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Assessment and classification of mechanical strength components of human femur trabecular bone using texture analysis and neural network.

机译:使用纹理分析和神经网络评估和评估人股骨小梁骨的机械强度成分。

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In this work the mechanical strength components of human femur trabecular bone are analyzed and classified using planar radiographic images and neural network. The mechanical strength regions such as Primary Compressive, Primary Tensile, Secondary Tensile and Ward Triangle in femur trabecular bone images (N = 100) are delineated by semi-automatic image processing procedure. First and higher order texture parameters and parameters such as apparent mineralization and total area associated with the strength regions are derived for normal and abnormal images. The statistically derived significant parameters corresponding to the primary strength regions are fed to the neural network for training and validation. The classifications are carried out using feed forward network that is trained with standard back propagation algorithm. Results demonstrate that the apparent mineralization of normal samples is always high as (71%) compared to abnormal samples (64%). Entropy shows a high value (7.3) for normal samples and variation between the mean intensity and apparent mineralization for the primary strength zone is statistically significant (p < 0.0005). The classified outputs are validated by sensitivity and specificity measurements and are found to be 66.66% and 80% respectively. Further it appears that it is possible to differentiate normal and abnormal samples from the conventional radiographic images. As trabecular architecture in the human femur is an important factor contributing to bone strength, the procedure adopted here could be a useful supplement to the clinical observations for bone loss and fracture risk.
机译:在这项工作中,使用平面射线照相图像和神经网络对人股骨小梁的机械强度成分进行了分析和分类。通过半自动图像处理程序描绘了股骨小梁骨图像(N = 100)中的机械强度区域,如初级抗压,初级拉伸,次级拉伸和沃德三角形。对于正常和异常图像,导出一阶和更高阶的纹理参数以及诸如与强度区域关联的表观矿化和总面积之类的参数。统计上得出的与主要强度区域相对应的重要参数被馈送到神经网络以进行训练和验证。使用使用标准反向传播算法训练的前馈网络进行分类。结果表明,与异常样品(64%)相比,正常样品的表观矿化总是很高(71%)。正常样品的熵值较高(7.3),且主要强度区的平均强度与表观矿化度之间的差异具有统计学意义(p <0.0005)。分类的输出通过敏感性和特异性测量得到验证,分别为66.66%和80%。此外,似乎可以将常规和异常样品与常规放射线照相图像区分开。由于人股骨的小梁结构是影响骨强度的重要因素,因此此处采用的程序可能是对骨丢失和骨折风险的临床观察的有用补充。

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