Early Diagnosis of Autism Disease by Multi-channel CNNs.

Guannan Li, Mingxia Liu, Quansen Sun, Dinggang Shen, Li Wang
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Abstract

Currently there are still no early biomarkers to detect infants with risk of autism spectrum disorder (ASD), which is mainly diagnosed based on behavior observations at three or four years old. Since intervention efforts may miss a critical developmental window after 2 years old, it is significant to identify imaging-based biomarkers for early diagnosis of ASD. Although some methods using magnetic resonance imaging (MRI) for brain disease prediction have been proposed in the last decade, few of them were developed for predicting ASD in early age. Inspired by deep multi-instance learning, in this paper, we propose a patch-level data-expanding strategy for multi-channel convolutional neural networks to automatically identify infants with risk of ASD in early age. Experiments were conducted on the National Database for Autism Research (NDAR), with results showing that our proposed method can significantly improve the performance of early diagnosis of ASD.

Abstract Image

Abstract Image

Abstract Image

多通道细胞神经网络对自闭症的早期诊断。
目前,仍然没有早期的生物标志物来检测患有自闭症谱系障碍(ASD)的婴儿,自闭症谱系疾病主要是根据三四岁时的行为观察来诊断的。由于干预工作可能会错过2岁后的关键发育窗口,因此识别基于成像的生物标志物对ASD的早期诊断具有重要意义。尽管在过去十年中已经提出了一些使用磁共振成像(MRI)预测脑部疾病的方法,但很少有人开发出用于预测早期ASD的方法。受深度多实例学习的启发,在本文中,我们为多通道卷积神经网络提出了一种补丁级数据扩展策略,以自动识别早期有ASD风险的婴儿。在国家自闭症研究数据库(NDAR)上进行了实验,结果表明,我们提出的方法可以显著提高ASD的早期诊断性能。
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