Soler Zachary M, Hyer J Madison, Ramakrishnan Viswanathan, Smith Timothy L, Mace Jess, Rudmik Luke, Schlosser Rodney J
Department of Otolaryngology-Head and Neck Surgery, Medical University of South Carolina, Charleston, SC.
Department of Public Health Sciences, Medical University of South Carolina, Charleston, SC.
Int Forum Allergy Rhinol. 2015 May;5(5):399-407. doi: 10.1002/alr.21496. Epub 2015 Feb 17.
Current clinical classifications of chronic rhinosinusitis (CRS) have been largely defined based upon preconceived notions of factors thought to be important, such as polyp or eosinophil status. Unfortunately, these classification systems have little correlation with symptom severity or treatment outcomes. Unsupervised clustering can be used to identify phenotypic subgroups of CRS patients, describe clinical differences in these clusters and define simple algorithms for classification.
A multi-institutional, prospective study of 382 patients with CRS who had failed initial medical therapy completed the Sino-Nasal Outcome Test (SNOT-22), Rhinosinusitis Disability Index (RSDI), Medical Outcomes Study Short Form-12 (SF-12), Pittsburgh Sleep Quality Index (PSQI), and Patient Health Questionnaire (PHQ-2). Objective measures of CRS severity included Brief Smell Identification Test (B-SIT), CT, and endoscopy scoring. All variables were reduced and unsupervised hierarchical clustering was performed. After clusters were defined, variations in medication usage were analyzed. Discriminant analysis was performed to develop a simplified, clinically useful algorithm for clustering.
Clustering was largely determined by age, severity of patient reported outcome measures, depression, and fibromyalgia. CT and endoscopy varied somewhat among clusters. Traditional clinical measures, including polyp/atopic status, prior surgery, B-SIT and asthma, did not vary among clusters. A simplified algorithm based upon productivity loss, SNOT-22 score, and age predicted clustering with 89% accuracy. Medication usage among clusters did vary significantly.
A simplified algorithm based upon hierarchical clustering is able to classify CRS patients and predict medication usage. Further studies are warranted to determine if such clustering predicts treatment outcomes.
目前慢性鼻-鼻窦炎(CRS)的临床分类很大程度上是基于对一些被认为重要的因素的先入之见来定义的,比如息肉或嗜酸性粒细胞状态。不幸的是,这些分类系统与症状严重程度或治疗结果几乎没有相关性。无监督聚类可用于识别CRS患者的表型亚组,描述这些聚类中的临床差异,并定义简单的分类算法。
一项针对382例初始药物治疗失败的CRS患者的多机构前瞻性研究,患者完成了鼻-鼻窦结局测试(SNOT-22)、鼻窦炎残疾指数(RSDI)、医学结局研究简明健康调查量表(SF-12)、匹兹堡睡眠质量指数(PSQI)和患者健康问卷(PHQ-2)。CRS严重程度的客观指标包括简易嗅觉识别测试(B-SIT)、CT和内镜评分。对所有变量进行降维处理并进行无监督层次聚类。定义聚类后,分析药物使用的差异。进行判别分析以开发一种简化的、临床实用的聚类算法。
聚类主要由年龄、患者报告结局指标的严重程度、抑郁和纤维肌痛决定。CT和内镜检查在各聚类之间略有差异。包括息肉/特应性状态、既往手术、B-SIT和哮喘在内的传统临床指标在各聚类之间没有差异。基于生产力损失、SNOT-22评分和年龄的简化算法预测聚类的准确率为89%。各聚类之间的药物使用情况确实存在显著差异。
基于层次聚类的简化算法能够对CRS患者进行分类并预测药物使用情况。有必要进行进一步研究以确定这种聚类是否能预测治疗结果。