用可解释的机器学习预测肾移植存活率

IF 1.6 4区 医学 Q4 IMMUNOLOGY
Raquel A. Fabreti-Oliveira , Evaldo Nascimento , Luiz Henrique de Melo Santos , Marina Ribeiro de Oliveira Santos , Adriano Alonso Veloso
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引用次数: 0

摘要

导言尽管过去几十年来肾脏异体移植的存活率取得了重大进展,但仍有一些风险因素会导致肾功能恶化,甚至失去移植肾。我们的目的是评估一种新的机器学习方法,以确定这些可预测肾移植患者早期移植物损失的变量,并评估其对改善临床决策的有用性。对所有这些数据进行了预处理,并利用所选特征开发了一种自动运行的机器学习算法;然后应用该算法对模型进行训练和参数化;最后,利用测试过的模型分析对预测临床结果影响最大的患者特征。我们使用曲线下面积(AUC)对模型进行了评估,并使用 SHapley Additive exPlanations(SHAP)算法对其预测结果进行解释。结果最终选定的模型精确度为 0.81,灵敏度为 0.61,特异性为 0.89,AUC 值为 0.84。在我们的模型中,肾移植患者出院时评估的血清肌酐水平被证明是决定异体移植物丢失的最重要因素。与体重指数低于正常范围的患者相比,肾移植前体重相当于体重指数(BMI)接近正常范围的患者发生移植物丢失的可能性较小。在我们的模型中,移植时的患者年龄和多瘤病毒(BKPyV)感染对临床结果有显著影响。结论我们的算法表明,影响早期异体移植物丢失的主要特征是出院时的血清肌酐水平以及移植前的体重、患者年龄和 BKPyV 感染等值。我们建议开发机器学习工具,以有效协助肾移植的医疗决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting kidney allograft survival with explainable machine learning

Introduction

Despite significant progress over the last decades in the survival of kidney allografts, several risk factors remain contributing to worsening kidney function or even loss of transplants. We aimed to evaluate a new machine learning method to identify these variables which may predict the early graft loss in kidney transplant patients and to assess their usefulness for improving clinical decisions.

Material and methods

A retrospective cohort study was carried out with 627 kidney transplant patients followed at least three months. All these data were pre-processed, and their selected features were used to develop an automatically working a machine learning algorithm; this algorithm was then applied for training and parameterization of the model; and finally, the tested model was then used for the analysis of patients' features that were the most impactful for the prediction of clinical outcomes. Our models were evaluated using the Area Under the Curve (AUC), and the SHapley Additive exPlanations (SHAP) algorithm was used to interpret its predictions.

Results

The final selected model achieved a precision of 0.81, a sensitivity of 0.61, a specificity of 0.89, and an AUC value of 0.84. In our model, serum creatinine levels of kidney transplant patients, evaluated at the hospital discharge, proved to be the most important factor in the decision-making for the allograft loss. Patients with a weight equivalent to a BMI closer to the normal range prior to a kidney transplant are less likely to experience graft loss compared to patients with a BMI below the normal range. The age of patients at transplantation and Polyomavirus (BKPyV) infection had significant impact on clinical outcomes in our model.

Conclusions

Our algorithm suggests that the main characteristics that impacted early allograft loss were serum creatinine levels at the hospital discharge, as well as the pre-transplant values such as body weight, age of patients, and their BKPyV infection. We propose that machine learning tools can be developed to effectively assist medical decision-making in kidney transplantation.

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来源期刊
Transplant immunology
Transplant immunology 医学-免疫学
CiteScore
2.10
自引率
13.30%
发文量
198
审稿时长
48 days
期刊介绍: Transplant Immunology will publish up-to-date information on all aspects of the broad field it encompasses. The journal will be directed at (basic) scientists, tissue typers, transplant physicians and surgeons, and research and data on all immunological aspects of organ-, tissue- and (haematopoietic) stem cell transplantation are of potential interest to the readers of Transplant Immunology. Original papers, Review articles and Hypotheses will be considered for publication and submitted manuscripts will be rapidly peer-reviewed and published. They will be judged on the basis of scientific merit, originality, timeliness and quality.
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