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利用解剖学特异性多体训练人工神经网络结合全变差最小化平滑技术从胸部 X 光片中分离骨骼。

Separation of bones from chest radiographs by means of anatomically specific multiple massive-training ANNs combined with total variation minimization smoothing.

出版信息

IEEE Trans Med Imaging. 2014 Feb;33(2):246-57. doi: 10.1109/TMI.2013.2284016. Epub 2013 Oct 11.

Abstract

Most lung nodules that are missed by radiologists as well as computer-aided detection (CADe) schemes overlap with ribs or clavicles in chest radiographs (CXRs). The purpose of this study was to separate bony structures such as ribs and clavicles from soft tissue in CXRs. To achieve this, we developed anatomically specific multiple massive-training artificial neural networks (MTANNs) combined with total variation (TV) minimization smoothing and a histogram-matching-based consistency improvement method. The anatomically specific multiple MTANNs were designed to separate bones from soft tissue in different anatomic segments of the lungs. Each of the MTANNs was trained with the corresponding anatomic segment in the teaching bone images. The output segmental images from the multiple MTANNs were merged to produce an entire bone image. TV minimization smoothing was applied to the bone image for reduction of noise while preserving edges. This bone image was then subtracted from the original CXR to produce a soft-tissue image where bones were separated out. This new method was compared with conventional MTANNs with a database of 110 CXRs with nodules. Our new anatomically specific MTANNs separated rib edges, ribs close to the lung wall, and the clavicles from soft tissue in CXRs to a substantially higher level than did the conventional MTANNs, while the conspicuity of lung nodules and vessels was maintained. Thus, our technique for bone-soft-tissue separation by means of our new MTANNs would be potentially useful for radiologists as well as CADe schemes in detection of lung nodules on CXRs.

摘要

大多数被放射科医生和计算机辅助检测 (CADe) 方案漏诊的肺部结节在胸部 X 光片 (CXR) 中与肋骨或锁骨重叠。本研究的目的是将肋骨和锁骨等骨骼结构与 CXR 中的软组织分离。为此,我们开发了具有解剖特异性的多个海量训练人工神经网络 (MTANN),结合全变分 (TV) 最小化平滑和基于直方图匹配的一致性改进方法。具有解剖特异性的多个 MTANN 旨在将骨骼与肺部不同解剖区域的软组织分开。每个 MTANN 都使用教学骨骼图像中相应的解剖区域进行训练。来自多个 MTANN 的输出节段图像被合并以生成整个骨骼图像。TV 最小化平滑应用于骨骼图像,以在保留边缘的同时减少噪声。然后从原始 CXR 中减去该骨骼图像,以生成骨骼分离的软组织图像。该新方法与具有 110 个带有结节的 CXR 的数据库的常规 MTANN 进行了比较。我们的新解剖特异性 MTANN 将肋骨边缘、靠近肺壁的肋骨和锁骨与 CXR 中的软组织分离到比常规 MTANN 更高的水平,同时保持了肺结节和血管的明显度。因此,我们通过新的 MTANN 进行骨骼-软组织分离的技术可能对放射科医生以及 CADe 方案在 CXR 上检测肺结节非常有用。

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