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首页> 外文期刊>Current Directions in Biomedical Engineering >Automated detection of bone splinters in DEXA phantoms using deep neural networks : Current Directions in Biomedical Engineering
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Automated detection of bone splinters in DEXA phantoms using deep neural networks : Current Directions in Biomedical Engineering

机译:使用深度神经网络自动检测DEXA体模中的骨碎片:生物医学工程的当前方向

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Dual energy radiographic imaging is a method to provide material information and can be used to differentiate between various tissue types. Dual energy X-ray absorption (DEXA) can be applied for breast density, osteoporosis or bone fracture analysis. To support radiologists with the assessment of DEXA images, machine learning can be applied. Specifically, deep convolutional neural networks (DCNNs) can be used for medical image analysis. In this work a DCNN is proposed and evaluated for automated detection of bone splinters in DEXA phantom images. The image data consists of 47 phantoms with (35) and without (12) bone splinters. Material decomposition and energy weighting results in additional image channels. Various DCNN architectures and parameters were explored. A classification rate in regions with 90 % and without 99 % bone splinters was achieved.
机译:双能射线照相成像是一种提供物质信息的方法,可用于区分各种组织类型。双能X射线吸收(DEXA)可用于乳房密度,骨质疏松症或骨折分析。为了支持放射科医生评估DEXA图像,可以应用机器学习。具体而言,深度卷积神经网络(DCNN)可用于医学图像分析。在这项工作中,提出了DCNN并对其进行了评估,以自动检测DEXA幻像图像中的骨碎片。图像数据由47个带有(35)和不带有(12)骨碎片的模型组成。材料分解和能量加权会导致其他图像通道。探索了各种DCNN架构和参数。在具有90%和没有99%骨碎片的区域中实现了分类率。

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