Habib Faisal, Huang Huaxiong, Gupta Arvind, Wright Tom
Department of Computer Science, University of Toronto, Toronto, Canada.
Department of Mathematics and Statistics, York University, Toronto, Canada.
Doc Ophthalmol. 2022 Aug;145(1):53-63. doi: 10.1007/s10633-022-09879-7. Epub 2022 Jun 22.
Hydroxychloroquine (HCQ) is an anti-inflammatory drug in widespread use for the treatment of systemic auto-immune diseases. Vision loss caused by retinal toxicity is a significant risk associated with long term HCQ therapy. Identifying patients at risk of developing retinal toxicity can help prevent vision loss and improve the quality of life for patients. This paper presents updated reference thresholds and examines the diagnostic accuracy of a machine learning approach for identifying retinal toxicity using the multifocal Electroretinogram (mfERG).
A retrospective study of patients referred for mfERG testing to detect HCQ retinopathy. A consecutive series of all patients referred to Kensington Vision and Research Centre between August 2017 and July 2020 were considered eligible. Eyes suspect for other ocular pathology including widespread retinal disease and advanced macular pathology unrelated to HCQ or with poor quality mfERG recordings were excluded. All patients received mfERG testing and Ocular Coherence Tomography (OCT) imaging. Presence of HCQ retinopathy was based on ring ratio analysis using clinical reference thresholds established at KVRC coupled with structural features observed on OCT, the clinical reference standard. A Support Vector Machine (SVM) using selected features of the mfERG was trained. Accuracy, sensitivity and specificity are reported.
1463 eyes of 748 patients were included in the study. SVM model performance was assessed on 293 eyes from 265 patients. 55 eyes from 54 patients were identified as demonstrating HCQ retinopathy based on the clinical reference standard, 50 eyes from 49 patients were identified by the SVM. Our SVM achieves an accuracy of 85.3% with a sensitivity of 90.9% and specificity of 84.0%.
Machine learning approaches can be applied to mfERG analysis to identify patients at risk of retinopathy caused by HCQ therapy.
羟氯喹(HCQ)是一种广泛用于治疗全身性自身免疫性疾病的抗炎药物。视网膜毒性导致的视力丧失是长期使用HCQ治疗相关的重大风险。识别有发生视网膜毒性风险的患者有助于预防视力丧失并提高患者的生活质量。本文介绍了更新的参考阈值,并研究了使用多焦视网膜电图(mfERG)识别视网膜毒性的机器学习方法的诊断准确性。
对因mfERG检测转诊以检测HCQ视网膜病变的患者进行回顾性研究。2017年8月至2020年7月期间转诊至肯辛顿视力与研究中心的所有患者的连续系列被视为符合条件。排除怀疑有其他眼部病变的眼睛,包括广泛的视网膜疾病和与HCQ无关的晚期黄斑病变或mfERG记录质量差的眼睛。所有患者均接受了mfERG检测和光学相干断层扫描(OCT)成像。HCQ视网膜病变的存在基于使用在KVRC建立的临床参考阈值进行的环比率分析以及在OCT上观察到的结构特征,即临床参考标准。使用mfERG的选定特征训练支持向量机(SVM)。报告了准确性、敏感性和特异性。
748名患者的1463只眼睛纳入研究。SVM模型性能在来自265名患者的293只眼睛上进行评估。根据临床参考标准,54名患者的55只眼睛被确定为患有HCQ视网膜病变,SVM识别出49名患者的50只眼睛。我们的SVM准确率为85.3%,敏感性为90.9%,特异性为84.0%。
机器学习方法可应用于mfERG分析,以识别有HCQ治疗引起的视网膜病变风险的患者。