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Clinical Trial Details — Status: Not yet recruiting

Administrative data

NCT number NCT05369572
Other study ID # 2022SDU-QILU-G002
Secondary ID
Status Not yet recruiting
Phase
First received
Last updated
Start date June 30, 2022
Est. completion date June 30, 2025

Study information

Verified date June 2022
Source Shandong University
Contact Xiuli Zuo, MD, PhD
Phone 86 15588818685
Email zuoxiuli@sdu.edu.cn
Is FDA regulated No
Health authority
Study type Observational

Clinical Trial Summary

By introducing artificial intelligence into Chinese medicine tongue diagnosis, we collated and collected tongue images, anxiety and depression scales and gastroscopy reports, mined and analysed the correlation between tongue images and bile reflux and anxiety and depression and constructed a prediction model to analyse the possibility of predicting bile reflux and anxiety and depression in patients based on tongue images.


Description:

Firstly, after the patient signs the informed consent form, the researcher will collect pictures of the patient's tongue and obtain basic information about the patient. Second, the patients are scored on the Anxiety and Depression Scale. Thirdly, after the patient undergoes gastroscopy, the patient's gastroscopy report is obtained. Finally, the patient's tongue image, information and gastroscopy report are matched to construct an artificial intelligence model of tongue image and bile reflux and anxiety and depression, and the quality of the model is assessed.


Recruitment information / eligibility

Status Not yet recruiting
Enrollment 1500
Est. completion date June 30, 2025
Est. primary completion date June 30, 2024
Accepts healthy volunteers Accepts Healthy Volunteers
Gender All
Age group 18 Years to 80 Years
Eligibility Inclusion Criteria: - Patients aged 18 to 80 years who wish to undergo gastroscopy. - Patients have given their informed consent and signed the informed consent form. Exclusion Criteria: - Serious heart, liver, kidney or other underlying illness, or mental illness. - Patients taking anti-anxiety or depression medication within 3 months. - Current H. pylori infection. - History of surgery on the digestive or biliary tract. - Peptic ulcer, malignant tumour of the digestive tract, etc. - Patients taking bismuth or other staining medications. - Pregnant or lactating women.

Study Design


Locations

Country Name City State
China Qilu hosipital Jinan Shandong

Sponsors (1)

Lead Sponsor Collaborator
Shandong University

Country where clinical trial is conducted

China, 

Outcome

Type Measure Description Time frame Safety issue
Primary Sensitivity Sensitivity of artificial intelligence models Sensitivity = number of true positives / (number of true positives + number of false negatives) * 100%. 3 years
Primary Specificity Specificity of Artificial Intelligence Models Specificity = number of true negatives / (number of true negatives + number of false positives))
*100%
3 years
Primary Positive predictive values(PPV) Positive predictive values from artificial intelligence models Positive predictive value = true positive / (true positive + false positive) *100% 3 years
Primary Negative predictive values (NPV) Negative predictive values for artificial intelligence models Negative Predictive Value = True Negative / (True Negative + False Negative) *100% 3 years
Primary AUC (95% CI) area under the receiver operating characteristic curve (AUC), 3 years
Primary Accuracy Accuracy for artificial intelligence models Accuracy = (true positives + true negatives) / total number of subjects * 100% 3 years
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