Department of Clinical Nutrition, Daping Hospital, Army Medical University (Third Military Medical University), Chongqing, 400042, China.
Cancer Center of the First Hospital of Jilin University, Changchun, 130021, Jilin, China.
Eur J Clin Nutr. 2021 Aug;75(8):1291-1301. doi: 10.1038/s41430-020-00844-8. Epub 2021 Jan 18.
Malnutrition is prevalent that can impair multiple clinical outcomes in oncology populations. This study aimed to develop and utilize a tool to optimize the early identification of malnutrition in patients with cancer.
We performed an observational cohort study including 3998 patients with cancer at two teaching hospitals in China. Hierarchical clustering was performed to classify the patients into well-nourished or malnourished clusters based on 17 features reflecting the phenotypic and etiologic dimensions of malnutrition. Associations between the identified clusters and patient characteristics were analyzed. A nomogram for predicting the malnutrition probability was constructed and independent validation was performed to explore its clinical significance.
The cluster analysis identified a well-nourished cluster (n = 2736, 68.4%) and a malnourished cluster (n = 1262, 31.6%) in the study population, which showed significant agreement with the Patient-Generated Subjective Global Assessment and the Global Leadership Initiative on Malnutrition criteria (both P < 0.001). The malnourished cluster was negatively associated with the nutritional status, physical status, quality of life, short-term outcomes and was an independent risk factor for survival (HR = 1.38, 95%CI = 1.22-1.55, P < 0.001). Sex, gastrointestinal symptoms, weight loss percentages (within and beyond 6 months), calf circumference, and body mass index were incorporated to develop the nomogram, which showed high performance to predict malnutrition (AUC = 0.972, 95%CI = 0.960-0.983). The decision curve analysis and independent external validation further demonstrated the effectiveness and clinical usefulness of the tool.
Nutritional features-based clustering analysis is a feasible approach to define malnutrition. The derived nomogram shows effectiveness for the early identification of malnutrition in patients with cancer.
营养不良在肿瘤患者中普遍存在,可损害多种临床结局。本研究旨在开发并利用一种工具,以优化癌症患者营养不良的早期识别。
我们在中国的两家教学医院进行了一项观察性队列研究,纳入了 3998 例癌症患者。基于反映营养不良表型和病因维度的 17 个特征,采用层次聚类法将患者分为营养良好或营养不良组。分析了所识别的组与患者特征之间的关联。构建了预测营养不良概率的列线图,并进行了独立验证,以探讨其临床意义。
聚类分析在研究人群中识别出一个营养良好的组(n=2736,68.4%)和一个营养不良的组(n=1262,31.6%),与患者自评主观整体评估和全球营养倡议营养不良标准均具有显著一致性(均 P<0.001)。营养不良组与营养状况、身体状况、生活质量、短期结局呈负相关,是生存的独立危险因素(HR=1.38,95%CI=1.22-1.55,P<0.001)。纳入性别、胃肠道症状、体重减轻百分比(6 个月内和 6 个月外)、小腿围和体重指数,开发了列线图,该列线图对营养不良的预测具有较高的性能(AUC=0.972,95%CI=0.960-0.983)。决策曲线分析和独立外部验证进一步证明了该工具的有效性和临床实用性。
基于营养特征的聚类分析是定义营养不良的一种可行方法。所开发的列线图在癌症患者营养不良的早期识别中具有有效性。