Lucht Robert E A, Delorme Stefan, Hei Jürgen, Knopp Michael V, Weber Marc-André, Griebel Jürgen, Brix Gunnar
Federal Office for Radiation Protection, Department of Radiation and Health, Division of Medical Radiation Hygiene and Dosimety, Neuherberg, Germany.
Invest Radiol. 2005 Jul;40(7):442-7. doi: 10.1097/01.rli.0000164788.73298.ae.
This study compares the performance of quantitative methods for the characterization of signal-time curves acquired by dynamic contrast-enhanced magnetic resonance mammography from 253 females.
Signal-time curves obtained from 105 parenchyma, 162 malignant, and 91 benign tissue regions were examined (243 lesions were histopathologically validated). A neural network, a nearest-neighbor, and a threshold classifier were applied to either the entire signal-time curve or pharmacokinetic and descriptive parameters calculated from the curves to differentiate between 2 (malignant or benign) or 3 tissue classes (malignant, benign, or parenchyma). The classifiers were tuned and evaluated according to their performance on 2 distinct subsets of the curves.
The accuracy determined for the neural network and the nearest-neighbor classifiers was nearly identical (approximately 80% in case of 3 tissue classes, and approximately 76% in case of the 2 classes). In contrast, the accuracy of the threshold classifier applied to the discrimination of 3 classes was low (65%).
Quantitative classifiers can support the radiologist in the diagnosis of breast lesions.
本研究比较了对253名女性通过动态对比增强磁共振乳腺造影获得的信号-时间曲线进行特征描述的定量方法的性能。
检查了从105个实质组织、162个恶性组织和91个良性组织区域获得的信号-时间曲线(243个病变经组织病理学验证)。将神经网络、最近邻算法和阈值分类器应用于整个信号-时间曲线或根据曲线计算出的药代动力学及描述性参数,以区分2种(恶性或良性)或3种组织类别(恶性、良性或实质组织)。根据分类器在曲线的2个不同子集上的表现进行调整和评估。
神经网络和最近邻分类器确定的准确率几乎相同(对于3种组织类别约为80%,对于2种组织类别约为76%)。相比之下,应用于3类判别时阈值分类器的准确率较低(65%)。
定量分类器可辅助放射科医生诊断乳腺病变。