Literature DB >> 26400574

Models of disease behavior in idiopathic pulmonary fibrosis.

Kerri A Johannson1, Brett Ley2, Harold R Collard3.   

Abstract

Idiopathic pulmonary fibrosis is a diffuse parenchymal lung disease of unknown cause. The natural history of disease can vary considerably, making it difficult to predict the clinical trajectory for an individual patient. Accurate prognostication is desirable for clinical management as well as for cohort enrichment in clinical trials of therapeutics. Clinical and biomarker models of disease behavior have been developed to improve prognostication in idiopathic pulmonary fibrosis, with moderate predictive capabilities. Integrated prediction models that combine both clinical and biomarker variables will improve prognostication for patients and improved cohort enrichment strategies for clinical trials. This goal may be best achieved through collaborative patient registries with prospectively collected biological samples that allow for characterization of disease behavior in idiopathic pulmonary fibrosis.

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Year:  2015        PMID: 26400574      PMCID: PMC4581470          DOI: 10.1186/s12916-015-0403-7

Source DB:  PubMed          Journal:  BMC Med        ISSN: 1741-7015            Impact factor:   8.775


Background

Idiopathic pulmonary fibrosis (IPF) is a diffuse parenchymal lung disease of unknown etiology associated with a median survival of 3 to 5 years after diagnosis [1]. Disease behavior is variable among patients, with some individuals remaining relatively stable over long periods, while others may experience a slow progressive decline, rapid decline, or suffer acute exacerbation [2]. Predicting the clinical course in IPF is challenging due to the heterogeneous nature of the disease, but it remains a critically important goal for both clinical and research purposes. Knowledge of an individual’s probability of disease progression or risk of death may affect timing of drug therapies or listing for lung transplantation. In clinical trials of therapeutics, accurate prognostication is desirable to maximize the likelihood of detecting treatment effects through cohort enrichment. For these reasons, several models of disease behavior for IPF have been developed with the common goal of accurate prognostication. Each model has contributed valuably to our understanding of IPF, identifying key clinical, physiologic, radiologic, pathologic, and biologic features associated with outcomes of interest.

Clinical models of disease behavior

Early risk prediction models incorporated baseline clinical and radiographic parameters to predict mortality in IPF. The composite clinical, radiological, and physiological scoring system identified age, clubbing, smoking history, lung volumes, end-exercise hypoxemia, and chest radiographic evidence of pulmonary hypertension and interstitial abnormalities to be associated with survival [3, 4]. The Composite Physiologic Index was similarly developed, incorporating three lung function parameters to predict mortality and accounting for the confounding effects of concomitant emphysema in IPF patients [5], a limitation of prior models. More recently, du Bois et al. [6] developed a risk scoring system based on age, history of respiratory hospitalization, baseline forced vital capacity (FVC), and change in FVC over 24 weeks to predict mortality. This was subsequently modified to include a functional and longitudinal parameter, the 6-minute walk distance (6MWD) and change in this parameter over 24 weeks [7]. Ley et al. [8] derived and validated the ‘gender, age, physiology’ (GAP) model, which identified four readily available baseline parameters, namely gender, age, FVC, and diffusion capacity of the lung for carbon monoxide (DLCO), to develop staging and risk prediction scores. An alternative model in which the extent of fibrosis on high resolution computed tomography of the chest was used in place of the DLCO performed equally well [9]. The original du Bois and GAP models have subsequently been combined to provide an integrated baseline and longitudinal risk prediction approach [10]. These clinical models have demonstrated the impact of cohort characteristics on calibration of risk. This is most obvious in comparing risk in referral center-based cohorts and clinical trial cohorts. Models derived in center-based cohorts appear to significantly overestimate mortality risk in clinical trial cohorts, where patients are highly selected [11]. Additionally, age and gender appear to be more relevant prognostic variables in clinical cohorts, perhaps through capturing the influence of comorbidities, while adding relatively little in a clinical trial cohort. Thus, calibration of risk prediction models to the population of interest appears critical to accurate quantification of risk. Clinical risk prediction models provide important prognostic tools for practice and clinical trial development. However, their performance remains modest, likely because clinical markers are limited in their inability to directly assess the underlying pathobiology and disease activity. Translational studies are providing novel tools in the form of molecular and genetic biomarkers to address this limitation.

