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Building A Reduced Dictionary Of Relevant Perfusion Patterns From Ceus Data For The Classification Of Testis Lesions

机译:从盲肠数据建立相关灌注模式的简化字典以对睾丸病变进行分类

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Radical orchifunicolectomy has traditionally been the main clinical treatment for small testicular masses (STMs); however STMs represent a constantly increasing and often incidental finding. Since many of them result benign, a more conservative testis-sparing surgery was proposed, but it requires a preliminary differentiation between benign and malignant masses: this however remains challenging. Although common understanding in radiology and oncology is that perfusion patterns might provide a useful information about the type of masses, no guidelines or consensus is available for the differentiation of STMs. We propose to build a dictionary of relevant perfusion patterns, extracted using non-negative matrix factorization on pixel-wise time-intensity curves from contrast-enhanced ultrasound data. When data from a lesion are reconstructed using this dictionary, a vector containing the frequency of utilization of each pattern can be used as a tissue signature. Using this signature, a support vector machine classifier has been trained, and the cross validated accuracy reached 100% in our pilot cohort.
机译:传统上,根治性睾丸切除术一直是小睾丸肿块(STM)的主要临床治疗方法。然而,STM代表着不断增加且经常是偶然的发现。由于它们中的许多结果都是良性的,因此提出了一种更为保守的保留睾丸的手术,但是这需要对良性和恶性肿块进行初步区分:但是,这仍然具有挑战性。尽管在放射学和肿瘤学领域的共识是,灌注方式可能会提供有关肿块类型的有用信息,但尚无关于STM区分的指南或共识。我们建议建立一个有关灌注模式的字典,使用非负矩阵因式分解从对比度增强的超声数据中按像素时间强度曲线提取。当使用该字典重建来自病变的数据时,包含每个模式利用频率的向量可以用作组织特征。使用此签名,已经训练了支持向量机分类器,并且在我们的试验队列中,交叉验证的准确性达到了100%。

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