In this chapter we explore and evaluate methods for trabecular bone characterization and osteoporosis diagnosis with increased interest in sparse approximations. We first describe texture representation and classification techniques, patch-based methods such as Bag of Keypoints, and more recent deep neural networks. Then we introduce the concept of sparse representations for pattern recognition and we detail integrative sparse analysis methods and classifier decision fusion methods. We report cross-validation results on osteoporosis datasets of bone radiographs and compare the results produced by the different categories of methods. We conclude that advances in the AI and machine learning fields have enabled the development of methods that can be used as diagnostic tools in clinical settings.
翻译:在本章中,我们探讨和评价对心血管骨骼特征鉴定和骨质疏松诊断方法,对稀疏近似值的兴趣增加;我们首先介绍质谱描述和分类技术、诸如一袋关键点等基于补丁方法以及最近的深神经网络;然后我们介绍模式识别的稀疏表示概念,并详细介绍稀疏分析方法和分类决定聚合方法;我们报告骨髓疏松数据集的交叉验证结果,比较不同类别方法产生的结果;我们的结论是,人工智能和机器学习领域的进展使得能够开发出在临床环境中可以用作诊断工具的方法。