Generative AI Impact on Rheumatoid Arthritis Complications Diagnosis
Impact of Generative Artificial Intelligence on Diagnosing Rheumatoid Arthritis Complications
Study Overview
Status
Status
Conditions
Conditions
Intervention / Treatment
Intervention / Treatment
Study Type
Study Type
Enrollment (Estimated)
Enrollment
Contacts and Locations
Study Contact
Study Contact
- Name: Quan Jiang Guang'anmen Hospital, China Academy of Chinese Medical Science
- Phone Number: 010-88001942
- Email: doctorjq@126.com
Study Locations
-
-
Beijing Municipality
-
Beijing, Beijing Municipality, China, 100053
- Recruiting
- Guang'anmen Hospital of China Academy of Chinese Medical Sciences
-
Contact:
- Quan Jiang, MD
- Phone Number: 010-88001942
- Email: doctorjq@126.com
-
Principal Investigator:
- Quan Jiang, MD
-
-
Participation Criteria
Eligibility Criteria
Eligibility Criteria
Ages Eligible for Study
- Child
- Adult
- Older Adult
Accepts Healthy Volunteers
Sampling Method
Study Population
Description
Inclusion Criteria:
- Patients with an initial diagnosis of rheumatoid arthritis (RA).
- All real-world RA inpatients admitted to our department.
- Admission occurring within the real-world data study period.
Exclusion Criteria:
- Patients subsequently confirmed not to have RA during the study.
Study Plan
How is the study designed?
Design Details
Number of groups / cohorts
Cohorts and Interventions
Group / CohortGroup / Cohort |
Intervention / TreatmentIntervention / Treatment |
|---|---|
|
RA patient group using generative AI prediction reports
Inpatients newly diagnosed with rheumatoid arthritis in our rheumatology department between October 1, 2025, and June 2026 will be recruited for the study.
Physicians will use GenAI predictions of potential RA complications and co-existing diseases, together with confirmatory diagnostic tests, as additional inputs in the differential diagnosis process.
|
Generative AI based on multiple large language models (LLMs) is used to predict potential complications and co-existing diseases in patients with rheumatoid arthritis using EHR data available at admission. Physicians use these AI predictions as additional information to adjust their diagnostic plans during differential diagnosis. The impact of this intervention on the final diagnoses at discharge will be measured. Before the prospective study, the adoptability of the generative AI prediction reports will be validated using EHR records from retrospective RA patients. |
What is the study measuring?
Primary Outcome Measures
Primary Outcome Measures
Outcome Measure |
Measure Description |
Time Frame |
|---|---|---|
|
Will physicians adopt GenAI predictions in diagnosing RA complications?
Time Frame: Immediately after reviewing patient AI report on the day of admission.
|
In the routine care workflow, large language models (LLMs) are used to predict potential RA complications for each de-identified patient case and generate an AI report listing possible complications and co-existing diseases.
Additional diagnostic tests are suggested to verify the predicted conditions.
After reviewing the AI report, physicians immediately evaluate each disease prediction using a 5-point Likert scale (1 = complete disagreement; 2 = disagreement; 3 = neutral; 4 = agreement; 5 = complete agreement).
The mean score is calculated as a measure of perceived prediction accuracy.
Physicians also indicate whether each specific disease prediction could potentially be adopted or used to assist differential diagnosis (binary: 0 or 1).
The percentage of positive adoption responses is calculated as a measure of potential adoption rate, or adoptability.
|
Immediately after reviewing patient AI report on the day of admission.
|
Secondary Outcome Measures
Secondary Outcome Measures
Outcome Measure |
Measure Description |
Time Frame |
|---|---|---|
|
To what extent are RA complication diagnoses actually affected by GenAI predictions?
Time Frame: Immediately after making the final diagnosis at discharge.
|
Before patient discharge, physicians make final diagnoses and record which diagnosed complications or co-existing diseases were influenced by GenAI prediction information for each patient.
The percentage of cases in which GenAI predictions affected the final diagnosis is calculated as a measure of AI's actual impact on routine diagnostic practice.
|
Immediately after making the final diagnosis at discharge.
|
Collaborators and Investigators
Sponsor
Sponsor
Publications and helpful links
Study record dates
Study Major Dates
Study Start (Actual)
Study Start
Primary Completion (Estimated)
Primary Completion
Study Completion (Estimated)
Study Completion
Study Registration Dates
First Submitted
First Submitted
First Submitted That Met QC Criteria
First Submitted That Met QC Criteria
First Posted (Actual)
First Posted
Study Record Updates
Last Update Posted (Actual)
Last Update Posted
Last Update Submitted That Met QC Criteria
Last Update Submitted That Met QC Criteria
Last Verified
Last Verified
More Information
Terms related to this study
Additional Relevant MeSH Terms
- Endocrine System Diseases
- Bone Diseases
- Musculoskeletal Diseases
- Mouth Diseases
- Stomatognathic Diseases
- Nervous System Diseases
- Vascular Diseases
- Neuromuscular Diseases
- Arthritis
- Joint Diseases
- Rheumatic Diseases
- Metabolic Diseases
- Connective Tissue Diseases
- Autoimmune Diseases
- Immune System Diseases
- Respiratory Tract Diseases
- Lung Diseases
- Eye Diseases
- Embolism and Thrombosis
- Bone Diseases, Metabolic
- Xerostomia
- Salivary Gland Diseases
- Dry Eye Syndromes
- Lacrimal Apparatus Diseases
- Proteostasis Deficiencies
- Nutritional and Metabolic Diseases
- Skin and Connective Tissue Diseases
- Thyroid Diseases
- Digestive System Diseases
- Osteoarthritis
- Cardiovascular Diseases
- Thrombosis
- Osteoporosis
- Peripheral Nervous System Diseases
- Sjogren's Syndrome
- Lung Diseases, Interstitial
- Arthritis, Rheumatoid
- Amyloidosis
- Vasculitis
Other Study ID Numbers
Other Study ID Numbers
- 2025-201-KY
Plan for Individual participant data (IPD)
Plan to Share Individual Participant Data (IPD)?
Drug and device information, study documents
Studies a U.S. FDA-regulated drug product
Studies a U.S. FDA-regulated device product
This information was retrieved directly from the website clinicaltrials.gov without any changes. If you have any requests to change, remove or update your study details, please contact register@clinicaltrials.gov. As soon as a change is implemented on clinicaltrials.gov, this will be updated automatically on our website as well.
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