(Open access funding provided by Semmelweis University)
Szakterületek:
Szemészet
Recently, a deep learning algorithm (DLA) has been developed to predict the chronological
age from retinal images. The Retinal Age Gap (RAG), a deviation between predicted
age from retinal images (Retinal Age, RA) and chronological age, correlates with mortality
and age-related diseases. This study evaluated the reliability and accuracy of RA
predictions and analyzed various factors that may influence them. We analyzed two
groups of participants: Intravisit and Intervisit, both imaged by color fundus photography.
RA was predicted using an established algorithm. The Intervisit group comprised 26
subjects, imaged in two sessions. The Intravisit group had 41 subjects, of whom each
eye was photographed twice in one session. The mean absolute test-retest difference
in predicted RA was 2.39 years for Intervisit and 2.13 years for Intravisit, with
the latter showing higher prediction variability. The chronological age was predicted
accurately from fundus photographs. Subsetting image pairs based on differential image
quality reduced test-retest discrepancies by up to 50%, but mean image quality was
not correlated with retest outcomes. Marked diurnal oscillations in RA predictions
were observed, with a significant overestimation in the afternoon compared to the
morning in the Intravisit cohort. The order of image acquisition across imaging sessions
did not influence RA prediction and subjective age perception did not predict RAG.
Inter-eye consistency exceeded 3 years. Our study is the first to explore the reliability
of RA predictions. Consistent image quality enhances retest outcomes. The observed
diurnal variations in RA predictions highlight the need for standardized imaging protocols,
but RAG could soon be a reliable metric in clinical investigations.