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首页> 外文期刊>Academic radiology >Computer-aided diagnosis for improved detection of lung nodules by use of posterior-anterior and lateral chest radiographs.
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Computer-aided diagnosis for improved detection of lung nodules by use of posterior-anterior and lateral chest radiographs.

机译:计算机辅助诊断可通过使用前后前后X线片检查来改善对肺结节的检测。

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RATIONALE AND OBJECTIVES: We developed a computerized scheme for detection of lung nodules in the lateral views of chest radiographs, in order to improve the overall performance in combination with the computer-aided diagnostic (CAD) scheme for posterior-anterior (PA) views. MATERIALS AND METHODS: We used 106 pairs of PA and lateral views of chest radiographs (122 lung nodules) for development of the CAD scheme. In the CAD scheme for lateral views, initial candidates of lung nodules were identified by use of a nodule enhancement filter based on the edge gradients. Thirty-four image features extracted from the original and the nodule-enhanced images were used for the rule-based scheme and for artificial neural networks (ANNs) for removal of some false-positive candidates. The computer performance was evaluated with a leave-one-case-out test method for ANNs. For PA views, we used the existing CAD scheme, which was trained with one-half of 924 chest images and then tested with the remaining images. RESULTS: When the CAD scheme was applied only to PA views, the sensitivity in the detection of lung nodules was 70.5%, with 4.9 false positives per image. Although the performance of the computerized scheme for lateral views was relatively low (60.7% sensitivity with 1.7 false positives per image), the overall sensitivity (86.9%) was improved (6.6 false positives per two views), because 20 (16.4%) of the 122 nodules were detected only on lateral views. CONCLUSIONS: The CAD scheme by use of lateral-view images has the potential to improve the overall performance for detection of lung nodules on chest radiographs when combined with a conventional CAD scheme for standard PA views.
机译:理由和目的:我们开发了一种计算机化的胸部X光片侧视图中的肺结节检测方案,以结合计算机辅助诊断(CAD)方案用于后-前(PA)视图,以提高总体性能。材料与方法:我们使用106对PA和胸部X线照片(122个肺结节)的侧视图开发了CAD方案。在用于侧视图的CAD方案中,通过使用基于边缘梯度的结节增强过滤器来识别肺结节的初始候选者。从原始图像和结节增强图像中提取的34个图像特征用于基于规则的方案和人工神经网络(ANN),以去除一些假阳性候选对象。通过一劳永逸的神经网络测试方法评估计算机性能。对于PA视图,我们使用了现有的CAD方案,该方案接受了924个胸部图像的一半的训练,然后对其余图像进行了测试。结果:当仅将CAD方案应用于PA视图时,检测到肺结节的敏感性为70.5%,每个图像有4.9个假阳性。尽管针对侧面视图的计算机化方案的性能相对较低(60.7%的灵敏度,每个图像有1.7个假阳性),但总体灵敏度(86.9%)有所改善(每两个视图6.6个假阳性),因为20个(16.4%)仅从侧面观察到122个结节。结论:与传统的PA方案结合使用常规的CAD方案时,通过使用侧视图像的CAD方案有可能提高在胸部X光片上检测肺结节的整体性能。

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