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An automated fracture detection from pelvic CT images with 3-D convolutional neural networks

机译:使用3D卷积神经网络从骨盆CT图像自动检测骨折

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The demand for an automatic bone fracture detection in the emergency section of the hospitals is high for quick diagnosis while maintaining the quality. Previous studies on fracture detection with computed tomography (CT) images or X-ray images have a performance limitation because those methods are based on 2-D image analysis and cannot consider the 3-D internal structure of pelvic bones. This study proposes an automated bone fracture detection from 3-D CT images. Firstly, it introduces a new 3-D annotation method of fractures (called 3-D surface annotation). By using 3-D shape data of pelvic surfaces, it decreases the annotation load significantly. The proposed method estimates the degree of fracture for each point on the pelvic surface. The degree is estimated by 3-D convolutional neural networks (CNN) using 3-D distribution of CT values inside the pelvic surface. The proposed method was validated by using 103 subjects. The accuracy, precision, recall, and specificity for the test data were 69.5%, 61.1%, 56.4%, and 77.7%, respectively.
机译:为了在保持质量的同时进行快速诊断,在医院的急诊室中对自动骨折检测的需求很高。以前有关使用计算机断层扫描(CT)图像或X射线图像进行骨折检测的研究存在性能限制,因为这些方法基于2-D图像分析,无法考虑骨盆骨骼的3-D内部结构。这项研究提出了一种从3-D CT图像自动检测骨折的方法。首先,它介绍了一种新的裂缝3D标注方法(称为3-D表面标注)。通过使用骨盆表面的3D形状数据,可以显着降低注释负荷。所提出的方法估计骨盆表面每个点的骨折程度。该程度是通过3-D卷积神经网络(CNN)使用骨盆表面内CT值的3-D分布来估计的。该方法被103名受试者验证。测试数据的准确性,准确性,召回率和特异性分别为69.5%,61.1%,56.4%和77.7%。

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