Bachelor Thesis from the year 2014 in the subject Computer Science -
Bioinformatics, grade: 165/200 (A+), language: English, abstract: Aim: I
sought to determine trauma-specific transcriptomic signatures for septic
sub-cohorts. Methods: In retrospective large-scale data analysis, I
applied (old and new methods), including lagged correlation between
transcripts and clinical subtype counts (by integrating over 800 samples
from trauma patients). Results: Focussing on novel pathways and
correlation methods we revealed (persistently down-regulated) ribosomal
genes and changed time profiles of metabolic enzyme precursors
/transcripts. Candidates associated to insulin signalling, including
HK3, hinted towards "metabolic syndrome". Correlation analysis yielded
robust results for LCN2 and LTF (r>0.9), but only moderate associations
to subtype counts (e.g. top-performing r (Eosinophil, IL5RA)>0.6).
Discussion: Gene Centred Normalisation Reduces Ambiguity and Improves
Interpretation.