Medical diagnostic robot systems have been paid more and more attention due to its objectivity and accuracy. The diagnosis of mild cognitive impairment (MCI) is considered an effective means to prevent Alzheimer's disease (AD). Doctors diagnose MCI based on various clinical examinations, which are expensive and the diagnosis results rely on the knowledge of doctors. Therefore, it is necessary to develop a robot diagnostic system to eliminate the influence of human factors and obtain a higher accuracy rate. In this paper, we propose a novel Group Feature Domain Adversarial Neural Network (GF-DANN) for amnestic MCI (aMCI) diagnosis, which involves two important modules. A Group Feature Extraction (GFE) module is proposed to reduce individual differences by learning group-level features through adversarial learning. A Dual Branch Domain Adaptation (DBDA) module is carefully designed to reduce the distribution difference between the source and target domain in a domain adaption way. On three types of data set, GF-DANN achieves the best accuracy compared with classic machine learning and deep learning methods. On the DMS data set, GF-DANN has obtained an accuracy rate of 89.47%, and the sensitivity and specificity are 90% and 89%. In addition, by comparing three EEG data collection paradigms, our results demonstrate that the DMS paradigm has the potential to build an aMCI diagnose robot system.
翻译:由于医学诊断机器人系统的客观性和准确性,对轻度认知障碍的诊断被视为预防阿尔茨海默氏病的有效手段。医生根据各种临床检查诊断MCI,这些检查费用昂贵,诊断结果依赖医生的知识。因此,有必要开发一个机器人诊断系统,以消除人类因素的影响,提高准确率。在本文中,我们提议建立一个新型的Group Fater-Domain Aversarial Neal网络(GF-DANN),用于对轻度认知障碍(a MCI)的诊断,这涉及两个重要模块。一个GF-DAN(GE)模块,建议通过对抗性学习群体特征来减少个人差异。一个双向部门DODA(DA)模块,经过仔细设计,以降低源和目标领域在适应率方面的分布差异。在三类数据集中,GF-DAN(G-DANN)与经典机器学习和深层次学习方法相比,达到了最佳准确度。在DMS数据集集中,GFD-DN(G-DEN)获得了通过对抗性研究的精确率率率率和精确度(EG-8947%)的数据收集。