Literature DB >> 28830514

Effect of smoking and comorbidities on survival in idiopathic pulmonary fibrosis.

Miia Kärkkäinen1,2, Hannu-Pekka Kettunen3, Hanna Nurmi4,5, Tuomas Selander6, Minna Purokivi7, Riitta Kaarteenaho7,4,8.   

Abstract

BACKGROUND: Cigarette smoking has been associated with the risk of idiopathic pulmonary fibrosis (IPF). Certain comorbidities have been associated with reduced survival although some studies have indicated that current smokers have a longer survival than ex-smokers. Comorbidities in relation to smoking history have not been previously analyzed.
METHODS: Retrospective data was collected and patients were categorized according to gender and smoking habits. Comorbidities and medications were collected. Predictive values for mortality were identified by COX proportional hazard analyses.
RESULTS: We examined 45 non-smokers (53.3% female), 66 ex-smokers (9.1% female) and 17 current smokers (17.6% female) with IPF. Current smokers were younger at baseline (58.1 ± 8.74 years) compared to non-smokers (71.4 ± 8.74, p < 0.001) and ex-smokers (72.5 ±7.95, p <0.001). Median survival of non-smokers and current smokers was longer (55.0 and 52.0 months, respectively) than that of ex-smokers (36.0 months) (p=0.028 and 0.034, respectively). In age and severity adjusted analyses, smoking was not related to survival. Cardiovascular diseases (CVD) (72.7 %) were the most common comorbidities, current smokers had more chronic obstructive pulmonary disease (COPD) and lung cancer compared to ex-smokers (p<0.001). CVD, COPD and use of insulin were related to poorer survival in adjusted analyses.
CONCLUSIONS: Smoking seems to influence the course of disease in IPF since current smokers developed the disease at a younger age in comparison to non-smokers and ex-smokers. No significant differences in the major comorbidities were detected between IPF patients with different smoking histories. The mechanism through which smoking influences IPF progression requires further investigation.

Entities:  

Keywords:  Idiopathic pulmonary fibrosis; comorbidity; gender; smoking

Mesh:

Year:  2017        PMID: 28830514      PMCID: PMC5567897          DOI: 10.1186/s12931-017-0642-6

Source DB:  PubMed          Journal:  Respir Res        ISSN: 1465-9921


Background

Cigarette smoking has been shown to associate with the risk of developing idiopathic pulmonary fibrosis (IPF) with ever-smokers having a 60 % higher risk [1]. There are, however, controversial reports on how smoking affects survival in IPF. Current smokers at the time of IPF diagnosis have been found to have longer survival times than ex-smokers as well as non-smokers and ex-smokers; however, if one applies the composite physiologic index (CPI) for severity adjustment, then never-smokers had longer survival times than ever-smokers (i.e. current and ex-smokers) and furthermore the survival difference between current and ex-smokers disappeared [2, 3]. A recent study found that ever-smokers with IPF lived longer than never-smokers who, however, revealed significantly higher CPI and thus severity adjusted survival remained significantly different between the two groups [4]. Males with current or past smoking histories and occupational exposure have been reported to carry an increased risk of IPF compared to non-exposed females [5]. In addition to smoking, comorbidities might influence the progression of IPF i.e. patients with several comorbidities have been shown to exhibit worse survival than those not burdened by comorbidities [6]. The most prevalent comorbidities in IPF have been shown to be pulmonary hypertension, obstructive sleep apnea (OSA), lung cancer, chronic obstructive pulmonary disease (COPD), coronary artery disease (CAD) and gastro-esophageal reflux (GER) [7]. Furthermore, IPF-patients have been reported to have an increased risk of vascular disease, diabetes and hypertension [6, 8–10]. Thyroid disease, diabetes, CAD and lung cancer are all illnesses that have been shown to associate with shortened survival in IPF, whereas the use of GER medication has been claimed to prolong patient lifespans [10-15]. The results on the use of statin and anticoagulant medications on the survival of IPF patients have been controversial [10, 16–19]. The aims of this study were to evaluate the clinical and radiological characteristics of patients with IPF in a retrospective cohort from an eastern Finnish Hospital and to subdivide them according to smoking history i.e. non-smokers, ex-smokers and current smokers in both the whole study group, and also separately for female and male patients. Furthermore, we wanted to examine the numbers and types of comorbidities and medications, and evaluate their effect on survival of the patients.

