Chengdu Medical College, Chengdu, 610083, Sichuan, China.
Aging Clin Exp Res. 2024 May 18;36(1):112. doi: 10.1007/s40520-023-02689-0.
In older stroke patients with frailty, nutritional deficiencies can amplify their susceptibility, delay recovery, and deteriorate prognosis. A precise predictive model is crucial to assess their nutritional risk, enabling targeted interventions for improved clinical outcomes.
To develop and externally validate a nutritional risk prediction model integrating general demographics, physical parameters, psychological indicators, and biochemical markers. The aim is to facilitate the early identification of older stroke patients requiring nutritional intervention.
This was a multicenter cross-sectional study. A total of 570 stroke patients were included, 434 as the modeling set and 136 as the external validation set. The least absolute shrinkage selection operator (LASSO) regression analysis was used to select the predictor variables. Internal validation was performed using Bootstrap resampling (1000 iterations). The nomogram was constructed based on the results of logistic regression. The performance assessment relied on the receiver operating characteristic curve (ROC), Hosmer--Lemeshow test, calibration curves, Brier score, and decision curve analysis (DCA).
The predictive nomogram encompassed seven pivotal variables: Activities of Daily Living (ADL), NIHSS score, diabetes, Body Mass Index (BMI), grip strength, serum albumin levels, and depression. Together, these variables comprehensively evaluate the overall health and nutritional status of elderly stroke patients, facilitating accurate assessment of their nutritional risk. The model exhibited excellent accuracy in both the development and external validation sets, evidenced by AUC values of 0.934 and 0.887, respectively. Such performance highlights its efficacy in pinpointing elderly stroke patients who require nutritional intervention. Moreover, the model showed robust goodness of fit and practical applicability, providing essential clinical insights to improve recovery and prognosis for patients prone to malnutrition.
Elderly individuals recovering from stroke often experience significant nutritional deficiencies. The nomogram we devised accurately assesses this risk by combining physiological, psychological, and biochemical metrics. It equips healthcare providers with the means to actively screen for and manage the nutritional care of these patients. This tool is instrumental in swiftly identifying those in urgent need of targeted nutritional support, which is essential for optimizing their recovery and managing their nutrition more effectively.
在体弱的老年中风患者中,营养不足会增加他们的易感性,延缓康复,并恶化预后。精确的预测模型对于评估他们的营养风险至关重要,从而能够进行有针对性的干预,以改善临床结果。
开发并外部验证一个整合一般人口统计学、身体参数、心理指标和生化标志物的营养风险预测模型。目的是帮助早期识别需要营养干预的老年中风患者。
这是一项多中心横断面研究。共纳入 570 例中风患者,其中 434 例作为建模集,136 例作为外部验证集。使用最小绝对值收缩选择算子(LASSO)回归分析选择预测变量。内部验证采用 Bootstrap 重采样(1000 次迭代)。基于逻辑回归的结果构建了列线图。使用受试者工作特征曲线(ROC)、Hosmer-Lemeshow 检验、校准曲线、Brier 评分和决策曲线分析(DCA)评估性能。
预测列线图包括七个关键变量:日常生活活动(ADL)、NIHSS 评分、糖尿病、体重指数(BMI)、握力、血清白蛋白水平和抑郁。这些变量综合评估了老年中风患者的整体健康和营养状况,有助于准确评估其营养风险。该模型在开发和外部验证集均表现出优异的准确性,AUC 值分别为 0.934 和 0.887。这种性能突出了其在确定需要营养干预的老年中风患者方面的有效性。此外,该模型表现出良好的拟合优度和实际适用性,为改善易发生营养不良的患者的康复和预后提供了重要的临床见解。
从中风中恢复的老年人经常经历显著的营养不足。我们设计的列线图通过结合生理、心理和生化指标准确评估这种风险。它为医疗保健提供者提供了主动筛查和管理这些患者营养护理的手段。该工具在快速识别那些急需针对性营养支持的患者方面具有重要作用,这对于优化他们的康复和更有效地管理他们的营养至关重要。