariate statistical techniques for NMR-metabolomics data.
引用
收藏
页码:261 / 272
页数:12
相关论文
共 50 条
  • [41] Fast Kernel-based Method for Anomaly Detection
    Anh Le
    Trung Le
    Khanh Nguyen
    Van Nguyen
    Thai Hoang Le
    Dat Tran
    2016 INTERNATIONAL JOINT CONFERENCE ON NEURAL NETWORKS (IJCNN), 2016, : 3211 - 3217
  • [42] Kernel-based method for automated walking patterns recognition using kinematics data
    Wu, Jianning
    Wang, Jue
    Liu, Li
    ADVANCES IN NATURAL COMPUTATION, PT 2, 2006, 4222 : 560 - 569
  • [43] Linux kernel-based traffic analysis method
    Institute of Computing Technology, Chinese Academy of Sciences, Beijing 100080, China
    Jisuanji Gongcheng, 2006, 8 (67-69):
  • [44] Kernel-based gradient evolution optimization method
    Flor-Sanchez, Carlos O.
    Resendiz-Flores, Edgar O.
    Altamirano-Guerrero, Gerardo
    INFORMATION SCIENCES, 2022, 602 : 313 - 327
  • [45] A Kernel-Based Core Growing Clustering Method
    Hsieh, T. W.
    Taur, J. S.
    Tao, C. W.
    Kung, S. Y.
    INTERNATIONAL JOURNAL OF INTELLIGENT SYSTEMS, 2009, 24 (04) : 441 - 458
  • [46] Kernel-based gradient evolution optimization method
    Flor-Sánchez, Carlos O.
    Reséndiz-Flores, Edgar O.
    Altamirano-Guerrero, Gerardo
    Information Sciences, 2022, 602 : 313 - 327
  • [47] Damage diagnosis using a kernel-based method
    Chattopadhyay, A.
    Das, S.
    Coelho, C. K.
    INSIGHT, 2007, 49 (08) : 451 - 458
  • [48] A kernel-based method for nonparametric estimation of variograms
    Yu, Keming
    Mateu, Jorge
    Porcu, Emilio
    STATISTICA NEERLANDICA, 2007, 61 (02) : 173 - 197
  • [49] SVM with Gaussian Kernel-based Image Spam Detection on Textual Features
    Kumar, Prashant
    Biswas, Mantosh
    2017 3RD IEEE INTERNATIONAL CONFERENCE ON COMPUTATIONAL INTELLIGENCE & COMMUNICATION TECHNOLOGY (CICT), 2017,
  • [50] A new kernel-based approach for spectral estimation
    Zorzi, Mattia
    2020 EUROPEAN CONTROL CONFERENCE (ECC 2020), 2020, : 534 - 539