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Multimodal Prediction of Breast Cancer Relapse Prior to Neoadjuvant Chemotherapy Treatment

机译:新辅助化疗治疗前乳腺癌复发多峰预测

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Neoadjuvant chemotherapy (NAC) is one of the treatment options for women diagnosed with breast cancer, in which chemotherapy is administered prior to surgery. In current clinical practice, it is not possible to predict whether the patient is likely to encounter a relapse after treatment and have the breast cancer reoccur in the same place. If this outcome could be predicted prior to the start of NAC, it could inform therapeutic options. We explore the use of multi-modal imaging and clinical features to predict the risk of relapse following NAC treatment. We performed a retrospective study on a cohort of 1738 patients who were administered with NAC. Of these patients, 567 patients also had magnetic resonance imaging (MRI) taken before the treatment started. We analyzed the data using deep learning and traditional machine learning algorithms to increase the set of discriminating features and create effective models. Our results demonstrate the ability to predict relapse prior to NAC treatment initiation, using each modality alone. We then show the possible improvement achieved by combining MRI and clinical data, as measured by the AUC, sensitivity, and specificity. When evaluated on holdout data, the overall combined model achieved 0.735 AUC and 0.438 specificity at a sensitivity operation point of 0.95. This means that almost every patient encountering relapse will also be correctly classified by our model, enabling the reassessment of this treatment prior to its start. Additionally, the same model was able to correctly predict in advance 44% of the patients that would not encounter relapse.
机译:Neoadjuvant化疗(NAC)是患有乳腺癌的女性的治疗方案之一,在手术前施用化疗。在目前的临床实践中,不可能预测患者是否可能在治疗后遇到复发并在同一个地方进行乳腺癌再次。如果在NAC开始之前可以预测此结果,它可以通知治疗选择。我们探讨了使用多模态成像和临床特征来预测NAC治疗后复发的风险。我们对1738名患者的群组进行了回顾性研究。在这些患者中,567名患者在治疗开始之前也具有磁共振成像(MRI)。我们使用深度学习和传统机器学习算法分析了数据,以增加辨别功能的集合,并创建有效模型。我们的结果证明了在NAC治疗开始之前预测复发的能力,单独使用每个模态。然后,我们通过组合MRI和临床数据来展示通过AUC,敏感性和特异性的测量来实现可能的改进。当在熔断数据上进行评估时,在0.95的灵敏度操作点处实现了0.735 AUC和0.438的特异性。这意味着几乎每个遇到复发的患者也将被我们的模型正确归类,从而能够在开始之前重新评估这种治疗。此外,相同的模型能够预先预测未遇到复发的患者的44%。

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