Automated Measurement and Three-Dimensional Fitting of Corneal Ulcerations and Erosions via AI-Based Image Analysis.

IF 1.7 4区 医学 Q3 OPHTHALMOLOGY Current Eye Research Pub Date : 2024-08-01 Epub Date: 2024-04-30 DOI:10.1080/02713683.2024.2344197
David A Merle, Astrid Heidinger, Jutta Horwath-Winter, Wolfgang List, Heimo Bauer, Michael Weissensteiner, Patrick Kraus-Füreder, Michael Mayrhofer-Reinhartshuber, Philipp Kainz, Gernot Steinwender, Andreas Wedrich
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Abstract

Purpose: Artificial intelligence (AI)-tools hold great potential to compensate for missing resources in health-care systems but often fail to be implemented in clinical routine. Intriguingly, no-code and low-code technologies allow clinicians to develop Artificial intelligence (AI)-tools without requiring in-depth programming knowledge. Clinician-driven projects allow to adequately identify and address real clinical needs and, therefore, hold superior potential for clinical implementation. In this light, this study aimed for the clinician-driven development of a tool capable of measuring corneal lesions relative to total corneal surface area and eliminating inaccuracies in two-dimensional measurements by three-dimensional fitting of the corneal surface.

Methods: Standard slit-lamp photographs using a blue-light filter after fluorescein instillation taken during clinical routine were used to train a fully convolutional network to automatically detect the corneal white-to-white distance, the total fluorescent area and the total erosive area. Based on these values, the algorithm calculates the affected area relative to total corneal surface area and fits the area on a three-dimensional representation of the corneal surface.

Results: The developed algorithm reached dice scores >0.9 for an automated measurement of the relative lesion size. Furthermore, only 25% of conventional manual measurements were within a ± 10% range of the ground truth.

Conclusions: The developed algorithm is capable of reliably providing exact values for corneal lesion sizes. Additionally, three-dimensional modeling of the corneal surface is essential for an accurate measurement of lesion sizes. Besides telemedicine applications, this approach harbors great potential for clinical trials where exact quantitative and observer-independent measurements are essential.

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通过基于人工智能的图像分析对角膜溃疡和角膜侵蚀进行自动测量和三维拟合。
目的:人工智能(AI)工具在弥补医疗保健系统资源不足方面具有巨大潜力,但往往无法在临床常规工作中实施。令人感兴趣的是,无代码和低代码技术使临床医生能够开发人工智能(AI)工具,而无需深入的编程知识。临床医生驱动的项目可以充分识别和解决真正的临床需求,因此在临床实施方面具有更大的潜力。有鉴于此,本研究旨在以临床医生为主导,开发一种能够测量相对于角膜总面积的角膜病变的工具,并通过角膜表面的三维拟合消除二维测量中的误差:方法:使用蓝光滤镜拍摄临床常规荧光素灌注后的标准裂隙灯照片,训练全卷积网络自动检测角膜白白距离、总荧光面积和总侵蚀面积。根据这些值,算法计算出相对于角膜表面总面积的受影响面积,并将该面积拟合到角膜表面的三维图上:结果:所开发的算法在自动测量相对病变大小方面的骰子得分大于 0.9。此外,只有 25% 的传统人工测量值在基本真实值的±10% 范围内:结论:所开发的算法能够可靠地提供角膜病变大小的精确值。此外,角膜表面的三维建模对于准确测量角膜病变的大小至关重要。除了远程医疗应用外,这种方法在临床试验中也有很大的潜力,因为在临床试验中,精确的定量测量和独立于观察者的测量是必不可少的。
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来源期刊
Current Eye Research
Current Eye Research 医学-眼科学
CiteScore
4.60
自引率
0.00%
发文量
163
审稿时长
12 months
期刊介绍: The principal aim of Current Eye Research is to provide rapid publication of full papers, short communications and mini-reviews, all high quality. Current Eye Research publishes articles encompassing all the areas of eye research. Subject areas include the following: clinical research, anatomy, physiology, biophysics, biochemistry, pharmacology, developmental biology, microbiology and immunology.
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