Department of Respiratory and Critical Care Medicine, Shanghai Pulmonary Hospital, School of Medicine, Tongji University, Shanghai, People's Republic of China.
Department of Pneumoconiosis, Shanghai Pulmonary Hospital, School of Medicine, Tongji University, Shanghai, People's Republic of China.
J Breath Res. 2024 Oct 18;19(1). doi: 10.1088/1752-7163/ad7978.
The prevalence of patients with bronchiectasis (BE) has been rising in recent years, which increases the substantial burden on the family and society. Exploring a convenient, effective, and low-cost screening tool for the diagnosis of BE is urgent. We expect to identify the accuracy (ACC) of breath biomarkers (BBs) for the diagnosis of BE through breathomics testing and explore the association between BBs and clinical features of BE. Exhaled breath samples were collected and detected by high-pressure photon ionization time-of-flight mass spectrometry in a cross-sectional study. Exhaled breath samples were from 215 patients with BE and 295 control individuals. The potential BBs were selected via the machine learning (ML) method. The overall performance was assessed for the BBs-based BE detection model. The significant BBs between different subgroups such as the severity of BE, acute or stable stage, combined with hemoptysis or not, with or without nontuberculous mycobacterium (NTM),() isolation or not, and the BBs related to the number of involved lung lobes and lung function were discovered and analyzed. The top ten BBs based ML model achieved an area under the curve of 0.940, sensitivity of 90.7%, specificity of 85%, and ACC of 87.4% in BE diagnosis. Except for the top ten BBs, other BBs were found also related to the severity, acute/stable status, hemoptysis or not, NTM infection,isolation, the number of involved lobes, and three lung functional parameters in BE patients. BBs-based BE detection model showed good ACC for diagnosis. BBs have a close relationship with the clinical features of BE. The breath test method may provide a new strategy for BE screening and personalized management.
近年来,支气管扩张症(BE)患者的患病率一直在上升,这给家庭和社会带来了巨大的负担。探索一种方便、有效、低成本的 BE 诊断筛查工具迫在眉睫。我们期望通过呼吸组学检测来确定呼吸生物标志物(BB)对 BE 的诊断准确性(ACC),并探讨 BB 与 BE 临床特征之间的关系。在一项横断面研究中,我们采集了 215 例 BE 患者和 295 例对照者的呼出气样本,并通过高压光子电离飞行时间质谱进行检测。通过机器学习(ML)方法筛选出潜在的 BB。评估基于 BB 的 BE 检测模型的整体性能。发现并分析了不同亚组(如 BE 严重程度、急性或稳定期、是否合并咯血、是否合并非结核分枝杆菌(NTM)、是否分离、与受累肺叶数和肺功能相关的 BB)之间的差异 BBs 以及与受累肺叶数和肺功能相关的 BBs。基于 ML 模型的前 10 个 BBs 在 BE 诊断中取得了 0.940 的曲线下面积(AUC)、90.7%的灵敏度、85%的特异性和 87.4%的 ACC。除了前 10 个 BBs,还发现其他 BBs 与 BE 患者的严重程度、急性/稳定状态、咯血与否、NTM 感染、分离、受累肺叶数以及三个肺功能参数有关。基于 BB 的 BE 检测模型在诊断中具有良好的 ACC。BBs 与 BE 的临床特征密切相关。呼吸试验方法可能为 BE 筛查和个性化管理提供新策略。