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Identification of suspicious invasive placentation based on clinical MRI data using textural features and automated machine learning

机译:基于临床MRI数据使用纹理特征和自动化机器学习识别可疑侵入性置入

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摘要

Objective The aim of this study was to investigate whether intraplacental texture features from routine placental MRI can objectively and accurately predict invasive placentation. Material and methods This retrospective study includes 99 pregnant women with pathologically confirmed placental invasion and 56 pregnant women with simple placenta previa. All participants underwent magnetic resonance imaging after 24 gestational weeks. The placenta was segmented in sagittal images from both turbo spin echo (TSE) and balanced turbo field echo (bTFE) sequences. Textural features were extracted from the both original and Laplacian of Gaussian (LoG)-filtered MRI images. An automated machine learning algorithm was applied to the extracted feature sets to obtain the optimal preprocessing steps, classification algorithm, and corresponding hyper-parameters. Results A gradient boosting classifier using all textual features from original and LoG-filtered TSE images and bTFE images identified by the automated machine learning algorithm achieved the optimal performance with sensitivity, specificity, accuracy, and area under ROC curve (AUC) of 100%, 88.5%, 95.2%, and 0.98 in the prediction of placental invasion. In addition, textural features that contributed to the prediction of placental invasion differ from the features significantly affected by normal placenta maturation. Conclusions Quantifying intraplacental heterogeneity using LoG filtration and texture analysis highlights the different heterogeneous appearance caused by abnormal placentation relative to normal maturation. The predictive model derived from automated machine learning yielded good performance, indicating the proposed radiomic analysis pipeline can accurately predict placental invasion and facilitate clinical decision-making for pregnant women with suspicious placental invasion.
机译:目的本研究的目的是调查常规胎盘MRI的常规纹理特征是否可以客观准确地预测侵入性映射。材料和方法这项回顾性研究包括99名孕妇,具有病理证实的胎盘入侵和56名孕妇,具有简单的胎盘。所有参与者在24个妊娠周后接受磁共振成像。胎盘在来自涡轮增压回波(TSE)和平衡的涡轮场回声(BTFE)序列中的矢状图像中分段。从高斯(日志)的原始和拉普拉斯(Logsian) - 过滤的MRI图像中提取了纹理特征。将自动化机器学习算法应用于提取的特征集,以获得最佳预处理步骤,分类算法和相应的超参数。结果使用自动化机器学习算法识别的原始和日志过滤的TSE图像和BTFE图像的梯度升压分类器和通过自动化机器学习算法识别的BTFE图像,具有100%的ROC曲线(AUC)下的灵敏度,特异性,准确性和面积的最佳性能,预测胎盘入侵的88.5%,95.2%和0.98。此外,导致胎盘入侵预测的纹理特征与正常胎盘成熟的特征不同。结论使用日志过滤量化植物性异质性和纹理分析突出了相对于正常成熟引起的不同异质外观。来自自动化机器学习的预测模型产生了良好的性能,表明所提出的射出分析管道可以准确地预测胎盘入侵,促进孕妇具有可疑胎盘入侵的临床决策。

著录项

  • 来源
    《European radiology 》 |2019年第11期| 共11页
  • 作者单位

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

    Sichuan Univ West China Hosp 2 Dept Radiol Chengdu Sichuan Peoples R China;

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

    Sichuan Univ Minist Educ Key Lab Birth Defects &

    Related Dis Women &

    Child Chengdu Sichuan;

    Sichuan Univ West China Hosp 2 Dept Radiol Chengdu Sichuan Peoples R China;

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

    Sichuan Univ Minist Educ Key Lab Birth Defects &

    Related Dis Women &

    Child Chengdu Sichuan;

    Sichuan Univ Minist Educ Key Lab Birth Defects &

    Related Dis Women &

    Child Chengdu Sichuan;

    Sichuan Univ Minist Educ Key Lab Birth Defects &

    Related Dis Women &

    Child Chengdu Sichuan;

  • 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

    Magnetic resonance imaging; Placenta accreta; Radiomics; Computer-assisted image analysis; Machine learning;

    机译:磁共振成像;胎盘accReta;射频;计算机辅助图像分析;机器学习;

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