Gawlewicz-Mroczka Agnieszka, Pytlewski Adam, Celejewska-Wójcik Natalia, Ćmiel Adam, Gielicz Anna, Sanak Marek, Mastalerz Lucyna
Department of Internal Medicine Jagiellonian University Medical College Krakow Poland.
University Hospital Krakow Poland.
Clin Transl Allergy. 2022 Oct 19;12(10):e12201. doi: 10.1002/clt2.12201. eCollection 2022 Oct.
During the coronavirus disease 2019 (COVID-19) pandemic, it has become a pressing need to be able to diagnose aspirin hypersensitivity in patients with asthma without the need to use oral aspirin challenge (OAC) testing. OAC is time consuming and is associated with the risk of severe hypersensitive reactions. In this study, we sought to investigate whether machine learning (ML) based on some clinical and laboratory procedures performed during the pandemic might be used for discriminating between patients with aspirin hypersensitivity and those with aspirin-tolerant asthma.
We used a prospective database of 135 patients with non-steroidal anti-inflammatory drug (NSAID)-exacerbated respiratory disease (NERD) and 81 NSAID-tolerant (NTA) patients with asthma who underwent OAC. Clinical characteristics, inflammatory phenotypes based on sputum cells, as well as eicosanoid levels in induced sputum supernatant and urine were extracted for the purpose of applying ML techniques.
The overall best ML model, neural network (NN), trained on a set of best features, achieved a sensitivity of 95% and a specificity of 76% for diagnosing NERD. The 3 promising models (i.e., multiple logistic regression, support vector machine, and NN) trained on a set of easy-to-obtain features including only clinical characteristics and laboratory data achieved a sensitivity of 97% and a specificity of 67%.
ML techniques are becoming a promising tool for discriminating between patients with NERD and NTA. The models are easy to use, safe, and achieve very good results, which is particularly important during the COVID-19 pandemic.
在2019年冠状病毒病(COVID-19)大流行期间,能够在不进行口服阿司匹林激发试验(OAC)的情况下诊断哮喘患者的阿司匹林超敏反应已成为一项紧迫需求。OAC耗时且与严重超敏反应风险相关。在本研究中,我们试图调查基于大流行期间进行的一些临床和实验室检查的机器学习(ML)是否可用于区分阿司匹林超敏反应患者和阿司匹林耐受型哮喘患者。
我们使用了一个前瞻性数据库,其中包括135例非甾体抗炎药(NSAID)诱发的呼吸道疾病(NERD)患者和81例接受OAC的NSAID耐受(NTA)哮喘患者。提取临床特征、基于痰液细胞的炎症表型以及诱导痰液上清液和尿液中的类花生酸水平,以应用ML技术。
在一组最佳特征上训练的总体最佳ML模型——神经网络(NN),诊断NERD的灵敏度为95%,特异度为76%。在一组仅包括临床特征和实验室数据的易于获得的特征上训练的3个有前景的模型(即多元逻辑回归、支持向量机和NN),灵敏度为97%,特异度为67%。
ML技术正成为区分NERD和NTA患者的一种有前景的工具。这些模型易于使用、安全且取得了很好的效果,这在COVID-19大流行期间尤为重要。