基于智能手机的机器学习辅助系统对甲状腺相关性眼病数字图像临床活动评分诊断性能的初步评估

IF 5.8 1区 医学 Q1 ENDOCRINOLOGY & METABOLISM
Thyroid Pub Date : 2024-06-01 Epub Date: 2024-05-02 DOI:10.1089/thy.2023.0621
Kyubo Shin, Hokyung Choung, Min Joung Lee, Jongchan Kim, Gyeong Min Lee, Seongmi Kim, Jae Hyuk Kim, Richul Oh, Jisun Park, Sang Muk Lee, Jaemin Park, Namju Kim, Jae Hoon Moon
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引用次数: 0

摘要

背景:我们之前开发了一种机器学习(ML)辅助系统,利用数码单反相机在工作室环境中拍摄的数码面部图像预测甲状腺相关性眼眶病(TAO)的临床活动评分(CAS)。在这项研究中,我们旨在将该系统应用于智能手机,并利用智能手机摄像头拍摄的面部图像检测活跃的TAO(CAS≥3)。我们评估了我们的系统在各种智能手机型号上的性能,并将其与具有不同临床经验的眼科医生的性能进行了比较。方法:我们应用已有的 ML 架构对智能手机(Galaxy S21 Ultra、iPhone 12 pro、iPhone 11、iPhone SE 2020、Galaxy M20 和 Galaxy A21S)拍摄的照片进行分类。使用智能手机拍摄的 100 名 TAO 患者的图像对其性能进行了评估。三位眼科住院医师、三位普通眼科医生与结果:在 28 名患者中发现了活动性 TAO(CAS ≥3)。用于捕捉面部图像的智能手机模型影响了主动TAO的检测性能(F1得分0.59-0.72)。基于智能手机的系统在前三款智能手机上的灵敏度为 74.5%,特异度为 84.8%,F1 得分为 0.70。在所有六款智能手机的图像上,平均灵敏度、特异性和 F1 分数分别为 71.4%、81.6% 和 0.66。眼科住院医生的数值分别为 69.1%、55.1% 和 0.46。普通眼科医生的数值分别为 61.9%、79.6% 和 0.55。眼部整形专家的数值分别为 73.8%、90.7% 和 0.75。这一基于智能手机的 ML 辅助系统利用智能手机中的面部图像预测出的 CAS 值在参考 CAS 值 1 点以内的占 90.7%。结论:我们基于智能手机的 ML 辅助系统在检测活动性 TAO 方面显示出合理的准确性,可与眼部整形专家媲美,并优于住院医生和普通眼科医生。该系统可实现可靠的疾病活动自我监测,但临床应用还需要进行确证研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Preliminary Evaluation of the Diagnostic Performance of a Smartphone-Based Machine Learning-Assisted System for Evaluation of Clinical Activity Score in Digital Images of Thyroid-Associated Orbitopathy.

Background: We previously developed a machine learning (ML)-assisted system for predicting the clinical activity score (CAS) in thyroid-associated orbitopathy (TAO) using digital facial images taken by a digital single-lens reflex camera in a studio setting. In this study, we aimed to apply this system to smartphones and detect active TAO (CAS ≥3) using facial images captured by smartphone cameras. We evaluated the performance of our system on various smartphone models and compared it with the performance of ophthalmologists with varying clinical experience. Methods: We applied the preexisting ML architecture to classify photos taken with smartphones (Galaxy S21 Ultra, iPhone 12 pro, iPhone 11, iPhone SE 2020, Galaxy M20, and Galaxy A21S). The performance was evaluated with smartphone-captured images from 100 patients with TAO. Three ophthalmology residents, three general ophthalmologists with <5 years of clinical experience, and three oculoplastic specialists independently interpreted the same set of images taken under a studio environment and compared their results with those generated by the smartphone-based ML-assisted system. Reference CAS was determined by a consensus of three oculoplastic specialists. Results: Active TAO (CAS ≥3) was identified in 28 patients. Smartphone model used in capturing facial images influenced active TAO detection performance (F1 score 0.59-0.72). The smartphone-based system showed 74.5% sensitivity, 84.8% specificity, and F1 score 0.70 on top three smartphones. On images from all six smartphones, average sensitivity, specificity, and F1 score were 71.4%, 81.6%, and 0.66, respectively. Ophthalmology residents' values were 69.1%, 55.1%, and 0.46. General ophthalmologists' values were 61.9%, 79.6%, and 0.55. Oculoplastic specialists' values were 73.8%, 90.7%, and 0.75. This smartphone-based ML-assisted system predicted CAS within 1 point of reference CAS in 90.7% using facial images from smartphones. Conclusions: Our smartphone-based ML-assisted system shows reasonable accuracy in detecting active TAO, comparable with oculoplastic specialists and outperforming residents and general ophthalmologists. It may enable reliable self-monitoring for disease activity, but confirmatory research is needed for clinical application.

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来源期刊
Thyroid
Thyroid 医学-内分泌学与代谢
CiteScore
12.30
自引率
6.10%
发文量
195
审稿时长
6 months
期刊介绍: This authoritative journal program, including the monthly flagship journal Thyroid, Clinical Thyroidology® (monthly), and VideoEndocrinology™ (quarterly), delivers in-depth coverage on topics from clinical application and primary care, to the latest advances in diagnostic imaging and surgical techniques and technologies, designed to optimize patient care and outcomes. Thyroid is the leading, peer-reviewed resource for original articles, patient-focused reports, and translational research on thyroid cancer and all thyroid related diseases. The Journal delivers the latest findings on topics from primary care to clinical application, and is the exclusive source for the authoritative and updated American Thyroid Association (ATA) Guidelines for Managing Thyroid Disease.
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