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A Multistage Approach to Improve Performance of Computer-Aided Detection of Pulmonary Embolisms Depicted on CT Images: Preliminary Investigation

机译:一种改进计算机辅助检测CT图像上肺栓塞的性能的多阶段方法:初步调查

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摘要

This study developed a computer-aided detection (CAD) scheme for pulmonary embolism (PE) detection and investigated several approaches to improve CAD performance. In the study, 20 computed tomography examinations with various lung diseases were selected, which include 44 verified PE lesions. The proposed CAD scheme consists of five basic steps: 1) lung segmentation; 2) PE candidate extraction using an intensity mask and tobogganing region growing; 3) PE candidate feature extraction; 4) false-positive (FP) reduction using an artificial neural network (ANN); and 5) a multifeature-based k-nearest neighbor for positiveegative classification. In this study, we also investigated the following additional methods to improve CAD performance: 1) grouping 2-D detected features into a single 3-D object; 2) selecting features with a genetic algorithm (GA); and 3) limiting the number of allowed suspicious lesions to be cued in one examination. The results showed that 1) CAD scheme using tobogganing, an ANN, and grouping method achieved the maximum detection sensitivity of 79.2%; 2) the maximum scoring method achieved the superior performance over other scoring fusion methods; 3) GA was able to delete “redundant” features and further improve CAD performance; and 4) limiting the maximum number of cued lesions in an examination reduced FP rate by 5.3 times. Combining these approaches, CAD scheme achieved 63.2% detection sensitivity with 18.4 FP lesions per examination. The study suggested that performance of CAD schemes for PE detection depends on many factors that include 1) optimizing the 2-D region grouping and scoring methods; 2) selecting the optimal feature set; and 3) limiting the number of allowed cueing lesions per examination.
机译:这项研究开发了一种用于肺栓塞(PE)检测的计算机辅助检测(CAD)方案,并研究了几种改善CAD性能的方法。在这项研究中,选择了20种不同肺部疾病的计算机体层摄影检查,其中包括44个经过验证的PE病变。拟议的CAD方案包括五个基本步骤:1)肺分割; 2)使用强度遮罩和雪橇生长区域提取PE候选对象; 3)PE候选特征提取; 4)使用人工神经网络(ANN)减少假阳性(FP);和5)基于多特征的k最近邻,用于正/负分类。在这项研究中,我们还研究了以下其他改善CAD性能的方法:1)将2D检测到的特征分组到单个3D对象中; 2)使用遗传算法(GA)选择特征; 3)限制一次检查中提示的可疑病变的数量。结果表明:1)采用雪橇,ANN和分组方法的CAD方案实现了79.2%的最大检测灵敏度; 2)最大得分方法比其他得分融合方法具有更好的性能; 3)GA能够删除“冗余”功能并进一步改善CAD性能;和4)限制检查中提示的最大病变数,可将FP率降低5.3倍。结合这些方法,CAD方案每次检查可实现63.2%的检测灵敏度和18.4 FP病变。研究表明,用于PE检测的CAD方案的性能取决于许多因素,其中包括:1)优化二维区域分组和评分方法; 2)选择最佳特征集;和3)限制每次检查允许的提示性病变的数量。

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