The Use of Deep Learning in Distinguishing Chalazion and Eyelid Mass.
J Ophthalmol 2026; 2026:8878251.

Abstract

PURPOSE

Our study investigated the ability of artificial intelligence to differentiate eyelid lesions to support its potential use as a tool to better inform referrals to oculoplastic surgery specialists by other healthcare providers. Specifically, our study tested artificial intelligence's ability to distinguish benign chalazia from alternative eyelid masses that may require advanced subspecialized care with oculoplastic specialists.

METHODS

This retrospective case-control study included 206 photographs of diagnosed chalazia from 183 patients and 517 photographs from 486 patients with non-chalazia eyelid lesions to train and test a convolutional neural network (CNN). Network architectures including VGG-16, VGG-19, ResNet50, Xception, and MobileNetV2 were trained. Their performances were compared using the area under the curve (AUC) as the main outcome metric. Additionally, performances of CNN models were compared to those of frontline physicians.

RESULTS

VGG-16 and VGG-19 architectures achieved meaningful performance when trained with photographs of chalazion and eyelid mass achieving AUCs of 0.797 and 0.703, respectively. Adjusting detection thresholding allowed the VGG-16 and VGG-19 models to achieve sensitivity of 93% and 98% in predicting eyelid mass, respectively. This was an improvement over classification by frontline physicians who achieved an accuracy of 61% and a sensitivity of 65% for mass detection.

CONCLUSIONS

We showed that using a CNN trained with clinical external photographs could successfully distinguish a chalazion from an alternative eyelid mass, supporting its potential use as a tool for healthcare providers to assist in determining whether a mass requires oculoplastic referral for subspecialty care.

Authors+Show Affiliations

Li A0000-0002-5124-7068Department of Ophthalmology, Weill Cornell Medicine, New York City, New York, USA, cornell.edu.
Schmuter GDepartment of Ophthalmology, Weill Cornell Medicine, New York City, New York, USA, cornell.edu.
Rana SDepartment of Ophthalmology, Weill Cornell Medicine, New York City, New York, USA, cornell.edu.
Hyder SDepartment of Ophthalmology, Weill Cornell Medicine, New York City, New York, USA, cornell.edu.
Patel PDepartment of Ophthalmology, Weill Cornell Medicine, New York City, New York, USA, cornell.edu.
Hembree ADepartment of Emergency Medicine, Weill Cornell Medicine, New York City, New York, USA, cornell.edu.
Philips ADepartment of Emergency Medicine, Weill Cornell Medicine, New York City, New York, USA, cornell.edu.
Prather SDepartment of Medicine, Weill Cornell Medicine, New York City, New York, USA, cornell.edu.
Curato M0000-0001-5463-6387Department of Emergency Medicine, Weill Cornell Medicine, New York City, New York, USA, cornell.edu.
Segal KDepartment of Ophthalmology, Weill Cornell Medicine, New York City, New York, USA, cornell.edu.
Godfrey KJDepartment of Ophthalmology, Weill Cornell Medicine, New York City, New York, USA, cornell.edu. Department of Neurological Surgery, Weill Cornell Medicine, New York City, New York, USA, cornell.edu.
Lelli G0009-0007-9486-6022Department of Ophthalmology, Weill Cornell Medicine, New York City, New York, USA, cornell.edu.

Pub Type(s)

Journal Article

Language

eng

PubMed ID

42007239