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首页> 外文期刊>Neuro-Oncology >Automated machine learning based on radiomics features predicts H3 K27M mutation in midline gliomas of the brain
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Automated machine learning based on radiomics features predicts H3 K27M mutation in midline gliomas of the brain

机译:基于辐射族的自动化机器学习特征预测大脑中线胶质瘤中的H3 K27M突变

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摘要

Background. Conventional MRI cannot be used to identify H3 K27M mutation status. This study aimed to investigate the feasibility of predicting H3 K27M mutation status by applying an automated machine learning (autoML) approach to the MR radiomics features of patients with midline gliomas.Methods. This single-institution retrospective study included 100 patients with midline gliomas, including 40 patients with H3 K27M mutations and 60 wild-type patients. Radiomics features were extracted from fluid-attenuated inversion recovery images. Prior to autoML analysis, the dataset was randomly stratified into separate 75% training and 25% testing cohorts. The Tree-based Pipeline Optimization Tool (TPOT) was applied to optimize the machine learning pipeline and select important radiomics features. We compared the performance of 10 independentTPOTgenerated models based on training and testing cohorts using the area under the curve (AUC) and average precision to obtain the final model. An independent cohort of 22 patients was used to validate the best model.Results. Ten prediction models were generated by TPOT, and the accuracy obtained with the best pipeline ranged from 0.788 to 0.867 for the training cohort and from 0.60 to 0.84 for the testing cohort. After comparison, the AUC value and average precision of the final model were 0.903 and 0.911 in the testing cohort, respectively. In the validation set, the AUC was 0.85, and the average precision was 0.855 for the best model.Conclusions. The autoML classifier using radiomics features of conventional MR images provides high discriminatory accuracy in predicting the H3 K27M mutation status of midline glioma.
机译:背景。常规MRI不能用于鉴定H3 K27M突变状态。本研究旨在通过应用自动化机器学习(Automl)方法来预测H3 K27M突变状态来预测H3 K27M突变状态的可行性通过患有中线Gliomas.Methods的患者的adrioMics特征。该单机构回顾性研究包括100名中线胶质瘤患者,其中40例H3 K27M突变患者和60名野生型患者。从流体衰减的反转恢复图像中提取了辐射瘤特征。在自动分析之前,将数据集随机分层分为单独的75%培训和25%的测试队列。应用了基于树的流水线优化工具(TPOT)以优化机器学习管道,并选择重要的辐射源特征。我们将基于训练和测试队列的10个独立的分隔模型的性能进行了比较,使用曲线(AUC)下的区域和平均精度来获得最终模型。使用22名患者的独立队列来验证最佳模型。结果。 TPOT产生了十个预测模型,并且最好的管道获得的精度为培训队列的0.788至0.867,测试队列为0.60至0.84。比较之后,试验队列分别在最终模型的AUC值和平均精度为0.903和0.911。在验证集中,AUC为0.85,最佳模型的平均精度为0.855.Conclusions。使用常规MR图像的射频特征的Automl分类器提供了高鉴别的准确性,可用于预测中线胶质瘤的H3 K27M突变状态。

著录项

  • 来源
    《Neuro-Oncology》 |2020年第3期|393-401|共9页
  • 作者单位

    Sichuan Univ West China Hosp Huaxi MR Res Ctr Dept Radiol Chengdu Peoples R China|Sichuan Univ West China Hosp Huaxi Glioma Ctr Chengdu Peoples R China;

    Sichuan Univ West China Hosp Dept Pathol Chengdu Peoples R China|Sichuan Univ West China Hosp Huaxi Glioma Ctr Chengdu Peoples R China;

    Sichuan Univ West China Hosp Huaxi MR Res Ctr Dept Radiol Chengdu Peoples R China;

    Sichuan Univ West China Hosp Dept Neurosurg Chengdu Peoples R China|Sichuan Univ West China Hosp Huaxi Glioma Ctr Chengdu Peoples R China;

    Sichuan Univ West China Hosp Dept Radiol 37 GuoXue Xiang Chengdu 610041 Sichuan Peoples R China;

    Sichuan Univ West China Hosp Huaxi MR Res Ctr Dept Radiol Chengdu Peoples R China;

    Sichuan Univ West China Hosp Huaxi MR Res Ctr Dept Radiol Chengdu Peoples R China;

    Sichuan Univ West China Hosp Huaxi MR Res Ctr Dept Radiol Chengdu Peoples R China;

    Sichuan Univ West China Hosp Huaxi MR Res Ctr Dept Radiol Chengdu Peoples R China;

    Sichuan Univ West China Hosp Dept Radiol 37 GuoXue Xiang Chengdu 610041 Sichuan Peoples R China|Sichuan Univ West China Hosp Huaxi Glioma Ctr Chengdu Peoples R China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    H3 K27M mutation automated machine learning; autoML; midline glioma; Tree-based Pipeline Optimization Tool; TPOT;

    机译:H3 K27M突变自动化机器学习;自动化;中线胶质瘤;基于树的管道优化工具;TPOT;

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