研究目的
To characterize macular ganglion cell layer (GCL) changes with age and provide a framework to assess changes in ocular disease.
研究成果
Pattern recognition successfully identi?ed statistically separable macular areas that undergo a segmented linear reduction with age. This regression model better predicted macular GCL thickness. The various unique spatial patterns revealed by pattern recognition combined with core GCL thickness data provide a framework to analyze GCL loss in ocular disease.
研究不足
A limitation of the study includes the decreased sample size for the higher age group, notably the 8th decade group due to the higher prevalence of ocular disease in this age group. The variability of the GCL thickness measurement with the OCT is also a potential confounding factor.
1:Experimental Design and Method Selection:
The study used data clustering to analyze macular GCL patterns from optical coherence tomography (OCT) in a large cohort of subjects without ocular disease.
2:Sample Selection and Data Sources:
Single eyes of 201 patients evaluated at the Centre for Eye Health (Sydney, Australia) were retrospectively enrolled (age range, 20–85).
3:5). List of Experimental Equipment and Materials:
3. List of Experimental Equipment and Materials: Spectralis OCT macular scans were used.
4:Experimental Procedures and Operational Workflow:
8 3 8 grid locations obtained from Spectralis OCT macular scans were analyzed with unsupervised classi?cation into statistically separable classes sharing common GCL thickness and change with age. The resulting classes and gridwise data were ?tted with linear and segmented linear regression curves.
5:Data Analysis Methods:
Accuracy of each model was examined through comparison of predicted 50-year-old equivalent macular GCL thickness for the entire cohort to a true 50-year-old reference cohort.
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