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Magnetic resonance tumor regression grade (MR-TRG) to assess pathological complete response following neoadjuvant radiochemotherapy in locally advanced rectal cancer

机译:磁共振肿瘤消退等级(MR-TRG)评估局部晚期直肠癌新辅助放化疗后的病理完全缓解

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摘要

This study aims to evaluate the feasibility of a magnetic resonance (MR) automatic method for quantitative assessment of the percentage of fibrosis developed within locally advanced rectal cancers (LARC) after neoadjuvant radiochemotherapy (RCT). A total of 65 patients were enrolled in the study and MR studies were performed on 3.0 Tesla scanner; patients were followed-up for 30 months. The percentage of fibrosis was quantified on T2-weighted images, using automatic K-Means clustering algorithm. According to the percentage of fibrosis, an optimal cut-off point for separating patients into favorable and unfavorable pathologic response groups was identified by ROC analysis and tumor regression grade (MR-TRG) classes were determined and compared to histopathologic TRG. An optimal cut-off point of 81% of fibrosis was identified to differentiate between favorable and unfavorable pathologic response groups resulting in a sensitivity of 78.26% and a specificity of 97.62% for the identification of complete responders (CRs). Interobserver agreement was good (0.85). The agreement between P-TRG and MR-TRG was excellent (0.923). Significant differences in terms of overall survival (OS) and disease free survival (DFS) were found between favorable and unfavorable pathologic response groups. The automatic quantification of fibrosis determined by MR is feasible and reproducible.
机译:这项研究旨在评估磁共振(MR)自动方法定量评估新辅助放化疗(RCT)后局部晚期直肠癌(LARC)内纤维化百分比的可行性。共有65名患者参加了研究,并在3.0 Tesla扫描仪上进行了MR研究。随访30个月。使用自动K均值聚类算法在T2加权图像上量化纤维化百分比。根据纤维化的百分比,通过ROC分析确定了将患者分为有利和不利病理反应组的最佳分界点,并确定了肿瘤消退等级(MR-TRG)类并将其与组织病理学TRG进行了比较。确定了最佳的纤维化分界点,即纤维化的最佳分界点,以区分有利和不利的病理反应组,从而得出78.26%的敏感性和97.62%的特异性,用于识别完全反应者(CR)。观察员之间的同意很好(0.85)。 P-TRG和MR-TRG之间的协议非常好(0.923)。在总体病理生存率(OS)和无病生存率(DFS)方面,病理反应组之间存在显着差异。由MR确定的纤维化的自动定量是可行且可重复的。

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