2022-07-01
2023-06-30
2024-01-24
130
NCT05476978
Huazhong University of Science and Technology
Huazhong University of Science and Technology
OBSERVATIONAL
Artificial Intelligence in EUS for Diagnosing Pancreatic Solid Lesions
We aim to develop an EUS-AI model which can facilitate clinical diagnosis by analyzing EUS pictures and clinical parameters of patients.
EUS is considered to be a more sensitive modality than CT in detecting pancreatic solid lesions due to its high spatial resolution. However, the diagnostic performance is largely dependent on the experience and the technical abilities of the practitioners. Therefore, we aim to develop an objective EUS diagnostic model based on the convolutional neural network, an artificial intelligence technique. In addition, clinical parameters such as risk factors, tumor biomarkers and radiology findings are also added to this artificial intelligence model in order to mimic the actual clinical diagnosis procedures and to increase the performance of this model.
These dates track the progress of study record and summary results submissions to ClinicalTrials.gov. Study records and reported results are reviewed by the National Library of Medicine (NLM) to make sure they meet specific quality control standards before being posted on the public website.
Study Registration Dates | Results Reporting Dates | Study Record Updates |
---|---|---|
2022-07-25 | N/A | 2024-04-02 |
2022-07-25 | N/A | 2024-04-03 |
2022-07-27 | N/A | 2024-04 |
This section provides details of the study plan, including how the study is designed and what the study is measuring.
Primary Purpose:
N/A
Allocation:
N/A
Interventional Model:
N/A
Masking:
N/A
Arms and Interventions
Participant Group/Arm | Intervention/Treatment |
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: Pancreas-EUS Patients since 2014 with EUS pictures of normal pancreas or pancreatic solid lesions have been included in this cohort. | DIAGNOSTIC_TEST: EUS-AI model
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Primary Outcome Measures | Measure Description | Time Frame |
---|---|---|
The model's ability to differentiate pancreatic cancer from other pancreatic solid lesion | Receiver operating characteristic (ROC) analyses, sensitivity, specificity, accuracy, positive predictive value and negative predictive value will be used to evaluate the efficacy of the model. | After the training process of the EUS-AI model is completed |
Secondary Outcome Measures | Measure Description | Time Frame |
---|---|---|
The model's ability to specify the pancreatic solid lesions such as pancreatic cancer, CP, AIP and NET | Receiver operating characteristic (ROC) analyses, sensitivity, specificity, accuracy, positive predictive value and negative predictive value will be used to evaluate the efficacy of the model. | After the training process of the EUS-AI model is completed |
This section provides the contact details for those conducting the study, and information on where this study is being conducted.
Researchers look for people who fit a certain description, called eligibility criteria. Some examples of these criteria are a person’s general health condition or prior treatments.
Ages Eligible for Study:
ALL
Sexes Eligible for Study:
18 Years
Accepts Healthy Volunteers:
This is where you will find people and organizations involved with this study.
The person responsible for entering information about the study voluntarily provides these publications. These may be about anything related to the study.
General Publications