Detection and Classification of Diabetic Macular Edema with a Desktop-Based Code-Free Machine Learning Tool.

Q3 Medicine
Furkan Kırık, Büşra Demirkıran, Cansu Ekinci Aslanoğlu, Arif Koytak, Hakan Özdemir
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引用次数: 0

Abstract

Objectives: To evaluate the effectiveness of the Lobe application, a machine learning (ML) tool that can be used on a personal computer without requiring coding expertise, in the recognition and classification of diabetic macular edema (DME) in spectral-domain optical coherence tomography (SD-OCT) scans.

Materials and methods: A total of 695 cross-sectional SD-OCT images from 336 patients with DME and 200 OCT images of 200 healthy controls were included. Images with DME were classified into three main types: diffuse retinal edema (DRE), cystoid macular edema (CME), and cystoid macular degeneration (CMD). To develop the ML model, we used the desktop-based code-free Lobe application, which includes a pre-trained ResNet-50 V2 convolutional neural network and is available free of charge. The performance of the trained model in recognizing and classifying DME was evaluated with 41 DRE, 28 CMD, 70 CME, and 40 normal SD-OCT images that were not used in the training.

Results: The developed model showed 99.28% sensitivity and 100% specificity for class-independent detection of DME. Sensitivity and specificity by labels were 87.80% and 98.57% for DRE, 96.43% and 99.29% for CME, and 95.71% and 95.41% for CMD, respectively.

Conclusion: To our knowledge, this is the first evaluation of the effectiveness of Lobe with ophthalmological images, and the results indicate that it can be used with high efficiency in the recognition and classification of DME from SD-OCT images by ophthalmologists without coding expertise.

Abstract Image

Abstract Image

Abstract Image

使用基于桌面的无代码机器学习工具检测和分类糖尿病黄斑水肿。
目的:评估Lobe应用程序在光谱域光学相干断层扫描(SD-OCT)中识别和分类糖尿病黄斑水肿(DME)方面的有效性。Lobe是一种机器学习(ML)工具,可在个人计算机上使用,无需编码专业知识。材料和方法:纳入336名DME患者的695张横截面SD-OCT图像和200名健康对照的200张OCT图像。DME图像分为三种主要类型:弥漫性视网膜水肿(DRE)、黄斑囊样水肿(CME)和黄斑囊样变性(CMD)。为了开发ML模型,我们使用了基于桌面的无代码Lobe应用程序,该应用程序包括预训练的ResNet-50 V2卷积神经网络,并且是免费的。使用41个DRE、28个CMD、70个CME和40个未在训练中使用的正常SD-OCT图像来评估训练模型在识别和分类DME方面的性能。结果:所建立的模型对DME的独立类别检测显示出99.28%的灵敏度和100%的特异性。DRE的敏感性和特异性分别为87.80%和98.57%,CME为96.43%和99.29%,CMD为95.71%和95.41%。结论:据我们所知,这是首次用眼科图像评估Lobe的有效性,结果表明,在没有编码专业知识的情况下,眼科医生可以高效地从SD-OCT图像中识别和分类DME。
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来源期刊
Turkish Journal of Ophthalmology
Turkish Journal of Ophthalmology Medicine-Ophthalmology
CiteScore
2.20
自引率
0.00%
发文量
0
期刊介绍: The Turkish Journal of Ophthalmology (TJO) is the only scientific periodical publication of the Turkish Ophthalmological Association and has been published since January 1929. In its early years, the journal was published in Turkish and French. Although there were temporary interruptions in the publication of the journal due to various challenges, the Turkish Journal of Ophthalmology has been published continually from 1971 to the present. The target audience includes specialists and physicians in training in ophthalmology in all relevant disciplines.
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