Abstract:
Living organisms possess the ability to tune themselves in response to various Intra and
extracellular cues, which in turn creates an assortment of metabolites in the cellular soup.
Metabolomics – the science that deals with the identification and quantification of metabolites in a biological system under a set of conditions – is gaining recognition as a powerful tool that
helps to comprehend the effect of various stressors and environmental conditions on the
metabolome of a biological system. In fact, NMR-based metabolomics is being used in
different areas including disease biology, medicine, pharmacy, toxicology, food and
environmental sciences, etc., to obtain the metabolic fingerprint associated with different
biological systems.
The work carried out in this PhD thesis has focussed on the analysis of samples ranging
from animal cells, microbial cultures, plants to human body fluids using a metabolomics
approach. In the first chapter, we describe and illustrate the methods commonly used in NMR-based metabolomics. This chapter provides an overview of metabolomics and cover topics such as, sample preparation, multiple analytical platforms required to study metabolome, description
of NMR experiments, various spectral pre- and post-processing steps needed to analyze raw
spectral data, data processing tools to eliminate spectral artifacts and remove biologically
irrelevant variations, statistical analysis for data interpretation and modelling for validation.
The second chapter of my thesis provides information about important parameters
related to methods used in this work, e.g., NMR experiments, metabolomics spectral databases,
computational tools for metabolomic data and pathway analysis, software packages for
metabolite identification, their quantification and types of analysis that have been performed
for data interpretation and feature selection.
In the third and fourth chapter of the thesis, we have aimed at identifying metabolic
signatures associated with type 2 diabetes mellitus (T2DM) in pancreatic b-cells and human
serum samples, respectively. Chronically elevated glucose (hyperglycemia) and lipid levels
(dyslipidemia in T2DM confounded with obesity) are the major phenotypes associated with
T2DM and have been known to induce dysfunction and apoptosis of pancreatic β-cell. In
particular, in the third chapter, we aimed to determine the metabolic signatures associated
with high glucose (glucotoxic), high lipid exposure (lipotoxic) alone and in combination
(glucolipotoxic) conditions in INS-1E cells (pancreatic β-cells) and have identified metabolic
pathways that play significant roles in excess-fuel detoxification in these cells. The perturbed
metabolites majorly belong to glycolysis, TCA cycle, amino acid metabolism, and hexosamine
metabolism pathways. Interestingly, UDP-N-acetylglucosamine and o-phosphocholine were
identified as the commonly dysregulated metabolites under all three stress conditions used and
we proposed to use the ratio of these metabolites as a biomarker for these conditions. In the
fourth chapter of the thesis, we aimed to identify unique circulating metabolic markers
associated with pre-diabetes and T2DM in Asian Indians using NMR-based metabolomics that
could be used as potential biomarkers for prognosis and disease diagnosis. The high incidence
and positive correlation between these three morbidities suggests that there must be some
common dysregulated metabolic pathways among them. Using ROC curve analysis, 12
metabolites in the T2DM subjects; and six in prediabetic subjects, were identified with high
specificity and sensitivity, that can be used in the future for clinical diagnosis, patient
surveillance, and for predicting individuals at risk for developing overt diabetes in the future
in the South Asian Indians.
The fifth chapter of this thesis focusses on the identification of metabolites and
metabolic pathways critical for early adaptive responses to pH change (acidic stress), oxidative
stress, and nutrient starvation in Mycobacterium smegmatis – a saprophytic soil mycobacterium routinely used as a as model organism for Mycobacterium tuberculosis. Using untargeted 1H NMR based metabolomics, 22, 21, and 47 dysregulated metabolites were identified in acidic, oxidative, and nutrient starvation conditions, respectively. The accumulation of organic osmolytes, such as dimethylamine, methylamine, and betaine during nutrient starvation and oxidative stress, was specifically noticeable. Tracing these accumulated osmolytes through computational search tools and gene-expression studies, we deciphered pathways of biosynthesis of betaine, methylamine and dimethylamine (previously undocumented and unreported in Mycobacterium smegmatis).
The sixth and last chapter of the thesis deals with the identification of metabolites from
five different varieties of potato (Solanum tuberosum L.), a non-grain crop in high demand
worldwide, in response to storage in cold conditions. Indeed, cold-induced sweetening (CIS)
has been known to cause a great loss to the potato processing industry, wherein selection of
potato genotypes using biochemical information through marker-trait associations has found
to be advantageous. Using NMR-based metabolomics on tubers from five potato cultivars
(Atlantic, Frito Lay-1533, Kufri Jyoti, Kufri Pukhraj, and PU1) differing in their CIS ability
and processing characteristics, significant metabolic perturbations were identified at harvest
and after one month of cold storage at 4°C. Our study provides new insights that would help
in further manipulation of specific metabolites playing a crucial role in determining the CIS
phenotype and processing quality of potato cultivars for improved quality traits.