Garcia-Ceja Enrique, Stautland Andrea, Riegler Michael A, Halvorsen Pål, Hinojosa Salvador, Ochoa-Ruiz Gilberto, Berle Jan O, Førland Wenche, Mjeldheim Kristin, Oedegaard Ketil Joachim, Jakobsen Petter
Tecnologico de Monterrey, School of Engineering and Sciences, Monterrey, 64849, Mexico.
University of Bergen, Department of Clinical Medicine, Bergen, 5009, Norway.
Sci Data. 2025 Jan 8;12(1):32. doi: 10.1038/s41597-025-04384-3.
Mental health is vital to human well-being, and prevention strategies to address mental illness have a significant impact on the burden of disease and quality of life. With the recent developments in body-worn sensors, it is now possible to continuously collect data that can be used to gain insights into mental health states. This has the potential to optimize psychiatric assessment, thereby improving patient experiences and quality of life. However, access to high-quality medical data for research purposes is limited, especially regarding diagnosed psychiatric patients. To this extent, we present the OBF-Psychiatric dataset which comprises motor activity recordings of patients with bipolar and unipolar major depression, schizophrenia, and ADHD (attention deficit hyperactivity disorder). The dataset also contains data from a clinical sample diagnosed with various mood and anxiety disorders, as well as a healthy control group, making it suitable for building machine learning models and other analytical tools. It contains recordings from 162 individuals totalling 1565 days worth of motor activity data with a mean of 9.6 days per individual.
心理健康对人类福祉至关重要,应对精神疾病的预防策略对疾病负担和生活质量有重大影响。随着可穿戴传感器的最新发展,现在有可能持续收集可用于深入了解心理健康状态的数据。这有可能优化精神病学评估,从而改善患者体验和生活质量。然而,用于研究目的的高质量医学数据获取有限,尤其是关于已确诊的精神病患者。在此范围内,我们展示了OBF-精神病学数据集,该数据集包含双相和单相重度抑郁症、精神分裂症和注意力缺陷多动障碍(ADHD)患者的运动活动记录。该数据集还包含来自被诊断患有各种情绪和焦虑障碍的临床样本以及一个健康对照组的数据,使其适合构建机器学习模型和其他分析工具。它包含来自162个人的记录,总计1565天的运动活动数据,平均每人9.6天。