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Improved computerized detection of lung nodules in chest radiographs by means of 'virtual dual-energy' radiography

机译:通过“虚拟双能”放射线照相术改进了胸部X线照相术中肺结节的计算机检测

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Major challenges in current computer-aided detection (CADe) of nodules in chest radiographs (CXRs) are to detect nodules that overlap with ribs and to reduce the frequent false positives (FPs) caused by ribs. Our purpose was to develop a CADe scheme with improved sensitivity and specificity by use of "virtual dual-energy" (VDE) CXRs where ribs are suppressed with a massive-training artificial neural network (MTANN). To reduce rib-induced FPs and detect nodules overlapping with ribs, we incorporated VDE technology in our CADe scheme. VDE technology suppressed ribs in CXR while maintaining soft-tissue opacity by use of an MTANN that had been trained with real DE imaging. Our scheme detected nodule candidates on VDE images by use of a morphologic filtering technique. Sixty-four morphologic and gray-level-based features were extracted from each candidate from both original and VDE CXRs. A nonlinear support vector classifier was employed for classification of the nodule candidates. A publicly available database containing 126 nodules in 126 CXRs was used for testing of our CADe scheme. Twenty nine percent (36/126) of the nodules were rated "extremely subtle" or "very subtle" by a radiologist. With the original scheme, a sensitivity of 76.2 (96/126) with 5 (630/126) FPs per image was achieved. By use of VDE images, more nodules overlapping with ribs were detected and the sensitivity was improved substantially to 84.1% (106/126) at the same FP rate in a leave-one-out cross-validation test, whereas the literature shows that other CADe schemes achieved sensitivities of 66.0% and 72.0% at the same FP rate.
机译:当前在胸部X光片(CXR)中对结节的计算机辅助检测(CADe)的主要挑战是检测与肋骨重叠的结节并减少由肋骨引起的频繁假阳性(FP)。我们的目的是通过使用“虚拟双能”(VDE)CXR来开发具有改进的敏感性和特异性的CADe方案,其中通过大规模训练的人工神经网络(MTANN)来抑制肋骨。为了减少肋骨引起的FP并检测与肋骨重叠的结节,我们将VDE技术纳入了我们的CADe方案。 VDE技术使用经过真正DE成像训练的MTANN抑制了CXR中的肋骨,同时保持了软组织的不透明性。我们的方案通过使用形态学过滤技术在VDE图像上检测到了结节候选。从原始和VDE CXR的每个候选项中提取了64个基于形态学和基于灰度的特征。采用非线性支持向量分类器对候选结节进行分类。一个公开可用的数据库包含126个CXR中的126个结节,用于测试我们的CADe方案。放射科医师对百分之二十九(36/126)的结核表示“极细微”或“极细微”。使用原始方案,每个图像具有5个(630/126)FP的灵敏度为76.2(96/126)。通过使用VDE图像,在留一法交叉验证测试中,在相同的FP速率下,检测到更多的结节与肋骨重叠,并且灵敏度显着提高到84.1%(106/126)。在相同的FP率下,CADe方案的灵敏度分别为66.0%和72.0%。

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