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Breast MRI radiomics for the pretreatment prediction of response to neoadjuvant chemotherapy in node-positive breast cancer patients

机译:乳腺MRI射频用于预处理对新核乳腺癌患者新辅助化疗的反应预测

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摘要

The purpose of this study was to evaluate breast MRI radiomics in predicting, prior to any treatment, the response to neoadjuvant chemotherapy (NAC) in patients with invasive lymph node (LN)-positive breast cancer for two tasks: (1) prediction of pathologic complete response and (2) prediction of post-NAC LN status. Our study included 158 patients, with 19 showing post-NAC complete pathologic response (pathologic TNM stage T0,N0,MX) and 139 showing incomplete response. Forty-two patients were post-NAC LN-negative, and 116 were post-NAC LN-positive. We further analyzed prediction of response by hormone receptor subtype of the primary cancer (77 hormone receptor-positive, 39 HER2-enriched, 38 triple negative, and 4 cancers with unknown receptor status). Only pre-NAC MRIs underwent computer analysis, initialized by an expert breast radiologist indicating index cancers and metastatic axillary sentinel LNs on DCE-MRI images. Forty-nine computer-extracted radiomics features were obtained, both for the primary cancers and for the metastatic sentinel LNs. Since the dataset contained MRIs acquired at 1.5 T and at 3.0 T, we eliminated features affected by magnet strength using the Mann–Whitney U-test with the null-hypothesis that 1.5 T and 3.0 T samples were selected from populations having the same distribution. Bootstrapping and ROC analysis were used to assess performance of individual features in the two classification tasks. Eighteen features appeared unaffected by magnet strength. Pre-NAC tumor features generally appeared uninformative in predicting response to therapy. In contrast, some pre-NAC LN features were able to predict response: two pre-NAC LN features were able to predict pathologic complete response (area under the ROC curve (AUC) up to 0.82 [0.70; 0.88]), and another two were able to predict post-NAC LN-status (AUC up to 0.72 [0.62; 0.77]), respectively. In the analysis by a hormone receptor subtype, several potentially useful features were identified for predicting response to therapy in the hormone receptor-positive and HER2-enriched cancers.
机译:本研究的目的是评估在任何治疗之前预测乳房MRI射线瘤,在两项任务中对侵袭性淋巴结(LN)阳性乳腺癌患者对Neoadjuvant化疗(NAC)的反应:(1)病理学预测完全响应和(2)后NAC LN状态的预测。我们的研究包括158名患者,19例显示NAC后完全病理反应(病理TNM阶段T0,N0,MX)和139,显示不完全反应。第四十二名患者是NAC LN阴性,116个患者是NAC后阳性。我们进一步分析了原发性癌症的激素受体亚型的响应预测(77激素受体阳性,39英尺的38个三重阴性和4个具有未知受体状态的4种癌症)。只有NAC前MRIS接受计算机分析,由专家乳房放射科医师初始化,指示DCE-MRI图像上的指数癌症和转移性腋窝哨LNS。获得四十九种计算机提取的射线组虫,用于初前癌症和转移哨落LNS。由于数据集包含在1.5 T和3.0 T的MRI,因此我们使用符合少量假设的Mann-Whitney U-Test,从含有相同分布的群体中选择了磁性假设影响的磁体强度影响的特征。引导和ROC分析用于评估两个分类任务中各个功能的性能。十八个特征不受磁体强度影响。在预测对治疗的响应中,NAC前肿瘤特征通常在预测的情况下出现不知情。相比之下,一些预先预测的NAC预测功能可以预测响应:两个预先预测的PRE-LN特征能够预测病理完全响应(ROC曲线(AUC)下的区域,高达0.82 [0.88]),另外两个能够分别预测NAC后LN状态(AUC至0.72 [0.77])。在激素受体亚型的分析中,鉴定了几种潜在的有用特征,以预测对激素受体阳性和HER2富含癌症的治疗的反应。

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