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Technical Note: 3D localization of lung tumors on cone beam CT projections via a convolutional recurrent neural network

机译:技术说明:通过卷积复发神经网络锥梁CT投影对肺肿瘤的3D定位

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摘要

Purpose To design a convolutional recurrent neural network (CRNN) that calculates three‐dimensional (3D) positions of lung tumors from continuously acquired cone beam computed tomography (CBCT) projections, and facilitates the sorting and reconstruction of 4D‐CBCT images. Method Under an IRB‐approved clinical lung protocol, kilovoltage (kV) projections of the setup CBCT were collected in free‐breathing. Concurrently, an electromagnetic signal‐guided system recorded motion traces of three transponders implanted in or near the tumor. Convolutional recurrent neural network was designed to utilize a convolutional neural network (CNN) for extracting relevant features of the kV projections around the tumor, followed by a recurrent neural network for analyzing the temporal patterns of the moving features. Convolutional recurrent neural network was trained on the simultaneously collected kV projections and motion traces, subsequently utilized to calculate motion traces solely based on the continuous feed of kV projections. To enhance performance, CRNN was also facilitated by frequent calibrations (e.g., at 10° gantry rotation intervals) derived from cross‐correlation‐based registrations between kV projections and templates created from the planning 4DCT. Convolutional recurrent neural network was validated on a leave‐one‐out strategy using data from 11 lung patients, including 5500?kV images. The root‐mean‐square error between the CRNN and motion traces was calculated to evaluate the localization accuracy. Result Three‐dimensional displacement around the simulation position shown in the Calypso traces was 3.4?±?1.7?mm. Using motion traces as ground truth, the 3D localization error of CRNN with calibrations was 1.3?±?1.4?mm. CRNN had a success rate of 86?±?8% in determining whether the motion was within a 3D displacement window of 2?mm. The latency was 20?ms when CRNN ran on a high‐performance computer cluster. Conclusions CRNN is able to provide accurate localization of lung tumors with aid from frequent recalibrations using the conventional cross‐correlation‐based registration approach, and has the potential to remove reliance on the implanted fiducials.
机译:目的要设计一个卷积回归神经网络(CRNN),其计算三维(3D)的肺肿瘤的从连续获取的锥形束计算机断层摄影(CBCT)突起的位置,并且有利于4D-CBCT图像的排序和重建。方法在一个IRB批准的临床肺协议,千伏(千伏)的设置CBCT的突起在自由呼吸采集。同时,三个转发器的电磁信号引导系统记录的运动迹线植入或肿瘤附近。卷积回归神经网络被设计为利用用于提取肿瘤周围的千伏突起,接着进行回归神经网络用于分析的运动特征的时间模式的相关特征的卷积神经网络(CNN)。卷积回归神经网络进行训练的同时采集千伏突起和运动迹线,随后用于仅基于千伏突起的连续进料计算运动痕迹。为了提高性能,CRNN也通过从规划4DCT创建千伏突起和模板之间基于互相关的注册衍生频繁校准(例如,在10℃机架旋转的间隔)促进。卷积递归神经网络进行了验证使用来自11名肺癌患者,其中5500?千伏图像数据留一淘汰战略。算出CRNN和运动迹线之间的根均方误差来评价定位精度。导致围绕在卡里普索迹线中示出的模拟位置三维位移为3.4?±?1.7?毫米。使用运动迹线作为基础事实,与校准CRNN的3D定位误差为1.3?±?1.4?毫米。 CRNN在确定运动是否是中的2条毫米的三维位移窗口内具有86?±?8%的成功率。潜伏期为20?毫秒时CRNN高性能计算机集群上运行。结论CRNN能够提供肺肿瘤的精确定位与使用传统的基于互相关配准方法从频繁重新校准助剂,并且具有以去除植入基准依赖的潜力。

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