Current models on Explainable Artificial Intelligence (XAI) have shown an evident and quantified lack of reliability for measuring feature-relevance when statistically entangled features are proposed for training deep classifiers. There has been an increase in the application of Deep Learning in clinical trials to predict early diagnosis of neuro-developmental disorders, such as Autism Spectrum Disorder (ASD). However, the inclusion of more reliable saliency-maps to obtain more trustworthy and interpretable metrics using neural activity features is still insufficiently mature for practical applications in diagnostics or clinical trials. Moreover, in ASD research the inclusion of deep classifiers that use neural measures to predict viewed facial emotions is relatively unexplored. Therefore, in this study we propose the evaluation of a Convolutional Neural Network (CNN) for electroencephalography (EEG)-based facial emotion recognition decoding complemented with a novel RemOve-And-Retrain (ROAR) methodology to recover highly relevant features used in the classifier. Specifically, we compare well-known relevance maps such as Layer-Wise Relevance Propagation (LRP), PatternNet, Pattern Attribution, and Smooth-Grad Squared. This study is the first to consolidate a more transparent feature-relevance calculation for a successful EEG-based facial emotion recognition using a within-subject-trained CNN in typically-developed and ASD individuals.
翻译:有关解释人工智能(XAI)的现有模型显示,当提出用于培训深层分类人员的统计纠缠特征时,测量特征相关性的可靠性明显和量化缺乏可靠性; 临床试验中应用深学习预测早期诊断神经发育紊乱的临床试验,如自闭症谱谱障碍(ASD)的临床试验中应用的深度学习有所增加; 然而,在诊断或临床试验中实际应用以神经活动特征获得更可靠、更可信和可解释的度量测图方面,仍然不够成熟; 此外,在ASD研究中,纳入使用神经测量措施预测面部情绪的深层分类器比较不乏; 因此,在本研究中,我们提议对以电脑镜学(EEEG)为基础的神经突变神经网络进行早期诊断分解评估,辅之以新的REMOve- And-Retrain(ROAR)方法,以恢复在诊断或临床试验中使用的高度相关特征。