利用角膜曲率和最薄角膜厚度指数对角膜炎严重程度进行分期的智能决策支持系统。

IF 4.1 1区 医学 Q1 OPHTHALMOLOGY
Zahra J Muhsin, Rami Qahwaji, Mo'ath AlShawabkeh, Saif Aldeen AlRyalat, Muawyah Al Bdour, Majid Al-Taee
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引用次数: 0

摘要

背景:本研究提出了一种与机器学习专家和眼科医生合作创建的决策支持系统,用于检测角膜屈光不正(KC)的严重程度。该系统采用了集合机器模型和最小角膜测量方法:方法:首先从 Pentacam 角膜断层成像设备中获取临床数据集,然后对其进行预处理,并通过对少数类别应用超采样技术来解决采样不平衡的问题。随后,综合运用统计方法、视觉分析和专家意见,确定与严重程度类别标签最相关的 Pentacam 指数。然后利用这些选定的特征来开发和验证三种不同的机器学习模型。表现出最有效分类性能的模型被集成到一个真实世界的网络应用程序中,并部署在网络应用程序服务器上。这种部署有助于对所提出的系统进行评估,纳入新的数据,并考虑与用户体验相关的人为因素:对所开发系统的性能进行了实验评估,结果显示系统的总体准确率为 98.62%,精确率为 98.70%,召回率为 98.62%,F1 分数为 98.66%,F2 分数为 98.64%。该应用程序的部署还展示了精确流畅的端到端功能:结论:所开发的决策支持系统为眼科医生进行后续评估奠定了坚实的基础,有望在临床环境中用作角膜病严重程度检测的筛查工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Smart decision support system for keratoconus severity staging using corneal curvature and thinnest pachymetry indices.

Background: This study proposes a decision support system created in collaboration with machine learning experts and ophthalmologists for detecting keratoconus (KC) severity. The system employs an ensemble machine model and minimal corneal measurements.

Methods: A clinical dataset is initially obtained from Pentacam corneal tomography imaging devices, which undergoes pre-processing and addresses imbalanced sampling through the application of an oversampling technique for minority classes. Subsequently, a combination of statistical methods, visual analysis, and expert input is employed to identify Pentacam indices most correlated with severity class labels. These selected features are then utilized to develop and validate three distinct machine learning models. The model exhibiting the most effective classification performance is integrated into a real-world web-based application and deployed on a web application server. This deployment facilitates evaluation of the proposed system, incorporating new data and considering relevant human factors related to the user experience.

Results: The performance of the developed system is experimentally evaluated, and the results revealed an overall accuracy of 98.62%, precision of 98.70%, recall of 98.62%, F1-score of 98.66%, and F2-score of 98.64%. The application's deployment also demonstrated precise and smooth end-to-end functionality.

Conclusion: The developed decision support system establishes a robust basis for subsequent assessment by ophthalmologists before potential deployment as a screening tool for keratoconus severity detection in a clinical setting.

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来源期刊
Eye and Vision
Eye and Vision OPHTHALMOLOGY-
CiteScore
8.60
自引率
2.40%
发文量
89
审稿时长
15 weeks
期刊介绍: Eye and Vision is an open access, peer-reviewed journal for ophthalmologists and visual science specialists. It welcomes research articles, reviews, methodologies, commentaries, case reports, perspectives and short reports encompassing all aspects of eye and vision. Topics of interest include but are not limited to: current developments of theoretical, experimental and clinical investigations in ophthalmology, optometry and vision science which focus on novel and high-impact findings on central issues pertaining to biology, pathophysiology and etiology of eye diseases as well as advances in diagnostic techniques, surgical treatment, instrument updates, the latest drug findings, results of clinical trials and research findings. It aims to provide ophthalmologists and visual science specialists with the latest developments in theoretical, experimental and clinical investigations in eye and vision.
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