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Deep learning based risk stratification for treatment management of multiple myeloma with sequential MRI scans

机译:基于深度学习的序列MRI扫描治疗骨髓瘤治疗管理的风险分层

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We are developing a decision support tool for treatment response monitoring of multiple myeloma (MM) disease in spinal MRI scan images. This study investigated the feasibility of using deep learning to stratify the risks for patients who underwent bone marrow transplant (BMT) and assessed its prognostic value in predicting time to progression (TTP) after BMT. We combined a convolutional neural network (CNN) with a recurrent neural network (RNN). referred to as C-RNN model, to classify the low and high risk groups of patients with pre- and post-BMT MRI scans. The CNN was used as the encoder with the pair of pre- and post-BMT MR images as input, and the RNN was used as the decoder to receive time-sequence vectors output from the CNN encoder for classification of patients with high and low risk of progression within a certain time. With 1RB approval. 63 pairs of pre- and post-BMT T1W sagittal view of MRI scans and the time to progression (TTP) within 5 years of follow up for each patient were collected retrospectively from 63 MM patients at our institution. With respect to the TTP censored at 24 months, 41 and 22 patients were separated to the low risk and high risk groups as reference standard. Our C-RNN was trained and validated with 5-fold cross-validation. The results showed that the C-RNN achieved an average test AUC of 0.801±0.037. The Kaplan-Meier analysis showed that the high risk group patients identified by the C-RNN model had significantly shorter TTP than those low risk patients (P<0.05 by log-rank test).
机译:我们正在开发脊髓MRI扫描图像中多发性骨髓瘤(MM)疾病的治疗响应监测的决策支持工具。本研究调查了利用深度学习对接受骨髓移植(BMT)的患者的风险进行分层的可行性,并评估BMT后预测进展时间(TTP)的预后值。我们将卷积神经网络(CNN)与经常性神经网络(RNN)组合。称为C-RNN模型,分类预先和BMT后MRI扫描患者的低风险群体。 CNN用作具有作为输入的一对预先和BMT MR图像的编码器,并且RNN用作解码器以接收从CNN编码器输出的时序向量,以进行高风险和低风险的患者在一定时间内的进展。有1条批准。在我们机构的63毫米患者中,从63毫米患者中收集了63对MRI扫描的63对和BMT后的PMT PERIS和PRIES(TTP)的时间(TTP)。对于24个月被审查的TTP,41例和22例患者与低风险和高风险群体分开,作为参考标准。我们的C-RNN受到培训并验证的5倍交叉验证。结果表明,C-RNN的平均试验AUC为0.801±0.037。 Kaplan-Meier分析表明,C-RNN模型鉴定的高风险群患者的TTP明显较短,而不是那些低风险患者(通过对数级测试的P <0.05)。

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