...
首页> 外文期刊>AJNR. American journal of neuroradiology >Deep Transfer Learning and Radiomics Feature Prediction of Survival of Patients with High-Grade Gliomas
【24h】

Deep Transfer Learning and Radiomics Feature Prediction of Survival of Patients with High-Grade Gliomas

机译:深度转移学习与辐射瘤特征预测高档胶质瘤患者存活

获取原文
获取原文并翻译 | 示例
           

摘要

BACKGROUND AND PURPOSE: Patient survival in high-grade glioma remains poor, despite the recent developments in cancer treatment. As new chemo-, targeted molecular, and immune therapies emerge and show promising results in clinical trials, image-based methods for early prediction of treatment response are needed. Deep learning models that incorporate radiomics features promise to extract information from brain MR imaging that correlates with response and prognosis. We report initial production of a combined deep learning and radiomics model to predict overall survival in a clinically heterogeneous cohort of patients with high-grade gliomas. MATERIALS AND METHODS: Fifty patients with high-grade gliomas from our hospital and 128 patients with high-grade glioma from The Cancer Genome Atlas were included. For each patient, we calculated 348 hand-crafted radiomics features and 8192 deep features generated by a pretrained convolutional neural network. We then applied feature selection and Elastic Net-Cox modeling to differentiate patients into long- and short-term survivors. RESULTS: In the 50 patients with high-grade gliomas from our institution, the combined feature analysis framework classified the patients into long- and short-term survivor groups with a log-rank test P value < .001. In the 128 patients from The Cancer Genome Atlas, the framework classified patients into long- and short-term survivors with a log-rank test P value of .014. For the mixed cohort of 50 patients from our institution and 58 patients from The Cancer Genome Atlas, it yielded a log-rank test P value of .035. CONCLUSIONS: A deep learning model combining deep and radiomics features can dichotomize patients with high-grade gliomas into long- and short-term survivors.
机译:背景和目的:尽管近期癌症治疗的发展,高档胶质瘤的患者存活仍然差。作为新的化学,靶向分子和免疫疗法出现并表现出有希望的临床试验,需要用于早期预测治疗响应的基于图像的方法。融合辐射族人的深度学习模型承诺从脑MR成像中提取与响应和预后相关的信息。我们举报了初始生产组合的深度学习和辐射源模型,以预测临床上的高级胶质瘤患者的整体生存。材料和方法:包括来自我们医院高级胶质瘤的五十名患者,包括来自癌症基因组地图集的128名高级胶质瘤患者。对于每位患者,我们计算了348个手工制作的射频特征和由佩戴卷积神经网络产生的8192个深度。然后,我们应用特征选择和弹性网Cox建模,以区分患者进入长期和短期幸存者。结果:在来自我们机构的50名高级胶质瘤患者中,合并的特征分析框架将患者分为长期幸存者组,具有日志级测试P值<.001。在来自癌症基因组地图集的128名患者中,框架将患者分为长期和短期幸存者,具有对数级测试P值的.014。对于来自我们机构的50名患者的混合队列和58名来自癌症基因组Atlas的患者,它产生了对数级测试P值的.035。结论:深层和辐射瘤的深度学习模型可以将高档胶质瘤的患者分为长期和短期幸存者。

著录项

  • 来源
  • 作者单位

    Brigham &

    Womens Hosp Dept Radiol 75 Francis St Boston MA 02115 USA;

    Dana Farber Canc Inst Dept Imaging Boston MA 02115 USA;

    Brigham &

    Womens Hosp Dept Radiol 75 Francis St Boston MA 02115 USA;

    Brigham &

    Womens Hosp Dept Radiol 75 Francis St Boston MA 02115 USA;

    Harvard Med Sch Boston MA 02115 USA;

    Brigham &

    Womens Hosp Dept Radiol 75 Francis St Boston MA 02115 USA;

    Brigham &

    Womens Hosp Dept Radiol 75 Francis St Boston MA 02115 USA;

    Brigham &

    Womens Hosp Dept Radiol 75 Francis St Boston MA 02115 USA;

    Brigham &

    Womens Hosp Dept Radiol 75 Francis St Boston MA 02115 USA;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 放射医学;
  • 关键词

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号