| Literature DB >> 32213927 |
Francesc Moreso1, Joana Sellarès1, María José Soler1, Daniel Serón1.
Abstract
The clinical significance of renal transplant biopsies displaying borderline changes suspicious for T-cell mediated rejection (TCMR) or interstitial fibrosis and tubular atrophy (IFTA) with interstitial inflammation has not been well defined. Molecular profiling to evaluate renal transplant biopsies using microarrays has been shown to be an objective measurement that adds precision to conventional histology. We review the contribution of transcriptomic analysis in surveillance and indication biopsies with borderline changes and IFTA associated with variable degrees of inflammation. Transcriptome analysis applied to biopsies with borderline changes allows to distinguish patients with rejection from those in whom mild inflammation mainly represents a response to injury. Biopsies with IFTA and inflammation occurring in unscarred tissue display a molecular pattern similar to TCMR while biopsies with IFTA and inflammation in scarred tissue, apart from T-cell activation, also express B cell, immunoglobulin and mast cell-related genes. Additionally, patients at risk for IFTA progression can be identified by genes mainly reflecting fibroblast dysregulation and immune activation. At present, it is not well established whether the expression of rejection gene transcripts in patients with fibrosis and inflammation is the consequence of an alloimmune response, tissue damage or a combination of both.Entities:
Keywords: biopsies; borderline changes; interstitial fibrosis and tubular atrophy; microarrays; renal transplantation; transcriptome
Mesh:
Year: 2020 PMID: 32213927 PMCID: PMC7139324 DOI: 10.3390/ijms21062245
Source DB: PubMed Journal: Int J Mol Sci ISSN: 1422-0067 Impact factor: 5.923
Transcriptome analysis on indication biopsies with borderline changes-histological category and different controls. ABMR, antibody-mediated rejection; TCMR, T-cell mediated rejection; BL, borderline changes; PBTs, pathogenesis-based transcripts; CATs, infiltration of cytotoxic T cells; GRIT1, interferon-gamma and rejection induced transcripts; KT, kidney parenchymal transcripts; IFTA, interstitial fibrosis and tubular atrophy; AKI, acute kidney injury; BL, borderline changes.
| Reference | Time & Type of Biopsy Sample Size | Methods & Results | Main Conclusion |
|---|---|---|---|
| Mueller TF et al. | Clinical indication | Affymetrix GeneChip Human Genome U133 Plus 2.0 Arrays | ABMR and TCMR manifested similar PBT disturbances. Biopsies with minimal PBT disturbances had a very low incidence of rejection. |
| Am J Transplant 2007 [ | ↑ CAT1, CAT2, GRIT1, GRIT2; | ||
| ↓ KT1-KT2 in TCMR GRIT1 associated with C4d staining (ABMR) | |||
| De Freitas DG et al. | Clinical indication | Affymetrix GeneChip Human Genome U133 Plus 2.0 Arrays | Most cases designated borderline by histopathology are found to be non-rejection by molecular phenotyping. |
| Am J Transplant 2011 [ | TCMR( | Molecular changes measured according to T-cell burden; a rejection classifier; a canonical TCMR classifier; and the risk score. Reassigned borderline biopsies as TCMR like 13/40 (33%) or non-rejection-like 27/40 (67%). | |
| Decision tree analysis showed that i-total >27% and tubulitis extent > 3% match the molecular diagnosis of TCMR in 85% of cases. | |||
| Halloran PF et al. | Clinical indication | Affymetrix microarrays. | The molecular TCMR score has potential to add new insight, particularly in situations where histology is ambiguous or potentially misleading. |
| Am J Transplant 2013 [ | International Collaborative Microarray Study ( | Microarray expression files for BFC403 (GSE36059) and INT300 (GSE48581) cohorts. TCMR scores divided into high or low using the same cut off of 0.1. | |
| TCMR ( | |||
| Hrubá P et al. | BL early clinical biopsies ( | Illumina microarray analysis. | Variations in gene expression between clinical and subclinical borderline changes despite similar histological findings. |
| Kidney Int 2017 [ | ↑ C19orf59, CXCL2, IL6, S100A8, S100A9, FGA in early clinical biopsies as compared to protocol biopsies | ||
| ↑ SAA1, CLEC5A, FGA in borderline biopsies with IFTA progression | |||
| Halloran PF et al. | Clinical indication | Affymetrix hgu219 PrimeView microarray chips. | MMDx would add valuable support for clinical decisions beyond current standard-of care. |
| Am J Transplant 2017 [ | International Collaborative Microarray Study ( | Molecular classifier scores (ABMRpm [positive ≥0.20], TCMRt [positive ≥0.10], Rejection [positive ≥0.30]) | |
| ABMR ( | |||
| Reeve J et al. | Clinical indication. 13 centres ( | Affymetrix hgu219 PrimeView microarray chips. | Borderline changes are classified as no rejection (72%), TCMR (6%), ABMR (20%) and mixed ABMR/TCMR (1%). |
| JCI insights 2017 [ | BL ( | Archetypal analysis of molecular phenotypes. |
Summary of different studies analyzing the transcriptome on surveillance biopsies. IFTA, interstitial fibrosis and tubular atrophy; TCMR, T-cell mediated rejection; QCATs (infiltration of cytotoxic T cells); GRIT1 (interferon-gamma and rejection-induced transcripts); QCMAT (infiltration of macrophages; AMAT1 (alternative macrophage activation); IRITD3 (injury and repair induced transcripts); ENDATs (endothelial transcripts); KT1 and KT2 (kidney parenchymal transcripts).
