Cinotti L, Edery S, Kahn E, Susskind H, Brill A B, di Paola R
INSERM U 66, Institut Gustave Roussy, Villejuif, France.
Eur J Nucl Med. 1990;16(4-6):353-9. doi: 10.1007/BF00842792.
The efficiency of texture analysis parameters, describing the organization of grey level variations of an image, was studied for lung scintigraphic data classification. Twenty one patients received a 99mTc-MAA perfusion scan and 81mKr and 127Xe ventilation scans. Scans were scaled to 64 grey levels and 100 k events for inter subject comparison. The texture index was the average of the absolute difference between a pixel and its neighbors. Energy, entropy, correlation, local homogeneity and inertia were computed using co-occurrence matrices. A principal component analysis was carried out on each parameter for each type of scan and the first principal components were selected as clustering indices. Validation was achieved by simulating 2 series of 20 increasingly heterogeneous perfusion and ventilation scans. For most of the texture parameters, one principal component could summarize the patients data since it corresponded to the relative variances of 67%-88% for perfusion scans, 53%-99% for 81mKr scans and 38%-97% for 127Xe scans. The simulated series demonstrated a linear relationship between the heterogeneity and the first principal component for texture index, energy, entropy and inertia. This was not the case for correlation and local homogeneity. We conclude that heterogeneity of lung scans may be quantified by texture analysis. The texture index is the easiest to compute and provides the most efficient results for clinical purpose.
为了对肺闪烁扫描数据进行分类,研究了描述图像灰度变化组织的纹理分析参数的效率。21名患者接受了99mTc-MAA灌注扫描以及81mKr和127Xe通气扫描。为了进行受试者间比较,扫描被缩放到64个灰度级和100k个事件。纹理指数是一个像素与其相邻像素之间绝对差值的平均值。使用共生矩阵计算能量、熵、相关性、局部均匀性和惯性。对每种扫描类型的每个参数进行主成分分析,并选择第一主成分作为聚类指标。通过模拟2组各20次越来越不均匀的灌注和通气扫描来进行验证。对于大多数纹理参数,一个主成分可以概括患者数据,因为它对应于灌注扫描中67%-88%、81mKr扫描中53%-99%以及127Xe扫描中38%-97%的相对方差。模拟系列显示,对于纹理指数、能量、熵和惯性,不均匀性与第一主成分之间存在线性关系。相关性和局部均匀性则并非如此。我们得出结论,肺扫描的不均匀性可以通过纹理分析来量化。纹理指数计算最简便,并且为临床目的提供了最有效的结果。