基于像素的基于R-CNN掩膜的白内障手术视频虹膜和瞳孔分割

Natalia Sokolova, M. Taschwer, S. Sarny, Doris Putzgruber-Adamitsch, K. Schoeffmann
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引用次数: 3

摘要

自动检测手术录像中的临床相关事件对于医学领域的纪录片、教育和科学目的变得越来越重要。从医学图像分析的角度来看,这些事件需要单独处理,并与特定的可见物体或区域相关联。在白内障手术(人眼晶状体置换术)领域,术中瞳孔反应(扩张或限制)可能导致并发症,因此是临床相关事件。它的检测需要对录制的视频帧中的瞳孔和虹膜进行自动分割和测量。在这项工作中,我们通过(1)提供82个带注释的图像的数据集来训练和评估合适的机器学习算法,以及(2)将Mask R-CNN算法应用于该问题,与现有的瞳孔分割技术相比,该算法预测虹膜和瞳孔的自由形式像素精确分割掩模。该方法在多个指标上实现了一致的高分割精度,同时提供了可接受的预测效率,为眼科手术视频的进一步分割和事件检测方法奠定了良好的基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Pixel-Based Iris and Pupil Segmentation in Cataract Surgery Videos Using Mask R-CNN
Automatically detecting clinically relevant events in surgery video recordings is becoming increasingly important for documentary, educational, and scientific purposes in the medical domain. From a medical image analysis perspective, such events need to be treated individually and associated with specific visible objects or regions. In the field of cataract surgery (lens replacement in the human eye), pupil reaction (dilation or restriction) during surgery may lead to complications and hence represents a clinically relevant event. Its detection requires automatic segmentation and measurement of pupil and iris in recorded video frames. In this work, we contribute to research on pupil and iris segmentation methods by (1) providing a dataset of 82 annotated images for training and evaluating suitable machine learning algorithms, and (2) applying the Mask R-CNN algorithm to this problem, which—in contrast to existing techniques for pupil segmentation—predicts free-form pixel-accurate segmentation masks for iris and pupil. The proposed approach achieves consistent high segmentation accuracies on several metrics while delivering an acceptable prediction efficiency, establishing a promising basis for further segmentation and event detection approaches on eye surgery videos.
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