Makrogiannis Sokratis
Annu Int Conf IEEE Eng Med Biol Soc. 2016 Aug;2016:1034-1037. doi: 10.1109/EMBC.2016.7590879.
We introduce texture classification techniques to effectively diagnose osteoporosis in bone radiography data. Osteoporosis is an age-related systemic bone skeletal disorder characterized by low bone mass and bone structure deterioriation that results in increased bone fragility and higher fracture risk. Therefore, early diagnosis can effectively predict fracture risk and prevent the disease. Automated diagnosis from digital radiographs is very challenging since the scans of healthy and osteoporotic subjects show little or no visual differences, and their density histograms mostly overlap. We designed a system to separate healthy from osteoporotic subjects using high-dimensional textural feature representations computed from radiographs. These features were then reduced using feature selection to obtain the more discriminant subset that was finally classified by our methods. The top performing approach yields 79.3% accuracy and 81% area under the ROC over 116 bone radiographs.
我们引入纹理分类技术,以有效诊断骨放射成像数据中的骨质疏松症。骨质疏松症是一种与年龄相关的全身性骨骼疾病,其特征是骨量低和骨结构恶化,导致骨脆性增加和骨折风险升高。因此,早期诊断可以有效预测骨折风险并预防该疾病。由于健康受试者和骨质疏松症患者的扫描图像在视觉上几乎没有差异,而且它们的密度直方图大多重叠,因此从数字射线照片进行自动诊断极具挑战性。我们设计了一个系统,使用从射线照片计算出的高维纹理特征表示来区分健康受试者和骨质疏松症患者。然后使用特征选择来减少这些特征,以获得更具判别力的子集,最后通过我们的方法进行分类。在116张骨射线照片上,表现最佳的方法的准确率为79.3%,ROC曲线下面积为81%。