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Development of machine learning models for detection of vision threatening Behçet's disease (BD) using Egyptian College of Rheumatology (ECR)-BD cohort.

Authors :
Hammam N
Bakhiet A
El-Latif EA
El-Gazzar II
Samy N
Noor RAA
El-Shebeiny E
El-Najjar AR
Eesa NN
Salem MN
Ibrahim SE
El-Essawi DF
Elsaman AM
Fathi HM
Sallam RA
El Shereef RR
Ismail F
Abd-Elazeem MI
Said EA
Khalil NM
Shahin D
El-Saadany HM
ElKhalifa M
Nasef SI
Abdalla AM
Noshy N
Fawzy RM
Saad E
Moshrif A
El-Shanawany AT
Abdel-Fattah YH
Khalil HM
Hammam O
Fathy AA
Gheita TA
Source :
BMC medical informatics and decision making [BMC Med Inform Decis Mak] 2023 Feb 17; Vol. 23 (1), pp. 37. Date of Electronic Publication: 2023 Feb 17.
Publication Year :
2023

Abstract

Background: Eye lesions, occur in nearly half of patients with Behçet's Disease (BD), can lead to irreversible damage and vision loss; however, limited studies are available on identifying risk factors for the development of vision-threatening BD (VTBD). Using an Egyptian college of rheumatology (ECR)-BD, a national cohort of BD patients, we examined the performance of machine-learning (ML) models in predicting VTBD compared to logistic regression (LR) analysis. We identified the risk factors for the development of VTBD.<br />Methods: Patients with complete ocular data were included. VTBD was determined by the presence of any retinal disease, optic nerve involvement, or occurrence of blindness. Various ML-models were developed and examined for VTBD prediction. The Shapley additive explanation value was used for the interpretability of the predictors.<br />Results: A total of 1094 BD patients [71.5% were men, mean ± SD age 36.1 ± 10 years] were included. 549 (50.2%) individuals had VTBD. Extreme Gradient Boosting was the best-performing ML model (AUROC 0.85, 95% CI 0.81, 0.90) compared with logistic regression (AUROC 0.64, 95%CI 0.58, 0.71). Higher disease activity, thrombocytosis, ever smoking, and daily steroid dose were the top factors associated with VTBD.<br />Conclusions: Using information obtained in the clinical settings, the Extreme Gradient Boosting identified patients at higher risk of VTBD better than the conventional statistical method. Further longitudinal studies to evaluate the clinical utility of the proposed prediction model are needed.<br /> (© 2023. The Author(s).)

Details

Language :
English
ISSN :
1472-6947
Volume :
23
Issue :
1
Database :
MEDLINE
Journal :
BMC medical informatics and decision making
Publication Type :
Academic Journal
Accession number :
36803463
Full Text :
https://doi.org/10.1186/s12911-023-02130-6