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Application of Convolutional Artificial Neural Networks to Echocardiograms for Differentiating Congenital Heart Diseases in a Pediatric Population

机译:卷积人工神经网络在超声心动图中鉴别小儿先天性心脏病的应用

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In this paper we describe a pilot study, where machine learning methods are used to differentiate between congenital heart diseases. Our approach was to apply convolutional neural networks (CNNs) to echocardiographic images from five different pediatric populations: normal, coarctation of the aorta (CoA), hypoplastic left heart syndrome (HLHS), transposition of the great arteries (TGA), and single ventricle (SV). We used a single network topology that was trained in a pairwise fashion in order to evaluate the potential to differentiate between patient populations. In total we used 59,151 echo frames drawn from 1,666 clinical sequences. Approximately 80% of the data was used for training, and the remainder for validation. Data was split at sequence boundaries to avoid having related images in the training and validation sets. While training was done with echo images/frames, evaluation was performed for both single frame discrimination as well as sequence discrimination (by majority voting). In total 10 networks were generated and evaluated. Unlike other domains where this network topology has been used, in ultrasound there is low visual variation between classes. This work shows the potential for CNNs to be applied to this low-variation domain of medical imaging for disease discrimination.
机译:在本文中,我们描述了一项初步研究,其中使用机器学习方法来区分先天性心脏病。我们的方法是将卷积神经网络(CNN)应用到来自五个不同儿科人群的超声心动图图像:正常,主动脉缩窄(CoA),左心发育不全综合征(HLHS),大动脉移位(TGA)和单心室(SV)。我们使用以成对方式训练的单个网络拓扑,以评估区分患者群体的潜力。我们总共使用了从1,666个临床序列中提取的59,151个回声帧。大约80%的数据用于培训,其余数据用于验证。在序列边界处分割数据,以避免在训练和验证集中出现相关图像。虽然训练是通过回波图像/帧进行的,但同时进行了单帧识别和序列识别(通过多数表决)的评估。总共生成并评估了10个网络。与使用此网络拓扑的其他域不同,在超声中,类之间的视觉变化较小。这项工作表明了将CNN应用于医学成像的低变异域以进行疾病识别的潜力。

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