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Breast Cancer Treatment Response Monitoring Using Quantitative Ultrasound and Texture Analysis: Comparative Analysis of Analytical Models

机译:使用定量超声和质构分析监测乳腺癌治疗反应:分析模型的比较分析

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摘要

PURPOSE: The purpose of this study was to develop computational algorithms to best determine tumor responses early after the start of neoadjuvant chemotherapy, based on quantitative ultrasound (QUS) and textural analysis in patients with locally advanced breast cancer (LABC). METHODS: A total of 100 LABC patients treated with neoadjuvant chemotherapy were included in this study. Breast tumors were scanned with a clinical ultrasound system prior to treatment, during the first, fourth and eighth weeks of treatment, and prior to surgery. QUS parameters were calculated from ultrasound radio frequency data within tumor regions. Texture features were extracted from each QUS parametric map. Patients were classified into two groups based on identified clinical/pathological response: responders and non-responders. In order to differentiate treatment responders, three multi-feature response classification algorithms, namely a linear discriminant, a k-nearest-neighbor and a nonlinear support vector machine classifier were compared. RESULTS: All algorithms distinguished responders and non-responders with accuracies ranging between 68% and 92%. In particular, support vector machine performed the best in differentiating responders from non-responders with accuracies of 78%, 90% and 92% at weeks 1, 4 and 8 after the start of treatment, respectively. The most relevant features in separating the two response groups at early stages (weeks 1and 4) were texture features and at a later stage (week 8) were mean QUS parameters, particularly ultrasound backscatter intensity-based parameters. CONCLUSION: An early stage treatment response prediction model developed by quantitative ultrasound and texture analysis combined with modern computational methods permits offering effective alternatives to standard treatment for refractory patients.
机译:目的:本研究的目的是开发基于定量超声(QUS)和组织学分析的局部晚期乳腺癌(LABC)患者,在新辅助化疗开始后尽早确定肿瘤反应的最佳计算算法。方法:本研究共纳入100例接受新辅助化疗的LABC患者。在治疗之前,治疗的第一周,第四周和第八周以及手术之前,使用临床超声系统对乳腺癌进行扫描。从肿瘤区域内的超声射频数据计算QUS参数。从每个QUS参数图提取纹理特征。根据确定的临床/病理反应将患者分为两类:有反应者和无反应者。为了区分治疗反应者,比较了三种多特征反应分类算法,即线性判别式,k最近邻法和非线性支持向量机分类器。结果:所有算法都区分响应者和非响应者,其准确度在68%到92%之间。特别是,支持向量机在区分反应者和非反应者方面表现最佳,在治疗开始后的第1、4和8周的准确率分别为78%,90%和92%。在早期阶段(第1周和第4周)中将两个响应组分开的最相关特征是纹理特征,在后期阶段(第8周)是平均QUS参数,特别是基于超声反向散射强度的参数。结论:通过定量超声和纹理分析结合现代计算方法开发的早期治疗反应预测模型可以为难治性患者的标准治疗提供有效的替代方法。

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