Distinct clinical profiles and post-transplant outcomes among kidney transplant recipients with lower education levels: uncovering patterns through machine learning clustering

  • Charat Thongprayoon
  • , Jing Miao
  • , Caroline Jadlowiec
  • , Shennen A. Mao
  • , Michael Mao
  • , Napat Leeaphorn
  • , Wisit Kaewput
  • , Pattharawin Pattharanitima
  • , Oscar A.Garcia Valencia
  • , Supawit Tangpanithandee
  • , Pajaree Krisanapan
  • , Supawadee Suppadungsuk
  • , Pitchaphon Nissaisorakarn
  • , Matthew Cooper
  • , Wisit Cheungpasitporn

Research output: Contribution to journalArticlepeer-review

6 Scopus citations

Abstract

Background: Educational attainment significantly influences post-transplant outcomes in kidney transplant patients. However, research on specific attributes of lower-educated subgroups remains underexplored. This study utilized unsupervised machine learning to segment kidney transplant recipients based on education, further analyzing the relationship between these segments and post-transplant results. Methods: Using the OPTN/UNOS 2017–2019 data, consensus clustering was applied to 20,474 kidney transplant recipients, all below a college/university educational threshold. The analysis concentrated on recipient, donor, and transplant features, aiming to discern pivotal attributes for each cluster and compare post-transplant results. Results: Four distinct clusters emerged. Cluster 1 comprised younger, non-diabetic, first-time recipients from non-hypertensive younger donors. Cluster 2 predominantly included white patients receiving their first-time kidney transplant either preemptively or within three years, mainly from living donors. Cluster 3 included younger re-transplant recipients, marked by elevated PRA, fewer HLA mismatches. In contrast, Cluster 4 captured older, diabetic patients transplanted after prolonged dialysis duration, primarily from lower-grade donors. Interestingly, Cluster 2 showcased the most favorable post-transplant outcomes. Conversely, Clusters 1, 3, and 4 revealed heightened risks for graft failure and mortality in comparison. Conclusions: Through unsupervised machine learning, this study proficiently categorized kidney recipients with lesser education into four distinct clusters. Notably, the standout performance of Cluster 2 provides invaluable insights, underscoring the necessity for adept risk assessment and tailored transplant strategies, potentially elevating care standards for this patient cohort.

Original languageEnglish
Article number2292163
JournalRenal Failure
Volume45
Issue number2
DOIs
StatePublished - 2023
Externally publishedYes

Keywords

  • Low education level
  • clustering
  • kidney transplant
  • machine learning
  • post-transplantation outcome

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