Suppr超能文献

博曼氏 topography 提高早期扩张症的检测率。

Bowman's topography for improved detection of early ectasia.

机构信息

Imaging, Biomechanics and Mathematical Modeling Solutions, Narayana Nethralaya Foundation, Bangalore, India.

Department of Ophthalmology, Federal University of São Paulo, São Paulo, Brazil.

出版信息

J Biophotonics. 2019 Oct;12(10):e201900126. doi: 10.1002/jbio.201900126. Epub 2019 Jun 27.

Abstract

The aim of this study was to evaluate whether OCT topography of the Bowman's layer and artificial intelligence (AI) can result in better diagnosis of forme fruste (FFKC) and clinical keratoconus (KC). Normal (n = 221), FFKC (n = 72) and KC (n = 116) corneas were included. Some of the FFKC and KC patients had the fellow eye (VAE-NT) with normal topography (n = 30). The Scheimpflug and OCT scans of the cornea were analyzed. The curvature and surface aberrations (ray tracing) of the anterior corneal surface [air-epithelium (A-E) interface in OCT] and epithelium-Bowman's layer (E-B) interface (in OCT only) were calculated. Four random forest models were constructed: (1) Scheimpflug only; (2) OCT A-E only; (3) OCT E-B only; (4) OCT A-E and E-B combined. For normal eyes, both Scheimpflug and OCT (A-E and E-B combined) performed equally in identifying these eyes (P = .23). However, OCT A-E and E-B showed that most VAE-NT eyes were topographically similar to normal eyes and did not warrant a separate classification based on topography alone. For identifying FFKC eyes, OCT A-E and E-B combined performed significantly better than Scheimpflug (P = .006). For KC eyes, both Scheimpflug and OCT performed equally (P = 1.0). Thus, OCT Topography of Bowman's layer significantly improved the detection of FFKC eyes.

摘要

本研究旨在评估 OCT Bowman 层地形图和人工智能 (AI) 是否可以提高非典型性角膜营养不良(forme fruste KC,FFKC)和临床型圆锥角膜(keratoconus,KC)的诊断准确性。纳入了正常(n = 221)、FFKC(n = 72)和 KC(n = 116)角膜。部分 FFKC 和 KC 患者的对侧眼(VAE-NT)具有正常的地形图(n = 30)。分析了角膜的 Scheimpflug 和 OCT 扫描结果。计算了角膜前表面曲率和表面像差(轨迹法)[OCT 中的空气-上皮(air-epithelium,A-E)界面]和上皮层-Bowman 层(epithelium-Bowman's layer,E-B)界面(仅在 OCT 中)。构建了四个随机森林模型:(1)仅 Scheimpflug;(2)OCT A-E 界面;(3)OCT E-B 界面;(4)OCT A-E 和 E-B 联合界面。对于正常眼,Scheimpflug 和 OCT(A-E 和 E-B 联合)在识别这些眼时表现相当(P =.23)。然而,OCT A-E 和 E-B 表明,大多数 VAE-NT 眼在地形上与正常眼相似,并且不需要仅基于地形进行单独分类。对于识别 FFKC 眼,OCT A-E 和 E-B 联合界面的性能明显优于 Scheimpflug(P =.006)。对于 KC 眼,Scheimpflug 和 OCT 的表现相当(P = 1.0)。因此,OCT Bowman 层地形图显著提高了 FFKC 眼的检测率。

文献检索

告别复杂PubMed语法,用中文像聊天一样搜索,搜遍4000万医学文献。AI智能推荐,让科研检索更轻松。

立即免费搜索

文件翻译

保留排版,准确专业,支持PDF/Word/PPT等文件格式,支持 12+语言互译。

免费翻译文档

深度研究

AI帮你快速写综述,25分钟生成高质量综述,智能提取关键信息,辅助科研写作。

立即免费体验