论文标题

通过深度学习二进制分类模型预测成功的无基质肺肿瘤跟踪追踪的临床候选者

Predicting successful clinical candidates for fiducial-free lung tumor tracking with a deep learning binary classification model

论文作者

Lafrenière, Matthieu, Valdes, Gilmer, Descovich, Martina

论文摘要

Cyber​​knife系统是一个机器人放射外科手术平台,允许使用无基金会的软组织跟踪进行肺SBRT处理。但是,并非所有肺癌患者都有资格进行肺肿瘤跟踪。肿瘤的大小,密度和位置影响成功检测和跟踪2D正交X射线图像中肺部病变的能力。确定成功的肺部肿瘤跟踪候选者的标准工作流程称为肺优化治疗(LOT)模拟,涉及从CT获取到执行Cyber​​knife的多个步骤。该研究的目的是开发一个深度学习分类模型,以预测可以通过肺部肿瘤跟踪成功治疗哪些患者,从而规避批次模拟过程。 目标跟踪是通过将正交X射线图像与从模拟CT扫描(DRR)重建的数字X光片库匹配来实现的。我们开发了一个深度学习模型,以基于从网络刀系统中提取的肿瘤模板DRR来创建可跟踪或无法跟踪的二进制分类,并测试了五个不同的网络体系结构。该研究包括129例患有一个或多个肺部病变的患者的271张图像(230张可跟踪,41个无法跟踪)。 80%的图像用于培训,10%用于验证,其余10%用于测试。 对于所有5个卷积神经网络,在验证和测试集中训练后,二元分类精度均达到100%,没有任何错误的分类。 深度学习模型可以区分DRR图像中可跟踪和无法跟踪的病变的特征,并可以预测成功的候选候选者的无基质肺肿瘤跟踪。

The CyberKnife system is a robotic radiosurgery platform that allows the delivery of lung SBRT treatments using fiducial-free soft-tissue tracking. However, not all lung cancer patients are eligible for lung tumor tracking. Tumor size, density and location impact the ability to successfully detect and track a lung lesion in 2D orthogonal X-ray images. The standard workflow to identify successful candidates for lung tumor tracking is called Lung Optimized Treatment (LOT) simulation, and involves multiple steps from CT acquisition to the execution of the simulation plan on CyberKnife. The aim of the study is to develop a deep learning classification model to predict which patients can be successfully treated with lung tumor tracking, thus circumventing the LOT simulation process. Target tracking is achieved by matching orthogonal x-ray images with a library of digital radiographs reconstructed from the simulation CT scan (DRRs). We developed a deep learning model to create a binary classification of lung lesions as being trackable or untrackable based on tumor template DRR extracted from the CyberKnife system, and tested five different network architectures. The study included a total of 271 images (230 trackable, 41 untrackable) from 129 patients with one or multiple lung lesions. 80% of the images were used for training, 10% for validation, and the remaining 10% for testing. For all 5 convolutional neural networks, the binary classification accuracy reached 100% after training, both in the validation and the test set, without any false classifications. A deep learning model can distinguish features of trackable and untrackable lesions in DRR images, and can predict successful candidates for fiducial-free lung tumor tracking.

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