...
首页> 外文期刊>NeuroImage >Deep neural network predicts emotional responses of the human brain from functional magnetic resonance imaging
【24h】

Deep neural network predicts emotional responses of the human brain from functional magnetic resonance imaging

机译:深神经网络从功能磁共振成像预测人脑的情绪反应

获取原文
获取原文并翻译 | 示例
   

获取外文期刊封面封底 >>

       

摘要

An artificial neural network with multiple hidden layers (known as a deep neural network, or DNN) was employed as a predictive model (DNNp) for the first time to predict emotional responses using whole-brain functional magnetic resonance imaging (fMRI) data from individual subjects. During fMRI data acquisition, 10 healthy participants listened to 80 International Affective Digital Sound stimuli and rated their own emotions generated by each sound stimulus in terms of the arousal, dominance, and valence dimensions. The whole-brain spatial patterns from a general linear model (i.e., beta-valued maps) for each sound stimulus and the emotional response ratings were used as the input and output for the DNNp, respectively. Based on a nested five-fold cross-validation scheme, the paired input and output data were divided into training (three-fold), validation (one-fold), and test (one-fold) data. The DNNp was trained and optimized using the training and validation data and was tested using the test data. The Pearson's correlation coefficients between the rated and predicted emotional responses from our DNNp model with weight sparsity optimization (mean +/- standard error 0.52 +/- 0.02 for arousal, 0.51 +/- 0.03 for dominance, and 0.51 +/- 0.03 for valence, with an input denoising level of 0.3 and a mini-batch size of 1) were significantly greater than those of DNN models with conventional regularization schemes including elastic net regularization (0.15 +/- 0.05, 0.15 +/- 0.06, and 0.21 +/- 0.04 for arousal, dominance, and valence, respectively), those of shallow models including logistic regression (0.11 +/- 0.04, 0.10 +/- 0.05, and 0.17 +/- 0.04 for arousal, dominance, and valence, respectively; average of logistic regression and sparse logistic regression), and those of support vector machine-based predictive models (SVM(p)s; 0.12 +/- 0.06, 0.06 +/- 0.06, and 0.10 +/- 0.06 for arousal, dominance, and valence, respectively; average of linear and non-linear SVM(p)s). This difference was confirmed to be significant with a Bonferroni-corrected p-value of less than 0.001 from a one-way analysis of variance (ANOVA) and subsequent paired t-test. The weights of the trained DNN(P)s were interpreted and input patterns that maximized or minimized the output of the DNN(P)s (i.e., the emotional responses) were estimated. Based on a binary classification of each emotion category (e.g., high arousal vs. low arousal), the error rates for the DNNP (31.2% +/- 1.3% for arousal, 29.0% +/- 1.7% for dominance, and 28.6% +/- 3.0% for valence) were significantly lower than those for the linear SVMP (44.7% +/- 2.0%, 50.7% +/- 1.7%, and 47.4% +/- 1.9% for arousal, dominance, and valence, respectively) and the non-linear SVMP (48.8% +/- 2.3%, 52.2% +/- 1.9%, and 46.4% +/- 1.3% for arousal, dominance, and valence, respectively), as confirmed by the Bonferroni-corrected p < 0.001 from the one-way ANOVA. Our study demonstrates that the DNNp model is able to reveal neuronal circuitry associated with human emotional processing - including structures in the limbic and paralimbic areas, which include the amygdala, prefrontal areas, anterior cingulate cortex, insula, and caudate. Our DNNp model was also able to use activation patterns in these structures to predict and classify emotional responses to stimuli.
机译:具有多个隐藏层的人工神经网络(被称为深神经网络,或DNN)作为首次使用来自个体的全脑功能性磁共振成像(fMRI)数据来预测的情绪反应的预测模型(DNNp)主题。在FMRI数据采集期间,10名健康参与者听取了80个国际情感性数字声音刺激,并根据唤醒,占优势和价维的各种声音刺激产生了自己的情绪。每个声音刺激的一般线性模型(即,Beta值图)的全脑空间模式分别用作DNNP的输入和输出。基于嵌套的五倍交叉验证方案,配对输入和输出数据被分为训练(三倍),验证(一折)和测试(一折)数据。使用培训和验证数据进行培训并优化DNNP,并使用测试数据进行测试。 Pearson与重量稀疏优化的额定和预测情绪响应之间的相关系数(平均+/-标准误差0.052 +/- 0.02,用于占优势的0.51 +/- 0.03,价值0.51 +/- 0.03 ,输入去噪度为0.3和迷你批量大小,1)显着大于具有传统正则化方案的DNN模型,包括弹性净正规化(0.15 +/- 0.05,0.15 +/- 0.06和0.21 + / - 分别为0.04令人震撼,优势和价,浅模型,包括物流回归(0.11 +/- 0.04,0.10 +/- 0.05,0.17 +/- 0.04,分别用于唤醒,优势和价值;平均逻辑回归和稀疏逻辑回归),和那些支持向量基于机器的预测模型(SVM(p)的的S; 0.12 +/- 0.06,0.06 +/- 0.06和0.10 +/- 0.06觉醒,优势,和价值;平均线性和非线性SVM(P)S)。从方差(ANOVA)的单向分析和随后的配对T检验,确认这种差异是具有小于0.001的Bonferroni校正的p值。训练的DNN(P)S的重量被解释并估计了输入模式,最大化或最小化了DNN(即,情绪反应)的输出。基于每个情绪类别的二进制分类(例如,高唤醒与低唤醒),DNNP的误差率(唤醒31.2%+/- 1.3%,占优势的29.0%+/- 1.7%,28.6%为+/- 3.0价%)被显著比用于线性SVMP降低(44.7%±2.0%,50.7%±1.7%,而对于觉醒,优势,和价47.4%±1.9%,分别为“非线性SVMP(48.8%+/- 2.3%,分别为令人震惊,占优势和价值的46.4%+/- 1.9%),由Bonferroni确认从单向ANOVA校正P <0.001。我们的研究表明,DNNP模型能够揭示与人情绪加工相关的神经元电路 - 包括肢体和普拉维蓟区域的结构,包括杏仁达拉,前额外区域,前铰接皮质,insula和尾部。我们的DNNP模型还能够在这些结构中使用激活模式来预测和分类对刺激的情绪反应。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号