Park Sang Ok, Seo Joon Beom, Kim Namkug, Park Seong Hoon, Lee Young Kyung, Park Bum-Woo, Sung Yu Sub, Lee Youngjoo, Lee Jeongjin, Kang Suk-Ho
Department of Radiology, University of Ulsan College of Medicine, Asan Medical Center, Seoul, Korea.
Korean J Radiol. 2009 Sep-Oct;10(5):455-63. doi: 10.3348/kjr.2009.10.5.455. Epub 2009 Aug 25.
This study was designed to develop an automated system for quantification of various regional disease patterns of diffuse lung diseases as depicted on high-resolution computed tomography (HRCT) and to compare the performance of the automated system with human readers.
A total of 600 circular regions-of-interest (ROIs), 10 pixels in diameter, were utilized. The 600 ROIs comprised 100 ROIs that represented six typical regional patterns (normal, ground-glass opacity, reticular opacity, honeycombing, emphysema, and consolidation). The ROIs were used to train the automated classification system based on the use of a Support Vector Machine classifier and 37 features of texture and shape. The performance of the classification system was tested with a 5-fold cross-validation method. An automated quantification system was developed with a moving ROI in the lung area, which helped classify each pixel into six categories. A total of 92 HRCT images obtained from patients with different diseases were used to validate the quantification system. Two radiologists independently classified lung areas of the same CT images into six patterns using the manual drawing function of dedicated software. Agreement between the automated system and the readers and between the two individual readers was assessed.
The overall accuracy of the system to classify each disease pattern based on the typical ROIs was 89%. When the quantification results were examined, the average agreement between the system and each radiologist was 52% and 49%, respectively. The agreement between the two radiologists was 67%.
An automated quantification system for various regional patterns of diffuse interstitial lung diseases can be used for objective and reproducible assessment of disease severity.
本研究旨在开发一种自动化系统,用于量化高分辨率计算机断层扫描(HRCT)上显示的弥漫性肺疾病的各种区域疾病模式,并将该自动化系统的性能与人工阅片者进行比较。
共使用了600个直径为10像素的圆形感兴趣区域(ROI)。这600个ROI包括100个代表六种典型区域模式(正常、磨玻璃影、网状影、蜂窝状、肺气肿和实变)的ROI。这些ROI用于基于支持向量机分类器以及37个纹理和形状特征来训练自动化分类系统。分类系统的性能采用5折交叉验证法进行测试。开发了一种在肺区域使用移动ROI的自动量化系统,该系统有助于将每个像素分类为六种类别。共使用了从不同疾病患者获得的92张HRCT图像来验证该量化系统。两名放射科医生使用专用软件的手动绘制功能,将同一CT图像的肺区域独立分类为六种模式。评估了自动化系统与阅片者之间以及两名阅片者之间的一致性。
基于典型ROI对每种疾病模式进行分类时,系统的总体准确率为89%。检查量化结果时,系统与每位放射科医生之间的平均一致性分别为52%和49%。两名放射科医生之间的一致性为67%。
一种用于弥漫性间质性肺疾病各种区域模式的自动量化系统可用于客观且可重复地评估疾病严重程度。