Performance Characteristics for Physiological Measures of Progressive Pulmonary Fibrosis

进行性肺纤维化生理指标的性能特征

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Abstract

Rationale: Clinical measures of progressive pulmonary fibrosis (PPF) have been proposed, but their clinical utility remains unclear. Objectives: To determine performance characteristics of lung function-based PPF measures, including new guideline criteria for discriminating clinically relevant outcomes. Methods: A multicenter retrospective cohort analysis was performed to assess the performance characteristics of eight categorical measures of FVC and Dl(CO) decline, together with PPF guideline criteria (requiring two of the following: worsening respiratory symptoms, absolute decline in FVC ⩾5% or Dl(CO) ⩾15%, or radiological progression) for discriminating 2-year death or lung transplant among patients fibrotic interstitial lung disease from the United States, United Kingdom, and Canada (n = 2,727). The net benefit of the top-performing measures to inform treatment initiation were compared using decision curves. Measurements and Main Results: PPF classified according to relative decline in FVC of ⩾10%, relative decline in Dl(CO) of ⩾15%, and PPF guideline criteria displayed the best overall test performance, with area under the receiver operating characteristic curves of 0.67-0.68. Specificity was higher than sensitivity for all evaluated measures, with relative measures of lung function decline outperforming absolute measures. The net benefit of standalone relative decline in FVC ⩾10% and Dl(CO) ⩾15% was similar to PPF guideline criteria across the range of treatment probability thresholds. Conclusions: Classifying PPF by standalone measures of FVC and Dl(CO) decline provides clinical utility similar to PPF guideline criteria. Top-performing physiology-based measures of PPF discriminate outcomes with high specificity but low sensitivity.

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