OCTAI:基于智能手机的光学相干断层成像分析系统

A. Rao, H. Fishman
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引用次数: 1

摘要

利用深度学习模型和方法在光学相干断层扫描(OCT)图像中识别疾病正成为一种增强临床诊断的强大技术。早期识别黄斑病变,防止误诊是至关重要的。目前为OCT图像分析开发的方法尚未集成到可被眼科医生在现实生活中使用的可访问的形式因素中。此外,目前的方法不采用鲁棒多度量反馈。本文提出了一种高度精确的基于智能手机的深度学习系统OCTAI,该系统允许用户拍摄OCT照片并通过设备上的推理接收实时反馈。OCTAI以三种不同的方式分析输入的OCT图像:(1)全图像分析,(2)基于象限的分析,(3)基于疾病检测的分析。有了这三种分析方法,再加上眼科医生的解释,就有可能做出可靠的诊断。OCTAI的最终目标是帮助眼科医生通过数字第二意见进行诊断,并使他们能够在基于纯手动分析OCT图像做出决定之前交叉检查他们的诊断。OCTAI有可能让眼科医生改善他们的诊断,并可能减少误诊率,从而更快地治疗疾病。
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OCTAI: Smartphone-based Optical Coherence Tomography Image Analysis System
Identifying diseases in Optical Coherence Tomography (OCT) images using Deep Learning models and methods is emerging as a powerful technique to enhance clinical diagnosis. Identifying macular diseases in the eye at an early stage and preventing misdiagnosis is crucial. The current methods developed for OCT image analysis have not yet been integrated into an accessible form-factor that can be utilized in a real-life scenario by Ophthalmologists. Additionally, current methods do not employ robust multiple metric feedback. This paper proposes a highly accurate smartphone-based Deep Learning system, OCTAI, that allows a user to take an OCT picture and receive real-time feedback through on-device inference. OCTAI analyzes the input OCT image in three different ways: (1) full image analysis, (2) quadrant based analysis, and (3) disease detection based analysis. With these three analysis methods, along with an Ophthalmologist's interpretation, a robust diagnosis can potentially be made. The ultimate goal of OCTAI is to assist Ophthalmologists in making a diagnosis through a digital second opinion and enabling them to cross-check their diagnosis before making a decision based on purely manual analysis of OCT images. OCTAI has the potential to allow Ophthalmologists to improve their diagnosis and may reduce misdiagnosis rates, leading to faster treatment of diseases.
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