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Osteoporosis Assessment Using Multilayer Perceptron Neural Networks

机译:利用多层情人症的骨质疏松症评估

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The objective of this paper is to investigate the effectiveness of a Multilayer Perceptron (MLP) to discriminate subjects with and without osteoporosis using a set of five parameters characterizing the quality of the bone structure. These parameters include Age, Bone mineral content (BMC), Bone mineral density (BMD), fractal Hurst exponent (Hmean) and coocurrence texture feature (CoEn). The purpose of the study is to detect the potential usefulness of the combination of different features to increase the classification rate of 2 populations composed of osteporotic patients and control subjects. k-fold Cross Validation (CV) was used in order to assess the accuracy and reliability of the neural network validation. Compared to other methods MLP-based analysis provides an accurate and reliable platform for osteoporosis prediction. Moreover, the results show that the combination of the five features provides better performance in terms of discrimination of the subjects.
机译:本文的目的是探讨多层感知者(MLP)的有效性,使用一组五个参数表征骨结构质量的一组五个参数来鉴别具有骨质疏松症的受试者。 这些参数包括年龄,骨矿物含量(BMC),骨矿物密度(BMD),分形仓鼠指数(Hmean)和Coocurrence纹理特征(CoEN)。 该研究的目的是检测不同特征组合的潜在有用性,以提高由Ostexoric患者和对照受试者组成的2个种群的分类率。 使用K折叠交叉验证(CV)以评估神经网络验证的准确性和可靠性。 与其他方法相比,基于MLP的分析为骨质疏松症预测提供了准确可靠的平台。 此外,结果表明,五种特征的组合在对象的鉴别方面提供了更好的性能。

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