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SH-LPS System in Preoperative Planning for Liver Resection: a Randomized Controlled Trial
Effective preoperative planning and real-time intraoperative guidance are crucial for performing accurate liver resections. To address this need, the researchers have designed advanced 3D-printed liver models using a self-healing elastomer, created through the copolymerization of 4-acryloylmorpholine (ACMO) and methoxy poly(ethylene glycol) acrylate (mPEGA). These models demonstrate outstanding healing properties, swiftly restoring their structure within minutes at room temperature, and quickly recovering after incisions. In previous studies, Professor Yuhua Zhang, the project applicant, collaborated with a team from Zhejiang University to develop a 3D-printed liver model that is self-healing and reusable for repeated cutting. They preliminarily explored the feasibility of applying this model for preoperative planning and surgical training for liver surgeries. The results were published in Nature Communications (Lu et al., Nat Commun. Dec 19;14(1):8447). Building on this, the applicant intends to establish a personalized liver surgery planning system (Personalized Liver Surgery Planning System Based on High-Fidelity 3D Printed Self-Healing Liver Models, SH-LPS), which will assess, through a randomized controlled trial, the value of SH-LPS in improving liver surgery efficiency and safety.
Age
18 - 80 years
Sex
ALL
Healthy Volunteers
No
Start Date
April 15, 2025
Primary Completion Date
January 1, 2026
Completion Date
June 1, 2026
Last Updated
April 4, 2025
100
ESTIMATED participants
3D printed models
DEVICE
CT or MRI image
OTHER
Lead Sponsor
Zhejiang Cancer Hospital
NCT07216937
NCT07161076
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