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A deep learning classifier for prediction of pathological complete response to neoadjuvant chemotherapy from baseline breast DCE-MRI

机译:一种深度学习分类器,可通过基线乳腺DCE-MRI预测对新辅助化疗的病理完全反应

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Neoadjuvant chemotherapy (NAC) is routinely used to treat breast tumors before surgery to reduce tumor size and improve outcome. However, no current clinical or imaging metrics can effectively predict before treatment which NAC recipients will achieve pathological complete response (pCR), the absence of residual invasive disease in the breast or lymph nodes following surgical resection. In this work, we developed and applied a convolu-tional neural network (CNN) to predict pCR from pre-treatment dynamic contrast-enhanced magnetic resonance imaging (DCE-MRI) scans on a per-voxel basis. In this study, DCE-MRI data for a total of 166 breast cancer patients from the ISPY1 Clinical Trial were split into a training set of 133 patients and a testing set of 33 patients. A CNN consisting of 6 convolutional blocks was trained over 30 epochs. The pre-contrast and post-contrast DCE-MRI phases were considered in isolation and conjunction. A CNN utilizing a combination of both pre- and post-contrast images best distinguished responders. with an AUC of 0.77: 82% of the patients in the testing set were correctly classified based on their treatment response. Within the testing set. the CNN was able to produce probability heatmaps that visualized tumor regions that most strongly predicted therapeutic response. Multi-variate analysis with prognostic clinical variables (age. largest diameter, hormone receptor and HER2 status), revealed that the network was an independent predictor of response (p=0.05), and that the inclusion of HER2 status could further improve capability to predict response (AUC = 0.85, accuracy = 85%).
机译:新辅助化疗(NAC)通常在手术前用于治疗乳腺肿瘤,以缩小肿瘤大小并改善结局。但是,当前的临床或影像学指标无法在治疗前有效预测哪些NAC受体将达到病理完全缓解(pCR),手术切除后乳房或淋巴结中没有残留浸润性疾病。在这项工作中,我们开发并应用了卷积神经网络(CNN)从每个体素的治疗前动态对比增强磁共振成像(DCE-MRI)扫描预测pCR。在这项研究中,来自ISPY1临床试验的总共166名乳腺癌患者的DCE-MRI数据被分为133名患者的训练组和33名患者的测试组。一个由6个卷积块组成的CNN经过了30个时期的训练。对比前和对比后DCE-MRI阶段被单独考虑和合并考虑。结合了对比前和对比后图像的CNN可以最好地区分响应者。 AUC为0.77:测试集中有82%的患者根据其治疗反应正确分类。在测试集中。 CNN能够产生概率热图,从而可视化最能强烈预测治疗反应的肿瘤区域。通过对预后临床变量(年龄,最大直径,激素受体和HER2状态)进行多变量分析,发现该网络是反应的独立预测因子(p = 0.05),纳入HER2状态可以进一步提高预测能力响应(AUC = 0.85,准确度= 85%)。

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