Research on Multimodal Multi-objective Integrated Machine Algorithm for Hip Replacement Surgery

Active, not recruitingOBSERVATIONAL
Enrollment

6,271

Participants

Timeline

Start Date

October 24, 2024

Primary Completion Date

October 31, 2024

Study Completion Date

December 31, 2025

Conditions
Hip Replacement Surgery
Interventions
OTHER

Multimodal Data Integration and Multi-Task Learning

This study utilizes a multimodal data integration and multi-task learning approach to predict perioperative events after hip replacement surgery. By combining various data types, including demographics, surgical details, medical history, and lab results, the model enhances prediction accuracy for outcomes like AKI, blood transfusion needs, and ICU transfers. The use of ensemble learning algorithms such as CatBoost optimizes the platform's performance, offering a unique method for clinical decision support.

All Listed Sponsors
lead

Jingkun Liu

OTHER