Pleural thickening on screening chest X-rays: a single institutional study

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作者
Akira Saito
Yukichika Hakamata
Yukiko Yamada
Mitsuhiro Sunohara
Megumi Tarui
Yoko Murano
Akihisa Mitani
Kimie Tanaka
Takahide Nagase
Shintaro Yanagimoto
机构
[1] The University of Tokyo,Department of Respiratory Medicine, Graduate School of Medicine
[2] The University of Tokyo,Division for Health Service Promotion
来源
Respiratory Research | / 20卷
关键词
Chest X-ray; Screening; Pleural thickening; Pulmonary apical cap; Body mass index;
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摘要
Although pleural thickening is a common finding on routine chest X-rays, its radiological and clinical features remain poorly characterized. Our investigation of 28,727 chest X-rays obtained from annual health examinations confirmed that pleural thickening was the most common abnormal radiological finding. In most cases (92.2%), pleural thickening involved the apex of the lung, particularly on the right side; thus, it was defined as a pulmonary apical cap. Pleural thickening was more common in males than in females and in current smokers or ex-smokers than in never smokers. The prevalence increased with age, ranging from 1.8% in teenagers to 9.8% in adults aged 60 years and older. Moreover, pleural thickening was clearly associated with greater height and lower body weight and body mass index, suggesting that a tall, thin body shape may predispose to pleural thickening. These observations allowed us to speculate about the causative mechanisms of pleural thickening that are attributable to disproportionate perfusion, ventilation, or mechanical forces in the lungs.
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