Clinical Trials Directory

Trials / Unknown

UnknownNCT05706415

AI Assisted the Diagnosis of Pancreatic Solid Lesions

Enhanced Deep Learning Model for Diagnosis of Pancreatic Solid Lesions Through Multimodal Clinical Images

Status
Unknown
Phase
Study type
Observational
Enrollment
200 (estimated)
Sponsor
Changhai Hospital · Academic / Other
Sex
All
Age
18 Years – 75 Years
Healthy volunteers

Summary

Solid lesions of the pancreas mainly include tumor and non tumor lesions. More than 90% of pancreatic tumor lesions are pancreatic cancer, which is characterized by high mortality and poor prognosis and requires surgical treatment; Non-tumor lesions of the pancreas are mainly inflammatory lesions, which usually do not require surgical treatment, but can be treated with drugs. The common ones are chronic pancreatitis and autoimmune pancreatitis, with a good prognosis. Clinically, the differential diagnosis between them is very difficult. Multi-disciplinary diagnosis and treatment of MDT makes our understanding of pancreatic diseases increasingly rich and in-depth. From disease diagnosis to preoperative evaluation and curative effect evaluation, non-invasive imaging involves almost every link under MDT mode. In view of this, improving the differential diagnosis of pancreatic solid space-occupying lesions on imaging will be more conducive to the diagnosis and treatment under MDT mode, so new technologies such as artificial intelligence should be considered. Our goal is to develop a clinically applicable artificial intelligence system, which uses multiple modes to simulate the routine clinical workflow and assist in the diagnosis of benign and malignant pancreatic solid space-occupying lesions.

Detailed description

The diagnosis of solid pancreatic lesions is challenging, MDT is a very effective method, but it has a certain misdiagnosis rate. This is a multi-center, prospective and observational clinical study. Our goal is to develop a clinically applicable artificial intelligence system. On the one hand, our artificial intelligence based on clinical data+CT imaging images can assist MDT doctors to diagnose the nature of pancreatic space-occupying lesions and reduce misdiagnosis; On the other hand, if a patient needs EUS-FNA puncture, the multimodal artificial intelligence system based on clinical data+CT+EUS developed by us can help MDT doctors understand the nature of pancreatic space-occupying lesions and reduce the probability of misdiagnosis or secondary puncture.

Conditions

Interventions

TypeNameDescription
DIAGNOSTIC_TESTClinicians will review the suggestions of a hypothetical AIThere is no intervention. Clinicians will review the suggestions of a hypothetical AI

Timeline

Start date
2023-01-21
Primary completion
2023-02-21
Completion
2023-02-21
First posted
2023-01-31
Last updated
2023-01-31

Locations

2 sites across 1 country: China

Source: ClinicalTrials.gov record NCT05706415. Inclusion in this directory is not an endorsement.