Neurodegeneration in glaucoma patients is clinically identified through longitudinal assessment of structure-function changes, including intraocular pressure, cup-to-disc ratios from fundus images, and optical coherence tomography imaging of the retinal nerve fiber layer. Use of human post-mortem ocular tissue for basic research is rising in the glaucoma field, yet there are challenges in assessing disease stage and severity, since tissue donations with informed consent are often unaccompanied by detailed pre-mortem clinical information. Further, the interpretation of disease severity based solely on anatomical and morphological assessments by histology can be affected by differences in death-to-preservation time and tissue processing. These are difficult confounders that cannot be easily controlled. As pathogenesis and molecular mechanisms can vary depending on the stage and severity of glaucoma, there is a need for the field to maximize use of donated tissue to better understand the molecular mechanisms of glaucoma and develop new therapeutic hypotheses. Further, there is a lack of consensus around the molecular RNA and protein markers that can be used to classify glaucoma severity. Here, we describe a multiparametric grading system that combines structural measurements of the retinal nerve fiber layer with linear regression and principal component analyses of molecular markers of retinal ganglion cells and glia (RBPMS, NEFL, IBA1 and GFAP) to stratify post-mortem glaucoma eyes by the severity of disease. Our findings show that a quantitative grading approach can stratify post-mortem glaucoma samples with minimal clinical histories into at least three severity groups and suggest that this type of approach may be useful for researchers aiming to maximize insights derived from eye bank donor tissue.

Download full-text PDF

Source
http://dx.doi.org/10.1186/s40478-024-01880-2DOI Listing
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11702176PMC

Publication Analysis

Top Keywords

multiparametric grading
8
glaucoma
8
glaucoma severity
8
retinal nerve
8
nerve fiber
8
fiber layer
8
glaucoma field
8
stage severity
8
molecular mechanisms
8
stratify post-mortem
8

Similar Publications

Neurodegeneration in glaucoma patients is clinically identified through longitudinal assessment of structure-function changes, including intraocular pressure, cup-to-disc ratios from fundus images, and optical coherence tomography imaging of the retinal nerve fiber layer. Use of human post-mortem ocular tissue for basic research is rising in the glaucoma field, yet there are challenges in assessing disease stage and severity, since tissue donations with informed consent are often unaccompanied by detailed pre-mortem clinical information. Further, the interpretation of disease severity based solely on anatomical and morphological assessments by histology can be affected by differences in death-to-preservation time and tissue processing.

View Article and Find Full Text PDF

Background: Traditional nomograms can inform the presence of extraprostatic extension (EPE) but not laterality, which remains important for surgical planning, and have not fully incorporated multiparametric MRI data. We evaluated predictors of side-specific EPE on surgical pathology including MRI characteristics and developed side-specific EPE risk calculators.

Methods: This was a retrospective cohort of patients evaluated with mpMRI prior to radical prostatectomy (RP) in our eleven hospital healthcare system from July 2018-November 2022.

View Article and Find Full Text PDF
Article Synopsis
  • Developed a 3-D acoustic radiation force impulse (ARFI) system for prostate imaging to identify cancerous regions and guide biopsies in one visit using a transrectal probe and 3-D visualization software.
  • The system was tested in a clinical trial comparing ARFI-guided targeted transperineal biopsies with other standard biopsy methods.
  • Results showed ARFI was less effective for lower-grade cancers but performed well for higher-grade cancers, suggesting it could enhance biopsy accuracy when combined with 2-D imaging techniques.
View Article and Find Full Text PDF
Article Synopsis
  • Pediatric low-grade gliomas (pLGGs) show varying treatment responses and poor outcomes when complete tumor removal isn't possible, making early treatment prediction important.
  • A radiogenomic analysis combining MRI and RNA sequencing reveals three immune clusters in pLGGs, with one cluster having higher immune activity but worse prognosis, suggesting they might benefit from immunotherapy.
  • A developed radiomic signature accurately predicts these immune profiles and progression-free survival, identifying high-risk patients for potential targeted therapies.
View Article and Find Full Text PDF
Article Synopsis
  • This study explored how well machine learning models using mpMRI radiomic features can classify Gleason grade groups (GG) in prostate cancer.
  • It involved analyzing data from 203 patients who had pre-biopsy mpMRI scans, using various feature selection methods and machine learning classifiers to assess model performance.
  • The best-performing model achieved impressive accuracy and sensitivity (97.0% and 98.0% respectively) for classifying prostate cancer into five GG categories, demonstrating the effectiveness of this non-invasive approach.
View Article and Find Full Text PDF

Want AI Summaries of new PubMed Abstracts delivered to your In-box?

Enter search terms and have AI summaries delivered each week - change queries or unsubscribe any time!