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Optimal Clustering of Kinetic Patterns on Malignant Breast Lesions: Comparison between K-means Clustering and Three-time-points Method in Dynamic Contrast-enhanced MRI

机译:恶性乳腺病变对动力学模式的最佳聚类:K-Means聚类与动态对比增强MRI中的三时点法的比较

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Dynamic contrast-enhanced magnetic resonance imaging (DCE-MRI) is useful for breast cancer diagnosis and treatment planning. Nevertheless, due to the multi-temporal nature of DCE-MRI data, the assessment of early stage breast cancer is a challenging task. In this study, we applied an unsupervised clustering approach and cluster validation technique to the analysis of malignant intra-tumoral kinetic curves in DCE-MRI. K-means cluster analysis was performed from real world malignant tumor cases and the data were transformed into an optimal number of reference patterns representative each cluster. The optimal number of clusters was estimated by a cluster validation index, which was calculated with the ratio of inter-class scatter to intra-class scatter. This technique then classifies tumor specific patterns from a given MRI data by measuring the vector distances from the reference pattern set, and compared the result from the k-means clustering with that from three-time-points (3TP) method, which represents a clinical standard protocol for analysis of tumor kinetics. The evaluation of twenty five cases indicates that optimal k-means clustering reflects partitioning intra-tumoral kinetic patterns better than the 3TP technique. This method will greatly enhance the capability of radiologists to identify and characterize internal kinetic heterogeneity and vascular change of a tumor in breast DCE-MRI.
机译:动态对比度增强的磁共振成像(DCE-MRI)可用于乳腺癌诊断和治疗规划。然而,由于DCE-MRI数据的多时间性质,早期乳腺癌的评估是一个具有挑战性的任务。在这项研究中,我们应用了无监督的聚类方法和集群验证技术,以分析DCE-MRI中的恶性肿瘤内动力学曲线。 K-Means群集分析从现实世界恶性肿瘤病例进行,数据被转换为每个群集的最佳参考模式。通过集群验证索引估算了最佳簇数,该终端估计,该指数以阶级间散射与帧内散射的比率计算。然后,该技术通过从参考图案集的矢量距离测量矢量距离来分类来自给定的MRI数据的肿瘤特异性图案,并将来自k-means聚类的结果与三相点(3TP)方法与表示临床的方法进行比较肿瘤动力学分析的标准方案。对二十五个病例的评估表明,最佳的K-Means聚类反映了比3TP技术更好地分配肿瘤内动力学模式。该方法将大大提高放射科医生识别和表征乳腺DCE-MRI中肿瘤的内部动力学异质性和血管变化的能力。

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