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低教育水平的肾移植受者具有不同的临床特征和移植后结局:通过机器学习聚类揭示模式。

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

机构信息

Division of Nephrology and Hypertension, Department of Medicine, Mayo Clinic, Rochester, MN, USA.

Division of Transplant Surgery, Mayo Clinic, Phoenix, AZ, US.

出版信息

Ren Fail. 2023;45(2):2292163. doi: 10.1080/0886022X.2023.2292163. Epub 2023 Dec 12.

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.

摘要

背景

教育程度显著影响肾移植患者的移植后结果。然而,对于教育程度较低亚组的特定属性的研究仍不够充分。本研究利用无监督机器学习对肾移植受者进行基于教育程度的细分,并进一步分析这些细分与移植后结果之间的关系。

方法

使用 OPTN/UNOS 2017-2019 年的数据,对 20474 名接受肾移植且受教育程度低于大学/大专的受者进行共识聚类分析。分析集中于受者、供者和移植特征,旨在辨别每个聚类的关键属性,并比较移植后结果。

结果

四个不同的聚类簇出现。簇 1 由年轻、非糖尿病、首次接受移植且来自非高血压年轻供者的受者组成。簇 2 主要包括白人患者,他们要么预先接受,要么在三年内接受首次肾移植,主要来自活体供者。簇 3 包括年轻的再次移植受者,其特点是 PRA 升高,HLA 错配较少。相比之下,簇 4 捕获了年龄较大、糖尿病患者,他们在经过较长时间透析后接受移植,主要来自低级别供者。有趣的是,簇 2 显示出最有利的移植后结果。相比之下,簇 1、3 和 4 显示出移植失败和死亡的风险增加。

结论

通过无监督机器学习,本研究成功地将受教育程度较低的肾移植受者分为四个不同的聚类。值得注意的是,簇 2 的出色表现提供了宝贵的见解,强调了对这一患者群体进行精确风险评估和制定个体化移植策略的必要性,这可能会提高该患者群体的护理标准。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/0e76/11001364/736f36c14418/IRNF_A_2292163_F0001_C.jpg

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