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Predicting Amputation using Local Circulating Mononuclear Progenitor Cells in Angioplasty-treated Patients with Critical Limb Ischemia
Published on: September 22, 2020
Sabrina M Wang1, H D Jeffry Hogg2,3, Devdutta Sangvai4
1Duke University School of Medicine, Durham, NC, United States.
Integrating machine learning (ML)-driven clinical decision support (CDS) for peripheral arterial disease (PAD) identification requires non-technical factors like leadership and user needs. Addressing organizational and equity challenges is crucial for real-world success.
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