正式舞会
克朗巴赫阿尔法
吞咽困难
医学
物理疗法
可靠性(半导体)
患者报告的结果
感觉
内部一致性
心理测量学
心理学
外科
临床心理学
生活质量(医疗保健)
功率(物理)
物理
护理部
量子力学
神经科学
产科
作者
C. Claire Melancon,Gregory B. Russell,Kathryn W. Ruckart,Sarah Persia,Margarita Peterson,Stephen C. Wright,Lyndsay L. Madden
出处
期刊:Laryngoscope
[Wiley]
日期:2019-10-23
卷期号:130 (12): 2767-2772
被引量:9
摘要
Objectives Globus pharyngeus (GP) is described as the subjective sensation of having a “lump” in the throat in the absence of correlating physical findings or dysphagia. Historically, despite the frequency of patient complaints, GP has been difficult to quantify with current outcome measures. This is in large part due to lack of a user‐friendly, modernized, objective patient‐reported outcome measure (PROM) of symptom severity. The aim of this study is to develop a modernized, practical, validated PROM for evaluating GP symptom severity. Methods The Laryngopharyngeal Measure of Perceived Sensation (LUMP questionnaire) was created in three phases: 1) item generation by an expert panel involving two laryngologists and two speech language pathologists developed from common patient‐reported GP symptoms, with patient confirmation; 2) line‐item reduction based on internal consistency and reliability; 3) and instrument validity, which was assessed by administering the questionnaire to patients complaining of GP as well as patients without GP. Results A 19‐item questionnaire was developed from an expert panel, which was then administered to 110 patients, 100 of whom met inclusion criteria. After statistical analysis, less internally consistent or relevant questions were removed, leaving eight items with an internal consistency (Cronbach alpha) of 0.892. When administered to 54 patients with GP versus 31 normal patients, the mean score was found to be higher in those with GP versus normal patients ( P value <0.0001). Conclusion Preliminary results suggest the eight‐item LUMP questionnaire is a valuable PROM for evaluating GP symptom severity. Level of Evidence NA Laryngoscope , 2019
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