Morita Shoji, Tabuchi Hitoshi, Masumoto Hiroki, Tanabe Hirotaka, Kamiura Naotake
Glory Ltd., 1-3-1 Shimoteno, Himeji-shi, Hyogo 670-8567, Japan.
Graduate School of Engineering, University of Hyogo, 2167 Shosha, Himeji-shi, Hyogo 671-2280, Japan.
J Clin Med. 2020 Nov 30;9(12):3896. doi: 10.3390/jcm9123896.
Surgical skill levels of young ophthalmologists tend to be instinctively judged by ophthalmologists in practice, and hence a stable evaluation is not always made for a single ophthalmologist. Although it has been said that standardizing skill levels presents difficulty as surgical methods vary greatly, approaches based on machine learning seem to be promising for this objective. In this study, we propose a method for displaying the information necessary to quantify the surgical techniques of cataract surgery in real-time. The proposed method consists of two steps. First, we use InceptionV3, an image classification network, to extract important surgical phases and to detect surgical problems. Next, one of the segmentation networks, scSE-FC-DenseNet, is used to detect the cornea and the tip of the surgical instrument and the incisional site in the continuous curvilinear capsulorrhexis, a particularly important phase in cataract surgery. The first and second steps are evaluated in terms of the area under curve (i.e., AUC) of the figure of the true positive rate versus (1-false positive rate) and the intersection over union (i.e., IoU) obtained by the ground truth and prediction associated with the region of interest. As a result, in the first step, the network was able to detect surgical problems with an AUC of 0.97. In the second step, the detection rate of the cornea was 99.7% when the IoU was 0.8 or more, and the detection rates of the tips of the forceps and the incisional site were 86.9% and 94.9% when the IoU was 0.1 or more, respectively. It was thus expected that the proposed method is one of the basic techniques to achieve the standardization of surgical skill levels.
年轻眼科医生的手术技能水平在实际工作中往往由眼科医生凭直觉判断,因此,对于单个眼科医生而言,评估结果并不总是稳定的。尽管有人认为,由于手术方法差异很大,技能水平标准化存在困难,但基于机器学习的方法似乎有望实现这一目标。在本研究中,我们提出了一种实时显示量化白内障手术技术所需信息的方法。所提出的方法包括两个步骤。首先,我们使用图像分类网络InceptionV3提取重要的手术阶段并检测手术问题。接下来,使用分割网络之一scSE-FC-DenseNet检测角膜、手术器械尖端以及连续环形撕囊术中的切口部位,连续环形撕囊术是白内障手术中一个特别重要的阶段。第一步和第二步通过真阳性率与(1-假阳性率)的曲线下面积(即AUC)以及由与感兴趣区域相关的真实情况和预测得到的交并比(即IoU)进行评估。结果,在第一步中,该网络能够以0.97的AUC检测手术问题。在第二步中,当IoU为0.8或更高时,角膜的检测率为99.7%,当IoU为0.1或更高时,镊子尖端和切口部位的检测率分别为86.9%和94.9%。因此,可以预期所提出的方法是实现手术技能水平标准化的基本技术之一。