Systems Engineering Perspective of Human Metabolism through a Multiscale Model for Disease Analysis : A Cell to Human Framework
K V Venkatesh, Professor, Indian Institute of Technology Bombay
Human
physiology is an ensemble of various biological processes spanning from
intracellular molecular interactions to the whole body phenotypic response.
Systems biology endures to decipher these multi-scale biological networks and
bridge the link between genotype to phenotype. The structure and dynamic
properties of these networks are responsible for controlling and deciding the
phenotypic state of a cell. Several cells and various tissues coordinate
together to generate an organ level response which further regulates the
ultimate physiological state. The characterization of the network involves
interactions from genes to proteins to metabolites. In this hierarchical link
from genotype to phenotype, metabolomics directly links to the phenotypic
state. The analysis of metabolites present in a particular phenotype forms the
basis of characterization of the system state of the cell/tissue. Using steady
state and dynamical models along with metabolomics data, one can try to
obtain insights into the system level properties.
The overall network embeds a hierarchical regulatory structure, which when
unusually perturbed can lead to undesirable physiological state termed as
disease. Here, we treat a disease diagnosis problem analogous to a fault
diagnosis problem in engineering systems. Accordingly we review the application
of engineering methodologies to address human diseases from systems biological
perspective. The research work highlights potential networks and modeling
approaches used for analyzing human diseases. The application of such analysis
is illustrated in the case of diabetes and hypercholesterolemia. We put forth a
concept of cell-to- human framework comprising of five modules (data mining,
networking, modeling, and experimental and validation) for addressing human
physiology and diseases based on a paradigm of system level analysis. The work
emphasizes on the importance of multi-scale biological networks and subsequent
modeling and analysis for drug target identification and designing efficient
therapies.
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