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首页> 外文期刊>Medical Physics >Separation of bones from soft tissue in chest radiographs: Anatomy-specific orientation-frequency-specific deep neural network convolution
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Separation of bones from soft tissue in chest radiographs: Anatomy-specific orientation-frequency-specific deep neural network convolution

机译:胸部软组织的分离胸部射线照片:解剖学特异性定位 - 特定频率特异性深度神经网络卷积

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Purpose Lung nodules that are missed by radiologists as well as by computer-aided detection (CAD) systems mostly overlap with ribs and clavicles. Removing the bony structures would result in better visualization of undetectable lesions. Our purpose in this study was to develop a virtual dual-energy imaging system to separate ribs and clavicles from soft tissue in chest radiographs. Methods We developed a mixture of anatomy-specific, orientation-frequency-specific (ASOFS) deep neural network convolution (NNC) experts. Anatomy-specific (AS) NNC was designed to separate the bony structures from soft tissue in different lung segments. While an AS design was proposed previously under our massive-training artificial neural networks (MTANN) framework, in this work, we newly mathematically defined an AS experts model as well as its learning and inference strategies in a probabilistic deep-learning framework. In addition, in combination with our AS experts design, we newly proposed the orientation-frequency-specific (OFS) NNC models to decompose bone and soft-tissue structures into specific orientation-frequency components of different scales using a multi-resolution decomposition technique. We trained multiple NNC models, each of which is an expert for a specific orientation-frequency component in a particular anatomic segment. Perfect reconstruction discrete wavelet transform was used for OFS decomposition/reconstruction, while we introduced a soft-gating layer to merge the predictions of AS NNC experts. To train our model, we used the bone images obtained from a dual-energy system as the target (or teaching) images while the standard chest radiographs were used as the input to our model. The training, validation, and test were performed in a nested two-fold cross-validation manner. Results We used a database of 118 chest radiographs with pulmonary nodules to evaluate our NNC scheme. In order to evaluate our scheme, we performed quantitative and qualitative evaluation of the predicted bone and soft-tissue images from our model as well as the ones of a state-of-the-art technique where the "gold-standard" dual-energy bone and soft-tissue images were used as the reference images. Both quantitative and qualitative evaluations demonstrated that our ASOFS NNC was superior to the state-of-the-art bone-suppression technique. Particularly, our scheme was better able to maintain the conspicuity of nodules and lung vessels, comparing to the reference technique, while it separated ribs and clavicles from soft tissue. Comparing to a state-of-the-art bone suppression technique, our bone images had substantially higher (t-test; P < 0.01) similarity, in terms of structural similarity index (SSIM) and peak signal-to-noise ratio (PSNR), to the "gold-standard" dual-energy bone images. Conclusions Our deep ASOFS NNC scheme can decompose chest radiographs into their bone and soft-tissue images accurately, offering the improved conspicuity of lung nodules and vessels, and therefore would be useful for radiologists as well as CAD systems in detecting lung nodules in chest radiographs.
机译:放射科医师错过的目的肺结节以及计算机辅助检测(CAD)系统主要与肋骨和锁骨重叠。去除骨骼结构将导致更好的可测调病变可视化。我们本研究中的目的是开发一种虚拟双能成像系统,将肋骨和碎屑分离在胸部射线照片中的软组织。方法我们开发了一种解剖学特异性,定位频率特异性(ASOFS)深神经网络卷积(NNC)专家的混合物。特定于解剖学(AS)NNC设计用于将骨骼结构与不同肺区段的软组织分离。虽然以前在我们的大规模培训人工神经网络(MTANN)框架下提出了设计,但在这项工作中,我们将新数学地定义了作为专家模型的专家模型以及其在概率深学习框架中的学习和推理策略。此外,与我们作为专家设计的组合,我们新提出了定向频率特定的(OFS)NNC模型,以使用多分辨率分解技术将骨骼和软组织结构分解为不同尺度的特定取向频率分量。我们培训了多个NNC模型,每个模型是特定解剖段中的特定定向频率分量的专家。完美的重建离散小波变换用于分解/重建,同时我们引入了一个软门控层来合并为NNC专家的预测。为了训练我们的模型,我们使用从双能系统获得的骨骼图像作为目标(或教学)图像,而标准胸部射线照片被用作我们模型的输入。培训,验证和测试以嵌套的双倍交叉验证方式执行。结果我们使用了118个胸部射线照相的数据库,具有肺结核,以评估我们的NNC方案。为了评估我们的方案,我们对来自我们模型的预测骨骼和软组织图像进行了定量和定性评估,以及“金标准”双能的最先进技术骨骼和软组织图像用作参考图像。定量和定性评估都表明我们的ASOFS NNC优于最先进的骨抑制技术。特别是,我们的方案能够更好地能够保持结节和肺容器的阴谋,与参考技术相比,在其与软组织中分离肋和克拉夫汇率。与最先进的骨抑制技术相比,在结构相似指数(SSIM)和峰值信噪比(PSNR)方面,我们的骨图像具有显着更高(T检验; P <0.01)相似性(PSNR ),“金标准”双能骨图像。结论:我们的深ASOFS NNC方案可以分解胸片到他们的骨和软组织的图像准确地,将提供肺结节和容器的改进的显着性,并且因此将用于放射以及在胸部X光检测肺部结节的CAD系统是有用的。

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