Materials and Methods

Patients and data collection

A total of 223 patients (91 female, 132 male) with pulmonary fibrosis treated in Kuopio University Hospital between 1st January 2002 and 31st December 2012 were collected from medical records of the hospital by using International Classification of Diseases version 10 (ICD-10) codes J84.1, J84.8 and J84.9. Clinical, radiological and histological information of each patient was transferred from medical records to special data collection forms designed for the present study. Pulmonary fibroses with a known etiology, i.e. connective-tissue disease, occupational exposure etc., were excluded. The data concerning comorbidities and survival was updated on 16th October 2016. Smoking status was categorized as non-smoker, ex-smoker and current smoker and collected as years, pack-years or both if available. Ex-smokers were defined as having smoked regularly for more than one year, and longitudinal changes in smoking habits after the diagnosis of IPF were not considered. The presence of comorbid diseases i.e. COPD, asthma, hypertension, heart failure for any reason, CAD, cerebral infarction, transient ischemic attacks, OSA, lung cancer, GER, depression, diabetes and other cancers were gathered from the medical records; in this case the time of diagnosis was the cut-off for subdivision into either before or after the diagnosis of IPF. Pulmonary function tests (PFT) included results of spirometry i.e. forced vital capacity (FVC), forced expiratory volume in one second (FEV1) and FEV1/FVC ratio, diffusion capacity i.e. diffusion capacity of carbon monoxide (DLco) and potential value of diffusion capacity per liter of lung volume (DLco/VA). PFT results were expressed as absolute numerical values and percentages of predicted values. Information from histological samples from surgical lung biopsy or autopsy was gathered. No consents for inclusion into this study were gathered since this was a retrospective study and the majority of the patients are deceased. The study protocol was approved by the Ethical Committee of Kuopio University Hospital (statement 17/2013) and from the National Institute for Health and Welfare (Dnro THL/1052/5.05.01/2013). Permission to use data from death certificates was given by Statistics Finland (Dnro: TK-53-911-13). This study was conducted in compliance with the Declaration of Helsinki.

Assessment of clinical, radiological and histological data

The PFT were evaluated using the Finnish reference values [20]. CPI was calculated from the PFT results as follows: 91.0 – (0.65 x % predicted DLco) – (0.53 x % predicted FVC) + (0.34 x % predicted FEV1) [21]. The findings of the first and last high resolution computed tomography (HRCT) of each patient were re-evaluated by a radiologist according to the recent statement of the American Thoracic Society (ATS) and European Respiratory Society (ERS) and re-classified as usual interstitial pneumonia (UIP), possible UIP and not UIP [22]. All the patients whose re-analyses were categorized as not definite UIP in HRCT were evaluated by a multidisciplinary discussion with a radiologist, a pathologist and a pulmonologist before being included into the present study. Either death or lung transplantation were considered as end-points in the survival analyses.

Statistical analysis

Statistical analysis was performed with IBM SPSS Statistics version 21. Group differences were tested by Kruskall-Wallis or Mann-Whitney U-test for continuous variables and by Chi-square testing or Fisher exact test for categorical variables. Data is presented as mean with standard deviation for continuous variables or frequencies with percentages when variables are categorical. Survival curves were estimated by the Kaplan-Meier method and differences in survival were compared using log-rank test, in addition median survival is expressed. Univariate and multivariate survival analysis were computed using Cox regression models. Results from Cox survival analyses are shown in the form of a hazard ratio with 95 % confidence intervals. An ordered logistic regression was performed in order to evaluate the impact of age and smoking status on the number of comorbidities. P-value < 0.05 was considered as statistically significant.

Results

Demographics and unadjusted survival

A total of 132 patients with IPF were evaluated in this study; of these, 97 (73.5%) were male and 35 (26.5%) female. The mean age of the patients at the time of diagnosis was 70.5 years and the median survival 45.0 months. When we updated the data (16th October 2016), a total of 115 patients had deceased and 15 patients were still alive. Three patients (one of whom had died) had undergone lung transplantation. Two males and 2 females had an unknown smoking history. From the 128 (96.7%) patients with a known smoking history, 45 (35.2%) were non-smokers, 66 (51.2%) ex-smokers and 17 (13.4%) were current smokers. There were more female non-smokers (p <0.001) and fewer ex-smokers than their male counterparts (p <0.001) but no gender difference was seen in the proportion of current smokers (p=0.410). Current smokers had smoked for significantly more years and more pack-years than ex-smokers and they were also significantly younger at the time of diagnosis and at death compared to non-smokers and ex-smokers; this remained the case when male patients were analyzed separately. Current smoker females were younger at the time of diagnosis compared to ex-smoking females (0.036) and they died at a younger age than their non-smoking counterparts (p=0.038). Female patients had significantly longer survival time compared to males, 42.2 months and 29.1 months, respectively (p=0.039) and ex-smokers had a shorter survival time compared to current smokers and non-smokers (Table 1, Fig. 1). No significant differences in PFT results, CPI values or HRCT findings were detected between the groups of different smoking histories (Table 1).
Table 1

Demographics of the patients with IPF according to their smoking status

Whole cohortEx-smoker (ES)Current smoker (CS)Non-smoker (NS)p-value(between ES and CS)p-value(between ES and NS)
N (%)a 132 (100%)66 (50.0)17 (12.8)45 (34.1)
Pack years (SD)25.9 (17.66)23.1 (18.43)32.9 (13.65)0.006
Smoking years (SD)25.5 (13.54)21.8 (12.48)38.1 (8.48)<0.001
Male N (%)97 (73.5)59 (90.8)14 (82.4)20 (44.4)0.312<0.001
Age at diagnosis (y)(SD)70.5 (9.80)72.4 (7.95)58.1 (9.93)71.7 (8.74)<0.0010.411
Age at death (y) (SD)74.4 (9.35)75.8 (8.06)63.1 (8.13)76.2 (8.47)<0.0010.877
Median survival (mo)45.036.052.055.00.0290.034
Pulmonary function tests (mean (SD))
 FVC% (SD)b 76.7 (18.51)75.6 (19.51)76.1 (17.48)78.3 (17.26)0.9260.341
 FEV1% (SD)77.0 (16.99)74.9 (17.64)75.1 (15.77)80.7 (16.26)0.8660.050
 FEV1/FVC% (SD)101.4 (9.68)100.0 (9.70)99.8 (11.84)103.7 (7.72)0.9950.093
 DLco% (SD)c 56.1 (17.51)53.8 (16.13)58.9 (19.49)58.2 (18.98)0.2720.139
 CPI (SD)39.9 (19.96)41.1 (13.63)37.9 (14.25)39.1 (14.67)0.3120.341
Radiological diagnoses N (%)
 Definite UIP79 (61.7)37 (46.8)14 (61.7)28 (35.4)0.0550.553
 Possible UIP28 (21.9)19 (67.9)1 (3.6)8 (28.6)0.0490.261
 Not UIP21 (16.4)10 (47.6)2 (11.8)9 (42.9)0.7230.794

