住院老年慢性病共病患者营养不良的影响因素及预测模型构建

Influencing factors and predictive model construction of malnutrition in hospitalized elderly patients with comorbidities of chronic diseases

  • 摘要:
    目的 探讨住院老年慢性病共病患者营养不良的影响因素及预测模型构建。
    方法 采用便利抽样法选取2023年1月—2024年2月在苏州大学附属苏州九院老年医学科住院的老年慢性病共病患者426例为研究对象。以微型营养评定简表(MNA-SF)评分 < 8分且白蛋白 < 34.0 g/L或前白蛋白 < 200 mg/L为营养不良依据,将患者分为营养不良组和无营养不良组。比较2组一般资料、口腔状况采用口腔健康评估量表(OHAT)评估、膳食炎症指数(DII, 采用食物频率问卷表评估)、日常活动能力采用Barthel指数(BI)评估。采用多因素Logistic回归分析对老年慢性病共病患者营养不良的影响因素进行探讨,并构建模型公式。采用R软件运行梯度提升机(GBM)算法构建GBM预测模型。采用受试者工作特征(ROC)曲线分析2个模型的预测效能,采用Delong检验比较2个模型的曲线下面积(AUC)的差异。
    结果 92例被诊断为营养不良(营养不良组),334例患者无营养不良(无营养不良组)。营养不良组与无营养不良组年龄、慢性病共病种类、多重用药种类、OHAT评分、DII、BI评分比较,差异有统计学意义(P < 0.05)。年龄大、慢性病共病种类多、多重用药种类多、OHAT评分高、DII高、BI评分低均是老年慢性病共病患者营养不良的影响因素(P < 0.05)。ROC曲线显示,GBM模型的AUC为0.901, Logistic回归模型的AUC为0.874。Delong检验提示, GBM模型的预测效能优于Logistic回归模型(P < 0.05)。
    结论 住院老年慢性病共病患者营养不良与年龄、慢性病共病种类、多重用药种类、OHAT评分、DII、BI评分有关,以此构建GBM模型可有效评估患者营养不良的发生风险。

     

    Abstract:
    Objective To investigate the influencing factors of malnutrition in hospitalized elderly patients with comorbidities of chronic diseases, and to construct a predictive model.
    Methods A convenience sampling method was used to select 426 elderly patients with comorbidities of chronic diseases admitted to the Department of Geriatrics of Suzhou Ninth People's Hospital Affiliated to Soochow University from January 2023 to February 2024. Based on a Mini-nutritional Assessment-Short Form (MNA-SF) score < 8 and either an albumin level < 34.0 g/L or a prealbumin level < 200 mg/L as reference of malnutrition, patients were classified into malnutrition group and non-malnutrition group. General characteristics, oral statusassessed using the Oral Health Assessment Tool (OHAT), dietary inflammatory index (DII, evaluated through a food frequency questionnaire), and activities of daily livingassessed using the Barthel Index (BI)were compared between the two groups. Multivariable Logistic regression analysis was employed to explore the influencing factors of malnutrition in elderly patients with comorbidities of chronic diseases and to construct a model formula. A gradient boosting machine (GBM) algorithm was implemented using R software to build a GBM predictive model. Receiver Operating Characteristic (ROC) curves were utilized to analyze the predictive performance of both models, and the Delong test was applied to compare the difference of the area under the curve (AUC).
    Results Ninety-two patients were diagnosed with malnutrition (malnutrition group), while 334 patients had no malnutrition (non-malnutrition group). Statistically significant differences were observed between the malnutrition and non-malnutrition groups in terms of age, the number of chronic comorbidities, the number of medication taken, OHAT scores, DII, and BI scores (P < 0.05). Advanced age, a higher number of chronic comorbidities, a greater number of medication taken, higher OHAT scores, higher DII, and lower BI scores were all influencing factors of malnutrition in elderly patients with comorbidities of chronic diseases (P < 0.05). The ROC curve analysis revealed an AUC of GBM model was 0.901 and 0.874 for the Logistic regression model. The Delong test indicated that the predictive performance of the GBM model was superior to that of the Logistic regression model (P < 0.05).
    Conclusion Malnutrition in hospitalized elderly patients with chronic multimorbidity is associated with age, the number of chronic comorbidities, the number of medications taken, OHAT scores, DII, and BI scores. The constructed GBM model can effectively assess the risk of malnutrition in these patients.

     

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