Longitudinal Changes in Peritoneal Transport and Their Impact on Dialysis Outcomes: A Machine Learning Approach Integrating Clinical and Biomarker Data.

IF 4.3 3区 医学 Q1 UROLOGY & NEPHROLOGY
Chia-Chun Lee, Jo-Yen Chao, Kuan-Hung Liu, Wei-Ren Lin, Te-Hui Kuo, An-Bang Wu, Ming-Cheng Wang, Sheng-Hsiang Lin, Chin-Chung Tseng
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引用次数: 0

Abstract

Introduction: Longitudinal changes in peritoneal transport patterns and the predictive role of dialysate biomarkers remain poorly understood. This study assessed the impact of peritoneal equilibration test (PET) trajectory changes on clinical outcomes, explored biomarker contributions, and developed a machine learning-based model to predict peritoneal transport transitions.

Methods: This prospective study enrolled peritoneal dialysis (PD) patients aged ≥18 years from 2016 to 2017, with follow-up until 2020. Patients with missing PET data or acute illness within 2 months of PET were excluded. Based on longitudinal PET changes, patients were classified into four trajectory groups: persistent high (HH), high to low (HL), low to high (LH), and persistent low (LL). Clinical outcomes included technique failure and mortality. Dialysate biomarkers were quantified using ELISA and standardized by appearance rates (ARs). A Support Vector Machine (SVM) model was developed to predict PET trajectory changes using clinical and biomarker data. Model performance was assessed using accuracy, precision, recall, F1-score, and area under the curve (AUC).

Results: Among 132 eligible patients, cumulative risk analysis identified the HH group as having the highest risk of adverse outcomes, followed by LH, LL, and HL groups (p = 0.009). Based on prognostic trends, HH and LH were reclassified as the future high (FH) group, while HL and LL were grouped as the future low (FL) group. The FH group had a significantly higher risk of adverse outcomes than the FL group (HR: 7.87, 95% CI: 1.81-34.10, p = 0.005). Matrix metalloproteinase 2 (MMP2) AR and plasminogen activator inhibitor 1 (PAI-1) AR differed significantly across PET trajectory groups (p < 0.001 for both), with the HH group exhibiting the highest biomarker levels (MMP2 AR: 195.0 ng/min, IQR: 145.2-230.0; PAI-1 AR: 2.63 ng/min, IQR: 1.29-4.51). The SVM model integrating clinical and biomarker data outperformed models using clinical data alone, achieving a higher AUC (0.87 vs. 0.71). Risk visualization curves identified males with elevated biomarkers as particularly vulnerable to transitioning to high transporter status.

Conclusions: Sustained or transitioning to a high transporter status significantly increases the risk of adverse outcomes in PD patients. Higher MMP2 AR and PAI-1 AR levels are associated with an increased risk of adverse PET trajectory changes, enhancing risk stratification. Integrating biomarker-based predictive models with clinical data improves prognostic accuracy, supporting early intervention strategies for high risk patients.

腹膜转运的纵向变化及其对透析结果的影响:一种整合临床和生物标志物数据的机器学习方法。
腹膜转运模式的纵向变化和透析液生物标志物的预测作用仍然知之甚少。本研究评估了腹膜平衡试验(PET)轨迹变化对临床结果的影响,探索了生物标志物的贡献,并开发了一种基于机器学习的模型来预测腹膜转运转变。方法:本前瞻性研究纳入2016 - 2017年年龄≥18岁的腹膜透析(PD)患者,随访至2020年。排除PET数据缺失或PET后2个月内出现急性疾病的患者。根据纵向PET变化,将患者分为四个轨迹组:持续高(HH)、高到低(HL)、低到高(LH)和持续低(LL)。临床结果包括技术失败和死亡率。透析液生物标志物采用酶联免疫吸附测定(ELISA)进行定量,并采用外观率(AR)进行标准化。利用临床和生物标志物数据,开发了支持向量机(SVM)模型来预测PET轨迹变化。通过准确性、精密度、召回率、f1评分和曲线下面积(AUC)来评估模型的性能。结果:在132例符合条件的患者中,累积风险分析发现HH组不良结局风险最高,其次是LH、LL和HL组(p = 0.009)。根据预后趋势,HH和LH被重新归类为未来高(FH)组,HL和LL被归类为未来低(FL)组。FH组不良结局发生风险显著高于FL组(HR: 7.87, 95% CI: 1.81 ~ 34.10, p = 0.005)。基质金属肽酶2 (MMP2) AR和纤溶酶原激活物抑制剂1 (PAI-1) AR在PET轨迹组之间差异显著(p < 0.001), HH组表现出最高的生物标志物水平(MMP2 AR: 195.0 ng/min, IQR: 145.2-230.0;PAI-1 AR: 2.63 ng/min, IQR: 1.29-4.51)。整合临床和生物标志物数据的SVM模型优于单独使用临床数据的模型,获得更高的AUC(0.87比0.71)。风险可视化曲线表明,生物标志物升高的男性特别容易过渡到高转运蛋白状态。结论:持续或过渡到高转运蛋白状态显著增加PD患者不良结局的风险。较高的MMP2 AR和PAI-1 AR水平与不良PET轨迹改变的风险增加相关,增强了风险分层。将基于生物标志物的预测模型与临床数据相结合可提高预后准确性,支持高风险患者的早期干预策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
American Journal of Nephrology
American Journal of Nephrology 医学-泌尿学与肾脏学
CiteScore
7.50
自引率
2.40%
发文量
74
审稿时长
4-8 weeks
期刊介绍: The ''American Journal of Nephrology'' is a peer-reviewed journal that focuses on timely topics in both basic science and clinical research. Papers are divided into several sections, including:
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