Sheu Tommy, Fuller Clifton David, Mendoza Tito R, Garden Adam S, Morrison William H, Beadle Beth M, Phan Jack, Frank Steven J, Hanna Ehab Y, Lu Charles, Cleeland Charles S, Rosenthal David I, Gunn G Brandon
Department of Radiation Oncology, The University of Texas MD Anderson Cancer Center, Houston, Texas, USA Baylor College of Medicine, Houston, Texas, USA.
Department of Radiation Oncology, The University of Texas MD Anderson Cancer Center, Houston, Texas, USA.
Otolaryngol Head Neck Surg. 2014 Oct;151(4):619-26. doi: 10.1177/0194599814545746. Epub 2014 Aug 7.
Radiation therapy (RT), with or without chemotherapy, can cause significant acute toxicity among patients treated for head and neck cancer (HNC), but predicting, before treatment, who will experience a particular toxicity or symptom is difficult. We created and evaluated 2 multivariate models and generated a nomogram to predict symptom severity during RT based on a patient-reported outcome (PRO) instrument, the MD Anderson Symptom Inventory-Head and Neck Module (MDASI-HN).
This was a prospective, longitudinal, questionnaire-based study.
Tertiary cancer care center.
Subjects were 264 patients with HNC (mostly oropharyngeal) who had completed the MDASI-HN before and during therapy. Pretreatment variables were correlated with MDASI-HN symptom scores during therapy with multivariate modeling and then were correlated with the composite MDASI-HN score during week 5 of therapy.
A multivariate model incorporating pretreatment PROs better predicted MDASI-HN symptom scores during treatment than did a model based on clinical variables and physician-rated patient performance status alone (Akaike information criterion = 1442.5 vs 1459.9). In the most parsimonious model, pretreatment MDASI-HN symptom severity (P < .001), concurrent chemotherapy (P = .006), primary tumor site (P = .016), and receipt of definitive (rather than adjuvant) RT (P = .044) correlated with MDASI-HN symptom scores during week 5. That model was used to construct a nomogram.
Our model demonstrates the value of incorporating baseline PROs, in addition to disease and treatment characteristics, to predict patient symptom burden during therapy. Although additional investigation and validation are required, PRO-inclusive prediction tools can be useful for improving symptom interventions and expectations for patients being treated for HNC.
放射治疗(RT),无论是否联合化疗,均可在接受头颈部癌(HNC)治疗的患者中引起显著的急性毒性,但在治疗前预测谁会出现特定的毒性或症状很困难。我们创建并评估了两个多变量模型,并生成了一个列线图,以基于患者报告结局(PRO)工具——MD安德森症状问卷-头颈部模块(MDASI-HN)来预测放疗期间的症状严重程度。
这是一项基于问卷的前瞻性纵向研究。
三级癌症护理中心。
研究对象为264例HNC患者(大多为口咽癌),他们在治疗前和治疗期间均完成了MDASI-HN问卷。通过多变量建模将治疗前变量与治疗期间的MDASI-HN症状评分进行关联,然后将其与治疗第5周时的MDASI-HN综合评分进行关联。
与仅基于临床变量和医生评定的患者表现状态的模型相比,纳入治疗前PRO的多变量模型能更好地预测治疗期间的MDASI-HN症状评分(赤池信息准则 = 1442.5对1459.9)。在最简约的模型中,治疗前MDASI-HN症状严重程度(P < .001)、同步化疗(P = .006)、原发肿瘤部位(P = .016)以及接受根治性(而非辅助性)放疗(P = .044)与治疗第5周时的MDASI-HN症状评分相关。该模型用于构建列线图。
我们的模型表明,除了疾病和治疗特征外,纳入基线PRO对于预测治疗期间患者的症状负担具有重要价值。尽管还需要进一步的研究和验证,但包含PRO的预测工具可能有助于改善对HNC患者的症状干预和预期。