França Cleunio, Vasconcelos Germano, Diniz Paula, Melo Pedro, Diniz Jéssica, Novaes Magdala
Informatics Center - CIn, Federal University of Pernambuco, PE, Brazil.
Stud Health Technol Inform. 2013;192:1159.
With the consolidation of PACS and RIS systems, the development of algorithms for tissue segmentation and diseases detection have intensely evolved in recent years. These algorithms have advanced to improve its accuracy and specificity, however, there is still some way until these algorithms achieved satisfactory error rates and reduced processing time to be used in daily diagnosis. The objective of this study is to propose a algorithm for lung segmentation in x-ray computed tomography images using features extraction, as Centroid and orientation measures, to improve the basic threshold segmentation. As result we found a accuracy of 85.5%.
随着PACS和RIS系统的整合,近年来用于组织分割和疾病检测的算法有了长足的发展。这些算法已经在不断改进以提高其准确性和特异性,然而,在这些算法达到令人满意的错误率并减少处理时间以用于日常诊断之前,仍有一段路要走。本研究的目的是提出一种在X射线计算机断层扫描图像中进行肺部分割的算法,该算法使用诸如质心和方向测量等特征提取方法来改进基本的阈值分割。结果我们发现准确率为85.5%。