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Multi-Scale Heterogeneous 3D CNN for False-Positive Reduction in Pulmonary Nodule Detection, Based on Chest CT Images

机译:基于胸部CT图像的多尺寸异质3D CNN用于肺结核检测的假阳性降低

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摘要

Currently, lung cancer has one of the highest mortality rates because it is often caught too late. Therefore, early detection is essential to reduce the risk of death. Pulmonary nodules are considered key indicators of primary lung cancer. Developing an efficient and accurate computer-aided diagnosis system for pulmonary nodule detection is an important goal. Typically, a computer-aided diagnosis system for pulmonary nodule detection consists of two parts: candidate nodule extraction and false-positive reduction of candidate nodules. The reduction of false positives (FPs) of candidate nodules remains an important challenge due to morphological characteristics of nodule height changes and similar characteristics to other organs. In this study, we propose a novel multi-scale heterogeneous three-dimensional (3D) convolutional neural network (MSH-CNN) based on chest computed tomography (CT) images. There are three main strategies of the design: (1) using multi-scale 3D nodule blocks with different levels of contextual information as inputs; (2) using two different branches of 3D CNN to extract the expression features; (3) using a set of weights which are determined by back propagation to fuse the expression features produced by step 2. In order to test the performance of the algorithm, we trained and tested on the Lung Nodule Analysis 2016 (LUNA16) dataset, achieving an average competitive performance metric (CPM) score of 0.874 and a sensitivity of 91.7% at two FPs/scan. Moreover, our framework is universal and can be easily extended to other candidate false-positive reduction tasks in 3D object detection, as well as 3D object classification.
机译:目前,肺癌具有最高的死亡率之一,因为它通常被抓到太晚了。因此,早期检测对于降低死亡风险至关重要。肺结核被认为是原发性肺癌的关键指标。为肺结核检测开发高效和准确的计算机辅助诊断系统是一个重要目标。通常,用于肺结核检测的计算机辅助诊断系统由两部分组成:候选结节提取和候选结节的假阳性降低。由于结节高度变化和与其他器官相似的特征,候选结节的假阳性(FPS)的减少仍然是一个重要的挑战。在这项研究中,我们提出了一种基于胸部计算断层扫描(CT)图像的新型多级异构立体(3D)卷积神经网络(MSH-CNN)。设计有三种主要策略:(1)使用具有不同级别的上下文信息作为输入的多尺度3D结节块; (2)使用3D CNN的两个不同分支提取表达特征; (3)使用一组重量,由后传播确定,以熔断步骤2所产生的表达特征。为了测试算法的性能,我们在肺结核分析2016(Luna16)数据集上培训和测试平均竞争性能度量(CPM)得分为0.874,两个FPS /扫描的灵敏度为91.7%。此外,我们的框架是普遍的,可以很容易地扩展到3D对象检测中的其他候选假验证任务,以及3D对象分类。

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