Data expressed mean (SD) or N (%) of patients

N number, y years, mo months, FVC forced vital capacity, % pred percent predicted, FEV1 forced expiratory volume in one second, DLco diffusion capacity of carbon monoxide, CPI composite physiologic index, UIP usual interstitial pneumonia, SD standard deviation

asmoking status of 4 patients (2 male and 2 female) was unknown

bSpirometry results from 126 patients

cDiffusion capacity from 124 patients

Fig. 1

Analyses of survival indicates that ex-smokers revealed shorter survival time (36 months) than current smokers (52 months (0.029)) or non-smokers (55 months (p=0.034))

Demographics of the patients with IPF according to their smoking status Data expressed mean (SD) or N (%) of patients N number, y years, mo months, FVC forced vital capacity, % pred percent predicted, FEV1 forced expiratory volume in one second, DLco diffusion capacity of carbon monoxide, CPI composite physiologic index, UIP usual interstitial pneumonia, SD standard deviation asmoking status of 4 patients (2 male and 2 female) was unknown bSpirometry results from 126 patients cDiffusion capacity from 124 patients Analyses of survival indicates that ex-smokers revealed shorter survival time (36 months) than current smokers (52 months (0.029)) or non-smokers (55 months (p=0.034)) In the univariate analyses, DLco% and CPI were significantly related to survival: for DLco% hazard ratio (HR) was 0.97 with 95% confidence interval (95% CI) 0.96 – 0.98 and with p-value <0.001 and for CPI HR was 1.04, 95% CI 1.02 – 1.06 and p-value < 0.001. For that reason DLco% and CPI were used in the severity adjustment in the multivariate analyses.

Step-by-step multivariate analyses

When survival differences were compared between ex-smokers and current smokers in step-by-step multivariate analyses i.e. adding one factor at a time to the model using DLco % and CPI in severity adjustment, the survival difference in favor of current smokers was reduced to a marginally non-significant level (p=0.098 and p=0.128, respectively). When age at the time of diagnosis was added into the multivariate analyses, smoking history no longer exerted any statistically significant effect on survival (Table 2). When survival differences were compared between ex-smokers and non-smokers, the better survival of non-smokers disappeared after severity adjustment with DLco% and CPI while age remained as a significant predictor of survival (Table 3). Male gender was found to be a significant risk factor for shorter survival when comparing ex-smokers and non-smokers, but not in the comparison between ex-smokers and current smokers (Tables 2 and 3).
Table 2

A comparison of survival between ex-smokers and current smokers in the step-by-step multivariate models

HR95% CI p-value
Univariate
 Ex-smokerReference
 Current smoker0.520.29 – 0.950.033
Model containing DLco%
 Ex-smokerReference
 Current smoker0.600.33 – 1.100.098
 Dlco%0.970.96 – 0.990.001
Model containing CPI
 Ex-smokerReference
 Current smoker0.620.34 – 1.140.126
 CPI1.031.01 – 1.050.001
Model containing DLco % and age
 Ex-smokerReference
 Current smoker1.32062 – 2.720.472
 Dlco%0.970.95 – 0.98<0.001
 Age at diagnosis1.061.02 – 1.100.001
Model containing CPI and age
 Ex-smokerReference
 Current smoker1.630.75 – 3.540.217
 CPI1.051.02 – 1.07< 0.001
 Age at diagnosis1.071.03 – 1.12<0.001
Model containing DLco %, age and gender
 Ex-smokerReference
 Current smoker1.32063 – 2.800.465
 Dlco%0.970.95 – 0.99<0.001
 Age at diagnosis1.061.03 – 1.100.001
 Gender - femaleReference
 male1.100.45 – 2.690.831
Model containing CPI, age and gender
 Ex-smokerReference
 Current smoker1.660.76 – 3.640.203
 CPI1.051.02 – 1.07<0.001
 Age at diagnosis1.071.03 – 1.12<0.001
 Gender - femaleReference
 male1.220.51 – 2.940.657

HR hazard ratio, CI confidence interval, DLco diffusion capacity of carbon monoxide, CPI composite physiologic index

Table 3

A comparison of survival between ex-smokers and non-smokers in the step-by-step multivariate models

