Prediction of very early subclinical rejection with machine learning in kidney transplantation

被引:3
|
作者
Jo, Sung Jun [1 ]
Park, Jae Berm [1 ]
Lee, Kyo Won [1 ]
机构
[1] Sungkyunkwan Univ, Sch Med, Samsung Med Ctr, Dept Surg, 81 Irwon Ro, Seoul 06351, South Korea
关键词
RENAL-TRANSPLANTATION; PROTOCOL BIOPSIES; THERAPEUTIC APHERESIS; GRAFT-SURVIVAL; POSTTRANSPLANTATION; MORTALITY; UTILITY;
D O I
10.1038/s41598-023-50066-8
中图分类号
O [数理科学和化学]; P [天文学、地球科学]; Q [生物科学]; N [自然科学总论];
学科分类号
07 ; 0710 ; 09 ;
摘要
Protocol biopsy is a reliable method for assessing allografts status after kidney transplantation (KT). However, due to the risk of complications, it is necessary to establish indications and selectively perform protocol biopsies by classifying the high-risk group for early subclinical rejection (SCR). Therefore, the purpose of this study is to analyze the incidence and risk factors of early SCR (within 2 weeks) and develop a prediction model using machine learning. Patients who underwent KT at Samsung Medical Center from January 2005 to December 2020 were investigated. The incidence of SCR was investigated and risk factors were analyzed. For the development of prediction model, machine learning methods (random forest, elastic net, extreme gradient boosting [XGB]) and logistic regression were used and the performance between the models was evaluated. The cohorts of 987 patients were reviewed and analyzed. The incidence of SCR was 14.6%. Borderline cellular rejection (BCR) was the most common type of rejection, accounting for 61.8% of cases. In the analysis of risk factors, recipient age (OR 0.98, p = 0.03), donor BMI (OR 1.07, p = 0.02), ABO incompatibility (OR 0.15, p < 0.001), HLA II mismatch (two [OR 6.44, p < 0.001]), and ATG induction (OR 0.41, p < 0.001) were associated with SCR in the multivariate analysis. The logistic regression prediction model (average AUC = 0.717) and the elastic net model (average AUC = 0.712) demonstrated good performance. HLA II mismatch and induction type were consistently identified as important variables in all models. The odds ratio analysis of the logistic prediction model revealed that HLA II mismatch (OR 6.77) was a risk factor for SCR, while ATG induction (OR 0.37) was a favorable factor. Early SCR was associated with HLA II mismatches and induction agent and prediction model using machine learning demonstrates the potential to predict SCR.
引用
收藏
页数:11
相关论文
共 50 条
  • [21] Subclinical Antibody-mediated Rejection After Kidney Transplantation: Treatment Outcomes
    Parajuli, Sandesh
    Joachim, Emily
    Alagusundaramoorthy, Sayee
    Blazel, Justin
    Aziz, Fahad
    Garg, Neetika
    Muth, Brenda
    Mohamed, Maha
    Mandelbrot, Didier
    Zhong, Weixong
    Djamali, Arjang
    [J]. TRANSPLANTATION, 2019, 103 (08) : 1722 - 1729
  • [22] Acute Rejection in Kidney Transplantation and Early Beginning of Tacrolimus
    Salcedo-Herrera, Sergio
    Pinto Ramirez, Jessica L.
    Garcia-Lopez, Andrea
    Amaya-Nieto, Javier
    Giron-Luque, Fernando
    [J]. TRANSPLANTATION PROCEEDINGS, 2019, 51 (06) : 1758 - 1762
  • [23] Acute Rejection in Kidney Transplantation and Early Beginning of Tacrolimus
    Salcedo, Sergio
    Pinto, Jesica
    Amaya, Javier
    Garcia, Andrea
    [J]. TRANSPLANTATION, 2018, 102 : S642 - S642
  • [24] Automated machine learning for early prediction of acute kidney injury in acute pancreatitis
    Rufa Zhang
    Minyue Yin
    Anqi Jiang
    Shihou Zhang
    Xiaodan Xu
    Luojie Liu
    [J]. BMC Medical Informatics and Decision Making, 24
  • [25] Automated machine learning for early prediction of acute kidney injury in acute pancreatitis
    Zhang, Rufa
    Yin, Minyue
    Jiang, Anqi
    Zhang, Shihou
    Xu, Xiaodan
    Liu, Luojie
    [J]. BMC MEDICAL INFORMATICS AND DECISION MAKING, 2024, 24 (01)
  • [26] Application of interpretable machine learning for early prediction of prognosis in acute kidney injury
    Hu, Chang
    Tan, Qing
    Zhang, Qinran
    Li, Yiming
    Wang, Fengyun
    Zou, Xiufen
    Peng, Zhiyong
    [J]. COMPUTATIONAL AND STRUCTURAL BIOTECHNOLOGY JOURNAL, 2022, 20 : 2861 - 2870
  • [27] Subclinical Rejection in Renal Transplantation: Reappraised
    Mehta, Rajil
    Sood, Puneet
    Hariharan, Sundaram
    [J]. TRANSPLANTATION, 2016, 100 (08) : 1610 - 1618
  • [28] Subclinical rejection and borderline changes in early protocol biopsies following renal transplantation
    Roberts, IS
    Reddy, S
    Russell, C
    Davies, DR
    Friend, PJ
    Handa, AI
    Morris, PJ
    [J]. JOURNAL OF THE AMERICAN SOCIETY OF NEPHROLOGY, 2003, 14 : 433A - 433A
  • [29] Advantages of plasmatic CXCL-10 as a prognostic and diagnostic biomarker for the risk of rejection and subclinical rejection in kidney transplantation
    Millan, Olga
    Rovira, Jordi
    Guirado, Lluis
    Espinosa, Cristina
    Budde, Klemens
    Sommerer, Claudia
    Pineiro, Gaston J.
    Diekmann, Fritz
    Brunet, Merce
    [J]. CLINICAL IMMUNOLOGY, 2021, 229
  • [30] ADVANTAGES OF PLASMATIC CXCL10 AS A PROGNOSTIC & DIAGNOSTIC BIOMARKER FOR THE RISK OF REJECTION AND SUBCLINICAL REJECTION IN KIDNEY TRANSPLANTATION
    Millan, Olga
    Rovira, Jordi
    Guirado, Lluis
    Budde, Klemens
    Sommerer, Claudia
    Diekmann, Fritz
    Brunet, Merce
    [J]. TRANSPLANT INTERNATIONAL, 2021, 34 : 187 - 187