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ADAI - Home Care in Intelligent Environments Clinical Care Ecosystem for the Management of Home Digital Therapies Through the Use of Assistive Robots and Clinical Predictive Systems Based on Artificial Intelligence Systems (RAISE_2023_026)

27. April 2026 aktualisiert von: Caterina Formica, IRCCS Centro Neurolesi Bonino Pulejo

Dementia is a neurocognitive disorder that causes a deterioration in cognitive function, significantly impacting social and work abilities and daily activities. Alzheimer's disease is diagnosed when cognitive decline affects at least two cognitive domains, one of which must involve memory. Mild Cognitive Impairment (MCI) is a critical diagnosis as it represents a potentially early stage of cognitive decline. In the DSM-5, MCI is defined as a "minor neurocognitive disorder," characterized by functional decline affecting at least one of six cognitive domains: memory and learning, language, visuospatial function, attention, executive function, and social functioning. It is important to emphasize that this decline is not severe enough to significantly impair the patient's daily activities. In this context, support for people with MCI and dementia is crucial, not only at the family and social level, but also through the adoption of innovative technological solutions. Artificial intelligence (AI) is emerging as a valuable tool for early diagnosis, and through machine learning processes, it is possible to predict cognitive decline, thus providing personalized treatment and day-to-day patient management. This allows for intervention at a less advanced stage of the disease, thus slowing its progression, while maintaining autonomy and independence for as long as possible, which tends to decline over time in this patient population. Investing in innovative technologies is therefore essential not only to improve prevention and treatment opportunities but also to provide concrete support to caregivers, especially at a time when the aging population requires an increasingly structured and effective global response.

The objectives of the study are as follows:

  • The objective of this study is to evaluate the effectiveness of software in administering cognitive and motor tests via a humanoid robot in patients with early-stage Alzheimer's disease (AD) or other forms of mild to moderate dementia.
  • Support medical professionals in personalizing therapeutic treatments, using predictive models based on advanced artificial intelligence systems. These models will begin by collecting, monitoring, and processing demographic and clinical data and the results of cognitive and motor assessments obtained from patients to predict the course of the disease and the effectiveness of rehabilitation treatments. This will then allow them to suggest personalized treatment options and optimize care pathways, thus improving overall clinical outcomes.

Studienübersicht

Detaillierte Beschreibung

Artificial intelligence (AI), particularly through machine learning techniques, offers promising opportunities in this field. By analyzing large volumes of clinical, behavioral, and demographic data, AI systems can detect patterns associated with early cognitive decline and predict disease progression. This predictive capability enables healthcare professionals to intervene earlier, when therapeutic strategies are more likely to be effective, thereby slowing the progression of the disease and prolonging the patient's independence and quality of life.

The present study aims to explore the integration of advanced technological tools into clinical practice, with a specific focus on the use of humanoid robotic systems. These systems are designed to administer standardized cognitive and motor assessments in a consistent and engaging manner, particularly for patients in the early stages of Alzheimer's disease or other forms of mild to moderate dementia. The use of a humanoid robot may enhance patient engagement, reduce variability in test administration, and allow for more precise and objective data collection.

In addition, the study seeks to support clinicians in tailoring therapeutic interventions through the use of predictive models powered by artificial intelligence. These models will be developed using comprehensive datasets that include patient demographics, medical history, and results from repeated cognitive and motor evaluations. By continuously collecting and analyzing this information, the system will be able to identify trends, estimate disease trajectories, and evaluate the effectiveness of different rehabilitation strategies.

Ultimately, the integration of AI-driven predictive analytics with robotic-assisted assessment tools aims to provide a more personalized and adaptive approach to patient care. This approach has the potential to optimize treatment plans, improve clinical outcomes, and enhance the overall efficiency of healthcare delivery. Furthermore, it offers valuable support to caregivers by providing actionable insights and facilitating more structured care pathways.

As populations continue to age globally, the demand for innovative, scalable, and effective solutions in the management of cognitive disorders is rapidly increasing. Investing in advanced technologies such as artificial intelligence and robotics is therefore crucial not only for improving early diagnosis and therapeutic interventions but also for addressing the broader societal challenges associated with dementia care.

Studientyp

Interventionell

Einschreibung (Tatsächlich)

23

Phase

  • Unzutreffend

Kontakte und Standorte

Dieser Abschnitt enthält die Kontaktdaten derjenigen, die die Studie durchführen, und Informationen darüber, wo diese Studie durchgeführt wird.

Studienorte

    • Messina
      • Messina, Messina, Italien, 98123
        • IRCCS Centro Neurolesi Bonino Pulejo

Teilnahmekriterien

Forscher suchen nach Personen, die einer bestimmten Beschreibung entsprechen, die als Auswahlkriterien bezeichnet werden. Einige Beispiele für diese Kriterien sind der allgemeine Gesundheitszustand einer Person oder frühere Behandlungen.

Zulassungskriterien

Studienberechtigtes Alter

  • Erwachsene
  • Älterer Erwachsener

Akzeptiert gesunde Freiwillige

Nein

Beschreibung

Inclusion Criteria:

  • Age between 40 and 80
  • Clinical Rating Scale (CDR) score < 1
  • Patients with moderate to mild cognitive impairment

Exclusion Criteria:

  • Subjects with marked visual and hearing impairments that prevent proper understanding of the trial
  • Patients with impaired language comprehension
  • Patients with comorbid psychiatric disorders
  • Lack of consent to participate by signing the informed consent form

Studienplan

Dieser Abschnitt enthält Einzelheiten zum Studienplan, einschließlich des Studiendesigns und der Messung der Studieninhalte.

