| Literature DB >> 25182141 |
Shiva Kalantari, Mohsen Nafar, Dorothea Rutishauser, Shiva Samavat, Mostafa Rezaei-Tavirani, Hongqian Yang, Roman A Zubarev1.
Abstract
BACKGROUND: Focal segmental glomerulosclerosis (FSGS) is a glomerular scarring disease diagnosed mostly by kidney biopsy. Since there is currently no diagnostic test that can accurately predict steroid responsiveness in FSGS, prediction of the responsiveness of patients to steroid therapy with noninvasive means has become a critical issue. In the present study urinary proteomics was used as a noninvasive tool to discover potential predictive biomarkers.Entities:
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Year: 2014 PMID: 25182141 PMCID: PMC4236676 DOI: 10.1186/1471-2369-15-141
Source DB: PubMed Journal: BMC Nephrol ISSN: 1471-2369 Impact factor: 2.388
Demographic and laboratory characteristics of patients with focal segmental glomerulosclerosis
| 1 | 29 | M | 34.61 | 2031 | <10% | 0% | Partial Responder |
| 2 | 46 | M | 34.64 | 5000 | 30% | 30% | Non-responder |
| 3 | 19 | M | 145.76 | 4500 | 30% | 23% | Partial Responder |
| 4 | 61 | M | 46.52 | 2590 | <10% | 16% | Partial Responder |
| 5 | 37 | F | 78.51 | 1400 | <10% | 8% | Partial Responder |
| 6 | 36 | F | 60.52 | 2710 | 20% | 26% | Partial Responder |
| 7 | 37 | F | 42.01 | 710 | 30% | 30% | Non-responder |
| 8 | 30 | M | 38.76 | 2925 | 40% | 45% | Non-responder |
| 9 | 58 | F | 70.48 | 4373 | <10% | 0% | Non-responder |
| 10 | 18 | M | 85.17 | 11000 | <10% | 0% | Complete Responder |
(eGFR: Estimated Glomerular Filtration Rate by CKD-EPI equation, TA: tubular atrophy, IF: interstitial fibrosis). All the partial responders were included in the responder group.
Figure 1Score plot of PCA. Open circles represent steroid sensitive (responder) and black dots represent steroid resistant (non-responder) patient samples. Each of the 10 samples was analyzed with two technical replicates.
Figure 2Predictive model. A) Orthogonal projection to latent structures discriminant analysis (OPLS-DA) model for discrimination of steroid sensitive (open circles) and steroid resistant (black dots) patient samples. B) Separation of the same samples by a seven-fold cross validated model built based on OPLS-DA in A); C) ROC-curve based on model in B).
Figure 3Randomized model. A) OPLS-DA model for the decoy discrimination of steroid sensitive (open circles) and steroid resistant (black dots) patient samples. B) Separation of the same samples by a seven-fold cross validated model built based on OPLS-DA in A); C) ROC-curve based on model in B).
Figure 4Gene set enrichment analysis of biological process. This analysis was done by DAVID based on the predictive proteins in Additional file 3.