首页> 美国卫生研究院文献>Frontiers in Neurology >Machine Learning Assisted MRI Characterization for Diagnosis of Neonatal Acute Bilirubin Encephalopathy
【2h】

Machine Learning Assisted MRI Characterization for Diagnosis of Neonatal Acute Bilirubin Encephalopathy

机译:机器学习辅助MRI表征对新生儿急性胆红素脑病的诊断

代理获取
本网站仅为用户提供外文OA文献查询和代理获取服务,本网站没有原文。下单后我们将采用程序或人工为您竭诚获取高质量的原文,但由于OA文献来源多样且变更频繁,仍可能出现获取不到、文献不完整或与标题不符等情况,如果获取不到我们将提供退款服务。请知悉。
获取外文期刊封面目录资料

摘要

>Background: The use of magnetic resonance imaging (MRI) in diagnosis of neonatal acute bilirubin encephalopathy (ABE) in newborns has been limited by its difficulty in differentiating confounding image contrast changes associated with normal myelination. This study aims to demonstrate the feasibility of building a machine learning prediction model based on radiomics features derived from MRI to better characterize and distinguish ABE from normal myelination.>Methods: In this retrospective study, we included 32 neonates with clinically confirmed ABE and 29 age-matched controls with normal myelination. Radiomics features were extracted from the manually segmented region of interest (ROI) on T1-weighted spin echo images, followed by the feature selection using two-sample independent t-test, least absolute shrinkage and selection operator (Lasso) regression, and Pearson's correlation matrix. Additional feature quantifying the relative mean intensity of ROI was defined and calculated. A prediction model based on the selected features was built to classify ABE and normal myelination using multiple machine learning classifiers and a leave-one-out cross-validation scheme. Receiver operating characteristics (ROC) analysis was used to evaluate the prediction performance with the area under the curve (AUC) and feature importance ranked based on the Fisher score.>Results: Among 1319 radiomics features, one radiologist-defined intensity-based feature and 12 texture features were selected as the most discriminative features. Based on these features, decision trees had the best classification performance with the largest AUC of 0.946, followed by support vector machine (SVM), tree-bagger, logistic regression, Naïve Bayes, discriminant analysis, and k-nearest neighborhood (KNN), which have an AUC of 0.931, 0.925, 0.905, 0.891, 0.883, and 0.817, respectively. The relative mean intensity outperformed other 12 texture features in differentiating ABE from controls.>Conclusions: The results from this study demonstrated a new strategy of characterizing ABE-induced intensity and morphological changes in MRI, which are difficult to be recognized, interpreted, or quantified by the routine experience and visual-based reading strategy. With more quantitative and objective measurements, the reported machine learning assisted radiomics features-based approach can improve the diagnosis and support clinical decision-making.
机译:>背景:磁共振成像(MRI)在新生儿新生儿急性胆红素脑病(ABE)诊断中的应用受到局限,因为它难以区分与正常髓鞘形成有关的混杂图像对比度变化。这项研究旨在证明基于MRI放射学特征建立机器学习预测模型以更好地表征和区分ABE与正常髓鞘形成的可行性。>方法:在这项回顾性研究中,我们纳入了32例新生儿临床确认的ABE和29名年龄匹配的对照,髓鞘正常。从T1加权自旋回波图像上的手动分割的感兴趣区域(ROI)中提取Radiomics特征,然后使用独立于两个样本的t检验,最小绝对收缩和选择算子(Lasso)回归以及Pearson相关性进行特征选择矩阵。定义和计算量化ROI相对平均强度的其他功能。建立了基于所选特征的预测模型,以使用多个机器学习分类器和留一法交叉验证方案对ABE和正常髓鞘形成进行分类。接收者工作特征(ROC)分析用于评估曲线下面积(AUC)的预测性能,并根据Fisher分数对特征重要性进行排名。>结果:在1319个放射学特征中,一名放射科医生-定义了基于强度的特征,并选择了12个纹理特征作为最有区别的特征。基于这些特征,决策树的分类性能最佳,最大AUC为0.946,其次是支持向量机(SVM),树粗体,逻辑回归,朴素贝叶斯,判别分析和k最近邻(KNN),其AUC分别为0.931、0.925、0.905、0.891、0.883和0.817。相对平均强度在将ABE与对照区分开来方面优于其他12个纹理特征。>结论:研究结果表明,表征ABE引起的MRI强度和形态学变化的新策略很难做到。通过常规经验和基于视觉的阅读策略来识别,解释或量化。通过更多的定量和客观测量,已报道的基于机器学习的辅助放射学特征方法可以改善诊断并支持临床决策。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
代理获取

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