Chen Mengyu, Xu Zhaofeng, Fu Yiwei, Zhang Nan, Lu Tong, Li Zhengqi, Li Jian, Bachert Claus, Wen Weiping, Wen Yihui
Department of Otolaryngology, The First Affiliated Hospital, Sun Yat-sen University, Guangzhou, Guangdong, PR China.
Otorhinolaryngology Institute, Sun Yat-sen University, Guangzhou, Guangdong, PR China.
World Allergy Organ J. 2023 Jul 20;16(7):100796. doi: 10.1016/j.waojou.2023.100796. eCollection 2023 Jul.
Type 2 CRSwNP is characterized by severe symptoms, multiple comorbidities, longer recovery course and high recurrence rate. A simple and cost-effective diagnostic model for CRSwNP endotype integrating clinical characteristics and histopathological features is urgently needed.
To establish a clinical diagnostic model of inflammatory endotype in CRSwNP based on the clinical characteristics, pathological characteristics, and cytokines profile in the polyp tissue of patients.
A total of 244 participants with CRSwNP were enrolled at 2 different centers in China and Belgium from 2018 to 2020. IL-5 level of nasal polyp tissue was used as gold standard. Clinical characteristics were used to establish diagnostic models. The area under the receiver operating curve (AUC) was used to evaluate the diagnostic performance. The study was approved by the ethics board of the First Affiliated Hospital of Sun Yat-sen University ([2020] 302), and written informed consent was obtained from all subjects before inclusion.
In total, 134 patients from China (training set) and 110 patients from Belgium (validation set) were included. The logistic regression (LR) model in predicting inflammatory endotype of CRSwNP showed the AUC of 83%, which was better than the diagnostic performance of machine learning models (AUC of 61.14%-82.42%), and single clinical variables. We developed a simplified scoring system based on LR model which shows similar diagnostic performance to the LR model (P = 0.6633).
The LR model in this diagnostic study provided greater accuracy in prediction of inflammatory endotype of CRSwNP than those obtained from the machine learning model and single clinical variable. This indicates great potential for the use of diagnostic model to facilitate inflammatory endotype evaluation when tissue cytokines are unable to be measured.
2型慢性鼻-鼻窦炎伴鼻息肉(CRSwNP)的特征为症状严重、合并多种疾病、恢复过程较长且复发率高。迫切需要一种简单且经济高效的诊断模型,用于整合临床特征和组织病理学特征来诊断CRSwNP的内型。
基于患者鼻息肉组织的临床特征、病理特征和细胞因子谱,建立CRSwNP炎症内型的临床诊断模型。
2018年至2020年,在中国和比利时的2个不同中心共纳入了244例CRSwNP患者。将鼻息肉组织中的白细胞介素-5(IL-5)水平作为金标准。利用临床特征建立诊断模型。采用受试者操作特征曲线(ROC)下面积(AUC)评估诊断性能。本研究获得了中山大学附属第一医院伦理委员会的批准([2020]302号),所有受试者在纳入前均签署了书面知情同意书。
共纳入了来自中国的134例患者(训练集)和来自比利时的110例患者(验证集)。预测CRSwNP炎症内型的逻辑回归(LR)模型显示AUC为83%,优于机器学习模型(AUC为61.14%-82.42%)和单一临床变量的诊断性能。我们基于LR模型开发了一个简化评分系统,其诊断性能与LR模型相似(P = 0.6633)。
本诊断研究中的LR模型在预测CRSwNP炎症内型方面比机器学习模型和单一临床变量具有更高的准确性。这表明当无法测量组织细胞因子时,该诊断模型在促进炎症内型评估方面具有巨大潜力。