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Dive into the research topics where Zhengzheng Pan is active.

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Featured researches published by Zhengzheng Pan.


Analytica Chimica Acta | 2011

Principal component directed partial least squares analysis for combining nuclear magnetic resonance and mass spectrometry data in metabolomics: Application to the detection of breast cancer

Haiwei Gu; Zhengzheng Pan; Bowei Xi; Vincent Asiago; Brian Musselman; Daniel Raftery

Nuclear magnetic resonance (NMR) spectroscopy and mass spectrometry (MS) are the two most commonly used analytical tools in metabolomics, and their complementary nature makes the combination particularly attractive. A combined analytical approach can improve the potential for providing reliable methods to detect metabolic profile alterations in biofluids or tissues caused by disease, toxicity, etc. In this paper, (1)H NMR spectroscopy and direct analysis in real time (DART)-MS were used for the metabolomics analysis of serum samples from breast cancer patients and healthy controls. Principal component analysis (PCA) of the NMR data showed that the first principal component (PC1) scores could be used to separate cancer from normal samples. However, no such obvious clustering could be observed in the PCA score plot of DART-MS data, even though DART-MS can provide a rich and informative metabolic profile. Using a modified multivariate statistical approach, the DART-MS data were then reevaluated by orthogonal signal correction (OSC) pretreated partial least squares (PLS), in which the Y matrix in the regression was set to the PC1 score values from the NMR data analysis. This approach, and a similar one using the first latent variable from PLS-DA of the NMR data resulted in a significant improvement of the separation between the disease samples and normals, and a metabolic profile related to breast cancer could be extracted from DART-MS. The new approach allows the disease classification to be expressed on a continuum as opposed to a binary scale and thus better represents the disease and healthy classifications. An improved metabolic profile obtained by combining MS and NMR by this approach may be useful to achieve more accurate disease detection and gain more insight regarding disease mechanisms and biology.


Chemical Communications | 2007

Rapid ambient mass spectrometric profiling of intact, untreated bacteria using desorption electrospray ionization

Yishu Song; Nari Talaty; W. Andy Tao; Zhengzheng Pan; R. Graham Cooks

Desorption electrospray ionization (DESI) allows the rapid acquisition of highly reproducible mass spectra from intact microorganisms under ambient conditions; application of principal component analysis to the data allows sub-species differentiation.


NMR in Biomedicine | 2009

1H NMR metabolomics study of age profiling in children

Haiwei Gu; Zhengzheng Pan; Bowei Xi; Bryan E. Hainline; Narasimhamurthy Shanaiah; Vincent Asiago; G. A. Nagana Gowda; Daniel Raftery

Metabolic profiling of urine provides a fingerprint of personalized endogenous metabolite markers that correlate to a number of factors such as gender, disease, diet, toxicity, medication, and age. It is important to study these factors individually, if possible to unravel their unique contributions. In this study, age‐related metabolic changes in children of age 12 years and below were analyzed by 1H NMR spectroscopy of urine. The effect of age on the urinary metabolite profile was observed as a distinct age‐dependent clustering even from the unsupervised principal component analysis. Further analysis, using partial least squares with orthogonal signal correction regression with respect to age, resulted in the identification of an age‐related metabolic profile. Metabolites that correlated with age included creatinine, creatine, glycine, betaine/TMAO, citrate, succinate, and acetone. Although creatinine increased with age, all the other metabolites decreased. These results may be potentially useful in assessing the biological age (as opposed to chronological) of young humans as well as in providing a deeper understanding of the confounding factors in the application of metabolomics. Copyright


Journal of Pharmaceutical and Biomedical Analysis | 2007

1H NMR study of the effects of sample contamination in the metabolomic analysis of mouse urine.

Haiwei Gu; Zhengzheng Pan; Chester T. Duda; Doug Mann; Candice B. Kissinger; Candace Rohde; Daniel Raftery

Nuclear magnetic resonance (NMR) spectroscopy was used to evaluate and optimize the strategy for collecting mouse urine samples. A series of normal urine samples and those mixed with folate-deficient food, turkey or mouse fecal particles were analyzed using principal component analysis (PCA). The metabolic profile of urine mixed with folate-deficient food was found to be extremely different than that of clean urine. Changes in the urine composition caused by mixing with turkey or feces are relatively small as judged by the output of PCA. As a result, turkey may be considered as an applicable food source for obtaining uncontaminated urine samples for metabolomics-based research.


