Influence of Input Image Configurations on Output of a Convolutional Neural Network to Detect Cerebral Aneurysms

Kazuhiro Watanabe, H. Anzai, Norman Juchler, S. Hirsch, P. Bijlenga, M. Ohta
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Abstract

Rupture of cerebral aneurysms is the main cause of subarachnoid hemorrhage, which can have devastating effects on quality of life. The identification and assessment of unruptured aneurysms from medical images is therefore of significant clinical relevance. In recent years, the availability of clinical imaging data has rapidly increased, which calls for computer assisted detection (CAD) systems. Previous studies have shown that CAD systems based on convolutional neural networks (CNN) can help to detect cerebral aneurysms from magnetic resonance angiographies (MRAs). However, these CAD systems require large datasets of annotated medical images. Thus, more efficient tools for processing and categorizing medical imaging data are required. Previous studies of CNN-based classification for medical images used various patch configurations of input data. These studies showed that classification accuracy was affected by the patch size or image representation. Thus, we hypothesize that the accuracy of CADs to detect cerebral aneurysms can be improved by adjusting the configuration of the input patches. In the present study, we performed CNN-based medical imaging classification for varying input data configurations to examine the relationship between classification accuracy and data configuration.
输入图像配置对卷积神经网络脑动脉瘤检测输出的影响
脑动脉瘤破裂是导致蛛网膜下腔出血的主要原因,它会对生活质量造成毁灭性的影响。因此,从医学图像中识别和评估未破裂动脉瘤具有重要的临床意义。近年来,临床影像数据的可用性迅速增加,这就需要计算机辅助检测(CAD)系统。先前的研究表明,基于卷积神经网络(CNN)的CAD系统可以帮助从磁共振血管造影(MRAs)中检测脑动脉瘤。然而,这些CAD系统需要大量带注释的医学图像数据集。因此,需要更有效的工具来处理和分类医学成像数据。以往基于cnn的医学图像分类研究使用了输入数据的各种补丁配置。这些研究表明,分类精度受到补丁大小或图像表示的影响。因此,我们假设可以通过调整输入贴片的配置来提高cad检测脑动脉瘤的准确性。在本研究中,我们对不同的输入数据配置进行了基于cnn的医学图像分类,以检验分类准确率与数据配置之间的关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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