HR95% CIp-value
Univariate
 Ex-smokerReference
 Non-smoker0.640.42 – 0.970.037
Model containing DLco%
 Ex-smokerReference
 Non-smoker0.790.50 – 1.240.306
 Dlco%0.970.95 – 0.98<0.001
Model containing CPI
 Ex-smokerReference
 Non-smoker0.750.48 – 1.170.197
 CPI1.041.02 – 1.06<0.001
Model containing DLco % and age
 Ex-smokerReference
 Non-smoker0.820.52 – 1.270.371
 Dlco%0.960.95 – 0.98<0.001
 Age at diagnosis1.051.02 – 1.080.001
Model containing CPI and age
 Ex-smokerReference
 Non-smoker0.790.51 – 1.230.292
 CPI1.051.03 – 1.07<0.001
 Age at diagnosis1.061.03 – 1.09<0.001
Model containing DLco %, age and gender
 Ex-smokerReference
 Non-smoker1.320.76 – 2.300.324
 Dlco%0.960.95 – 0.98<0.001
 Age at diagnosis1.061.03 – 1.09<0.001
 Gender - femaleReference
 male2.351.24 – 4.450.009
Model containing CPI, age and gender
 Ex-smokerReference
 Non-smoker1.220.71 – 2.100.472
 CPI1.051.03 – 1.07<0.001
 Age at diagnosis1.071.04 – 1.10<0.001
 Gender - femaleReference
 male2.221.18 – 4.180.013

HR hazard ratio, CI confidence interval, DLco diffusion capacity of carbon monoxide, CPI composite physiologic index

A comparison of survival between ex-smokers and current smokers in the step-by-step multivariate models HR hazard ratio, CI confidence interval, DLco diffusion capacity of carbon monoxide, CPI composite physiologic index A comparison of survival between ex-smokers and non-smokers in the step-by-step multivariate models HR hazard ratio, CI confidence interval, DLco diffusion capacity of carbon monoxide, CPI composite physiologic index

Comorbidities and medications

Twenty-one (15.9%) of the patients did not have any comorbidities while 36 (27.3%) had one, 30 (22.7%) had two, 20 (15.2%) had three, 21 (15.9) had four and 4 (3.0%) had five comorbidities. The most common comorbidities were cardiovascular diseases (CVDs) (72.7 %) (Fig. 2). Females were more likely than males to suffer from asthma, hypertension or diabetes. Current smokers had significantly more COPD (p=0.000) and lung cancer (p=0.006) compared to ex-smokers, this difference was observed in males, but not in females when the data was subdivided according to genders (Table 4). The multivariate analyses were adjusted for age, gender and smoking status and in addition, DLco % or CPI in two different models (Table 5). In multivariate analysis with DLco %, CVD and COPD were related to poorer survival and in the multivariate analysis with CPI, it was noted that the use of insulin was related to poorer survival (Table 5). In the ordered logistic regression, age, but not smoking history, exerted a significant impact on the number of comorbidities (standardized beta coefficient 1.044, p= 0.003), but the number of comorbidities did not have any statistically significant effect on survival even in multivariate analyses.
Fig. 2

Prevalence of comorbidities in the IPF patients are presented as percent of total (N=132). The time of comorbidity diagnoses are presented before and after the diagnosis of IPF. CVD includes CAD, HT and CI. B, diagnosed before the diagnosis of IPF; A, diagnosed after the diagnosis of IPF; CVD, cardiovascular disease; CAD, coronary artery disease; HT, hypertension; DM, diabetes; HF, heart failure for any reason; GER, gastro-esophageal reflux; COPD, chronic obstructive pulmonary disease; CI, cerebral infarction; TIA, transient ischemic attack; OSA, obstructive sleep apnea. Other cancers treated before the diagnosis of IPF included seminoma, melanoma, basal cell carcinoma, renal, ventricular, prostate, bone, colorectal, breast and thyroid cancer. One patient had three different cancers. Two colorectal cancers were detected after the diagnosis of IPF

Table 4

Comorbidities of patients with IPF according to their smoking habits

Non-smokersEx-smokersCurrent smokers p-value
Cardiovascular diseases a 34 (75.6)46 (69.7)12 (70.6)0.790
Coronary artery disease22 (48.9)29 (43.9)10 (58.8)0.537
Hypertension23 (51.1)28 (42.4)6 (35.3)0.474
Cerebral infarction3 (6.7)8 (12.1)2 (11.8)0.629
TIA3 (6.7)5 (7.6)0.511
Diabetes13 (28.9)18 (27.3)1 (6.3)0.145
Heart failure b 16 (35.6)14 (21.2)3 (17.6)0.169
Asthma7 (15.6)9 (13.6)4 (23.5)0.605
Depression4 (8.9)4 (6.1)1 (6.3)0.832
GER3 (6.7)10 (15.2)1 (6.3)0.288
Lung cancer4 (6.1)5 (29.4)<0.001
COPD3 (4.5)7 (41.2)<0.001
OSA2 (4.4)3 (4.5)1 (6.3)0.969

N number, NS p-value > 0.05, TIA transient ischemic attack, GER gastro-esophageal reflux, COPD chronic obstructive pulmonary disease, OSA obstructive sleep apnea

aCoronary artery disease, cerebral infarction and hypertension

bHeart failure for any reason

Table 5

Comorbidities and their association with survival after adjustment for age, smoking status, gender and DLco% or CPI

