Design and Baseline Characteristics of the ILD-PRO Registry in Patients with Progressive Pulmonary Fibrosis
BMC PULMONARY MEDICINE(2024)
摘要
BackgroundTo assess the characteristics of patients enrolled in the ILD-PRO Registry.MethodsThe ILD-PRO Registry is a multicentre US registry of patients with progressive pulmonary fibrosis. This registry is enrolling patients with an interstitial lung disease (ILD) other than idiopathic pulmonary fibrosis who have reticular abnormality and traction bronchiectasis on HRCT, and who meet criteria for ILD progression within the prior 24 months. Patient characteristics were analysed based on the number of patients with available data.ResultsOf the first 491 patients enrolled, the majority were white (75.4%) and female (60.6%); 47.4% had a history of smoking. Reported ILDs were autoimmune disease-associated ILDs (47.2%), hypersensitivity pneumonitis (17.5%), idiopathic non-specific interstitial pneumonia (9.1%), interstitial pneumonia with autoimmune features (8.9%), unclassifiable ILD (7.6%), other ILDs (9.7%). At enrolment, median (Q1, Q3) FVC % predicted was 62.2 (49.4, 72.4) and DLco % predicted was 39.2 (30.2, 49.2). Median (Q1, Q3) total score on the St. George's Respiratory Questionnaire was 50.8 (35.9, 64.7). The most common comorbidities were gastroesophageal reflux disease (61.1%) and sleep apnoea (29.6%). Overall, 64.5% of patients were receiving immunosuppressive or cytotoxic therapy, 61.1% proton-pump inhibitors, 53.2% oral steroids, 19.8% nintedanib and 3.6% pirfenidone.ConclusionsPatients enrolled into the ILD-PRO Registry have a variety of ILD diagnoses, marked impairment in lung function and health-related quality of life, and high medication use. Longitudinal data from this registry will further our knowledge of the course of progressive pulmonary fibrosis.Trial RegistrationClinicalTrials.gov, NCT01915511; registered August 5, 2013.
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关键词
Clinical trial,Disease progression,Interstitial lung disease,Pulmonary fibrosis
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