Wie ist die Studie aufgebaut?

Designdetails

  • Hauptzweck: Diagnose
  • Zuteilung: N / A
  • Interventionsmodell: Einzelgruppenzuweisung
  • Maskierung: Keine (Offenes Etikett)

Waffen und Interventionen

Teilnehmergruppe / Arm
Intervention / Behandlung
Experimental: early-stage AD or other forms of mild to moderate dementia who interact with the robot

The study aims to test the effectiveness of an innovative digital solution on a cohort of subjects with early-stage AD or other forms of mild to moderate dementia. Patients with early-stage Alzheimer's disease and/or other forms of dementia will be recruited from the neurology and neurodegenerative disease outpatient clinics of the IRCCS Centro Neurolesi Bonino-Pulejo in Messina. The variables that will be considered are: (i) demographic data (age, gender, education level); (ii) clinical data relating to the patient's health status, such as the presence of risk factors for neurodegenerative diseases such as hypertension, diabetes, dyslipidemia, heart disease, carotid stenosis, atrial fibrillation, and heredity and smoking; (iii) data relating to the ability to perform basic and instrumental activities of daily living and mood.

The data will be recorded manually via tablet by the physician. After data collection, patients will undergo neuropsychological and motor tests.

The proposed study is an interventional study that aims to test the effectiveness of an innovative digital solution on a cohort of subjects with early-stage AD or other forms of mild to moderate dementia. Patients with early-stage Alzheimer's disease and/or other forms of dementia will be recruited from the neurology and neurodegenerative disease outpatient clinics of the IRCCS Centro Neurolesi Bonino-Pulejo in Messina. The variables that will be considered are: (i) demographic data (age, gender, education level); (ii) clinical data relating to the patient's health status, such as the presence of risk factors for neurodegenerative diseases such as hypertension, diabetes, dyslipidemia, heart disease, carotid stenosis, atrial fibrillation, and heredity and smoking; (iii) data relating to the ability to perform basic and instrumental activities of daily living and mood.

The data will be recorded manually via tablet by the physician. After data collection, patients will undergo

Was misst die Studie?

Primäre Ergebnismessungen

Ergebnis Maßnahme
Maßnahmenbeschreibung
Zeitfenster
Mini Mental State Examination (MMSE) total score
Zeitfenster: Through study completion, an average of 1 year

The MMSE will be administered through a humanoid robot interface. The total score (range 0-30) will be recorded, and mean scores and/or change from baseline will be analyzed.

The aim of this study is therefore to evaluate the effectiveness of the software in administering MMSE via a humanoid robot in patients with early-stage Alzheimer's dementia (AD) or other forms of mild to moderate dementia.

Through study completion, an average of 1 year

Mitarbeiter und Ermittler

Hier finden Sie Personen und Organisationen, die an dieser Studie beteiligt sind.

Studienaufzeichnungsdaten

Diese Daten verfolgen den Fortschritt der Übermittlung von Studienaufzeichnungen und zusammenfassenden Ergebnissen an ClinicalTrials.gov. Studienaufzeichnungen und gemeldete Ergebnisse werden von der National Library of Medicine (NLM) überprüft, um sicherzustellen, dass sie bestimmten Qualitätskontrollstandards entsprechen, bevor sie auf der öffentlichen Website veröffentlicht werden.

Haupttermine studieren

Studienbeginn (Tatsächlich)

22. September 2025

Primärer Abschluss (Tatsächlich)

15. Oktober 2025

Studienabschluss (Tatsächlich)

31. Oktober 2025

Studienanmeldedaten

Zuerst eingereicht

26. März 2026

Zuerst eingereicht, das die QC-Kriterien erfüllt hat

27. April 2026

Zuerst gepostet (Tatsächlich)

5. Mai 2026

Studienaufzeichnungsaktualisierungen

Letztes Update gepostet (Tatsächlich)

5. Mai 2026

Letztes eingereichtes Update, das die QC-Kriterien erfüllt

27. April 2026

Zuletzt verifiziert

1. April 2026

Mehr Informationen

Begriffe im Zusammenhang mit dieser Studie

Plan für individuelle Teilnehmerdaten (IPD)

Planen Sie, individuelle Teilnehmerdaten (IPD) zu teilen?

JA

Beschreibung des IPD-Plans

Individual participant data set and data dictionaries

IPD-Sharing-Zeitrahmen

starting 6 months after publication

IPD-Sharing-Zugriffskriterien

trials office of our institute or with a direct request to the PI of the study protocol

Art der unterstützenden IPD-Freigabeinformationen

  • STUDIENPROTOKOLL
  • SAFT
  • ICF
  • ANALYTIC_CODE
  • CSR

Arzneimittel- und Geräteinformationen, Studienunterlagen

Studiert ein von der US-amerikanischen FDA reguliertes Arzneimittelprodukt

Nein

Studiert ein von der US-amerikanischen FDA reguliertes Geräteprodukt

Nein

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