Localization of the Epileptic Focus using Multi-scale Deep Learning

Rui Zhang, Yongjin Tang, Rui Yan, T. Cai, Hao Xu
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Abstract

PET imaging is considered as one of safest and most significant methods for localizing the epileptic focus in the field of brain neuroscience. With the advent of the era of Artificial Intelligence, it becomes one of hot research topic that neurologist and radiologist are assisted to locate the epileptic focus by using Computer-aided Diagnosis method. In this study, we propose a novel method for localization of epileptic focus in PET imaging using Multi-scale Deep Learning method. Firstly, three different Mask Region-based Convolutional Neural Network models were used to extract the candidate of epileptic focus. The three models were produced by transferring learning towards Mask R-CNN utilizing training images that made up of PET scanning from three different scales. Each training image set contained 375 brain PET axial slices of epilepsy. Then three Deep Learning models were combined using the ensemble learning to reduce false positive results and to localize the epileptic focus. 48 PET axial slices were utilized as test set for this research. The sensitivity and specificity of this new method were 0.80 and 0.8125 respectively. The experimental results show the effectiveness of this method in locating epileptic focus.
基于多尺度深度学习的癫痫病灶定位
PET成像被认为是脑神经科学领域最安全、最重要的癫痫病灶定位方法之一。随着人工智能时代的到来,利用计算机辅助诊断方法辅助神经科医生和放射科医生定位癫痫病灶已成为研究热点之一。在本研究中,我们提出了一种基于多尺度深度学习的PET成像癫痫病灶定位新方法。首先,利用三种不同的基于掩模区域的卷积神经网络模型提取癫痫病灶候选点;这三个模型是通过使用由三个不同尺度的PET扫描组成的训练图像将学习转移到Mask R-CNN而产生的。每个训练图像集包含375个癫痫脑PET轴向切片。然后使用集成学习将三个深度学习模型结合起来,以减少假阳性结果并定位癫痫病灶。本研究采用48片PET轴向切片作为试验集。新方法的灵敏度为0.80,特异度为0.8125。实验结果表明了该方法在癫痫病灶定位中的有效性。
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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