A feasibility study assessing quantitative indocyanine green angiographic predictors of reconstructive complications following nipple-sparing mastectomy

J. Dallia, C. L. Nguyen, A. Jindala, J. P. Epperleine, N. P. Hardya, C. Pulitano,S. Warrier,R. A. Cahill

JPRAS OPEN(2024)

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Abstract
Introduction: Immediate post-mastectomy breast reconstruction offers benefits; however, complications can compromise outcomes. Intraoperative indocyanine green fluorescence angiography (ICGFA) may mitigate perfusion-related complications (PRC); however, its interpretation remains subjective. Here, we examine and develop methods for ICGFA quantification, including machine learning (ML) algorithms for predicting complications. Methods: ICGFA video recordings of flap perfusion from a previous study of patients undergoing nipple-sparing mastectomy (NSM) with either immediate or staged immediate (delayed by a week due to perfusion insufficiency) reconstructions were analysed. Fluorescence intensity time series data were extracted, and perfusion parameters were interrogated for overall/regional associations with postoperative PRC. A naive Bayes ML model was subsequently trained on a balanced data subset to predict PRC from the extracted meta -data.
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Key words
Oncoplastic,Indocyanine green,ICG,ICGFA,Fluorescence angiography,Immediate breast reconstruction
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