Multivariate with DLco%a Multivariate with CPI a
N(%)HR (95 % CI)p-valueHR (95 % C I)p-value
Cardiovascular diseases b 96 (72.7)1.6 (1.01 – 2.52)0.0471.5 (0.94 – 2.38)0.086
Coronary artery disease65 (49.2)1.4 (0.92 – 2.05)0.1241.4 (0.93 – 2.10)0.109
Hypertension60 (45.5)1.0 (0.69 – 1.52)0.9001.0 (0.67 – 1.47)0.955
Heart failure c 36 (27.2)0.8 (053 – 1.25)0.3390.8 (0.53 – 1.27)0.378
Cerebral infarction13 (9.8)0.8 (0.40 – 1.44)0.3950.9 (0.45 – 1.63)0.638
TIA8 (6.1)1.1 (0.48 – 2.66)0.7781.2 (0.52 – 2.89)0.648
Diabetes35 (26.5)1.3 (0.82 – 2.11)0.2561.4 (1.03 – 1.07)0.198
OSA6 (4.5)0.5 (0.22 – 1.20)0.1210.5 (0.21 – 1.59)0.105
GER14 (10.6)0.9 (0.49 – 1.74)0.7990.9 (0.46 – 1.64)0.661
Asthma21 (15.9)1.6 (0.92 – 2.78)0.0981.5 (0.89 – 2.66)0.126
COPD10 (7.6)2.5 (1.02 – 6.01)0.0451.8 (0.78 – 4.27)0.163
Lung cancer9 (6.8)1.0 (0.48 – 2.15)0.9650.9 (0.43 – 1.92)0.808
Depression10 (7.6)0.9 (0.43 – 2.06)0.8800.8 (0.39 – 1.81)0.654
Medications
 Statins56 (42.4)1.3 (0.85 – 2.06)0.2151.4 (0.91 – 2.25)0.121
 Beta-blockers57 (43.2)0.9 (0.58 – 1.35)0.5660.9 (0.59 – 1.39)0.643
 GER medication13 (9.8)0.9 (0.48 – 1.71)0.7521.2 (0.64 – 2.28)0.556
 ACE inhibitors or angiotensin 1 antagonists48 (36.4)1.4 (0.94 – 2.04)0.1031.1 (0.70 – 1.66)0.737
 Anticoagulants15 (11.4)1.1 (0.59 – 1.89)0.8490.7 (0.39 – 1.37)0.332
 Platelet function drugs d 58 (43.9)1.2 (0.77 – 1.88)0.4201.3 (0.82 – 2.04)0.277
 Inhaled corticosteroids12 (9.1)1.4 (0.71 – 2.83)0.3271.0 (1.03 – 1.07)0.290
 Antidiabetic drugs e 22 (16.7)1.6 (0.88 – 2.84)0.1231.7 (0.94 – 3.03)0.082
 Insulin9 (6.8)2.4 (0.95 – 6.24)0.0632.8 (1.07 – 7.09)0.036
 Thyroid medication16 (12.1)0.9 (0.49 – 1.81)0.8581.0 (0.50 – 1.90)0.946
 Allopurinol4 (3.0)0.8 (0.18 – 3.21)0.7170.6 (0.14 – 2.37 )0.439

N number, SD standard deviation, 95 % C I 95 percent confidence interval, HRCT high resolution computed tomography, UIP usual interstitial pneumonia, TIA transient ischemic attack, OSA obstructive sleep apnea, GER gastro-esophageal reflux, COPD chronic obstructive pulmonary disease

aAdjusted for age, gender and smoking history and DLco% or CPI

bCoronary artery disease, hypertension and cerebral infarction

cHeart failure for any reason

dAcetylsalicylic acid, dipyridamole and clopidogrel

eMetformin, glimepiride and sitagliptin

Prevalence of comorbidities in the IPF patients are presented as percent of total (N=132). The time of comorbidity diagnoses are presented before and after the diagnosis of IPF. CVD includes CAD, HT and CI. B, diagnosed before the diagnosis of IPF; A, diagnosed after the diagnosis of IPF; CVD, cardiovascular disease; CAD, coronary artery disease; HT, hypertension; DM, diabetes; HF, heart failure for any reason; GER, gastro-esophageal reflux; COPD, chronic obstructive pulmonary disease; CI, cerebral infarction; TIA, transient ischemic attack; OSA, obstructive sleep apnea. Other cancers treated before the diagnosis of IPF included seminoma, melanoma, basal cell carcinoma, renal, ventricular, prostate, bone, colorectal, breast and thyroid cancer. One patient had three different cancers. Two colorectal cancers were detected after the diagnosis of IPF Comorbidities of patients with IPF according to their smoking habits N number, NS p-value > 0.05, TIA transient ischemic attack, GER gastro-esophageal reflux, COPD chronic obstructive pulmonary disease, OSA obstructive sleep apnea aCoronary artery disease, cerebral infarction and hypertension bHeart failure for any reason Comorbidities and their association with survival after adjustment for age, smoking status, gender and DLco% or CPI N number, SD standard deviation, 95 % C I 95 percent confidence interval, HRCT high resolution computed tomography, UIP usual interstitial pneumonia, TIA transient ischemic attack, OSA obstructive sleep apnea, GER gastro-esophageal reflux, COPD chronic obstructive pulmonary disease aAdjusted for age, gender and smoking history and DLco% or CPI bCoronary artery disease, hypertension and cerebral infarction cHeart failure for any reason dAcetylsalicylic acid, dipyridamole and clopidogrel eMetformin, glimepiride and sitagliptin Comorbidities had been most often diagnosed before IPF (Fig. 2). CVDs and CAD were more often diagnosed before IPF in ex-smokers compared to current smokers (p <0.001, for both) and non-smokers (p=0.011 and p=0.016, respectively). CVDs were also more likely to be diagnosed before IPF in non-smokers than in current smokers (p=0.044) and in non-smoking males in comparison to male ex-smokers (p=0.002). Non-smokers (p=0.046) and ex-smokers (p=0.001) had received a GER diagnosis more often before the diagnosis of IPF compared to current smokers (p=0.046 and 0.001, respectively). After adjustment for age, smoking status, gender and separately both DLco % and CPI, it was found that the time of the comorbidity diagnosis in relation to the IPF diagnosis did not have any effect on survival. Pharmacological treatments for IPF are presented in Table 6, symptomatic medical treatment in Table 7 and medications for comorbidities in Table 8.
Table 6

