Monitoring and Predicting Health Status in Neurological Patients: The ALAMEDA Data Collection Protocol

Author:

Sorici Alexandru1ORCID,Băjenaru Lidia1,Mocanu Irina Georgiana1ORCID,Florea Adina Magda1ORCID,Tsakanikas Panagiotis2ORCID,Ribigan Athena Cristina34ORCID,Pedullà Ludovico5,Bougea Anastasia6ORCID

Affiliation:

1. AI-MAS Laboratory, National University of Science and Technology Politehnica Bucharest, 060042 Bucharest, Romania

2. Institute of Communication and Computer Systems, National Technical University of Athens, 10682 Athens, Greece

3. Department of Neurology, University Emergency Hospital Bucharest, 050098 Bucharest, Romania

4. Department of Neurology, Faculty of Medicine, University of Medicine and Pharmacy “Carol Davila”, 050474 Bucharest, Romania

5. Scientific Research Area, Italian Multiple Sclerosis Foundation, 16149 Genoa, Italy

6. 1st Department of Neurology, Eginition Hospital, National and Kapodistrian University of Athens, 11528 Athens, Greece

Abstract

(1) Objective: We explore the predictive power of a novel stream of patient data, combining wearable devices and patient reported outcomes (PROs), using an AI-first approach to classify the health status of Parkinson’s disease (PD), multiple sclerosis (MS) and stroke patients (collectively named PMSS). (2) Background: Recent studies acknowledge the burden of neurological disorders on patients and on the healthcare systems managing them. To address this, effort is invested in the digital transformation of health provisioning for PMSS patients. (3) Methods: We introduce the data collection journey within the ALAMEDA project, which continuously collects PRO data for a year through mobile applications and supplements them with data from minimally intrusive wearable devices (accelerometer bracelet, IMU sensor belt, ground force measuring insoles, and sleep mattress) worn for 1–2 weeks at each milestone. We present the data collection schedule and its feasibility, the mapping of medical predictor variables to wearable device capabilities and mobile application functionality. (4) Results: A novel combination of wearable devices and smartphone applications required for the desired analysis of motor, sleep, emotional and quality-of-life outcomes is introduced. AI-first analysis methods are presented that aim to uncover the prediction capability of diverse longitudinal and cross-sectional setups (in terms of standard medical test targets). Mobile application development and usage schedule facilitates the retention of patient engagement and compliance with the study protocol.

Funder

Horizon 2020 Research and Innovation Programme

Publisher

MDPI AG

Subject

Health Information Management,Health Informatics,Health Policy,Leadership and Management

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