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Automatic assessment of bone age using statistical models of appearance and Random Forest Regression voting

机译:使用外观统计模型和随机森林回归投票自动评估骨龄

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This work addresses the problem of automatic estimation of bone age in children and young adults. Bone age assessment is important for diagnosing and monitoring growth and endocrine disorders. We have constructed a system which uses Statistical Models of Shape and Appearance to locate bones in a radiograph and to predict bone age. By analyzing the performance on a data-set of about 600 digitized radiograph of normal children we show how Random Forest Regression voting in a Contrained Local models framework (RFRV - CLM) are sufficient to initialize an automatic registration algorithm. We built global models of whole hand and local models of individual bones. We used the same RFRV - CLM models to locate salient bones of the hand. We improved our age estimation results by using multiple local age group models and multiple local age predictors. We obtained an accuracy of mean point-to-point errors of 0.87mm on sparse points placement for initialization of automatic registrations. Our Bone age assessment methodology achieved an accuracy of mean absolute error of 0.41±0.02 years and 0.47 ± 0.03 years for female and male respectively.
机译:这项工作解决了自动估计儿童和年轻人的骨龄的问题。骨龄评估对于诊断和监测生长和内分泌失调很重要。我们构建了一个使用“形状和外观统计模型”在放射线图中定位骨骼并预测骨骼年龄的系统。通过分析大约600名正常儿童的数字化X射线照片的数据集的性能,我们显示了约束局部模型框架(RFRV-CLM)中的随机森林回归投票如何足以初始化自动注册算法。我们建立了整个手的全局模型和单个骨骼的局部模型。我们使用相同的RFRV-CLM模型来定位手的突出骨骼。我们通过使用多个本地年龄组模型和多个本地年龄预测因子来改善了我们的年龄估算结果。对于自动注册的初始化,我们在稀疏点放置上获得了0.87mm的平均点对点误差的精度。我们的骨龄评估方法对女性和男性的平均绝对误差的准确度分别为0.41±0.02年和0.47±0.03年。

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