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Integrating Deep Transfer Learning and Radiomics Features in Glioblastoma Multiforme Patient Survival Prediction

机译:整合深层转移学习和放射学特征于胶质母细胞瘤患者的生存预测

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Glioblastoma multiforme (GBM) is the largest and most genetically and phenotypically heterogeneous category of primary brain tumors. Numerous novel chemical, targeted molecular and immune-active therapies in trial produce promising responses in a small disparate subset of patients but which patient will respond to which therapy remains unpredictable. Reliable imaging biomarkers for prediction and early detection of treatment response and survival are critical needs in neuro-oncology. In this study, brain tumor MRI 'deep features' extracted via transfer learning techniques were combined with features derived from an explicitly designed radiomics model to search for MRI markers predictive of overall survival (OS) in GBM patients. Two pre-trained convolutional neural network (CNN) models were utilized as the deep learning models and the elastic net-Cox model was performed to distinguish GBM patients into two survival groups. Two patient cohorts were included in this study. One was 50 GBM patients from our hospital and the other was 128 GBM patients from the Cancer Genome Atlas (TCGA) and the Cancer Image Archive (TCIA). The combined feature framework was predictive of OS in both data set with log-rank test p-value < 0.05 and may merit further study for reproducible prediction of treatment response.
机译:多形胶质母细胞瘤(GBM)是原发性脑肿瘤中最大,遗传和表型最均一的类别。在试验中,许多新颖的化学,靶向分子和免疫活性疗法在一小部分不同的患者中产生了有希望的反应,但哪位患者会对哪种疗法仍然无法预测。可靠的成像生物标记物可用于预测和及早发现治疗反应和生存,是神经肿瘤学的关键需求。在这项研究中,通过转移学习技术提取的脑肿瘤MRI“深层特征”与从明确设计的放射学模型中衍生的特征相结合,以寻找可预测GBM患者总体生存(OS)的MRI标记。将两个预训练的卷积神经网络(CNN)模型用作深度学习模型,并进行了弹性net-Cox模型以将GBM患者分为两个生存组。该研究包括两个患者队列。一名是来自我们医院的50 GBM患者,另一名是来自癌症基因组图谱(TCGA)和癌症影像档案库(TCIA)的128 GBM患者。组合特征框架可预测两个数据集中的OS,对数秩检验p值<0.05,可能值得进一步研究,以重现治疗反应的预测。

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