Development of a classification system based on corneal biomechanical properties using artificial intelligence predicting keratoconus severity.

Robert Herber, Lutz E Pillunat, Frederik Raiskup
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引用次数: 18

Abstract

Background: To investigate machine-learning (ML) algorithms to differentiate corneal biomechanical properties between different topographical stages of keratoconus (KC) by dynamic Scheimpflug tonometry (CST, Corvis ST, Oculus, Wetzlar, Germany). In the following, ML models were used to predict the severity in a training and validation dataset.

Methods: Three hundred and eighteen keratoconic and one hundred sixteen healthy eyes were included in this monocentric and cross-sectional pilot study. Dynamic corneal response (DCR) and corneal thickness related (pachymetric) parameters from CST were chosen by appropriated selection techniques to develop a ML algorithm. The stage of KC was determined by the topographical keratoconus classification system (TKC, Pentacam, Oculus). Patients who were classified as TKC 1, TKC 2 and TKC 3 were assigned to subgroup mild, moderate, and advanced KC. If patients were classified as TKC 1-2, TKC 2-3 or TKC 3-4, they were assigned to subgroups according to the normative range of further corneal indices (index of surface variance, keratoconus index and minimum radius). Patients classified as TKC 4 were not included in this study due to the limited amount of cases. Linear discriminant analysis (LDA) and random forest (RF) algorithms were used to develop the classification models. Data were divided into training (70% of cases) and validation (30% of cases) datasets.

Results: LDA model predicted healthy, mild, moderate, and advanced KC eyes with a sensitivity (Sn)/specificity (Sp) of 82%/97%, 73%/81%, 62%/83% and 68%/95% from a validation dataset, respectively. For the RF model, a Sn/Sp of 91%/94%, 80%/90%, 63%/87%, 72%/95% could be reached for predicting healthy, mild, moderate, and advanced KC eyes, respectively. The overall accuracy of LDA and RF was 71% and 78%, respectively. The accuracy for KC detection including all subgroups of KC severity was 93% in both models.

Conclusion: The RF model showed good accuracy in predicting healthy eyes and various stages of KC. The accuracy was superior with respect to the LDA model. The clinical importance of the models is that the standalone dynamic Scheimpflug tonometry is able to predict the severity of KC without having the keratometric data.

Trial registration: NCT04251143 at Clinicaltrials.gov, registered at 12 March 2018 (Retrospectively registered).

Abstract Image

Abstract Image

Abstract Image

基于角膜生物力学特性的人工智能圆锥角膜严重程度预测分类系统的开发。
背景:通过动态Scheimpflug眼压测量(CST, Corvis ST, Oculus, Wetzlar,德国)研究机器学习(ML)算法来区分圆锥角膜(KC)不同地形阶段的角膜生物力学特性。在下面,ML模型被用来预测训练和验证数据集中的严重程度。方法:采用单心横断面试验方法,对318只角膜斜视眼和116只健康眼进行初步研究。通过适当的选择技术从CST中选择动态角膜反应(DCR)和角膜厚度相关(厚测)参数来开发ML算法。KC分期由圆锥角膜地形分类系统(TKC, Pentacam, Oculus)确定。TKC 1、TKC 2、TKC 3分为轻度、中度、晚期KC亚组,若TKC 1-2、TKC 2-3、TKC 3-4,则根据进一步角膜指数(角膜表面方差指数、圆锥角膜指数、最小半径)的规范范围划分亚组。由于病例数量有限,归类为tkc4的患者未纳入本研究。采用线性判别分析(LDA)和随机森林(RF)算法建立分类模型。数据被分为训练(70%的案例)和验证(30%的案例)数据集。结果:LDA模型预测健康、轻度、中度和晚期KC眼睛的灵敏度(Sn)/特异性(Sp)分别为82%/97%、73%/81%、62%/83%和68%/95%。对于RF模型,预测健康、轻度、中度和晚期KC眼睛的Sn/Sp分别达到91%/94%、80%/90%、63%/87%、72%/95%。LDA和RF的总体准确率分别为71%和78%。两种模型的KC检测准确率(包括KC严重程度的所有亚组)均为93%。结论:RF模型对健康眼和不同阶段的KC有较好的预测准确度,且准确度优于LDA模型。该模型的临床重要性在于,独立的动态Scheimpflug眼压计能够在没有角膜测量数据的情况下预测KC的严重程度。试验注册:NCT04251143在Clinicaltrials.gov,注册于2018年3月12日(回顾性注册)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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