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Series GSE125478 Query DataSets for GSE125478
Status Public on Aug 16, 2019
Title Molecular Assessment of Rejection and Injury in Lung Transplant Biopsies
Organism Homo sapiens
Experiment type Expression profiling by array
Summary Improved understanding of lung transplant disease states is essential because failure rates are high, often due to chronic lung allograft dysfunction. However, histologic assessment of lung transplant transbronchial biopsies (TBBs) is difficult and often uninterpretable even with 10 pieces. All 242 single-piece TBBs produced reliable transcript measurements. Paired TBB pieces available from 12 patients showed significant similarity but also showed some sampling variance. Alveolar content, as estimated by surfactant transcript expression, was a source of sampling variance. To offset sampling variation, for analysis we selected 152 single-piece TBBs with high surfactant transcripts. Unsupervised archetypal analysis identified four idealized phenotypes (archetypes) and scored biopsies for their similarity to each: normal, T cell-mediated rejection (TCMR; T cell transcripts), antibody-mediated rejection (ABMR)-like (endothelial transcripts), and injury (macrophage transcripts). Molecular TCMR correlated with histologic TCMR. The relationship of molecular scores to histologic ABMR could not be assessed because of the paucity of ABMR in this population. Molecular assessment of single-piece TBBs can be used to classify lung transplant biopsies and correlated with rejection histology. Two or three pieces for each TBB will probably be needed to offset sampling variance.
 
Overall design We prospectively studied whether microarray assessment of single TBB pieces could identify disease states and reduce the amount of tissue required for diagnosis. Following strategies successful for heart transplants, we used expression of rejection-associated transcripts (annotated in kidney transplant biopsies) in unsupervised machine learning to identify disease states.
 
Contributor(s) Chang J
Citation(s) 30773443
Submission date Jan 22, 2019
Last update date Aug 18, 2019
Contact name Jessica Chang
E-mail(s) jjchang@ualberta.ca
Organization name University of Alberta
Department Medicine
Lab ATAGC
Street address 250 Heritage Medical Research Centre
City Edmonton
ZIP/Postal code T6G 2S2
Country Canada
 
Platforms (1)
GPL15207 [PrimeView] Affymetrix Human Gene Expression Array
Samples (242)
GSM3574865 lung176 biopsy
GSM3574866 lung162 biopsy
GSM3574867 lung182 biopsy
Relations
BioProject PRJNA516459

Download family Format
SOFT formatted family file(s) SOFTHelp
MINiML formatted family file(s) MINiMLHelp
Series Matrix File(s) TXTHelp

Supplementary file Size Download File type/resource
GSE125478_RAW.tar 478.8 Mb (http)(custom) TAR (of CEL)
GSE125478_log2_RMA_matrix.txt.gz 62.0 Mb (ftp)(http) TXT
Processed data included within Sample table
Processed data are available on Series record

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