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Published in: Multidisciplinary Respiratory Medicine 1/2018

Open Access 01-12-2018 | Original research article

Assessment of survival in patients with idiopathic pulmonary fibrosis using quantitative HRCT indexes

Authors: Sebastiano Emanuele Torrisi, Stefano Palmucci, Alessandro Stefano, Giorgio Russo, Alfredo Gaetano Torcitto, Daniele Falsaperla, Mauro Gioè, Mauro Pavone, Ada Vancheri, Gianluca Sambataro, Domenico Sambataro, Letizia Antonella Mauro, Emanuele Grassedonio, Antonio Basile, Carlo Vancheri

Published in: Multidisciplinary Respiratory Medicine | Issue 1/2018

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Abstract

Background

The assessment of Idiopathic Pulmonary Fibrosis (IPF) using HRCT requires great experience and is limited by a significant inter-observer variability, even between trained radiologists. The evaluation of HRCT through automated quantitative analysis may hopefully solve this problem. The accuracy of CT-histogram derived indexes in the assessment of survival in IPF patients has been poorly studied.

Methods

Forty-two patients with a diagnosis of IPF and a follow up time of 3 years were retrospectively collected; HRCT and Pulmonary Function Tests (PFTs) performed at diagnosis time were analysed; the extent of fibrotic disease was quantified on HRCT using kurtosis, skewness, Mean Lung Density (MLD), High attenuation areas (HAA%) and Fibrotic Areas (FA%). Univariate Cox regression was performed to assess hazard ratios for the explored variables and a multivariate model considering skewness, FVC, DLCO and age was created to test their prognostic value in assessing survival. Through ROC analysis, threshold values demonstrating the best sensitivity and specificity in predicting mortality were identified. They were used as cut-off points to graph Kaplan-Meier curves specific for the CT-indexes.

Results

Kurtosis, skewness, MLD, HAA% and FA% were good predictors of mortality (HR 0.44, 0.74, 1.01, 1.12, 1.06; p = 0.03, p = 0.01, p = 0.02, p = 0.02 and p = 0.017 respectively). Skewness demonstrated the lowest Akaike’s information criterion value (55.52), proving to be the best CT variable for prediction of mortality. Significant survival differences considering proposed cut-off points were also demonstrated according to kurtosis (p = 0.02), skewness (p = 0.005), MLD (p = 0.003), HAA% (p = 0.009) and FA% (p = 0.02) – obtained from quantitative HRCT analysis at diagnosis time.

Conclusions

CT-histogram derived indexes may provide an accurate estimation of survival in IPF patients. They demonstrate a correlation with PFTs, highlighting their possible use in clinical practice.
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Metadata
Title
Assessment of survival in patients with idiopathic pulmonary fibrosis using quantitative HRCT indexes
Authors
Sebastiano Emanuele Torrisi
Stefano Palmucci
Alessandro Stefano
Giorgio Russo
Alfredo Gaetano Torcitto
Daniele Falsaperla
Mauro Gioè
Mauro Pavone
Ada Vancheri
Gianluca Sambataro
Domenico Sambataro
Letizia Antonella Mauro
Emanuele Grassedonio
Antonio Basile
Carlo Vancheri
Publication date
01-12-2018
Publisher
BioMed Central
Published in
Multidisciplinary Respiratory Medicine / Issue 1/2018
Electronic ISSN: 2049-6958
DOI
https://doi.org/10.1186/s40248-018-0155-2

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