Molecular and genetic biomarker-based models of disease behavior

Several recent studies have identified molecular and genetic biomarkers associated with clinical outcomes in IPF [12]. These can be divided into three categories: genetic, protein, and cellular. Genetic-based biomarkers associated with worse survival in IPF include mucin 5B promoter polymorphisms [13], shorter leucocyte telomere length [14], and the toll-interacting protein single nucleotide polymorphism [15]. Protein-based biomarkers that have been associated with worse outcomes in IPF include surfactant proteins A (SP-A) [16] and D [17], Krebs von den Lungen-6 (KL-6) [18, 19], CC-chemokine-ligand-18 [20], C-X-C motif chemokine 13 [21, 22], matrix metalloproteinase (MMP)-3 [22] and MMP-7 [23], fibulin-1 [24], interleukin-8 and intercellular cell adhesion molecule-1 [23], osteopontin [25], periostin [26, 27], and collagen degradation products [28]. Cellular biomarkers associated with worse outcomes in IPF include regulatory T cells (Tregs) [29], semaphorin 7a + Tregs [30], and circulating fibrocytes [31]. Molecular and genetic biomarkers seem certain to add to the predictive abilities of currently available clinical risk prediction models. To date, few studies have examined this additive benefit and rigorous validation is lacking, but superior model performance has been suggested with certain combinations of clinical variables and biomarkers [13, 18, 23, 32]. Song et al. [18] proposed that the combination of at least three biomarkers (e.g., MMP-7, SP-A, and KL-6) improved risk prediction over clinical variables alone. Clearly, more needs to be done to clarify the additive role of molecular and genetic biomarkers.

Conclusions

Taken together, these early reports highlight the potential for more accurate modeling of disease behavior in IPF. However, several important limitations remain. First, while survival is unquestionably a clinically meaningful outcome, it is of less use to patients and clinicians than pre-mortality outcomes such as disease progression. No model to date accurately predicts pre-mortality outcomes such as loss of lung function or acute exacerbation. Second, available models demonstrate only modest prediction accuracy. Potential explanations for this include the inability to capture other co-morbidities (e.g., cardiac disease, cancer) leading to death in IPF patients, the lack of reliable biomarkers of disease activity, and the failure to account for processes such as acute exacerbation. Lastly, quantification of risk may differ between patient populations, suggesting that models may need to be tailored to the population of interest. Future research will need to address these and other limitations. We anticipate that models that combine clinical and biological variables will lead to improved prognostication for patients and improved cohort enrichment strategies in clinical trials. To develop these integrated models, we believe that a centralized registry of well-characterized patients with systematically collected bio-specimens will prove essential [33].
  33 in total

1.  An official ATS/ERS/JRS/ALAT statement: idiopathic pulmonary fibrosis: evidence-based guidelines for diagnosis and management.

Authors:  Ganesh Raghu; Harold R Collard; Jim J Egan; Fernando J Martinez; Juergen Behr; Kevin K Brown; Thomas V Colby; Jean-François Cordier; Kevin R Flaherty; Joseph A Lasky; David A Lynch; Jay H Ryu; Jeffrey J Swigris; Athol U Wells; Julio Ancochea; Demosthenes Bouros; Carlos Carvalho; Ulrich Costabel; Masahito Ebina; David M Hansell; Takeshi Johkoh; Dong Soon Kim; Talmadge E King; Yasuhiro Kondoh; Jeffrey Myers; Nestor L Müller; Andrew G Nicholson; Luca Richeldi; Moisés Selman; Rosalind F Dudden; Barbara S Griss; Shandra L Protzko; Holger J Schünemann
Journal:  Am J Respir Crit Care Med       Date:  2011-03-15       Impact factor: 21.405

2.  Unified baseline and longitudinal mortality prediction in idiopathic pulmonary fibrosis.

Authors:  Brett Ley; Williamson Z Bradford; Derek Weycker; Eric Vittinghoff; Roland M du Bois; Harold R Collard
Journal:  Eur Respir J       Date:  2015-01-22       Impact factor: 16.671

3.  Study design implications of death and hospitalization as end points in idiopathic pulmonary fibrosis.

Authors:  Harold R Collard; Kevin K Brown; Fernando J Martinez; Ganesh Raghu; Rhonda S Roberts; Kevin J Anstrom
Journal:  Chest       Date:  2014-11       Impact factor: 9.410

4.  A clinical, radiographic, and physiologic scoring system for the longitudinal assessment of patients with idiopathic pulmonary fibrosis.

