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Classification of pachychoroid disease on ultrawide-field indocyanine green angiography using auto-machine learning platform

机译:自动机器学习平台对超野外吲哚菁绿色血管造影的糖溶症疾病分类

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摘要

Automatic identification of pachychoroid maybe used as an adjunctive method to confirm the condition and be of help in treatment for macular diseases. This study investigated the feasibility of classifying pachychoroid disease on ultra-widefield indocyanine green angiography (UWF ICGA) images using an automated machine-learning platform.Two models were trained with a set including 783 UWF ICGA images of patients with pachychoroid (n=376) and non-pachychoroid (n=349) diseases using the AutoML Vision (Google). Pachychoroid was confirmed using quantitative and qualitative choroidal morphology on multimodal imaging by two retina specialists. Model 1 used the original and Model 2 used images of the left eye horizontally flipped to the orientation of the right eye to increase accuracy by equalising the mirror image of the right eye and left eye. The performances were compared with those of human experts.In total, 284, 279 and 220 images of central serous chorioretinopathy, polypoidal choroidal vasculopathy and neovascular age-related maculopathy were included. The precision and recall were 87.84% and 87.84% for Model 1 and 89.19% and 89.19% for Model 2, which were comparable to the results of the retinal specialists (90.91% and 95.24%) and superior to those of ophthalmic residents (68.18% and 92.50%).Auto machine-learning platform can be used in the classification of pachychoroid on UWF ICGA images after careful consideration for pachychoroid definition and limitation of the platform including unstable performance on the medical image.
机译:可以用作确认条件的辅助方法和治疗黄斑疾病的辅助方法。本研究调查了使用自动化机器学习平台对超广域吲哚菁绿色血管造影(UWF ICGA)图像进行分类的可行性.TWO模型用一组培训,包括患者的783 UWF ICGA图像(n = 376)使用Automl Vision(Google)的非杆菌(n = 349)疾病。使用两个视网膜专家的多模式成像进行定量和定性脉络膜形态确认了扑发。型号1使用原始和模型2使用左眼的二手图像水平翻转到右眼的方向,通过均衡右眼和左眼的镜像来提高精度。将性能与人体专家进行比较。在中央浆液性胆大病症的总共284,279和220个图像中,包括息肉脉络膜血管病变和新生血管年龄相关的小植物。 2型的精确和召回为87.84%和87.84%,2型型号为89.19%和89.19%,而模型2的型号为89.19%,与视网膜专家的结果相当(90.91%和95.24%),优于眼科居民(68.18%) 92.50%)。在仔细考虑PachyChoroid定义和平台限制之后,自动机器学习平台可用于PachyCOROID在UWF ICGA图像的分类中,包括对医学图像上的不稳定性能。

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