Kashif Muhammad, Deserno Thomas M, Haak Daniel, Jonas Stephan
Department of Medical Informatics, RWTH Aachen University, Pauwelsstr. 30, 52057 Aachen, Germany.
Department of Medical Informatics, RWTH Aachen University, Pauwelsstr. 30, 52057 Aachen, Germany.
Comput Biol Med. 2016 Jan 1;68:67-75. doi: 10.1016/j.compbiomed.2015.11.006. Epub 2015 Nov 18.
Solving problems in medical image processing is either generic (being applicable to many problems) or specific (optimized for a certain task). For example, bone age assessment (BAA) on hand radiographs is a frequent but cumbersome task for radiologists. For this problem, many specific solutions have been proposed. However, general-purpose feature descriptors are used in many computer vision applications. Hence, the aim of this study is (i) to compare the five leading keypoint descriptors on BAA, and, in doing so, (ii) presenting a generic approach for a specific task. Two methods for keypoint selection were applied: sparse and dense feature points. For each type, SIFT, SURF, BRIEF, BRISK, and FREAK feature descriptors were extracted within the epiphyseal regions of interest (eROI). Classification was performed using a support vector machine. Reference data (1101 radiographs) of the University of Southern California was used for 5-fold cross-validation. The data was grouped into 30 classes representing the bone age range of 0-18 years. With a mean error of 0.605 years, dense SIFT gave best results and outperforms all published methods. The accuracy was 98.36% within the range of 2 years. Dense SIFT represents a generic method for a specific question.
解决医学图像处理中的问题要么是通用的(适用于许多问题),要么是特定的(针对特定任务进行优化)。例如,对手部X光片进行骨龄评估(BAA)对放射科医生来说是一项常见但繁琐的任务。针对这个问题,已经提出了许多特定的解决方案。然而,许多计算机视觉应用中使用的是通用特征描述符。因此,本研究的目的是:(i)比较在BAA上的五种领先关键点描述符,并且在这样做的过程中,(ii)为特定任务提出一种通用方法。应用了两种关键点选择方法:稀疏和密集特征点。对于每种类型,在骨骺感兴趣区域(eROI)内提取SIFT、SURF、BRIEF、BRISK和FREAK特征描述符。使用支持向量机进行分类。使用南加州大学的参考数据(1101张X光片)进行5折交叉验证。数据被分组为30个类别,代表0至18岁的骨龄范围。密集SIFT的平均误差为0.605岁,给出了最佳结果,并且优于所有已发表的方法。在2年范围内的准确率为98.36%。密集SIFT代表了针对特定问题的通用方法。