论文标题

使用复发神经网络进行结肠镜跟踪的结肠形状估计方法

Colon Shape Estimation Method for Colonoscope Tracking using Recurrent Neural Networks

论文作者

Oda, Masahiro, Roth, Holger R., Kitasaka, Takayuki, Furukawa, Kazuhiro, Miyahara, Ryoji, Hirooka, Yoshiki, Goto, Hidemi, Navab, Nassir, Mori, Kensaku

论文摘要

我们建议使用结肠形状的复发神经网络(RNN)提出一种估计方法,其中结肠镜插入发生了变形。需要结肠镜跟踪或导航医师到息肉位置的导航系统,以减少结肠穿孔等并发症。先前的跟踪方法在横向和乙状结肠上引起了较大的跟踪误差,因为在结肠镜插入过程中这些区域在很大程度上变形。在跟踪过程中应考虑结肠变形。我们提出了一种使用RNN的结肠变形估计方法,并在插入结肠时从电磁传感器中获得结肠镜形状。该方法从结肠镜形状获得位置,定向和插入长度。从其形状来看,我们还计算了代表结肠镜上两个点之间位置和方向关系的相对特征。长期记忆用于估计结肠镜形状特征的过去过渡中的当前结肠形状。我们在幻影研究中进行了结肠形状估计,并正确估计了结肠镜插入过程中的结肠形状,并以12.39(mm)估计误差。

We propose an estimation method using a recurrent neural network (RNN) of the colon's shape where deformation was occurred by a colonoscope insertion. Colonoscope tracking or a navigation system that navigates physician to polyp positions is needed to reduce such complications as colon perforation. Previous tracking methods caused large tracking errors at the transverse and sigmoid colons because these areas largely deform during colonoscope insertion. Colon deformation should be taken into account in tracking processes. We propose a colon deformation estimation method using RNN and obtain the colonoscope shape from electromagnetic sensors during its insertion into the colon. This method obtains positional, directional, and an insertion length from the colonoscope shape. From its shape, we also calculate the relative features that represent the positional and directional relationships between two points on a colonoscope. Long short-term memory is used to estimate the current colon shape from the past transition of the features of the colonoscope shape. We performed colon shape estimation in a phantom study and correctly estimated the colon shapes during colonoscope insertion with 12.39 (mm) estimation error.

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