Publication: Identifying Proteins Associated with Disease Severity
DOI
Type:
Article
Date
2022-09-15
Journal Title
Journal ISSN
Volume Title
Publisher
Faculty of Humanities and Sciences, SLIIT
Abstract
Proteomic studies or studies of protein
expression levels are growing swiftly with the
steady improvement in technology and
knowledge on understanding various anomalies
affecting humans. Since differentially expressed
proteins have an influence on overall cell
functionality, this improves discrimination
between healthy and diseased states.
Identifying prime proteins offers prospective
insights for developing optimized and targeted
treatment methods. This research involves
analyzing data from an early-stage study whose
main purpose was to identify differentially
expressed proteins. The presence of 3
progressively serious states of disease (healthy
to mild to severe) escalates the importance of
this study because there is not much research
literature that considers ordinal outcomes in
studies of this nature. The analysis can be
segregated into 2 stages, univariate and multiprotein
analysis. Approach of the univariate
analysis was to implement continuation ratio
model considering one protein at a time to pick
those that exhibits potential ordinality.
Penalized continuation ratio model using lasso
regularization incorporated with bootstrapping
proteins was performed as the next stage to
identify protein combinations that perform well
together. Compound results of the univariate
and multi-protein analysis identified 20 most
dominant proteins that have the capability to
discriminate between the disease states in an
ordinal manner satisfactorily.
Description
Keywords
Proteomic studies, Trend tests, Ordinal nature, Lasso regularization, Bootstrapping
Citation
O. Samarawickrama, R. Jayatillake and D. Amaratunga (2022). Identifying Proteins Associated with Disease Severity. Proceedings of SLIIT International Conference on Advancements in Sciences and Humanities, (11) October, Colombo, 207 - 211.
