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首页> 外文期刊>Investigative radiology >Classification of Signal-Time Curves Obtained by Dynamic Magnetic Resonance Mammography: Statistical Comparison of Quantitative Methods.
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Classification of Signal-Time Curves Obtained by Dynamic Magnetic Resonance Mammography: Statistical Comparison of Quantitative Methods.

机译:动态磁共振乳腺X射线摄影术获得的信号时间曲线的分类:定量方法的统计比较。

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OBJECTIVE:: 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. MATERIALS AND METHODS:: 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. RESULTS:: 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%). CONCLUSION:: Quantitative classifiers can support the radiologist in the diagnosis of breast lesions.
机译:目的::本研究比较了定量方法对253位女性通过动态对比增强磁共振乳腺摄影所获得的信号时间曲线进行表征的性能。材料与方法:检查从105个实质,162个恶性和91个良性组织区域获得的信号时间曲线(对243个病变进行了组织病理学验证)。将神经网络,最近邻居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和描述性参数,以区分2种(恶性或良性)或3种组织类别(恶性,良性,或实质)。根据分类器在曲线的2个不同子集中的性能进行调整和评估。结果:神经网络和最近的邻居分类器确定的准确性几乎是相同的(在3个组织类别中大约为80%,在2个组织类别中大约为76%)。相反,应用于3个类别的判别的阈值分类器的准确性较低(65%)。结论:定量分类器可以支持放射科医师诊断乳腺病变。

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