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基于不同孕周MRI图像的胎儿脑异常分类

Fetal Brain Abnormality Classification from MRI Images of Different Gestational Age.

作者信息

Attallah Omneya, Sharkas Maha A, Gadelkarim Heba

机构信息

Department of Electronics and Communications, College of Engineering and Technology, Arab Academy for Science and Technology and Maritime Transport, Alexandria, P.O. Box 1029, Egypt.

Department of Computer and Communication Engineering (SSP), Faculty of Engineering, Alexandria University, Alexandria 21526, Egypt.

出版信息

Brain Sci. 2019 Sep 12;9(9):231. doi: 10.3390/brainsci9090231.

Abstract

Magnetic resonance imaging (MRI) is a common imaging technique used extensively to study human brain activities. Recently, it has been used for scanning the fetal brain. Amongst 1000 pregnant women, 3 of them have fetuses with brain abnormality. Hence, the primary detection and classification are important. Machine learning techniques have a large potential in aiding the early detection of these abnormalities, which correspondingly could enhance the diagnosis process and follow up plans. Most research focused on the classification of abnormal brains in a primary age has been for newborns and premature infants, with fewer studies focusing on images for fetuses. These studies associated fetal scans to scans after birth for the detection and classification of brain defects early in the neonatal age. This type of brain abnormality is named small for gestational age (SGA). This article proposes a novel framework for the classification of fetal brains at an early age (before the fetus is born). As far as we could know, this is the first study to classify brain abnormalities of fetuses of widespread gestational ages (GAs). The study incorporates several machine learning classifiers, such as diagonal quadratic discriminates analysis (DQDA), K-nearest neighbour (K-NN), random forest, naïve Bayes, and radial basis function (RBF) neural network classifiers. Moreover, several bagging and Adaboosting ensembles models have been constructed using random forest, naïve Bayes, and RBF network classifiers. The performances of these ensembles have been compared with their individual models. Our results show that our novel approach can successfully identify and classify numerous types of defects within MRI images of the fetal brain of various GAs. Using the KNN classifier, we were able to achieve the highest classification accuracy and area under receiving operating characteristics of 95.6% and 99% respectively. In addition, ensemble classifiers improved the results of their respective individual models.

摘要

磁共振成像(MRI)是一种广泛用于研究人类大脑活动的常见成像技术。最近,它已被用于扫描胎儿大脑。在1000名孕妇中,有3人的胎儿存在脑异常。因此,早期检测和分类很重要。机器学习技术在辅助这些异常的早期检测方面具有很大潜力,这相应地可以加强诊断过程和后续计划。大多数关于主要年龄段异常大脑分类的研究针对的是新生儿和早产儿,较少有研究关注胎儿图像。这些研究将胎儿扫描与出生后的扫描关联起来,以在新生儿期早期检测和分类脑缺陷。这种类型的脑异常被称为小于胎龄(SGA)。本文提出了一种用于早期(胎儿出生前)胎儿大脑分类的新框架。据我们所知,这是第一项对广泛孕周(GA)的胎儿脑异常进行分类的研究。该研究纳入了几种机器学习分类器,如对角二次判别分析(DQDA)、K近邻(K-NN)、随机森林、朴素贝叶斯和径向基函数(RBF)神经网络分类器。此外,还使用随机森林、朴素贝叶斯和RBF网络分类器构建了几种装袋和Adaboosting集成模型。已将这些集成模型的性能与其单个模型进行了比较。我们的结果表明,我们的新方法能够成功识别和分类不同孕周胎儿大脑MRI图像中的多种类型缺陷。使用KNN分类器,我们分别能够达到95.

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