TY - JOUR
T1 - A transcriptional signature of fatigue derived from patients with primary Sjögren's syndrome
AU - UK primary Sjögren's Syndrome Registry
AU - James, Katherine
AU - Al-Ali, Shereen
AU - Tarn, Jessica
AU - Cockell, Simon J.
AU - Gillespie, Colin S.
AU - Hindmarsh, Victoria
AU - Locke, James
AU - Mitchell, Sheryl
AU - Lendrem, Dennis
AU - Bowman, Simon
AU - Price, Elizabeth
AU - Pease, Colin T.
AU - Emery, Paul
AU - Lanyon, Peter
AU - Hunter, John A.
AU - Gupta, Monica
AU - Bombardieri, Michele
AU - Sutcliffe, Nurhan
AU - Pitzalis, Costantino
AU - McLaren, John
AU - Cooper, Annie
AU - Regan, Marian
AU - Giles, Ian
AU - Isenberg, David
AU - Saravanan, Vadivelu
AU - Coady, David
AU - Dasgupta, Bhaskar
AU - McHugh, Neil
AU - Young-Min, Steven
AU - Moots, Robert
AU - Gendi, Nagui
AU - Akil, Mohammed
AU - Griffiths, Bridget
AU - Hall, Frances
AU - Bacabac, Elalaine C.
AU - Chadravarty, Kuntal
AU - Lamabadusuriya, Shamin
AU - Adeniba, Rashidat
AU - Hamburger, John
AU - Richards, Andrea
AU - Rauz, Saaeha
AU - Brailsford, Sue
AU - Logan, Joanne
AU - Mulherin, Diarmuid
AU - Andrews, Jacqueline
AU - McManus, Alison
AU - Booth, Alison
AU - Dimitroulas, Theodoros
AU - Kadiki, Lucy
AU - Ng, Wan Fai
N1 - Publisher Copyright:
© 2015 James et al. This is an open access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
PY - 2015/12/1
Y1 - 2015/12/1
N2 - Background: Fatigue is a debilitating condition with a significant impact on patients' quality of life. Fatigue is frequently reported by patients suffering from primary Sjögren's Syndrome (pSS), a chronic autoimmune condition characterised by dryness of the eyes and the mouth. However, although fatigue is common in pSS, it does not manifest in all sufferers, providing an excellent model with which to explore the potential underpinning biological mechanisms. Methods: Whole blood samples from 133 fully-phenotyped pSS patients stratified for the presence of fatigue, collected by the UK primary Sjögren's Syndrome Registry, were used for whole genome microarray. The resulting data were analysed both on a gene by gene basis and using pre-defined groups of genes. Finally, gene set enrichment analysis (GSEA) was used as a feature selection technique for input into a support vector machine (SVM) classifier. Classification was assessed using area under curve (AUC) of receiver operator characteristic and standard error of Wilcoxon statistic, SE(W). Results: Although no genes were individually found to be associated with fatigue, 19 metabolic pathways were enriched in the high fatigue patient group using GSEA. Analysis revealed that these enrichments arose from the presence of a subset of 55 genes. A radial kernel SVM classifier with this subset of genes as input displayed significantly improved performance over classifiers using all pathway genes as input. The classifiers had AUCs of 0.866 (SE(W) 0.002) and 0.525 (SE(W) 0.006), respectively. Conclusions: Systematic analysis of gene expression data from pSS patients discordant for fatigue identified 55 genes which are predictive of fatigue level using SVM classification. This list represents the first step in understanding the underlying pathophysiological mechanisms of fatigue in patients with pSS.
AB - Background: Fatigue is a debilitating condition with a significant impact on patients' quality of life. Fatigue is frequently reported by patients suffering from primary Sjögren's Syndrome (pSS), a chronic autoimmune condition characterised by dryness of the eyes and the mouth. However, although fatigue is common in pSS, it does not manifest in all sufferers, providing an excellent model with which to explore the potential underpinning biological mechanisms. Methods: Whole blood samples from 133 fully-phenotyped pSS patients stratified for the presence of fatigue, collected by the UK primary Sjögren's Syndrome Registry, were used for whole genome microarray. The resulting data were analysed both on a gene by gene basis and using pre-defined groups of genes. Finally, gene set enrichment analysis (GSEA) was used as a feature selection technique for input into a support vector machine (SVM) classifier. Classification was assessed using area under curve (AUC) of receiver operator characteristic and standard error of Wilcoxon statistic, SE(W). Results: Although no genes were individually found to be associated with fatigue, 19 metabolic pathways were enriched in the high fatigue patient group using GSEA. Analysis revealed that these enrichments arose from the presence of a subset of 55 genes. A radial kernel SVM classifier with this subset of genes as input displayed significantly improved performance over classifiers using all pathway genes as input. The classifiers had AUCs of 0.866 (SE(W) 0.002) and 0.525 (SE(W) 0.006), respectively. Conclusions: Systematic analysis of gene expression data from pSS patients discordant for fatigue identified 55 genes which are predictive of fatigue level using SVM classification. This list represents the first step in understanding the underlying pathophysiological mechanisms of fatigue in patients with pSS.
UR - https://www.scopus.com/pages/publications/84957961210
U2 - 10.1371/journal.pone.0143970
DO - 10.1371/journal.pone.0143970
M3 - Article
C2 - 26694930
AN - SCOPUS:84957961210
SN - 1932-6203
VL - 10
JO - PLOS ONE
JF - PLOS ONE
IS - 12
M1 - e0143970
ER -