利用眼球前表面裂隙灯图像上的可解释人工智能诊断过敏性结膜疾病。

IF 6.2 2区 医学 Q1 ALLERGY Allergology International Pub Date : 2024-08-17 DOI:10.1016/j.alit.2024.07.004
Michiko Yonehara, Yuji Nakagawa, Yuji Ayatsuka, Yuko Hara, Jun Shoji, Nobuyuki Ebihara, Takenori Inomata, Tianxiang Huang, Ken Nagino, Ken Fukuda, Tatsuma Kishimoto, Tamaki Sumi, Atsuki Fukushima, Hiroshi Fujishima, Moeko Kawai, Etsuko Takamura, Eiichi Uchio, Kenichi Namba, Ayumi Koyama, Tomoko Haruki, Shin-Ich Sasaki, Yumiko Shimizu, Dai Miyazaki
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引用次数: 0

摘要

背景:人工智能(AI)是一项前景广阔的新技术,具有诊断过敏性结膜疾病(ACD)的潜力。然而,由于缺乏量身定制的图像数据库和可解释的人工智能模型,其发展缓慢。因此,本研究的目的是开发一种可解释的人工智能模型,它不仅能诊断过敏性结膜炎,还能提供诊断依据:方法:使用来自日本 10 家眼科机构的 4942 张裂隙灯图像数据集作为图像数据库。方法:使用来自日本 10 家眼科机构的 4942 张裂隙灯图像数据集作为图像数据库,构建了一个连续的人工智能分割流水线,以识别 1038 张图像中的 12 项临床发现,这些图像包括季节性和常年性过敏性结膜炎(AC)、特应性角结膜炎(AKC)、春发性角结膜炎(VKC)、巨大乳头状结膜炎(GPC)和正常人。通过对结果的提取,确定其获得可解释结果的能力,从而对管道的性能进行评估。在对 AC、AKC/VKC、GPC 和正常人进行 4 种基于严重程度的诊断分类时,确定了其诊断准确性:结果:人工智能管道分割有效地提取了结膜充血、巨大乳头和盾状溃疡等关键的ACD指标,并提供了可解释的见解。人工智能管道诊断的准确率高达 86.2%,而眼科医师的诊断准确率为 60.0%。管道的分类性能很高,AC的曲线下面积(AUC)为0.959,正常人为0.905,GPC为0.847,VKC为0.829,AKC为0.790:结论:由综合图像数据库创建的可解释人工智能模型可用于诊断 ACD,且准确率较高。
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Use of explainable AI on slit-lamp images of anterior surface of eyes to diagnose allergic conjunctival diseases.

Background: Artificial intelligence (AI) is a promising new technology that has the potential of diagnosing allergic conjunctival diseases (ACDs). However, its development is slowed by the absence of a tailored image database and explainable AI models. Thus, the purpose of this study was to develop an explainable AI model that can not only diagnose ACDs but also present the basis for the diagnosis.

Methods: A dataset of 4942 slit-lamp images from 10 ophthalmological institutions across Japan were used as the image database. A sequential pipeline of segmentation AI was constructed to identify 12 clinical findings in 1038 images of seasonal and perennial allergic conjunctivitis (AC), atopic keratoconjunctivitis (AKC), vernal keratoconjunctivitis (VKC), giant papillary conjunctivitis (GPC), and normal subjects. The performance of the pipeline was evaluated by determining its ability to obtain explainable results through the extraction of the findings. Its diagnostic accuracy was determined for 4 severity-based diagnosis classification of AC, AKC/VKC, GPC, and normal.

Results: Segmentation AI pipeline efficiently extracted crucial ACD indicators including conjunctival hyperemia, giant papillae, and shield ulcer, and offered interpretable insights. The AI pipeline diagnosis had a high diagnostic accuracy of 86.2%, and that of the board-certified ophthalmologists was 60.0%. The pipeline had a high classification performance, and the area under the curve (AUC) was 0.959 for AC, 0.905 for normal subjects, 0.847 for GPC, 0.829 for VKC, and 0.790 for AKC.

Conclusions: An explainable AI model created by a comprehensive image database can be used for diagnosing ACDs with high degree of accuracy.

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来源期刊
Allergology International
Allergology International ALLERGY-IMMUNOLOGY
CiteScore
12.60
自引率
5.90%
发文量
96
审稿时长
29 weeks
期刊介绍: Allergology International is the official journal of the Japanese Society of Allergology and publishes original papers dealing with the etiology, diagnosis and treatment of allergic and related diseases. Papers may include the study of methods of controlling allergic reactions, human and animal models of hypersensitivity and other aspects of basic and applied clinical allergy in its broadest sense. The Journal aims to encourage the international exchange of results and encourages authors from all countries to submit papers in the following three categories: Original Articles, Review Articles, and Letters to the Editor.
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