Department of Radiology, University of Pennsylvania, Philadelphia, Pennsylvania 19104, USA.
Magn Reson Med. 2009 Dec;62(6):1609-18. doi: 10.1002/mrm.22147.
The objective of this study is to investigate the use of pattern classification methods for distinguishing different types of brain tumors, such as primary gliomas from metastases, and also for grading of gliomas. The availability of an automated computer analysis tool that is more objective than human readers can potentially lead to more reliable and reproducible brain tumor diagnostic procedures. A computer-assisted classification method combining conventional MRI and perfusion MRI is developed and used for differential diagnosis. The proposed scheme consists of several steps including region-of-interest definition, feature extraction, feature selection, and classification. The extracted features include tumor shape and intensity characteristics, as well as rotation invariant texture features. Feature subset selection is performed using support vector machines with recursive feature elimination. The method was applied on a population of 102 brain tumors histologically diagnosed as metastasis (24), meningiomas (4), gliomas World Health Organization grade II (22), gliomas World Health Organization grade III (18), and glioblastomas (34). The binary support vector machine classification accuracy, sensitivity, and specificity, assessed by leave-one-out cross-validation, were, respectively, 85%, 87%, and 79% for discrimination of metastases from gliomas and 88%, 85%, and 96% for discrimination of high-grade (grades III and IV) from low-grade (grade II) neoplasms. Multiclass classification was also performed via a one-vs-all voting scheme.
本研究旨在探讨模式分类方法在区分不同类型脑肿瘤(如原发性胶质瘤与转移瘤)以及胶质瘤分级中的应用。与人工阅读相比,使用更客观的自动计算机分析工具可能会导致更可靠和可重复的脑肿瘤诊断程序。我们开发了一种结合常规 MRI 和灌注 MRI 的计算机辅助分类方法,用于鉴别诊断。所提出的方案包括几个步骤,包括感兴趣区域定义、特征提取、特征选择和分类。提取的特征包括肿瘤形状和强度特征,以及旋转不变纹理特征。使用支持向量机和递归特征消除进行特征子集选择。该方法应用于 102 例经组织学诊断为转移瘤(24 例)、脑膜瘤(4 例)、WHO 分级 II 级胶质瘤(22 例)、WHO 分级 III 级胶质瘤(18 例)和胶质母细胞瘤(34 例)的脑肿瘤患者。通过留一法交叉验证评估的二进制支持向量机分类准确率、灵敏度和特异性分别为 85%、87%和 79%,用于区分转移瘤和胶质瘤;88%、85%和 96%,用于区分高级别(III 级和 IV 级)和低级别(II 级)肿瘤。还通过一对一投票方案进行了多类分类。