Asgher Umer, Khan Muhammad Jawad, Asif Nizami Muhammad Hamza, Khalil Khurram, Ahmad Riaz, Ayaz Yasar, Naseer Noman
School of Mechanical and Manufacturing Engineering (SMME), National University of Sciences and Technology (NUST), Islamabad, Pakistan.
Florida State University College of Engineering, Florida A&M University, Tallahassee, FL, United States.
Front Neurorobot. 2021 Mar 18;15:605751. doi: 10.3389/fnbot.2021.605751. eCollection 2021.
Mental workload is a neuroergonomic human factor, which is widely used in planning a system's safety and areas like brain-machine interface (BMI), neurofeedback, and assistive technologies. Robotic prosthetics methodologies are employed for assisting hemiplegic patients in performing routine activities. Assistive technologies' design and operation are required to have an easy interface with the brain with fewer protocols, in an attempt to optimize mobility and autonomy. The possible answer to these design questions may lie in neuroergonomics coupled with BMI systems. In this study, two human factors are addressed: designing a lightweight wearable robotic exoskeleton hand that is used to assist the potential stroke patients with an integrated portable brain interface using mental workload (MWL) signals acquired with portable functional near-infrared spectroscopy (fNIRS) system. The system may generate command signals for operating a wearable robotic exoskeleton hand using two-state MWL signals. The fNIRS system is used to record optical signals in the form of change in concentration of oxy and deoxygenated hemoglobin (HbO and HbR) from the pre-frontal cortex (PFC) region of the brain. Fifteen participants participated in this study and were given hand-grasping tasks. Two-state MWL signals acquired from the PFC region of the participant's brain are segregated using machine learning classifier-support vector machines (SVM) to utilize in operating a robotic exoskeleton hand. The maximum classification accuracy is 91.31%, using a combination of mean-slope features with an average information transfer rate (ITR) of 1.43. These results show the feasibility of a two-state MWL (fNIRS-based) robotic exoskeleton hand (BMI system) for hemiplegic patients assisting in the physical grasping tasks.
心理负荷是一种神经工效学的人为因素,广泛应用于系统安全规划以及脑机接口(BMI)、神经反馈和辅助技术等领域。机器人假肢方法被用于协助偏瘫患者进行日常活动。辅助技术的设计和操作需要与大脑建立简单的接口,减少协议,以优化移动性和自主性。这些设计问题的可能答案或许在于将神经工效学与BMI系统相结合。在本研究中,探讨了两个人为因素:设计一种轻便的可穿戴机器人外骨骼手,用于借助通过便携式功能近红外光谱(fNIRS)系统获取的心理负荷(MWL)信号,为潜在的中风患者提供集成便携式脑接口辅助。该系统可使用双态MWL信号生成用于操作可穿戴机器人外骨骼手的命令信号。fNIRS系统用于记录大脑前额叶皮层(PFC)区域氧合血红蛋白和脱氧血红蛋白(HbO和HbR)浓度变化形式的光信号。15名参与者参与了本研究,并被给予手部抓握任务。利用机器学习分类器——支持向量机(SVM)对从参与者大脑PFC区域获取的双态MWL信号进行分类,以用于操作机器人外骨骼手。最大分类准确率为91.31%,使用平均斜率特征组合,平均信息传输率(ITR)为1.43。这些结果表明,基于双态MWL(fNIRS)的机器人外骨骼手(BMI系统)用于协助偏瘫患者进行物理抓握任务具有可行性。