Xie Si-Wei, Huang Jia-Xin, Qu Hui-Min, Feng Zhi-Gang, Wang Xin-Yi, Du Zhen-Guang, Zhang Ming-Hui, Wei Shu-Qing, Li Jun, Hong Li-Li, Wang Li-Li, Bai Jing-Hui, Wang Kai-Feng, Zhang Xue-Bang, Shen Xian, Chen Xiao-Dong, Tian Le, Zhang Xi, Yang Min, Li Ning, Tang Meng, Song Chen-Xin, Zou Bao-Hua, Qin Sheng-Ling, Qin Rong, Cong Ming-Hua
Johns Hopkins Bloomberg School of Public Health, Baltimore, MD, USA.
Comprehensive Oncology Department, National Cancer Center/National Clinical Research Center for Cancer/Cancer Hospital, Chinese Academy of Medical Sciences and Peking Union Medical College, Beijing, China.
EClinicalMedicine. 2025 Jul 2;85:103330. doi: 10.1016/j.eclinm.2025.103330. eCollection 2025 Jul.
Electronic patient-reported outcome (ePRO) systems have significant potential for providing individualized and continuous nutritional management for patients with cancer. However, adherence to ePRO-guided nutritional interventions varies significantly, and the key factors associated with adherence remain poorly understood. This study aimed to assess adherence to nutritional targets via ePRO platforms and identify predictors influencing adherence to optimize management strategies.
This multicenter, prospective longitudinal cohort study included 8268 patients with cancer from March 2021 to April 2024 (registration number: ChiCTR2100047535). Adherence was defined as the ratio of actual to prescribed intake for both total energy (TEI) and total protein (TPI). Adherence to TEI and TPI targets was monitored throughout the study period based on prescriptions generated by ePRO-guided nutritional management. The proportion of actual/prescribed intake <60% was set as low adherence. Explainable machine learning models were used to identify predictive features, with SHapley Additive exPlanation (SHAP) analysis ranking variable importance. Two-way fixed-effect logistic regression models were applied to further assess longitudinal predictors of adherence.
Among 8268 patients (median age, 61 years; 61.9% male, 38.1% female), 2727 (33.0%) and 3332 (40.3%) failed to meet TEI and TPI targets, respectively. The LightGBM model achieved superior predictive performance (area under the receiver operating characteristic curve: TEI = 0.861, TPI = 0.821). Key predictors of lower adherence to both TEI and TPI included advanced TNM stage (TEI: odds ratio [OR] = 1.18, 95% CI: 1.11-1.26; TPI: OR = 1.39, 95% CI: 1.27-1.53), poorer Eastern Cooperative Oncology Group performance status (TEI: OR = 1.18, 95% CI: 1.11-1.26; TPI: OR = 1.39, 95% CI: 1.27-1.53), higher Patient-Generated Subjective Global Assessment scores (TEI: OR = 1.08, 95% CI: 1.08-1.09; TPI: OR = 1.08, 95% CI: 1.07-1.10), elevated platelet counts (TEI: OR = 1.01, 95% CI: 1.00-1.01; TPI: OR = 1.01, 95% CI: 1.00-1.01), walking time <60 min/day (TEI: OR = 2.42, 95% CI: 2.18-2.69; TPI: OR = 2.59, 95% CI: 2.19-3.06), sleep duration <8 h/day (TEI: OR = 1.48, 95% CI: 1.25-1.76; TPI: OR = 1.41, 95% CI: 1.29-1.52), and nausea (TEI: OR = 1.32, 95% CI: 1.23-1.41; TPI: OR = 1.44, 95% CI: 1.37-1.51). Conversely, factors associated with higher adherence included female sex and higher levels of serum albumin, alanine transaminase, and glucose.
In this large multicenter study, over one-third of patients failed to meet ePRO-guided nutritional targets, highlighting substantial challenges in adherence. Further, we identified key predictors associated with low adherence to ePRO-guided nutritional management in patients with cancer, which might help identify at-risk patients and guide future research.
Wu Jieping Medical Foundation (320.6750.2021-02-22).
电子患者报告结局(ePRO)系统在为癌症患者提供个性化和持续营养管理方面具有巨大潜力。然而,对ePRO指导的营养干预措施的依从性差异很大,且与依从性相关的关键因素仍知之甚少。本研究旨在通过ePRO平台评估对营养目标的依从性,并确定影响依从性的预测因素,以优化管理策略。
这项多中心、前瞻性纵向队列研究纳入了2021年3月至2024年4月期间的8268例癌症患者(注册号:ChiCTR2100047535)。依从性定义为总能量(TEI)和总蛋白(TPI)的实际摄入量与规定摄入量之比。在整个研究期间,根据ePRO指导的营养管理生成的处方监测对TEI和TPI目标的依从性。实际/规定摄入量<60%的比例被设定为低依从性。使用可解释的机器学习模型来识别预测特征,并通过SHapley加法解释(SHAP)分析对变量重要性进行排名。应用双向固定效应逻辑回归模型进一步评估依从性的纵向预测因素。
在8268例患者(中位年龄61岁;男性61.9%,女性38.1%)中,分别有2727例(33.0%)和3332例(40.3%)未达到TEI和TPI目标。LightGBM模型具有卓越的预测性能(受试者工作特征曲线下面积:TEI = 0.861,TPI = 0.821)。对TEI和TPI依从性较低的关键预测因素包括晚期TNM分期(TEI:比值比[OR]=1.18,95%置信区间:1.11-至1.26;TPI:OR = 1.39,95%置信区间:1.27-1.53)、东部肿瘤协作组(ECOG)较差的体能状态(TEI:OR = 1.18,95%置信区间:1.11-1.26;TPI:OR = = 1.39,95%置信区间:1.27-1.53)、较高的患者主观整体评估(PG-SGA)评分(TEI:OR = 1.08,95%置信区间:1.08-1.09;TPI:OR = 1.08,95%置信区间:1.07-1.10)、血小板计数升高(TEI:OR = 1.01,95%置信区间:1.00-1.01;TPI:OR = 1.01,95%置信区间:1.00-1.01)、每天步行时间<60分钟(TEI:OR = 2.42,95%置信区间:2.18-2.69;TPI:OR = 2.59,95%置信区间:2.19-3.06)、睡眠时间<8小时/天(TEI:OR = 1.48,95%置信区间:1.25-1.76;TPI:OR = = 1.41,95%置信区间:1.29-1.52)以及恶心(TEI:OR = 1.32,95%置信区间:1.23-1.41;TPI:OR = 1.44,95%置信区间:1.37-1.51)。相反,与较高依从性相关的因素包括女性以及血清白蛋白、丙氨酸转氨酶和葡萄糖水平较高。
在这项大型多中心研究中,超过三分之一的患者未达到ePRO指导的营养目标,凸显了依从性方面的重大挑战。此外,我们确定了癌症患者对ePRO指导的营养管理依从性低的关键预测因素,这可能有助于识别高危患者并指导未来研究。
吴阶平医学基金会(320.6750.2021-02-22)