医学
特发性肺纤维化
自然史
重症监护医学
背景(考古学)
疾病
间质性肺病
肺移植
肺
儿科
内科学
古生物学
生物
作者
Anna J. Podolanczuk,Carey C. Thomson,Martine Rémy‐Jardin,Luca Richeldi,Fernando J. Martínez,Martin Kolb,Ganesh Raghu
出处
期刊:The European respiratory journal
[European Respiratory Society]
日期:2023-01-26
卷期号:61 (4): 2200957-2200957
被引量:149
标识
DOI:10.1183/13993003.00957-2022
摘要
Idiopathic pulmonary fibrosis (IPF) is a progressive fibrotic lung disease characterised by worsening respiratory symptoms and physiological impairment. Increasing awareness of the clinical manifestations of IPF, more widespread use of computed tomography scans and other potential factors have contributed to a rising prevalence of IPF over the last two decades, especially among people over the age of 65 years. Significant advances in the understanding of the pathobiology of IPF have emerged, and multiple genetic and nongenetic contributors have been identified. The individual patient course and the rate of disease progression in IPF are often unpredictable and heterogeneous. The rate of lung function decline is further modified by treatment with antifibrotic therapies, which have been shown to slow down disease progression. The presence of comorbid conditions may increase symptom burden and impact survival. Clinical monitoring at regular intervals to assess for disease progression by worsening symptoms, physiological parameters and/or radiological features is essential to assess the natural disease course and to guide further management, including prompt detection of complications and comorbid conditions that warrant additional treatment considerations, and timely consideration of referral to palliative care and lung transplantation for the appropriate patient. More studies are needed to determine whether early detection of IPF might improve patient outcomes. The purpose of this concise clinical review is to provide an update on IPF diagnosis, epidemiology, natural history and treatment in the context of new knowledge and latest clinical practice guidelines.
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