NCT07277634

Brief Summary

The rapid proliferation of artificial intelligence (AI) applications in healthcare has led to significant transformations, particularly in applications such as patient management, treatment planning, clinical decision support systems, and remote rehabilitation. Ensuring that this transformation is effective and safe requires the reliable measurement of patients' perceptions and attitudes toward AI-based health technologies. However, the existing literature does not include any scales developed to measure patients' attitudes toward AI that have been adapted to Turkish society. This situation complicates both the assessment of acceptance of AI in clinical applications and the sound execution of scientific research in this field. This research aims to culturally adapt the internationally developed ATTARI-12 (Attitudes Toward Artificial Intelligence-12) and ATTARI-WHE (Artificial Intelligence in Work, Health and Everyday Life) scales into Turkish and to evaluate their construct validity and reliability. The study is methodological in design and will be conducted at the Faculty of Health Sciences, Izmir Katip Celebi University, between January 2026 and January 2027, following approval by the ethics committee. The cultural adaptation method proposed by Beaton and colleagues, which includes forward translation, back translation, expert panel, and content validity stages, will be applied during the scale adaptation process; then, the understandability of the items will be tested with a pilot application. The sample will consist of at least 200 physical therapy patients, and convergent validity, construct validity using confirmatory factor analysis, and reliability using Cronbach's alpha and test-retest methods will be evaluated. The project will be carried out according to a structured schedule consisting of project management, translation process, pilot application, data collection, and analysis stages. All measurements will be performed after obtaining ethical committee approval. The results of this study will contribute to the literature by providing patient-specific, valid, and reliable measurement tools that can be used to scientifically evaluate patients' attitudes toward AI in Turkey. These scales are expected to have a widespread impact in national research, in the evaluation of clinical decision support systems, and in strategies aimed at increasing the acceptance of AI-based health technologies.

Trial Health

65
Monitor

Trial Health Score

Automated assessment based on enrollment pace, timeline, and geographic reach

Enrollment
200

participants targeted

Target at P75+ for all trials

Timeline
8mo left

Started Jan 2026

Shorter than P25 for all trials

Status
not yet recruiting

Health score is calculated from publicly available data and should be used for screening purposes only.

Trial Relationships

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Study Timeline

Key milestones and dates

Study Progress35%
Jan 2026Jan 2027

First Submitted

Initial submission to the registry

November 29, 2025

Completed
12 days until next milestone

First Posted

Study publicly available on registry

December 11, 2025

Completed
21 days until next milestone

Study Start

First participant enrolled

January 1, 2026

Completed
5 months until next milestone

Primary Completion

Last participant's last visit for primary outcome

June 1, 2026

Expected
7 months until next milestone

Study Completion

Last participant's last visit for all outcomes

January 1, 2027

Last Updated

December 11, 2025

Status Verified

November 1, 2025

Enrollment Period

5 months

First QC Date

November 29, 2025

Last Update Submit

November 29, 2025

Conditions

Outcome Measures

Primary Outcomes (1)

  • ATTARI-12 (Attitudes Toward Artificial Intelligence-12) and ATTARI-WHE (Artificial Intelligence in Work, Health and Everyday Life) Scales

    From January 2026 to January 2027

Study Arms (1)

physical therapy patients

Eligibility Criteria

Age18 Years+
Sexall
Healthy VolunteersNo
Age GroupsAdult (18-64), Older Adult (65+)
Sampling MethodProbability Sample
Study Population

Patients undergoing active treatment in the Physical Therapy and rehabilitation unit

You may qualify if:

  • Patients undergoing active treatment in the Physical Therapy and rehabilitation unit.
  • Being cognitively able to answer the questionnaire.

You may not qualify if:

  • Severe communication or cognitive impairments.

Contact the study team to confirm eligibility.

Sponsors & Collaborators

Study Design

Study Type
observational
Observational Model
OTHER
Time Perspective
CROSS SECTIONAL
Sponsor Type
OTHER
Responsible Party
SPONSOR INVESTIGATOR
PI Title
Ph.D

Study Record Dates

First Submitted

November 29, 2025

First Posted

December 11, 2025

Study Start

January 1, 2026

Primary Completion (Estimated)

June 1, 2026

Study Completion (Estimated)

January 1, 2027

Last Updated

December 11, 2025

Record last verified: 2025-11