| Reference | Time & Type of Biopsy Sample Size | Methods & Results | Main Conclusion |
|---|---|---|---|
| Sherer A et al. Nephrol Dial Transplant 2009 [ | Paired 3- and 6-month protocol biopsies. | Affymetrix GeneChip Human Genome U133 Plus 2.0 Arrays | Gene expression profiling of early protocol biopsies identified changes in the transcriptome of grafts, which may be important for development of IFTA. |
| Non IFTA progression ( | IFTA progression is associated with overexpression of T-, B-cell activation, immune response and profibrotic genes. | ||
| IFTA progression ( | Under expression of genes related with transporter and metabolic functions in IFTA progression. | ||
| Vitalone MJ et al. | Paired 0-, 1-, 3- and 12-month protocol biopsies (59 biopsies from 18 patients) | Human 8K cDNA microarrays, Australian Genome Research | Allografts display immune and fibrotic gene expression profiles with patterns of expression gradually varying by time after transplantation. |
| Transplantation 2010 [ | Subclinical rejection = 14% | Immune pathway activity peaked at 1-month, fibrotic expression at 3 months, wound healing-remodelling and cell proliferation-repair processes were activated between 3 and 12 months, whereas macrophage-related gene expression occurred late by 12 months | Gene expression predated histologic damage. |
| Naesens M et al. | Paediatric transplants. | Affymetrix Gene Chip Human Genome U133 Plus 2.0 Arrays | Progressive chronic histological damage is associated with regulation of both innate and adaptive immune responses that cannot be evaluated by histology. |
| Kidney Int 2011 [ | 24 patients with paired 0-, 6- and 24 months protocol biopsies. 24 patients with TCMR. | Upregulation of adaptive (T- and B-cell signatures) and innate immune cell transcripts (dendritic cell and NK cell transcripts) is already present in biopsies of kidneys several months before chronic histological damage occurs. | |
| Mengel M et al. | 6-weeks protocol biopsies ( | Affymetrix Gene Chip Human Genome U133 Plus 2.0 Arrays | The molecular phenotype reflects the injury–repair response to implantation stresses, and has little relationship to future events. |
| Am J Transplant 2011 [ | ↑ QCAT, QCMAT, GRIT1, AMAT; ↓ KT1-KT2 in TCMR and borderline. | ||
| PBTs correlated with DGF but not with ΔeGFR at 2 years, ΔIF/TA at 6 months or i-Banff at 6 months. | |||
| O’Conell PJ et al. | Discovery set: 3-month ( | Affymetrix human exon 1.0 ST array in the discovery set and qPCR in the validation set. 13 genes related with active repair and regeneration pathways predicts the development and progression of chronic allograft damage and subsequent allograft loss | Kidney transplant recipients at risk of allograft loss can be identified before the development of irreversible damage. |
| The Lancet 2016 [ | Validation set ( |
Figure 1Hypothesized sequential modifications in the transcriptome for different gene sets and its correlation with histological changes. TCMR, T-cell mediated rejection; IFTA, interstitial fibrosis and tubular atrophy. Continuous lines depict transcriptome expression leading to IFTA with inflammation while dotted lines depict transcriptome expression leading to IFTA without inflammation.