Pharmacological treatment of IPF in the years 2002 – 2016a

MedicationN / %
No medication42 / 31.8
Total
 Corticosteroids75 / 56.8
 Azathioprine28 / 37.2
 N-acetylcysteine30 / 40.0
 Cyclophosphamide16 / 12.1
 Pirfenidone6 / 4.5
 Nintedanib3 / 2.3
 Mycophenolate mofetil1 / 0.8
Single medication
 Corticosteroids24 / 18.2
 N-acetylcysteine11 / 8.3
 Pirfenidone5 /3.8
 Nintedanib1 /0.8
 Triple therapy b 7 /5.3
Combined with prednisone as only medication
 Azathioprine14 / 10.6
 N-acetylcysteine13 / 9.8
 Cyclophosphamide8 / 6.1
After prednisone therapy
 Nintedanib2 /1.5
Before triple therapy
 Cyclophosphamide + Corticosteroids2 / 1.5
After triple therapy
 Pirfenidone1 / 0.8
 Cyclophosphamide3 / 2.3
 Mycophenolate1 / 0.8

aDiagnosis of IPF between years 2002 – 2012, while the follow-up information of medication was gathered until 16.10.2016. Reimbursement (by KELA) in Finland for pirfenidone in 1st June 2013 and for nintedanib in 1st December 2015.

bTriple therapy = azathioprine, N-acetylcysteine and prednisone

Table 7

Symptomatic medical treatment for IPF

MedicationN / %
Opioids a 27 / 20.5
Oxygen therapy45 /34.1
 Ambulatory17 / 37.7
 Long term28 / 21.1
Inhaled corticosteroids9 / 6.8
Short-acting beta-agonists7 / 5.3
Anticholinergic drugs2 / 1.5
Theophylline1 / 0.8
Montelukast1 / 0.8
Mycolytics3 / 2.3

a Oxycodone, Fentanyl

Table 8

Medications for comorbidities

MedicationN (%)
Statins56 (42.4)
Beta-blockers57 (43.2)
ACE inhibitors or angiotensin 1 antagonist48 (36.4)
GER medication13 (9.8)
Allopurinol4 (3.0)
Anticoagulants15 (11.4)
Antiplatelet therapy a 58 (43.9)
Inhaled corticosteroids12 (9.1)
Antidiabetic drugs b 22 (16.7)
Insulin9 (6.8)
Thyroid medication16 (12.1)

N number of patients with the medication

aAcetylsalicylic acid, dipyridamole and clopidogrel

bMetformin, glimepiride and sitagliptin

Pharmacological treatment of IPF in the years 2002 – 2016a aDiagnosis of IPF between years 2002 – 2012, while the follow-up information of medication was gathered until 16.10.2016. Reimbursement (by KELA) in Finland for pirfenidone in 1st June 2013 and for nintedanib in 1st December 2015. bTriple therapy = azathioprine, N-acetylcysteine and prednisone Symptomatic medical treatment for IPF a Oxycodone, Fentanyl Medications for comorbidities N number of patients with the medication aAcetylsalicylic acid, dipyridamole and clopidogrel bMetformin, glimepiride and sitagliptin

