Transforming Parkinson's Care With Predictive Algorithms
NCT ID: NCT06755645
Last Updated: 2025-12-01
Study Results
The study team has not published outcome measurements, participant flow, or safety data for this trial yet. Check back later for updates.
Basic Information
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NOT_YET_RECRUITING
200 participants
OBSERVATIONAL
2026-09-30
2028-09-30
Brief Summary
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Detailed Description
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Building on the holistic insights from the previous study, this project sets out to create a technological smart platform, utilizing artificial intelligence (AI), to foster healthy habits and optimal clinical management among PD population. Technological platforms emerge as instrumental tools in transforming the landscape of PD management. These platforms can facilitate continuous monitoring and tailored interventions that integrate, for example, lifestyle-embedded exercise programs. However, while technological interventions have shown promise in promoting healthy habits, there is limited research on the integration of AI for personalized interventions in the context of PD. Models developed to date have several key limitations including use of only one single feature (i.e. motor symptoms), model assumptions that patients follow a fixed progression, or not accounting for both positive and negative effects of symptomatic therapies for PD. Herein, we address the current limitations and propose a holistic approach based on an AI model that provides professionals, patients and carers with a smart platform capable of promoting healthy habits and optimizing clinical aspects. Herein, we recognize the importance of PA along with other healthy habits for PD patients by incorporating more than 50 other variables from the Movement Disorder Society-Sponsored Revision of the Unified Parkinson's Disease Rating Scale (MDS-UPDRS), a comprehensive clinical tool used to assess both motor and non-motor symptoms in PD patients, divided into four parts that evaluate daily living experiences, motor examination, and therapy-related motor complications. Importantly, the data collected will be validated with the Parkinson's Progression Markers Initiative (PPMI), a landmark study with more than 1500 patients designed to identify biomarkers of PD progression, enhancing the reliability and applicability of our findings. The successful execution of this project will culminate in an integrated solution that combines web and mobile interfaces, enhancing the overall accessibility and effectiveness of PD diagnostic and monitoring capabilities. The proposed AI-based smart platform has significant social implications, primarily in improving the quality of life for PD patients by addressing both motor and non-motor symptoms. It fosters a more comprehensive and personalized approach to PD management, moving beyond the limitations of current treatment methods, which often focus on singular aspects of the disease. By incorporating a wide range of variables from a well-established clinical database, the platform aims to deliver tailored interventions that promote healthy habits and optimize clinical outcomes. Additionally, the platform's use of AI for continuous monitoring and adaptive interventions will empower patients and caregivers, providing real-time support and reducing the burden on healthcare systems. This represents a shift towards more patient-centered, proactive care, potentially improving disease progression management and quality of life for the aging population affected by PD. In conclusion, the comprehensive approach seeks to provide valuable insights into PD progression and support the implementation of healthy habits in clinical practice.
Conditions
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Study Design
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ECOLOGIC_OR_COMMUNITY
PROSPECTIVE
Study Groups
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Lifestyle intervention app
The group of patients includes individuals diagnosed with Parkinson's Disease (PD). This cohort encompasses a range of disease stages, severities, and demographic characteristics.
Lifestyle intervention
A technological smart platform (app) that integrates diets, physical activity programs, sleep habits and other lifestyle interventions
Interventions
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Lifestyle intervention
A technological smart platform (app) that integrates diets, physical activity programs, sleep habits and other lifestyle interventions
Eligibility Criteria
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Inclusion Criteria
Exclusion Criteria
ALL
No
Sponsors
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University of Deusto
OTHER
Hospital Universitari Vall d'Hebron Research Institute
OTHER
University Ramon Llull
OTHER
Responsible Party
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Locations
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Ramon Llull University
Barcelona, , Spain
Countries
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Central Contacts
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Facility Contacts
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References
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Magana JC, Deus CM, Baldellou L, Avellanet M, Gea-Rodriguez E, Enriquez-Calzada S, Laguna A, Martinez-Vicente M, Hernandez-Vara J, Gine-Garriga M, Pereira SP, Montane J. Investigating the impact of physical activity on mitochondrial function in Parkinson's disease (PARKEX): Study protocol for A randomized controlled clinical trial. PLoS One. 2023 Nov 22;18(11):e0293774. doi: 10.1371/journal.pone.0293774. eCollection 2023.
Jossa-Bastidas O, Zahia S, Fuente-Vidal A, Sanchez Ferez N, Roda Noguera O, Montane J, Garcia-Zapirain B. Predicting Physical Exercise Adherence in Fitness Apps Using a Deep Learning Approach. Int J Environ Res Public Health. 2021 Oct 14;18(20):10769. doi: 10.3390/ijerph182010769.
Other Identifiers
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TechHealthPD
Identifier Type: -
Identifier Source: org_study_id
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