van den Berge Minke J C, Free Rolien H, Arnold Rosemarie, de Kleine Emile, Hofman Rutger, van Dijk J Marc C, van Dijk Pim
Department of Otorhinolaryngology/Head and Neck Surgery, University of Groningen, University Medical Center Groningen, Groningen, Netherlands.
Graduate School of Medical Sciences (Research School of Behavioural and Cognitive Neurosciences), University of Groningen, Groningen, Netherlands.
Front Neurol. 2017 Apr 3;8:115. doi: 10.3389/fneur.2017.00115. eCollection 2017.
In tinnitus treatment, there is a tendency to shift from a "one size fits all" to a more individual, patient-tailored approach. Insight in the heterogeneity of the tinnitus spectrum might improve the management of tinnitus patients in terms of choice of treatment and identification of patients with severe mental distress. The goal of this study was to identify subgroups in a large group of tinnitus patients.
Data were collected from patients with severe tinnitus complaints visiting our tertiary referral tinnitus care group at the University Medical Center Groningen. Patient-reported and physician-reported variables were collected during their visit to our clinic. Cluster analyses were used to characterize subgroups. For the selection of the right variables to enter in the cluster analysis, two approaches were used: (1) variable reduction with principle component analysis and (2) variable selection based on expert opinion.
Various variables of 1,783 tinnitus patients were included in the analyses. Cluster analysis (1) included 976 patients and resulted in a four-cluster solution. The effect of external influences was the most discriminative between the groups, or clusters, of patients. The "silhouette measure" of the cluster outcome was low (0.2), indicating a "no substantial" cluster structure. Cluster analysis (2) included 761 patients and resulted in a three-cluster solution, comparable to the first analysis. Again, a "no substantial" cluster structure was found (0.2).
Two cluster analyses on a large database of tinnitus patients revealed that clusters of patients are mostly formed by a different response of external influences on their disease. However, both cluster outcomes based on this dataset showed a poor stability, suggesting that our tinnitus population comprises a continuum rather than a number of clearly defined subgroups.
在耳鸣治疗中,存在一种从“一刀切”向更个体化、针对患者定制方法转变的趋势。深入了解耳鸣频谱的异质性可能会在治疗选择和识别有严重精神困扰的患者方面改善耳鸣患者的管理。本研究的目的是在一大群耳鸣患者中识别亚组。
收集了前往格罗宁根大学医学中心三级转诊耳鸣护理组就诊的有严重耳鸣主诉患者的数据。在他们就诊期间收集了患者报告和医生报告的变量。聚类分析用于表征亚组。为了选择纳入聚类分析的合适变量,使用了两种方法:(1)主成分分析进行变量约简,(2)基于专家意见进行变量选择。
1783例耳鸣患者的各种变量纳入了分析。聚类分析(1)纳入了976例患者,得到了一个四类解决方案。外部影响的作用在患者组或聚类之间最具区分性。聚类结果的“轮廓系数”较低(0.2),表明聚类结构“不显著”。聚类分析(2)纳入了761例患者,得到了一个三类解决方案,与第一次分析相当。同样,发现了一个“不显著”的聚类结构(0.2)。
对一大组耳鸣患者数据库进行的两次聚类分析表明,患者聚类主要是由外部影响对其疾病的不同反应形成的。然而,基于该数据集的两个聚类结果均显示稳定性较差,这表明我们的耳鸣人群构成一个连续体,而非一些明确界定的亚组。