Differentiating ureter and arteries in the pelvic via endoscope using deep neural network

B. Harangi, A. Hajdu, R. Lampé, P. Torok
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引用次数: 1

Abstract

Endoscope-based surgery has several beneficial effects regarding the rehabilitation of the patients, but has some drawbacks causing difficulties to medical experts, on the contrary. The main disadvantage is that the tactile information is lost to the expert who takes the surgical intervention. There are some organs (e.g. ureters and arteries) in the human body which have similar visual appearances, so the differentiation of them based on only visual expression via endoscopy is a challenging task to the medical experts. To support keyhole-surgery using state-of-the-art image processing solutions, we have developed a semi-automatic software which can distinguish ureters from arteries by a dedicated convolutional neural network (CNN). We have trained the CNN on 2000 images acquired during endoscopic surgery and tested on 500 test ones. 94.2% accuracy has been achieved in this two-classes classification task regarding a binary error function.
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应用深度神经网络在内窥镜下鉴别盆腔输尿管和动脉
内窥镜手术对患者的康复有一些有益的影响,但也有一些缺点,给医学专家带来了困难。主要的缺点是触觉信息丢失给采取手术干预的专家。人体中有一些器官(如输尿管、动脉)具有相似的视觉外观,因此仅根据内窥镜的视觉表达来区分它们对医学专家来说是一项具有挑战性的任务。为了支持使用最先进的图像处理解决方案的锁眼手术,我们开发了一种半自动软件,可以通过专用卷积神经网络(CNN)区分输尿管和动脉。我们对CNN进行了2000张内窥镜手术图像的训练,并对500张测试图像进行了测试。对于二元误差函数,该两类分类任务的准确率达到94.2%。
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