Nomogram-based Approach for Predicting Complication Risks Following Prepectoral Direct-to-Implant Breast Reconstruction

Plast Reconstr Surg. 2024 Dec 24. doi: 10.1097/PRS.0000000000011937. Online ahead of print.

Abstract

Background: Despite the recent steep rise in the use of prepectoral direct-to-implant (DTI) breast reconstruction, concerns remain regarding the potentially risk of complications, resulting in the selective application of the technique; however, the selection process was empirically based on the operator's decision. Using patient and operation-related factors, this study aimed to develop a nomogram for predicting postoperative complications following prepectoral DTI reconstruction.

Methods: Between August 2019 and March 2023, immediate prepectoral DTI was performed for all patients deemed suitable for one-stage implant-based reconstruction. A retrospective analysis of the complications was conducted for this cohort. The cohort was randomly divided into the training and validation datasets. A nomogram was developed using least absolute shrinkage and selection operator logistic regression and Firth's bias-reduced logistic regression.

Results: We analyzed 433 breasts (362 patients). Complications developed in 131 patients (33.5%), including early complications within 90 days postoperatively (26.1%), infection (1.8%), wound revision (9.7%), and reconstructive failure (3.5%). Increased age and body mass index (BMI), therapeutic mastectomy, reduction pattern mastectomy, implant size, and projection, and radiotherapy history were associated with early complications. For infection and reconstructive failure, increased age and BMI, heavier mastectomy specimen weight, implant projection, previous and adjuvant radiotherapy showed association. The internal validation of each model demonstrated areas under the receiver operating characteristic curve of 68.9%, 68.0%, 84.9%, and 79.0% for early complications, delayed wound healing, infection, and reconstructive failure, respectively.

Conclusion: A nomogram-based approach for predicting complications in prepectoral DTI reconstruction may enhance clinical decision-making, leading to optimized outcomes.