Al-MDS: Development of an AI-based Emergency Imaging Multi-Disease Rapid Joint Screening System

Sponsor
Sun Yat-Sen Memorial Hospital of Sun Yat-Sen University (Other)
Overall Status
Not yet recruiting
CT.gov ID
NCT05974163
Collaborator
(none)
10,000
1
24
417

Study Details

Study Description

Brief Summary

Introduction:

Early and rapid diagnosis of etiology is often an important part of saving the lives of patients in emergency department. Chest CT is an important examination method for emergency diagnosis because of its fast examination speed and accurate localization. Traditional medical imaging diagnosis relies on radiologists to report in a qualitative and subjective manner. Through the interdisciplinary combination of clinical, imaging and artificial intelligence, the integration of multi-omics data, the construction of large-scale language models, and the construction of the auxiliary diagnosis support system of "one check for multiple diseases" provide new ideas and means for the rapid and accurate screening of emergency critical diseases.

Method:

Study design Investigators retrospectively collected cardiovascular, respiratory, digestive, and neurological CT images, demographic data, medical history and laboratory date of emergency department patients during the period from 1 January 2018 and 30 December 2024. Regularly carry out standardized follow-up work, and complete the collection and database establishment of clinical-imaging multi-omics data of patients attending emergency department.The inclusion criteria are:1. adult emergency patients with cardiovascular, respiratory, digestive, and nervous system diseases; 2. These patients had CT images. Patients with incomplete clinical or radiographic data were excluded from the analysis. Regularly carry out standardized follow-up work, and complete the collection and database establishment of clinical-imaging multi-omics data of patients attending emergency department.

Based on the collected medical text data, an artificial intelligence large-scale language model algorithm framework is built. After the structure annotation of chest CT images is performed by doctors above the intermediate level of imaging, the Transformer deep neural network is trained for CT image segmentation, and a series of tasks such as structural structure segmentation, damage detection, disease classification and automatic report generation are developed based on Vision Transformer self-attention architecture mechanism. A multi-disease diagnosis and treatment decision-making system based on chest CT images, clinical text and examination multimodal data was constructed and validated.

Disscusion

Emergency medicine deals mainly with unpredictable critical and sudden illnesses. Patients who come to the emergency department for medical treatment often have acute onset, hidden condition, rapid progress, many complications, high mortality and disability rate. Assisted diagnosis systems developed by combining clinical text, images and artificial intelligence can greatly improve the ability of emergency department doctors to accurately diagnose diseases. This study fills the blank of CT artificial intelligence aided diagnosis system for emergency patients, and provides a rapid diagnosis scheme for multi-system and multi-disease. Finally, the results will be transformed into clinical application software and used and promoted in clinical work to improve the diagnosis and treatment level.

Condition or Disease Intervention/Treatment Phase
  • Diagnostic Test: radiomic of CT

Study Design

Study Type:
Observational
Anticipated Enrollment :
10000 participants
Observational Model:
Cohort
Time Perspective:
Prospective
Official Title:
Development of a Multi-Disease Screening System for Emergency CT Imaging Based on Artificial Intelligence
Anticipated Study Start Date :
Aug 1, 2023
Anticipated Primary Completion Date :
Jul 31, 2024
Anticipated Study Completion Date :
Jul 31, 2025

Arms and Interventions

Arm Intervention/Treatment
Model reconstruction cohort

8000 patients were recruited retrospectively from January 2023 to December 2025 as discovering group.

Diagnostic Test: radiomic of CT
Computed Tomography (CT) is often an important examination method for emergency diagnosis because of its fast examination speed and accurate localization acute respiratory distress syndrome.

External Validation cohort 1

1000 patients were recruited retrospectively from January 2023 to December 2025 as internal validation group.

Diagnostic Test: radiomic of CT
Computed Tomography (CT) is often an important examination method for emergency diagnosis because of its fast examination speed and accurate localization acute respiratory distress syndrome.

External validation cohort 2

1000 patients will be recruited prospectively during the period from January 2023 to December 2025 as external validation group

Diagnostic Test: radiomic of CT
Computed Tomography (CT) is often an important examination method for emergency diagnosis because of its fast examination speed and accurate localization acute respiratory distress syndrome.

Outcome Measures

Primary Outcome Measures

  1. Accuracy of disease diagnosis [2025-08-01~2025-12-31]

    Construct a rapid diagnosis, accurate and efficient emergency CT image multi-disease rapid joint screening system

Eligibility Criteria

Criteria

Ages Eligible for Study:
18 Years to 100 Years
Sexes Eligible for Study:
All
Accepts Healthy Volunteers:
Yes
Inclusion Criteria:

Adults with cardiovascular, respiratory, digestive, and neurological disorders. CT imaging was available.

Exclusion Criteria:

Patients with incomplete clinical or radiographic data were excluded.

Contacts and Locations

Locations

Site City State Country Postal Code
1 Sun Yat-sen Memorial Hospital, Sun Yat-sen University Guangzhou China

Sponsors and Collaborators

  • Sun Yat-Sen Memorial Hospital of Sun Yat-Sen University

Investigators

None specified.

Study Documents (Full-Text)

None provided.

More Information

Publications

None provided.
Responsible Party:
Li Li, Sun Yat-Sen Memorial Hospital of Sun Yat-Sen University, Sun Yat-Sen Memorial Hospital of Sun Yat-Sen University
ClinicalTrials.gov Identifier:
NCT05974163
Other Study ID Numbers:
  • SYSKY-2023-375-01
First Posted:
Aug 3, 2023
Last Update Posted:
Aug 3, 2023
Last Verified:
Jul 1, 2023
Individual Participant Data (IPD) Sharing Statement:
Undecided
Plan to Share IPD:
Undecided
Studies a U.S. FDA-regulated Drug Product:
No
Studies a U.S. FDA-regulated Device Product:
No
Additional relevant MeSH terms:

Study Results

No Results Posted as of Aug 3, 2023