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预测头颈部癌患者在(放)化疗期间严重体重减轻的预测模型。

Prediction model to predict critical weight loss in patients with head and neck cancer during (chemo)radiotherapy.

作者信息

Langius Jacqueline A E, Twisk Jos, Kampman Martine, Doornaert Patricia, Kramer Mark H H, Weijs Peter J M, Leemans C René

机构信息

Department of Nutrition and Dietetics, Internal Medicine, VU University Medical Center Amsterdam, PO Box 7057, 1007 MB Amsterdam, The Netherlands; Faculty of Health, Nutrition and Sport, The Hague University of Applied Sciences, Joh. Westerdijkplein 75, 2521EN The Hague, The Netherlands.

Department of Health Science, Faculty of Earth and Life Sciences, VU University Amsterdam, De Boelelaan 1085, 1081 HV Amsterdam, The Netherlands.

出版信息

Oral Oncol. 2016 Jan;52:91-6. doi: 10.1016/j.oraloncology.2015.10.021. Epub 2015 Nov 10.

Abstract

OBJECTIVES

Patients with head and neck cancer (HNC) frequently encounter weight loss with multiple negative outcomes as a consequence. Adequate treatment is best achieved by early identification of patients at risk for critical weight loss. The objective of this study was to detect predictive factors for critical weight loss in patients with HNC receiving (chemo)radiotherapy ((C)RT).

MATERIALS AND METHODS

In this cohort study, 910 patients with HNC were included receiving RT (±surgery/concurrent chemotherapy) with curative intent. Body weight was measured at the start and end of (C)RT. Logistic regression and classification and regression tree (CART) analyses were used to analyse predictive factors for critical weight loss (defined as >5%) during (C)RT. Possible predictors included gender, age, WHO performance status, tumour location, TNM classification, treatment modality, RT technique (three-dimensional conformal RT (3D-RT) vs intensity-modulated RT (IMRT)), total dose on the primary tumour and RT on the elective or macroscopic lymph nodes.

RESULTS

At the end of (C)RT, mean weight loss was 5.1±4.9%. Fifty percent of patients had critical weight loss during (C)RT. The main predictors for critical weight loss during (C)RT by both logistic and CART analyses were RT on the lymph nodes, higher RT dose on the primary tumour, receiving 3D-RT instead of IMRT, and younger age.

CONCLUSION

Critical weight loss during (C)RT was prevalent in half of HNC patients. To predict critical weight loss, a practical prediction tree for adequate nutritional advice was developed, including the risk factors RT to the neck, higher RT dose, 3D-RT, and younger age.

摘要

目的

头颈癌(HNC)患者经常出现体重减轻,并因此产生多种负面后果。通过早期识别有严重体重减轻风险的患者,可实现最佳的充分治疗。本研究的目的是检测接受(化疗)放疗((C)RT)的HNC患者严重体重减轻的预测因素。

材料与方法

在这项队列研究中,纳入了910例接受根治性放疗(±手术/同步化疗)的HNC患者。在(C)RT开始和结束时测量体重。采用逻辑回归和分类回归树(CART)分析来分析(C)RT期间严重体重减轻(定义为>5%)的预测因素。可能的预测因素包括性别、年龄、世界卫生组织体能状态、肿瘤位置、TNM分期、治疗方式、放疗技术(三维适形放疗(3D-RT)与调强放疗(IMRT))、原发肿瘤的总剂量以及选择性或肉眼可见淋巴结的放疗剂量。

结果

在(C)RT结束时,平均体重减轻为5.1±4.9%。50%的患者在(C)RT期间出现严重体重减轻。逻辑回归和CART分析得出的(C)RT期间严重体重减轻的主要预测因素均为淋巴结放疗、原发肿瘤较高的放疗剂量、接受3D-RT而非IMRT以及年龄较小。

结论

(C)RT期间严重体重减轻在一半的HNC患者中普遍存在。为预测严重体重减轻,开发了一个实用的预测树,用于提供适当的营养建议,包括颈部放疗、较高放疗剂量、3D-RT和年龄较小等风险因素。

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