Komatsu_2023_Sci.Rep_13_19742

Reference

Title : Associated factors of diabetic retinopathy by artificial intelligence evaluation of fundus images in Japan - Komatsu_2023_Sci.Rep_13_19742
Author(s) : Komatsu K , Sano K , Fukai K , Nakagawa R , Nakagawa T , Tatemichi M , Nakano T
Ref : Sci Rep , 13 :19742 , 2023
Abstract :

This cross-sectional study aimed to investigate the promoting and inhibitory factors of diabetic retinopathy (DR) according to diabetes mellitus (DM) stage using standardized evaluation of fundus images by artificial intelligence (AI). A total of 30,167 participants underwent blood and fundus examinations at a health screening facility in Japan (2015-2016). Fundus photographs were screened by the AI software, RetCAD and DR scores (DRSs) were quantified. The presence of DR was determined by setting two cut-off values prioritizing sensitivity or specificity. DM was defined as four stages (no DM: DM0; advanced DM: DM3) based on treatment history and hemoglobin A1c (HbA1c) levels. Associated factors of DR were identified using logistic regression analysis. For cutoff values, multivariate analysis revealed age, sex, systolic blood pressure (SBP), smoking, urinary protein, and HbA1c level as positively associated with the risk of DR among all DM stages. In addition to glycemic control, SBP and Fibrosis-4 index might act as promoting factors for DR at all or an earlier DM stage. T-Bil, cholinesterase, and T-cho level might be protective factors at an advanced DM stage.

PubMedSearch : Komatsu_2023_Sci.Rep_13_19742
PubMedID: 37957353

Related information

Citations formats

Komatsu K, Sano K, Fukai K, Nakagawa R, Nakagawa T, Tatemichi M, Nakano T (2023)
Associated factors of diabetic retinopathy by artificial intelligence evaluation of fundus images in Japan
Sci Rep 13 :19742

Komatsu K, Sano K, Fukai K, Nakagawa R, Nakagawa T, Tatemichi M, Nakano T (2023)
Sci Rep 13 :19742