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A Radius and Ulna Skeletal Age Assessment System

机译:半径和尺骨骨骼年龄评估系统

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An end to end system to partially automate the TW3 bone age assessment procedure is proposed. The system comprises the detailed analysis of the two more important bones in TW3: the radius and ulna wrist bones. First, a generalization of K-means algorithm is presented to semi-automatically segment the contour of the bones and thus extract up to 89 features describing shapes and textures from bones. Second, a well-founded feature selection criterion based on the statistical properties of data is used in order to properly choose the most relevant features. Third, bone age is estimated with the help of a Generalized Softmax Perceptron (GSP) Neural Network (NN) whose optimal complexity is estimated via the Posterior Probability Model Selection (PPMS) algorithm. We can then predict the different development stages in both radius and ulna, from which we are able to score and estimate the bone age of a patient in years and finally we compare the NN results with those from the pediatrician expert discrepancies.
机译:提出了结束到最终系统,以部分自动化TW3骨龄评估程序。该系统包括对TW3中的两个更重要的骨骼进行详细分析:半径和尺骨腕骨骨骼。首先,将K-Means算法的概括呈现给半自动段骨骼的轮廓,从而提取高达89个功能,描述来自骨骼的形状和纹理。其次,使用基于数据统计特性的良好的特征选择标准来正确选择最相关的功能。第三,借助于通过后验概率模型选择(PPMS)算法估计最佳复杂性的广义软制造Perceptron(GSP)神经网络(NN)估计骨龄。然后,我们可以预测半径和尺骨的不同发育阶段,我们能够在多年中得分和估计患者的骨龄,最后我们将NN与来自儿科医生专家差异的人进行比较。

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