Publication: Prognostic stratification in primary glomerulonephritis: Integrating histology, biomarkers, and risk prediction models
Program
KU-Authors
KU Authors
Co-Authors
Covic, AS
Covic, A
Caruntu, ID
Siriteanu, L
Ismail, G
Voroneanu, L
Onofriescu, M.
Editor & Affiliation
Compiler & Affiliation
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Other Contributor
Date
Language
eng
Type
Embargo Status
No
Journal Title
Journal ISSN
Volume Title
Alternative Title
Abstract
Primary glomerulonephritis encompasses a diverse group of kidney diseases with variable clinical trajectories and outcomes. Accurate prognostic stratification is critical for guiding individualized management and improving long-term renal survival. This narrative review synthesizes current evidence on the prognostic value of histological grading systems, circulating and urinary biomarkers, and integrative risk prediction models across major primary glomerulonephritis subtypes, including IgA nephropathy, membranous nephropathy, and focal segmental glomerulosclerosis. Emphasis is placed on the utility of established classification systems (e.g., Oxford, MEST-C, chronicity scores), emerging tissue and fluid biomarkers (e.g., PLA2R antibodies, complement components, cytokine profiles), and the validation of multivariable prognostic tools and nomograms. We highlight areas of convergence between histopathologic lesions and molecular markers, as well as the evolving role of machine learning in predictive modeling. Ultimately, combining morphological, biochemical, and algorithmic tools holds promise for precision risk assessment and treatment tailoring in primary glomerulonephritis.
Source
Publisher
MDPI
Subject
Biology, Microbiology
Citation
Has Part
Source
Life (Basel)
Book Series Title
Edition
DOI
10.3390/life16030419
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N/A
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Creative Commons license
Except where otherwised noted, this item's license is described as N/A
