Wu Panpan, Xia Kewen, Yu Hengyong
School of Electronic and Information Engineering, Hebei University of Technology, Tianjin, 300401, China; Department of Electrical and Computer Engineering, University of Massachusetts Lowell, Lowell, MA 01854, USA.
School of Electronic and Information Engineering, Hebei University of Technology, Tianjin, 300401, China.
Comput Methods Programs Biomed. 2016 Nov;136:97-106. doi: 10.1016/j.cmpb.2016.08.009. Epub 2016 Aug 27.
Dimensionality reduction techniques are developed to suppress the negative effects of high dimensional feature space of lung CT images on classification performance in computer aided detection (CAD) systems for pulmonary nodule detection.
An improved supervised locally linear embedding (SLLE) algorithm is proposed based on the concept of correlation coefficient. The Spearman's rank correlation coefficient is introduced to adjust the distance metric in the SLLE algorithm to ensure that more suitable neighborhood points could be identified, and thus to enhance the discriminating power of embedded data. The proposed Spearman's rank correlation coefficient based SLLE (SC(2)SLLE) is implemented and validated in our pilot CAD system using a clinical dataset collected from the publicly available lung image database consortium and image database resource initiative (LICD-IDRI). Particularly, a representative CAD system for solitary pulmonary nodule detection is designed and implemented. After a sequential medical image processing steps, 64 nodules and 140 non-nodules are extracted, and 34 representative features are calculated. The SC(2)SLLE, as well as SLLE and LLE algorithm, are applied to reduce the dimensionality. Several quantitative measurements are also used to evaluate and compare the performances.
Using a 5-fold cross-validation methodology, the proposed algorithm achieves 87.65% accuracy, 79.23% sensitivity, 91.43% specificity, and 8.57% false positive rate, on average. Experimental results indicate that the proposed algorithm outperforms the original locally linear embedding and SLLE coupled with the support vector machine (SVM) classifier.
Based on the preliminary results from a limited number of nodules in our dataset, this study demonstrates the great potential to improve the performance of a CAD system for nodule detection using the proposed SC(2)SLLE.
为抑制肺部CT图像高维特征空间对肺结节检测计算机辅助检测(CAD)系统分类性能的负面影响,开发了降维技术。
基于相关系数的概念提出一种改进的监督局部线性嵌入(SLLE)算法。引入斯皮尔曼等级相关系数来调整SLLE算法中的距离度量,以确保能识别出更合适的邻域点,从而增强嵌入数据的辨别力。基于斯皮尔曼等级相关系数的SLLE(SC(2)SLLE)算法在我们的试点CAD系统中使用从公开可用的肺部图像数据库联盟和图像数据库资源倡议(LICD-IDRI)收集的临床数据集进行了实现和验证。特别是,设计并实现了一个用于孤立性肺结节检测的代表性CAD系统。经过一系列医学图像处理步骤后,提取了64个结节和140个非结节,并计算了34个代表性特征。应用SC(2)SLLE以及SLLE和LLE算法进行降维。还使用了几种定量测量方法来评估和比较性能。
使用5折交叉验证方法,所提出的算法平均达到87.65%的准确率、79.23%的灵敏度、91.43%的特异性和8.57%的假阳性率。实验结果表明,所提出的算法优于原始局部线性嵌入以及与支持向量机(SVM)分类器相结合的SLLE。
基于我们数据集中有限数量结节的初步结果,本研究证明了使用所提出的SC(2)SLLE改善CAD系统结节检测性能的巨大潜力。