Mobilise-D Technical Validation Study (TVS) dataset

Mobilise-D Technical Validation Study (TVS) Dataset This dataset was recorded as part of the Mobilise-D project, a comprehensive initiative aimed at developing and validating digital solutions for assessing mobility in real-world environments. The Mobilise-D project seeks to address the critical nee...

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1. Verfasser: Küderle, Arne
Format: Dataset
Sprache:eng
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Zusammenfassung:Mobilise-D Technical Validation Study (TVS) Dataset This dataset was recorded as part of the Mobilise-D project, a comprehensive initiative aimed at developing and validating digital solutions for assessing mobility in real-world environments. The Mobilise-D project seeks to address the critical need for accurate, reliable, and scalable tools to monitor and evaluate gait and mobility patterns, particularly in populations with mobility impairments. The dataset comprises recordings from a diverse cohort of participants, including healthy individuals and patients with various mobility-related conditions. Data collection was conducted using state-of-the-art wearable sensors and devices, capturing a wide range of gait parameters and contextual information in both controlled and free-living settings. The primary objective was to ensure the robustness and precision of digital mobility assessment tools under real-world conditions. Key features of the dataset include: Demographic & Clinical Data: Age, gender, height, weight, and clinical diagnoses. Sensor Data: Raw and processed data from accelerometers, gyroscopes, and other wearable sensors. Reference Gait Parameters: Stride length, stride frequency, gait speed, and variability measures. The dataset has undergone rigorous validation processes to confirm its accuracy and reliability. It serves as a critical resource for researchers and developers aiming to enhance digital health technologies and improve clinical assessments of mobility. The TVS dataset paves the way for future innovations in digital biomarkers and personalized healthcare solutions. Brief Overview This dataset contains data from 108 participants from six cohort groups that included older healthy adults (HA) and participants with potentially altered mobility due to Parkinson's disease (PD), multiple sclerosis (MS), proximal femoral fracture (PFF), chronic obstructive pulmonary disease (COPD) or congestive heart failure (CHF). Data was recorded across five measurement sites. Data availability varies between participants, and some tests might be missing for some participants. The recording was split into a comprehensive in-lab assessment and a 2.5 hour unsupervised free living conditions. For the in-lab measurements reference information from marker-based motion capture systems and the multi-device wearable INDIP system are provided. For the free-living recording, only the INDIP system is available as a reference. Participants wore a McRoberts MM+ IMU
DOI:10.5281/zenodo.13899385