Vianney John-Mary, Swaminathan Shailender, Newson Jennifer Jane, Parameshwaran Dhanya, Puthanmadam Subramaniyam Narayan, Roy Swaeta Singha, Machunda Revocatus, Sapuli Achiwa, Pramanik Santanu, Arun Kumar John Victor, Tiwari Pramod, Mathews Mathuram G Nelson, Bembeleza Laurent Boniface, Laiser Joyce Philemon, Luhwago Winifrida Julius, Maduka Theresia Pastory, Mollel John Olais, Mollel Neema Gadiely, Mugizi Adella Aloys, Mwamakula Isaac Lwaga, Rweyemamu Raymond Edwin, Samweli Upendo Firimini, Simpito James Isaac, Shirima Kelvin Ewald, Anbalagan Anand, Arumugam Suresh Kumar, Dhanapal Vinitha, Gunasekaran Kanimozhi, Kashyap Neelu, Kumar Dheeraj, Pandey Durgesh, Pandey Poonam, Panneerselvam ArunKumar, Rai Sonam, Rajendran Porselvi, Sekar Santhoshkumar, Sivalingam Oliazhagan, Soni Prahalad, Soni Pushpkala, Thiagarajan Tara C
Centre for Human Brain and Mind (CEREBRAM), Nelson Mandela African Institute of Science and Technology (NMAIST), Arusha, Tanzania.
Nelson Mandela African Institute of Science and Technology (NMAIST), Arusha, Tanzania.
eNeuro. 2025 Jul 25;12(7). doi: 10.1523/ENEURO.0006-25.2025. Print 2025 Jul.
There is a growing imperative to understand the neurophysiological impact of our rapidly changing and diverse technological, social, chemical, and physical environments. To untangle the multidimensional and interacting effects requires data at scale across diverse populations, taking measurement out of a controlled lab environment and into the field. Electroencephalography (EEG), which has correlates with various environmental factors as well as cognitive and mental health outcomes, has the advantage of both portability and cost-effectiveness for this purpose. However, with numerous field researchers spread across diverse locations, data quality issues and researcher idle time due to insufficient participants can quickly become unmanageable and expensive problems. In programs we have established in India and Tanzania, we demonstrate that with appropriate training, structured teams, and daily automated analysis and feedback on data quality, nonspecialists can reliably collect EEG data alongside various survey and assessments with consistently high throughput and quality. Over a 30 week period, research teams were able to maintain an average of 25.6 participants per week, collecting data from a diverse sample of 7,933 participants ranging from Hadzabe hunter-gatherers to office workers. Furthermore, data quality, computed on the first 5,831 records using two common methods, PREP and FASTER, was comparable to benchmark datasets from controlled lab conditions. Altogether this resulted in a cost per participant of under $50, a fraction of the cost typical of such data collection, opening up the possibility for large-scale programs particularly in low- and middle-income countries.
理解我们快速变化且多样的技术、社会、化学和物理环境对神经生理学的影响,这一需求日益迫切。要理清这些多维度且相互作用的影响,需要来自不同人群的大规模数据,将测量从受控的实验室环境转移到实地。脑电图(EEG)与各种环境因素以及认知和心理健康结果相关,为此具有便携性和成本效益的优势。然而,众多实地研究人员分布在不同地点,由于参与者不足导致的数据质量问题和研究人员闲置时间,可能很快就会变成难以管理且成本高昂的问题。在我们在印度和坦桑尼亚设立的项目中,我们证明,通过适当的培训、结构化团队以及对数据质量的每日自动分析和反馈,非专业人员能够在进行各种调查和评估的同时,可靠地收集脑电图数据,且始终保持高吞吐量和高质量。在为期30周的时间里,研究团队平均每周能够维持25.6名参与者,从包括哈扎比狩猎采集者到办公室职员在内的7933名不同样本参与者那里收集数据。此外,使用PREP和FASTER这两种常用方法,根据前5831条记录计算得出的数据质量,与受控实验室条件下的基准数据集相当。总体而言,这使得每位参与者的成本低于50美元,仅为这类数据收集典型成本的一小部分,为大规模项目,尤其是在低收入和中等收入国家开展此类项目开辟了可能性。