Discussion

The smoking habits in conjunction with gender, clinical characteristics and comorbidities were studied in this retrospective real-life IPF population revealing that ex-smokers had a shorter survival time compared to non-smokers and current smokers. Furthermore, current smokers were significantly younger at diagnosis and at death than non-smokers and ex-smokers, but no differences in the major comorbidities i.e. CVD, CAD, hypertension, diabetes were found in relation to smoking history. Current smokers, who had smoked for more years and had more pack-years than ex-smokers, had more smoking-associated comorbidities such as COPD and lung cancer. The results of our study confirm the findings of the previous studies in which unadjusted survival time was longer in current smokers and in non-smokers than in ex-smokers and similarly severity adjustment eliminated the survival advantage [2, 3]. We also observed that at the time of IPF-diagnosis, current smokers were significantly younger than either non-smokers or ex-smokers, a finding in agreement with several published studies [2, 3]. When compared to previous studies, however, ex-smokers and non-smokers were remarkably older but had better preserved lung function [1-3]. In our study however, despite the younger age of current smokers, the PFT and CPI did not differ between the groups of different smoking histories, although current smokers had smoked significantly more years and pack-years compared to ex-smokers. When comparing the severity adjusted survival of current smokers and ex-smokers, there was still a marginal non-significant survival advantage for current smokers but this became diminished when age was added into the model. This may be due to under-powering i.e. the low number of patients, but it is however noteworthy that the proportion of current smokers was higher (13%) in our study than in the publication of Antoniou et al. (8%) in which a survival difference was abolished when CPI was incorporated into the severity adjustment [2]. Differences in the proportions of current smokers, non-smokers and ex-smokers can be seen in published studies from different countries. In our study, 35.2% of the patients with IPF were non-smokers. In the Finnish IPF register, in which the patients are collected prospectively including patients from the year 2012 onwards, as many as 44% of the patients were non-smokers [23]. However, the registry includes only patients who have provided consent to participate, meaning that the IPF patients with rapidly progressing disease or older age and with cognitive impairment have not been taken into account. The percentage of non-smokers is surprisingly different in these Finnish studies compared to the results of one other Nordic country, i.e. Denmark, in which only 19% of the patients were non-smokers in a similar size of cohort (n=121) as ours [10]. This may be due to cultural differences and also the reason why the “healthy smoker effect” was not displayed in our study. The “healthy smoker effect” is a term originating from COPD studies; it has been used to explain why current smokers exhibit milder disease than non-smokers and ex-smokers in terms of PFT, DLco and CPI [2, 24]. This effect was not confirmed in our IPF population. King et al. claimed that current smokers had a longer survival than ex-smokers [3]. Current smokers were younger compared to those with other smoking histories which meant that age was found to be a significant predictor of survival [3]. This study disagrees with the study of King et al. since ex-smokers and non-smokers were remarkably older at the time of diagnosis and furthermore, no significant differences in the PFT and DLco results were observed. The reason why non-smokers and ex-smokers were about 10 years older at the time of diagnosis in this study compared to previous studies is uncertain but may partly explain the reason why current smokers exhibited a longer survival [2, 3]. A more recent study comparing non-smoking IPF patients to a combined group of ex-smokers and current smokers confirmed our results of non-smokers being mostly female, but found no difference in age between the groups [4]. In that particular study, non-smokers had significantly worse survival, lower DLco and higher CPI and even adjusted for CPI, the poorer prognosis of non-smokers was retained and baseline CPI, DLco% and FVC % were not statistically significantly predictive for survival, a finding which is different from that of Antoniou’s et al. [2, 4]. In our study, the HRCT classification was performed according to the present guidelines [22]. We found that the most common pattern in HRCT in non-smokers was definite UIP in agreement with previous reports [4, 22]. Our results are also in line with the previous publications showing that non-smokers accounted for 35.4 % of the definite UIP patterns in HRCT. Furthermore, the gender distribution between the different radiological categories was similar as in other reports [25, 26]. The prevalences of GER, lung cancer, COPD, hypertension, CAD and diabetes were in line with most previous publications, although OSA was less frequent (4.5 %) in our cohort [6, 7, 27]. Our results support the earlier findings that CVDs are the most common comorbidities experienced by IPF patients [7, 28]. It has been reported that the overall number of comorbidities is significantly associated with survival in IPF, but this was not the case in our patients [6]. IPF patients with CAD have been reported to have worse outcomes [12]. If CVDs were diagnosed after the diagnosis of IPF, this was associated with increased mortality in IPF as was also the presence of either diabetes or thyroid disease [11]. In contrast, in our study, diabetes, thyroid medication and CAD alone did not influence survival, and furthermore, the CVDs and CAD had been most often diagnosed before the diagnosis of IPF. This may be caused by the high prevalence of CVD and CAD in eastern Finland [29]. However, the diagnosis of any CVD and COPD at any time and the use of insulin medication at the time of diagnosis were related to poorer survival in the severity adjusted analyses. Our results revealed no effect of statin and anticoagulant medication on survival in IPF unlike previously published investigations [6, 16–19]. The use of GER medication and a GER diagnosis have been associated with longer survival times in some previous investigations, but here, they exerted no effect on survival [6, 15]. In this study cohort, female IPF patients had more asthma and diabetes than their male counterparts. Current smokers had more COPD and lung cancer compared to ex-smokers probably due to the fact that current smokers had smoked more than ex-smokers in terms of both years and in pack-years. When comparing the subgroups with different smoking histories, surprisingly, no statistically significant differences were detected in the proportion of patients with CVD, CAD or GER as comorbidity. In this study, we could not prove that smoking history had any significant effect on major comorbidities or their prevalence, and even although older age seemed to add to the number of comorbidities, the quality and severity of the comorbidity were probably more important than the actual number of comorbidities.

Conclusions

It can be speculated that smoking may, at least partly, influence the onset of IPF since current smokers developed the disease earlier and died at a younger age than either non-smokers or ex-smokers. No significant differences in the major comorbidities were found between IPF patients with different smoking histories.
  28 in total

1.  Gastroesophageal reflux therapy is associated with longer survival in patients with idiopathic pulmonary fibrosis.

Authors:  Joyce S Lee; Jay H Ryu; Brett M Elicker; Carmen P Lydell; Kirk D Jones; Paul J Wolters; Talmadge E King; Harold R Collard
Journal:  Am J Respir Crit Care Med       Date:  2011-06-23       Impact factor: 21.405

2.  Smokers with airway obstruction are more likely to quit smoking.

Authors:  M Bednarek; D Gorecka; J Wielgomas; M Czajkowska-Malinowska; J Regula; G Mieszko-Filipczyk; M Jasionowicz; R Bijata-Bronisz; M Lempicka-Jastrzebska; M Czajkowski; G Przybylski; J Zielinski
Journal:  Thorax       Date:  2006-06-29       Impact factor: 9.139

