Machine Learning Using Multi-Site Cytokine Levels is Predictive of Primary Graft Dysfunction Following Lung Transplantation
Purpose: Primary graft dysfunction (PGD) is a syndrome of acute lung injury that occurs in approximately 30% of lung transplant recipients and predisposes to worse long-term outcomes. There is an urgent need to develop point-of-care methods to predict PGD post-transplant. To date, no human studies have investigated cytokine levels in donor lung perfusate, and no multivariable studies have used patient-matched biospecimens from multiple sites. We aimed to identify cytokines at multiple sites whose levels could predict PGD development.
Source: The Journal of Heart and Lung Transplantation - Category: Transplant Surgery Authors: , D. Nord, L. Langerude, H. Moussa, T. Machuca, M. Rackauskas, A. Sharma, C. Lin, A. Emtiazjoo, C. Atkinson Source Type: research
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