Re-assessing prolonged cold ischemia time in kidney transplantation through machine learning consensus clustering.
Caroline C JadlowiecCharat ThongprayoonSupawit TangpanithandeeRachana PunukolluNapat LeeaphornMatthew CooperWisit CheungpasitpornPublished in: Clinical transplantation (2023)
Unsupervised machine learning characterized deceased donor kidney transplant recipients with prolonged CIT into two clusters with differing outcomes. Although Cluster 1 had more favorable recipient and donor characteristics and better survival, the outcomes observed in Cluster 2 were also satisfactory. Overall, both clusters demonstrated good survival suggesting opportunities for transplant centers to incrementally increase CIT.