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Updated: Jul 11, 2025

Predicting Amputation using Local Circulating Mononuclear Progenitor Cells in Angioplasty-treated Patients with Critical Limb Ischemia
Published on: September 22, 2020
Patrick Fangping Yao1, Yi David Diao1, Eric P McMullen1
1Michael G. DeGroote School of Medicine, McMaster University, Hamilton, ON, Canada.
Machine learning (ML) models show promise in predicting amputation risk across various conditions, outperforming traditional methods. Further research is needed to improve model reliability and clinical application for this critical surgical outcome.
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