Analytica Chimica Acta | 2011

Principal Component Directed Partial Least Squares Analysis for Combining NMR and MS Data in Metabolomics: Application to the Detection of Breast Cancer

Haiwei Gu; Zhengzheng Pan; Bowei Xi; Vincent Asiago; Brian Musselman; Daniel Raftery

Nuclear magnetic resonance (NMR) spectroscopy and mass spectrometry (MS) are the two most commonly used analytical tools in metabolomics, and their complementary nature makes the combination particularly attractive. A combined analytical approach can improve the potential for providing reliable methods to detect metabolic profile alterations in biofluids or tissues caused by disease, toxicity, etc. In this paper, (1)H NMR spectroscopy and direct analysis in real time (DART)-MS were used for the metabolomics analysis of serum samples from breast cancer patients and healthy controls. Principal component analysis (PCA) of the NMR data showed that the first principal component (PC1) scores could be used to separate cancer from normal samples. However, no such obvious clustering could be observed in the PCA score plot of DART-MS data, even though DART-MS can provide a rich and informative metabolic profile. Using a modified multivariate statistical approach, the DART-MS data were then reevaluated by orthogonal signal correction (OSC) pretreated partial least squares (PLS), in which the Y matrix in the regression was set to the PC1 score values from the NMR data analysis. This approach, and a similar one using the first latent variable from PLS-DA of the NMR data resulted in a significant improvement of the separation between the disease samples and normals, and a metabolic profile related to breast cancer could be extracted from DART-MS. The new approach allows the disease classification to be expressed on a continuum as opposed to a binary scale and thus better represents the disease and healthy classifications. An improved metabolic profile obtained by combining MS and NMR by this approach may be useful to achieve more accurate disease detection and gain more insight regarding disease mechanisms and biology.


Analytica Chimica Acta | 2011

Principal component directed partial least squares analysis for combining nuclear magnetic resonance and mass spectrometry data in metabolomics

Haiwei Gu; Zhengzheng Pan; Bowei Xi; Vincent Asiago; Brian Musselman; Daniel Raftery

Nuclear magnetic resonance (NMR) spectroscopy and mass spectrometry (MS) are the two most commonly used analytical tools in metabolomics, and their complementary nature makes the combination particularly attractive. A combined analytical approach can improve the potential for providing reliable methods to detect metabolic profile alterations in biofluids or tissues caused by disease, toxicity, etc. In this paper, (1)H NMR spectroscopy and direct analysis in real time (DART)-MS were used for the metabolomics analysis of serum samples from breast cancer patients and healthy controls. Principal component analysis (PCA) of the NMR data showed that the first principal component (PC1) scores could be used to separate cancer from normal samples. However, no such obvious clustering could be observed in the PCA score plot of DART-MS data, even though DART-MS can provide a rich and informative metabolic profile. Using a modified multivariate statistical approach, the DART-MS data were then reevaluated by orthogonal signal correction (OSC) pretreated partial least squares (PLS), in which the Y matrix in the regression was set to the PC1 score values from the NMR data analysis. This approach, and a similar one using the first latent variable from PLS-DA of the NMR data resulted in a significant improvement of the separation between the disease samples and normals, and a metabolic profile related to breast cancer could be extracted from DART-MS. The new approach allows the disease classification to be expressed on a continuum as opposed to a binary scale and thus better represents the disease and healthy classifications. An improved metabolic profile obtained by combining MS and NMR by this approach may be useful to achieve more accurate disease detection and gain more insight regarding disease mechanisms and biology.


Analytical and Bioanalytical Chemistry | 2007

Comparing and combining NMR spectroscopy and mass spectrometry in metabolomics

Zhengzheng Pan; Daniel Raftery


Rapid Communications in Mass Spectrometry | 2006

Combining desorption electrospray ionization mass spectrometry and nuclear magnetic resonance for differential metabolomics without sample preparation

Huanwen Chen; Zhengzheng Pan; Nari Talaty; Daniel Raftery; R. Graham Cooks


Analytical and Bioanalytical Chemistry | 2007

Principal component analysis of urine metabolites detected by NMR and DESI-MS in patients with inborn errors of metabolism

Zhengzheng Pan; Haiwei Gu; Nari Talaty; Huanwen Chen; Narasimhamurthy Shanaiah; Bryan E. Hainline; R. Graham Cooks; Daniel Raftery


Analytical Chemistry | 2007

Monitoring Diet Effects via Biofluids and Their Implications for Metabolomics Studies

Haiwei Gu; Huanwen Chen; Zhengzheng Pan; Ayanna U. Jackson; Nari Talaty; Bowei Xi; Candice B. Kissinger; Chester Duda; Doug Mann; Daniel Raftery, ,‡ and; R. Graham Cooks

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Daniel Raftery

University of Washington

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Haiwei Gu

University of Washington

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Huanwen Chen

China University of Technology

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