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Deep learning-based features of breast MRI for prediction of occult invasive disease following a diagnosis of ductal carcinoma in situ: preliminary data

机译:乳腺MRI的基于深度学习的特征可预测导管癌的隐匿性浸润性疾病:初步数据

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Approximately 25% of patients with ductal carcinoma in situ (DCIS) diagnosed from core needle biopsy are subsequently upstaged to invasive cancer at surgical excision. Identifying patients with occult invasive disease is important as it changes treatment and precludes enrollment in active surveillance for DCIS. In this study, we investigated upstaging of DCIS to invasive disease using deep features. While deep neural networks require large amounts of training data, the available data to predict DCIS upstaging is sparse and thus directly training a neural network is unlikely to be successful. In this work, a prc-trained neural network is used as a feature extractor and a support, vector machine (SVM) is trained on the extracted features. We used the dynamic contrast-enhanced (DC'E) MRIs of patients at our institution from January 1, 2000, through March 23, 2014 who underwent MRI following a diagnosis of DCIS. Among the 131 DCIS patients, there were 35 patients who were upstaged to invasive cancer. Area under the ROC curve within the 10-fold cross-validation scheme was used for validation of our predictive model. The use of deep features was able to achieve an AUC of 0.68 (95% CI: 0.56-0.78) to predict occult invasive disease. This preliminary work demonstrates the promise of deep features to predict surgical upstaging following a diagnosis of DCIS.
机译:随后,大约25%从核心针头活检诊断出的导管原位癌(DCIS)患者在手术切除后被提升为浸润性癌症。识别隐匿性浸润性疾病的患者很重要,因为它会改变治疗方法,并阻止参加DCIS的积极监测。在这项研究中,我们调查了使用深层特征将DCIS升级为侵入性疾病的过程。虽然深层神经网络需要大量的训练数据,但是用于预测DCIS升级的可用数据很少,因此直接训练神经网络不太可能成功。在这项工作中,将经过prc训练的神经网络用作特征提取器,并根据提取的特征对支持向量机(SVM)进行训练。我们对2000年1月1日至2014年3月23日期间在我院接受DCIS诊断后行MRI检查的患者进行了动态对比度增强(DC'E)MRI检查。在131例DCIS患者中,有35例因浸润性癌症而升级。 10倍交叉验证方案中ROC曲线下的面积用于验证我们的预测模型。使用深层特征能够实现0.68的AUC(95%CI:0.56-0.78)来预测隐匿性浸润性疾病。这项初步工作证明了在诊断为DCIS后可以预测手术升级的深层功能。

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