| Literature DB >> 25672464 |
Johanna Pedroza-Díaz1, Sarah Röthlisberger1.
Abstract
The discovery of protein biomarkers that reflect the biological state of the body is of vital importance to disease management. Urine is an ideal source of biomarkers that provides a non-invasive approach to diagnosis, prognosis and prediction of diseases. Consequently, the study of the human urinary proteome has increased dramatically over the last 10 years, with many studies being published. This review focuses on urinary protein biomarkers that have shown potential, in initial studies, for diseases affecting the urogenital tract, specifically chronic kidney disease and prostate cancer, as well as other non-urogenital pathologies such as breast cancer, diabetes, atherosclerosis and osteoarthritis. PubMed was searched for peer-reviewed literature on the subject, published in the last 10 years. The keywords used were "urine, biomarker, protein, and/or prostate cancer/breast cancer/chronic kidney disease/diabetes/atherosclerosis/osteoarthritis". Original studies on the subject, as well as a small number of reviews, were analysed including the strengths and weaknesses, and we summarized the performance of biomarkers that demonstrated potential. One of the biggest challenges found is that biomarkers are often shared by several pathologies so are not specific to one disease. Therefore, the trend is shifting towards implementing a panel of biomarkers, which may increase specificity. Although there have been many advances in urinary proteomics, these have not resulted in similar advancements in clinical practice due to high costs and the lack of large data sets. In order to translate these potential biomarkers to clinical practice, vigorous validation is needed, with input from industry or large collaborative studies.Entities:
Keywords: biomarker; protein; urine
Mesh:
Substances:
Year: 2015 PMID: 25672464 PMCID: PMC4401308 DOI: 10.11613/BM.2015.003
Source DB: PubMed Journal: Biochem Med (Zagreb) ISSN: 1330-0962 Impact factor: 2.313
Summary of biomarkers described in this review.
| Collagen fragments, A1AT, albumin, haemoglobin α chain, and fibrinogen α chain, uromodulin, sodium/potassium-transporting ATPase γ chain, membrane-associated progesterone receptor component 1 | Diagnosis | ( | Training set: | CE-MS | Training set: 3600 | |
| The identity of the peptides in this panel of biomarkers was not established | Diagnosis | ( | Discrimination of IgAN - controls: | CE-MS | 115 | |
| Uromodulin, α1-antitrypsin (A1AT) and β2-microglobulin peptides | Diagnosis | ( | Not given | Magnetic bead technology and MALDI-TOF MS | 33 | |
| NGAL | Diagnosis | ( | Sensitivity 90.2% | ELISA and IHC | 70 | |
| Annexin A3 | Diagnosis | ( | Area under the ROC curve of 0.82 for combined Annexin A3/PSA | Western Blot | 591 | |
| Uromodulin and semenogelin | Diagnosis | ( | Sensitivity 71.2% | MALDI-TOF | 407 | |
| Sodium/potassium-transporting ATPase γ, Collagen α fragments (I and III), Psoriasis susceptibility 1 candidate gene 2 protein, hepatocellular carcinoma associated protein TB6, histone H2B, osteopontin, polymeric Ig receptor, transmembrane secretory component, prostatic acid phosphatase, fibrinogen α chain precursor, and semenogelin 1 | Diagnosis | ( | Sensitivity 91% | CE-MS | 86 | |
| EN2 | Diagnosis and prognosis | ( | ( | RT-PCR, IHC and ELISA | ( | |
| MMP-9 and ADAM-12 | Risk stratification | ( | Area under the curve of 0.914 and 0.950 | IHC | 148 | |
| NGAL/Lcn2 | Diagnosis | ( | Likelihood ratio test = 5.0, P = 0.025 | ELISA | 20 | |
| Collagen fragments α1 (I and III), fibrinogen, A1AT, membrane-associated progesterone receptor component 1 and uromodulin | Diagnosis | ( | Distinguish DM - controls: 94% accuracy | CE-MS | 902 | |
| Gelsolin, antithrombin III, ephrin type-B receptor 4, vitamin K-dependent protein Z | Diagnosis and progression | ( | Not given | LC-MS/MS | 35 | |
| Uromodulin, apolipoprotein A-I, apolipoprotein E, α2-thiol proteinase inhibitor, human complement regulatory protein CD59, α1-microglobulin, zinc-α2 glycoprotein, α-1B glycoprotein, retinol-binding protein 4 | Progression | ( | Not given | 2DE, LC-MS/MS, MALDI-TOF-MS | Not given | |
| Collagen α1 fragments (types I and III) | Diagnosis | ( | Sensitivity 81%, specificity 92% and 84% accuracy | CE-MS | 67 | |
| Collagen α1 fragments (types I and III), A1AT, granin-like neuroendocrine peptide precursor, membrane-associated progesterone receptor component 1, sodium/potassium-transporting ATPase gamma chain, fibrinogen- α chain | Diagnosis and response to treatment | ( | Area under the ROC curve 87% | CE-MS | 623 | |
| Collagen type II fragments | Diagnosis | ( | Not given | LC-MS/MS | Not given | |
| Fibulin-3, β-actin, α1-microglobulin, apoptosis-inducing factor-2, Zn-α2-glycoprotein precursor, serpin β1 and β3, mannan binding lectin serine protease-2 precursor, kinninogen-1 precursor and A1AT. | Diagnosis | ( | Fib3-1: Specificity 77.1% and sensitivity 68.4% | 2D-DIGE and MS | 15 | |
| CKD - chronic kidney disease; A1AT - α1-antitrypsin; CE-MS - capillary electrophoresis-mass spectrometry; IgAN - IgA nephropathy; MALDI TOF MS - matrix-assisted laser desorption-ionization time-of-flight mass spectrometry; NGAL - neutrophil gelatinase-associated lipocalin; ELISA - enzyme-linked immunosorbent assay; IHC - immunohistochemistry; EN2 - engrailed-2; RT-PCR - real time polymorphisms chain reaction; MMP - matrix metalloproteinase; ADAM - a disintegrin and metalloproteinase; LCN2 - lipocalin-2; LC-MS/MS - liquid chromatography-tandem mass spectrometry; 2DE - two-dimensional gel electrophoresis; 2D-DIGE - two-dimensional difference gel electrophoresis. | ||||||