Kim Kwang Baek, Park Hyun Jun, Song Doo Heon
Division of Computer Software Engineering, Silla University, Busan 46958, South Korea.
Division of Software Convergence, Cheongju University, Cheongju 28503, South Korea.
Curr Med Imaging Rev. 2019;15(8):810-816. doi: 10.2174/1573405614666180719142536.
Current naked-eye examination of the ultrasound images for inflamed appendix has limitations due to its intrinsic operator subjectivity problem.
In this paper, we propose a fully automatic intelligent method for extracting inflamed appendix from ultrasound images. Accurate and automatic extraction of inflamed appendix from ultrasonography is a major decision making resource of the diagnosis and management of suspected appendicitis.
The proposed method uses Fuzzy C-means learning algorithm in pixel clustering with semi-dynamic control of initializing the number of clusters based on the intensity contrast dispersion of the input image. Thirty percent of the prepared ultrasonography samples are classified into four different groups based on their intensity contrast distribution and then different number of clusters are assigned to the images in accordance with such groups in Fuzzy C-means learning process.
In the experiment, the proposed system successfully extracts the target without human intervention in 82 of 85 cases (96.47% accuracy). The proposed method also shows that it can cover the false negative cases occurred previously that used self-organizing map as the learning engine.
Such high level reliable correct extraction of inflamed appendix encourages to use the automatic extraction software in the diagnosis procedure of suspected acute appendicitis.
当前对发炎阑尾的超声图像进行肉眼检查,由于其固有的操作者主观性问题而存在局限性。
在本文中,我们提出一种从超声图像中提取发炎阑尾的全自动智能方法。从超声检查中准确、自动地提取发炎阑尾是疑似阑尾炎诊断和治疗的主要决策资源。
所提出的方法在像素聚类中使用模糊C均值学习算法,基于输入图像的强度对比度离散度对聚类数进行半动态控制初始化。将准备好的超声检查样本的30%根据其强度对比度分布分为四个不同组,然后在模糊C均值学习过程中根据这些组为图像分配不同数量的聚类。
在实验中,所提出的系统在85例中的82例中成功地在无人工干预的情况下提取了目标(准确率为96.47%)。所提出的方法还表明,它可以涵盖以前使用自组织映射作为学习引擎时出现的假阴性病例。
如此高水平可靠地正确提取发炎阑尾,促使在疑似急性阑尾炎的诊断过程中使用自动提取软件。