Identification of a human neonatal immune-metabolic network associated with bacterial infection

CL Smith, P Dickinson, T Forster, M Craigon… - Nature …, 2014 - nature.com
CL Smith, P Dickinson, T Forster, M Craigon, A Ross, MR Khondoker, R France, A Ivens…
Nature communications, 2014nature.com
Understanding how human neonates respond to infection remains incomplete. Here, a
system-level investigation of neonatal systemic responses to infection shows a surprisingly
strong but unbalanced homeostatic immune response; developing an elevated set-point of
myeloid regulatory signalling and sugar-lipid metabolism with concomitant inhibition of
lymphoid responses. Innate immune-negative feedback opposes innate immune activation
while suppression of T-cell co-stimulation is coincident with selective upregulation of CD85 …
Abstract
Understanding how human neonates respond to infection remains incomplete. Here, a system-level investigation of neonatal systemic responses to infection shows a surprisingly strong but unbalanced homeostatic immune response; developing an elevated set-point of myeloid regulatory signalling and sugar-lipid metabolism with concomitant inhibition of lymphoid responses. Innate immune-negative feedback opposes innate immune activation while suppression of T-cell co-stimulation is coincident with selective upregulation of CD85 co-inhibitory pathways. By deriving modules of co-expressed RNAs, we identify a limited set of networks associated with bacterial infection that exhibit high levels of inter-patient variability. Whereas, by integrating immune and metabolic pathways, we infer a patient-invariant 52-gene-classifier that predicts bacterial infection with high accuracy using a new independent patient population. This is further shown to have predictive value in identifying infection in suspected cases with blood culture-negative tests. Our results lay the foundation for future translation of host pathways in advancing diagnostic, prognostic and therapeutic strategies for neonatal sepsis.
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