Deep learning model for differentiating thyroid eye disease and orbital myositis on computed tomography (CT) imaging.

IF 0.9 Q4 OPHTHALMOLOGY
Sierra K Ha, Lisa Y Lin, Min Shi, Mengyu Wang, Ji Yun Han, Nahyoung Grace Lee
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引用次数: 0

Abstract

Purpose: To develop a deep learning model using orbital computed tomography (CT) imaging to accurately distinguish thyroid eye disease (TED) and orbital myositis, two conditions with overlapping clinical presentations.

Methods: Retrospective, single-center cohort study spanning 12 years including normal controls, TED, and orbital myositis patients with orbital imaging and examination by an oculoplastic surgeon. A deep learning model employing a Visual Geometry Group-16 network was trained on various binary combinations of TED, orbital myositis, and controls using single slices of coronal orbital CT images.

Results: A total of 1628 images from 192 patients (110 TED, 51 orbital myositis, 31 controls) were included. The primary model comparing orbital myositis and TED had accuracy of 98.4% and area under the receiver operating characteristic curve (AUC) of 0.999. In detecting orbital myositis, it had a sensitivity, specificity, and F1 score of 0.964, 0.994, and 0.984, respectively.

Conclusions: Deep learning models can differentiate TED and orbital myositis based on a single, coronal orbital CT image with high accuracy. Their ability to distinguish these conditions based not only on extraocular muscle enlargement but also other salient features suggests potential applications in diagnostics and treatment beyond these conditions.

基于CT影像鉴别甲状腺眼病和眶肌炎的深度学习模型。
目的:建立一种利用眼眶计算机断层扫描(CT)成像的深度学习模型,以准确区分甲状腺眼病(TED)和眼眶肌炎这两种临床表现重叠的疾病。方法:回顾性、单中心队列研究,研究时间跨度为12年,包括正常对照、TED和眼眶肌炎患者,并由眼科医生进行眼眶成像和检查。采用视觉几何组-16网络的深度学习模型在使用单张冠状眶CT图像的TED、眶肌炎和对照组的各种二元组合上进行训练。结果:共纳入192例患者的1628张图像(TED 110例,眼眶肌炎51例,对照组31例)。眼眶肌炎与TED对比的初步模型准确率为98.4%,受者工作特征曲线下面积(AUC)为0.999。检测眼眶肌炎的敏感性、特异性和F1评分分别为0.964、0.994和0.984。结论:深度学习模型可以根据单张眶冠状面CT图像准确区分TED和眶肌炎。他们区分这些疾病的能力不仅基于眼外肌的扩大,而且还基于其他显著特征,这表明在诊断和治疗这些疾病之外的潜在应用。
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来源期刊
CiteScore
2.40
自引率
9.10%
发文量
136
期刊介绍: Orbit is the international medium covering developments and results from the variety of medical disciplines that overlap and converge in the field of orbital disorders: ophthalmology, otolaryngology, reconstructive and maxillofacial surgery, medicine and endocrinology, radiology, radiotherapy and oncology, neurology, neuroophthalmology and neurosurgery, pathology and immunology, haematology.
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