Authors:  L C Watters; T E King; M I Schwarz; J A Waldron; R E Stanford; R M Cherniack
Journal:  Am Rev Respir Dis       Date:  1986-01

5.  Idiopathic pulmonary fibrosis: a composite physiologic index derived from disease extent observed by computed tomography.

Authors:  Athol U Wells; Sujal R Desai; Michael B Rubens; Nicole S L Goh; Derek Cramer; Andrew G Nicholson; Thomas V Colby; Roland M du Bois; David M Hansell
Journal:  Am J Respir Crit Care Med       Date:  2003-04-01       Impact factor: 21.405

6.  Predicting survival in idiopathic pulmonary fibrosis: scoring system and survival model.

Authors:  T E King; J A Tooze; M I Schwarz; K R Brown; R M Cherniack
Journal:  Am J Respir Crit Care Med       Date:  2001-10-01       Impact factor: 21.405

7.  Serum surfactant proteins-A and -D as biomarkers in idiopathic pulmonary fibrosis.

Authors:  K E Greene; T E King; Y Kuroki; B Bucher-Bartelson; G W Hunninghake; L S Newman; H Nagae; R J Mason
Journal:  Eur Respir J       Date:  2002-03       Impact factor: 16.671

8.  Heterogeneous gene expression signatures correspond to distinct lung pathologies and biomarkers of disease severity in idiopathic pulmonary fibrosis.

Authors:  Daryle J DePianto; Sanjay Chandriani; Alexander R Abbas; Guiquan Jia; Elsa N N'Diaye; Patrick Caplazi; Steven E Kauder; Sabyasachi Biswas; Satyajit K Karnik; Connie Ha; Zora Modrusan; Michael A Matthay; Jasleen Kukreja; Harold R Collard; Jackson G Egen; Paul J Wolters; Joseph R Arron
Journal:  Thorax       Date:  2014-09-12       Impact factor: 9.139

Review 9.  Open-access biorepository for idiopathic pulmonary fibrosis. The way forward.

Authors:  Eric S White; Kevin K Brown; Harold R Collard; Craig S Conoscenti; Gregory P Cosgrove; Kevin R Flaherty; Jonathan A Leff; Fernando J Martinez; Jesse Roman; Dan Rose; Shelia Violette; Naftali Kaminski
Journal:  Ann Am Thorac Soc       Date:  2014-10

10.  Longitudinal change in collagen degradation biomarkers in idiopathic pulmonary fibrosis: an analysis from the prospective, multicentre PROFILE study.

Authors:  R Gisli Jenkins; Juliet K Simpson; Gauri Saini; Jane H Bentley; Anne-Marie Russell; Rebecca Braybrooke; Philip L Molyneaux; Tricia M McKeever; Athol U Wells; Aiden Flynn; Richard B Hubbard; Diana J Leeming; Richard P Marshall; Morten A Karsdal; Pauline T Lukey; Toby M Maher
Journal:  Lancet Respir Med       Date:  2015-03-12       Impact factor: 30.700

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  2 in total

1.  Idiopathic pulmonary fibrosis: moving forward.

Authors:  Luca Richeldi
Journal:  BMC Med       Date:  2015-09-24       Impact factor: 8.775

2.  Impact of mediastinal lymph node enlargement on the prognosis of idiopathic pulmonary fibrosis.

Authors:  Sooim Sin; Kyung Hee Lee; Jee Hye Hur; Sang-Hoon Lee; Yeon Joo Lee; Young-Jae Cho; Ho Il Yoon; Jae Ho Lee; Choon Taek Lee; Jong Sun Park
Journal:  PLoS One       Date:  2018-07-25       Impact factor: 3.240

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