Skip to main content
Clinical Trials/NCT06494748
NCT06494748
Completed
Not Applicable

Evaluating the Efficacy of Artificial Intelligence Models in Predicting Intensive Care Unit Admission Needs

Kanuni Sultan Suleyman Training and Research Hospital1 site in 1 country8,043 target enrollmentJuly 15, 2024

Overview

Phase
Not Applicable
Intervention
Not specified
Conditions
Intensive Care Unit
Sponsor
Kanuni Sultan Suleyman Training and Research Hospital
Enrollment
8043
Locations
1
Primary Endpoint
Intensive Care Unit Need
Status
Completed
Last Updated
last year

Overview

Brief Summary

This study aims to evaluate the efficacy of two artificial intelligence (AI) models in predicting the need for ICU admissions. By comparing the AI models' predictions with actual clinical decisions, we aim to determine their accuracy and potential utility in clinical decision support.

Detailed Description

Intensive care units (ICUs) are critical components of healthcare systems, providing life-saving care to patients with severe and life-threatening conditions. Timely and accurate prediction of ICU admission needs is essential for improving patient outcomes and optimizing hospital resource allocation. Delayed ICU admissions have been consistently associated with higher morbidity and mortality rates. With the advent of artificial intelligence (AI) in healthcare, there is an opportunity to enhance clinical decision-making by leveraging AI models to predict ICU needs accurately. AI models, such as ChatGPT and Gemini, can process vast amounts of complex data to identify patterns that might not be immediately evident to human clinicians, potentially improving the speed and accuracy of ICU admission decisions. This is an observational retrospective study. Data were collected from electronic health records (EHRs) from a hospital retrospectively. Data were extracted from EHRs and included: Demographic data: Age, gender, and basic patient characteristics. Clinical parameters: Medication information, consultation details, ECG findings, imaging results, comorbid conditions (e.g., diabetes mellitus, hypertension, heart failure, COPD, cerebrovascular events), and laboratory values (e.g., hemoglobin, hematocrit, platelet count, PT, INR, procalcitonin, ALT, AST, bilirubin, sodium, potassium, chloride, glucose, creatinine, urea, albumin, thyroid function tests). Prediction data: AI model predictions and actual ICU admission decisions.

Registry
clinicaltrials.gov
Start Date
July 15, 2024
End Date
October 2, 2024
Last Updated
last year
Study Type
Observational
Sex
All

Investigators

Responsible Party
Principal Investigator
Principal Investigator

Engin Ihsan Turan

anesthesiology and reanimation specialist

Kanuni Sultan Suleyman Training and Research Hospital

Eligibility Criteria

Inclusion Criteria

  • Patients over the age of 18
  • Patients consulted for anesthesia regarding intensive care needs
  • Patients with sufficient data in the hospital's electronic health record system

Exclusion Criteria

  • Patients with insufficient data in the hospital records

Outcomes

Primary Outcomes

Intensive Care Unit Need

Time Frame: 1 day

The primary outcome measure of this study is the accuracy of the predictions made by the artificial intelligence (AI) models, ChatGPT and Gemini, regarding the need for ICU admissions. This will be evaluated by comparing the AI model predictions to the actual clinical decisions made regarding ICU admissions.

Study Sites (1)

Loading locations...

Similar Trials