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生长分化因子15作为外周动脉疾病主要肢体不良事件预后生物标志物的研究

Investigation of Growth Differentiation Factor 15 as a Prognostic Biomarker for Major Adverse Limb Events in Peripheral Artery Disease.

作者信息

Li Ben, Shaikh Farah, Younes Houssam, Abuhalimeh Batool, Zamzam Abdelrahman, Abdin Rawand, Qadura Mohammad

机构信息

Department of Surgery, University of Toronto, Toronto, ON M5S 1A1, Canada.

Division of Vascular Surgery, St. Michael's Hospital, Unity Health Toronto, University of Toronto, 30 Bond Street, Suite 7-076, Toronto, ON M5B 1W8, Canada.

出版信息

J Clin Med. 2025 Jul 24;14(15):5239. doi: 10.3390/jcm14155239.

Abstract

Peripheral artery disease (PAD) impacts more than 200 million individuals globally and leads to mortality and morbidity secondary to progressive limb dysfunction and amputation. However, clinical management of PAD remains suboptimal, in part because of the lack of standardized biomarkers to predict patient outcomes. Growth differentiation factor 15 (GDF15) is a stress-responsive cytokine that has been studied extensively in cardiovascular disease, but its investigation in PAD remains limited. This study aimed to use explainable statistical and machine learning methods to assess the prognostic value of GDF15 for limb outcomes in patients with PAD. This prognostic investigation was carried out using a prospectively enrolled cohort comprising 454 patients diagnosed with PAD. At baseline, plasma GDF15 levels were measured using a validated multiplex immunoassay. Participants were monitored over a two-year period to assess the occurrence of major adverse limb events (MALE), a composite outcome encompassing major lower extremity amputation, need for open/endovascular revascularization, or acute limb ischemia. An Extreme Gradient Boosting (XGBoost) model was trained to predict 2-year MALE using 10-fold cross-validation, incorporating GDF15 levels along with baseline variables. Model performance was primarily evaluated using the area under the receiver operating characteristic curve (AUROC). Secondary model evaluation metrics were accuracy, sensitivity, specificity, negative predictive value (NPV), and positive predictive value (PPV). Prediction histogram plots were generated to assess the ability of the model to discriminate between patients who develop vs. do not develop 2-year MALE. For model interpretability, SHapley Additive exPlanations (SHAP) analysis was performed to evaluate the relative contribution of each predictor to model outputs. The mean age of the cohort was 71 (SD 10) years, with 31% ( = 139) being female. Over the two-year follow-up period, 157 patients (34.6%) experienced MALE. The XGBoost model incorporating plasma GDF15 levels and demographic/clinical features achieved excellent performance for predicting 2-year MALE in PAD patients: AUROC 0.84, accuracy 83.5%, sensitivity 83.6%, specificity 83.7%, PPV 87.3%, and NPV 86.2%. The prediction probability histogram for the XGBoost model demonstrated clear separation for patients who developed vs. did not develop 2-year MALE, indicating strong discrimination ability. SHAP analysis showed that GDF15 was the strongest predictive feature for 2-year MALE, followed by age, smoking status, and other cardiovascular comorbidities, highlighting its clinical relevance. Using explainable statistical and machine learning methods, we demonstrated that plasma GDF15 levels have important prognostic value for 2-year MALE in patients with PAD. By integrating clinical variables with GDF15 levels, our machine learning model can support early identification of PAD patients at elevated risk for adverse limb events, facilitating timely referral to vascular specialists and aiding in decisions regarding the aggressiveness of medical/surgical treatment. This precision medicine approach based on a biomarker-guided prognostication algorithm offers a promising strategy for improving limb outcomes in individuals with PAD.

摘要

外周动脉疾病(PAD)在全球影响着超过2亿人,并导致继发于进行性肢体功能障碍和截肢的死亡率和发病率。然而,PAD的临床管理仍未达到最佳水平,部分原因是缺乏预测患者预后的标准化生物标志物。生长分化因子15(GDF15)是一种应激反应细胞因子,已在心血管疾病中得到广泛研究,但在PAD中的研究仍然有限。本研究旨在使用可解释的统计和机器学习方法评估GDF15对PAD患者肢体预后的预测价值。 这项预后研究使用了一个前瞻性纳入的队列,该队列由454名被诊断为PAD的患者组成。在基线时,使用经过验证的多重免疫测定法测量血浆GDF15水平。对参与者进行了为期两年的监测,以评估主要不良肢体事件(MALE)的发生情况,MALE是一个综合结果,包括主要下肢截肢、开放/血管内血运重建的需求或急性肢体缺血。使用极端梯度提升(XGBoost)模型,通过10折交叉验证来预测2年MALE,纳入GDF15水平以及基线变量。模型性能主要使用受试者操作特征曲线下面积(AUROC)进行评估。次要模型评估指标包括准确性、敏感性、特异性、阴性预测值(NPV)和阳性预测值(PPV)。生成预测直方图以评估模型区分发生与未发生2年MALE的患者的能力。为了实现模型的可解释性,进行了SHapley加性解释(SHAP)分析,以评估每个预测因子对模型输出的相对贡献。 该队列的平均年龄为71(标准差10)岁,31%(n = 139)为女性。在两年的随访期内,157名患者(34.6%)发生了MALE。纳入血浆GDF15水平和人口统计学/临床特征的XGBoost模型在预测PAD患者2年MALE方面表现出色:AUROC为0.84,准确性为83.5%,敏感性为83.6%,特异性为83.7%,PPV为87.3%,NPV为86.2%。XGBoost模型的预测概率直方图显示,发生与未发生2年MALE的患者有明显区分,表明其具有很强的区分能力。SHAP分析表明,GDF15是2年MALE最强的预测特征,其次是年龄、吸烟状况和其他心血管合并症,突出了其临床相关性。 使用可解释的统计和机器学习方法,我们证明血浆GDF15水平对PAD患者的2年MALE具有重要的预后价值。通过将临床变量与GDF15水平相结合,我们的机器学习模型可以支持早期识别有不良肢体事件高风险的PAD患者,便于及时转诊至血管专科医生,并有助于做出关于药物/手术治疗积极性的决策。这种基于生物标志物引导的预后算法的精准医学方法为改善PAD患者的肢体预后提供了一种有前景的策略。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f77a/12347468/ac4763690b52/jcm-14-05239-g001.jpg

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