Clinical Trials Logo

Clinical Trial Summary

Predicting surgical risks are important to patients and clinicians for shared decision making process and management plan. The study team aim to conduct a hybrid type 1 effectiveness implementation study design. A Randomized Controlled Trial where participants undergoing surgery In Singapore General Hospital (SGH) will be allocated in 1:1 ratio to CARES-guided (unblinded to risk level) or to unguided (blinded to risk level) groups. All participants undergoing elective surgeries in SGH will be considered eligible for enrolment into the study. For elective surgeries, the participants will mainly be recruited from Pre-admission Centre. The outcome of this study will help patients and clinicians make better decisions together. Firstly, the deployment of the CARES model in a live clinical environment could potentially reduce postoperative complications and improve the quality of surgical care provision. The findings from this study would allow fine-tuning of CARES as well as further deployment of additional risk models for specific complications other than Mortality and ICU stay. This in turn would translate to better health for the surgical population and improved cost-effectiveness. This is significant as the surgical population is expected to continuously grow due to improved access to care, better technologies and the aging population. Secondly, IMAGINATIVE will be instrumental in improving our understanding of the deployment strategies for AI/ML predictive models in healthcare. Models such as CARES could be the standard of care in the future if proven to improve the health outcomes of patients. As model deployments are costly and can be disruptive to the EMR processes, this study would be the initial spark for future deployment and health services research focusing on improving the value of these model deployments.


Clinical Trial Description

n/a


Study Design


Related Conditions & MeSH terms


NCT number NCT05809232
Study type Interventional
Source Singapore General Hospital
Contact Hairil Rizal Abdullah, MBBS
Phone 63265428
Email hairil.rizal.abdullah@singhealth.com.sg
Status Not yet recruiting
Phase N/A
Start date May 2023
Completion date December 2027

See also
  Status Clinical Trial Phase
Recruiting NCT05040958 - Carotid Atherosclerotic Plaque Load and Neck Circumference
Completed NCT04440553 - A Mobile App to Increase Physical Activity in Students N/A
Completed NCT04966598 - Machine Learning Predict Acute Kidney Injury in Patients Following Cardiac Surgery
Completed NCT04977687 - Machine Learning Predict Renal Replacement Therapy After Cardiac Surgery
Completed NCT04828655 - Analysis of Bioparametric Measures for Correlating Daily Habits and Reducing Blood Pressure N/A
Recruiting NCT06277297 - Prognotic Role of CMR in Takotsubo Syndrome
Recruiting NCT06204133 - Model Study on Cervical Cancer Screening Strategies and Risk Prediction
Completed NCT05085743 - Prediction of Endotracheal Tube Depth by Using Deep Convolutional Neural Networks
Not yet recruiting NCT04399811 - Near-infrared Vision for Microcirculatory Status
Enrolling by invitation NCT05860777 - Harnessing Health IT to Promote Equitable Care for Patients With Limited English Proficiency and Complex Care Needs N/A
Recruiting NCT05906719 - Machine Vision Based MDS-UPDRS III Machine Rating
Completed NCT06278272 - AI Evaluation of Pancreatic Exocrine Insufficiency in CP Patients
Withdrawn NCT05442762 - Social Media-based Vaccine Confidence and Hesitancy Monitoring
Not yet recruiting NCT05797064 - Establishment of a Feasibility Model for NOSE Surgery Based on Machine Learning
Recruiting NCT05410171 - Machine Learning-based Early Clinical Warning of High-risk Patients N/A
Active, not recruiting NCT04192175 - Identification of Patients Admitted With COPD Exacerbations and Predicting Readmission Risk Using Machine Learning
Completed NCT05433519 - Diagnostic Accuracy of a Novel Machine Learning Algorithm to Estimate Gestational Age
Recruiting NCT05858892 - Comparison of an Artificial Intelligence-Assisted Rehabilitation Program for Shoulder Musculoskeletal Disorders and the Clinical Decision Making of Therapists
Completed NCT06208046 - Predict 5-Year Survival in Elderly Gastric Cancer
Completed NCT05093803 - Improvement of Physical and Physiological Parameters Through the Use of a Mobile App N/A