Real-time multilevel sequencing of cataract surgery videos

K. Charrière, G. Quellec, M. Lamard, D. Martiano, G. Cazuguel, G. Coatrieux, B. Cochener
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引用次数: 8

Abstract

Data recorded and stored during video-monitored surgeries are a relevant source of information for surgeons, especially during their training period. But today, this data is virtually unexploited. In this paper, we propose to reuse videos recorded during cataract surgeries to automatically analyze the surgical process with the real-time constraint, with the aim to assist the surgeon during the surgery. We propose to automatically recognize, in real-time, what the surgeon is doing: what surgical phase or, more precisely, what surgical step he or she is performing. This recognition relies on the inference of a multilevel statistical model which uses 1) the conditional relations between levels of description (steps and phases) and 2) the temporal relations among steps and among phases. The model accepts two types of inputs: 1) the presence of surgical instruments, manually provided by the surgeons, or 2) motion in videos, automatically analyzed through the CBVR paradigm. A dataset of 30 cataract surgery videos was collected at Brest University hospital. The system was evaluated in terms of mean area under the ROC curve. Promising results were obtained using either motion analysis (Az = 0.759) or the presence of surgical instruments (Az = 0.983).
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白内障手术视频的实时多级测序
在视频监控手术过程中记录和存储的数据是外科医生的相关信息来源,特别是在他们的培训期间。但今天,这些数据几乎没有被利用。在本文中,我们提出利用白内障手术过程中录制的视频,在实时约束下自动分析手术过程,以辅助外科医生进行手术。我们建议自动识别,实时,外科医生正在做什么:什么手术阶段,或者更准确地说,他或她正在执行的手术步骤。这种识别依赖于多层统计模型的推断,该模型使用1)描述级别(步骤和阶段)之间的条件关系和2)步骤和阶段之间的时间关系。该模型接受两种类型的输入:1)手术器械的存在,由外科医生手动提供,或2)视频中的运动,通过CBVR范式自动分析。布雷斯特大学医院收集了30个白内障手术视频的数据集。以ROC曲线下的平均面积评价该系统。通过运动分析(Az = 0.759)或手术器械的存在(Az = 0.983)获得了令人满意的结果。
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