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首页> 外文期刊>EBioMedicine >MRI-based machine learning radiomics can predict HER2 expression level and pathologic response after neoadjuvant therapy in HER2 overexpressing breast cancer
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MRI-based machine learning radiomics can predict HER2 expression level and pathologic response after neoadjuvant therapy in HER2 overexpressing breast cancer

机译:基于MRI的机器学习射频可以预测HER2在HER2过表达乳腺癌中的新辅助治疗后HER2表达水平和病理反应

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Background To use clinical and MRI radiomic features coupled with machine learning to assess HER2 expression level and predict pathologic response (pCR) in HER2 overexpressing breast cancer patients receiving neoadjuvant chemotherapy (NAC). Methods This retrospective study included 311 patients. pCR was defined as no residual invasive carcinoma in the breast or axillary lymph nodes (ypT0/isN0). Radiomics/statistical analysis was performed using MATLAB and CERR software. After ROC and correlation analysis, selected radiomics parameters were advanced to machine learning modelling alongside clinical MRI-based parameters (lesion type, multifocality, size, nodal status). For predicting pCR, the data was split into a training and test set (80:20). Findings The overall pCR rate was 60.5% (188/311). The final model to predict HER2 heterogeneity utilised three MRI parameters (two clinical, one radiomic) for a sensitivity of 99.3% (277/279), specificity of 81.3% (26/32), and diagnostic accuracy of 97.4% (303/311). The final model to predict pCR included six MRI parameters (two clinical, four radiomic) for a sensitivity of 86.5% (32/37), specificity of 80.0% (20/25), and diagnostic accuracy of 83.9% (52/62) (test set); these results were independent of age and ER status, and outperformed the best model developed using clinical parameters only (p=0.029, comparison of proportion Chi-squared test). Interpretation The machine learning models, including both clinical and radiomics MRI features, can be used to assess HER2 expression level and can predict pCR after NAC in HER2 overexpressing breast cancer patients. Funding NIH/NCI (P30CA008748), Susan G. Komen Foundation, Breast Cancer Research Foundation, Spanish Foundation Alfonso Martin Escudero, European School of Radiology.
机译:背景技术使用临床和MRI辐射瘤的特征与机器学习相结合,评估HER2表达水平和预测接受Neoadjuvant化疗(NAC)的过表达乳腺癌患者的病理反应(PCR)。方法本回顾性研究包括311名患者。 PCR被定义为乳腺或腋窝淋巴结中没有残留的侵入性癌(YPT0 / ISN0)。使用MATLAB和CERR软件进行辐射瘤/统计分析。在ROC和相关性分析之后,所选的辐射瘤参数先进到机器学习建模,以及临床基于MRI的参数(病变类型,多焦点,尺寸,节点状态)。为了预测PCR,数据分为培训和测试集(80:20)。结果整体PCR率为60.5%(188/311)。预测HER2异质性的最终模型利用了三种MRI参数(两种临床,一个射出量)99.3%(277/279),特异性为81.3%(26/32),诊断准确度为97.4%(303/311 )。预测PCR的最终模型包括六个MRI参数(两种临床,四个射出量),敏感性为86.5%(32/37),特异性为80.0%(20/25),诊断准确性为83.9%(52/62) (测试集);这些结果与年龄和ER状态无关,并且优于使用临床参数的最佳模型(P = 0.029,比较比例Chi平方测试)。解释机器学习模型,包括临床和辐射瘤MRI特征,可用于评估HER2表达水平,可以在HER2过表达乳腺癌患者中预测NAC后的PCR。资助NIH / NCI(P30CA008748),Susan G. Komen Foundation,乳腺癌研究基金会,西班牙基金会Alfonso Martin Escudero,欧洲放射学院。

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