3.  Clinical findings and outcomes in patients with possible usual interstitial pneumonia.

Authors:  Jin Wook Lee; Esmeralda Shehu; Juarda Gjonbrataj; Young Eun Bahn; Byung Hak Rho; Mi-Young Lee; Won-Il Choi
Journal:  Respir Med       Date:  2015-02-14       Impact factor: 3.415

4.  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

5.  How does comorbidity influence survival in idiopathic pulmonary fibrosis?

Authors:  Charlotte Hyldgaard; Ole Hilberg; Elisabeth Bendstrup
Journal:  Respir Med       Date:  2014-02-02       Impact factor: 3.415

6.  The impact of lung cancer on survival of idiopathic pulmonary fibrosis.

Authors:  Sara Tomassetti; Christian Gurioli; Jay H Ryu; Paul A Decker; Claudia Ravaglia; Paola Tantalocco; Matteo Buccioli; Sara Piciucchi; Nicola Sverzellati; Alessandra Dubini; Giampaolo Gavelli; Marco Chilosi; Venerino Poletti
Journal:  Chest       Date:  2015-01       Impact factor: 9.410

7.  Impact of angiotensin-converting enzyme inhibitors and statins on survival in idiopathic pulmonary fibrosis.

Authors:  Hassan F Nadrous; Jay H Ryu; William W Douglas; Paul A Decker; Eric J Olson
Journal:  Chest       Date:  2004-08       Impact factor: 9.410

8.  The association between idiopathic pulmonary fibrosis and vascular disease: a population-based study.

Authors:  Richard B Hubbard; Chris Smith; Ivan Le Jeune; Jonathan Gribbin; Andrew W Fogarty
Journal:  Am J Respir Crit Care Med       Date:  2008-08-28       Impact factor: 21.405

9.  Prognostic value of the initial chest high-resolution CT pattern in idiopathic pulmonary fibrosis.

Authors:  Olivier Le Rouzic; Sofiane Bendaoud; Cécile Chenivesse; Jacques Rémy; Benoit Wallaert
Journal:  Sarcoidosis Vasc Diffuse Lung Dis       Date:  2016-01-18       Impact factor: 0.670

10.  Effect of statins on disease-related outcomes in patients with idiopathic pulmonary fibrosis.

Authors:  Michael Kreuter; Francesco Bonella; Toby M Maher; Ulrich Costabel; Paolo Spagnolo; Derek Weycker; Klaus-Uwe Kirchgaessler; Martin Kolb
Journal:  Thorax       Date:  2016-10-05       Impact factor: 9.139

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  18 in total

1.  Comorbidity burden and survival in patients with idiopathic pulmonary fibrosis: the EMPIRE registry study.

Authors:  Dragana M Jovanovic; Martina Šterclová; Nesrin Mogulkoc; Katarzyna Lewandowska; Veronika Müller; Marta Hájková; Michael Studnicka; Jasna Tekavec-Trkanjec; Simona Littnerová; Martina Vašáková
Journal:  Respir Res       Date:  2022-05-27

2.  Epidemiology of idiopathic pulmonary fibrosis: a population-based study in primary care.

Authors:  Sergio Harari; Michele Davì; Alice Biffi; Antonella Caminati; Alessandra Ghirardini; Valeria Lovato; Claudio Cricelli; Francesco Lapi
Journal:  Intern Emerg Med       Date:  2019-09-20       Impact factor: 3.397

3.  Early Life Exposure to Nicotine: Postnatal Metabolic, Neurobehavioral and Respiratory Outcomes and the Development of Childhood Cancers.

Authors:  Laiba Jamshed; Genevieve A Perono; Shanza Jamshed; Alison C Holloway
Journal:  Toxicol Sci       Date:  2020-11-01       Impact factor: 4.849

4.  Several specific high-resolution computed tomography patterns correlate with survival in patients with idiopathic pulmonary fibrosis.

Authors:  Minna E Mononen; Hannu-Pekka Kettunen; Sanna-Katja Suoranta; Miia S Kärkkäinen; Tuomas A Selander; Minna K Purokivi; Riitta L Kaarteenaho
Journal:  J Thorac Dis       Date:  2021-04       Impact factor: 2.895

Review 5.  Telomere Abnormalities in the Pathobiology of Idiopathic Pulmonary Fibrosis.

Authors:  Hasancan Bilgili; Adam J Białas; Paweł Górski; Wojciech J Piotrowski
Journal:  J Clin Med       Date:  2019-08-16       Impact factor: 4.241

Review 6.  Idiopathic Pulmonary Fibrosis for Cardiologists: Differential Diagnosis, Cardiovascular Comorbidities, and Patient Management.

Authors:  Johan van Cleemput; Andrea Sonaglioni; Wim A Wuyts; Monica Bengus; John L Stauffer; Sergio Harari
Journal:  Adv Ther       Date:  2018-12-15       Impact factor: 3.845

7.  Cardiovascular Risks, Bleeding Risks, and Clinical Events from 3 Phase III Trials of Pirfenidone in Patients with Idiopathic Pulmonary Fibrosis.

Authors:  Marilyn K Glassberg; Steven D Nathan; Chin-Yu Lin; Elizabeth A Morgenthien; John L Stauffer; Willis Chou; Paul W Noble
Journal:  Adv Ther       Date:  2019-08-10       Impact factor: 3.845

8.  In-hospital mortality trends among patients with idiopathic pulmonary fibrosis in the United States between 2013-2017: a comparison of academic and non-academic programs.

Authors:  Shehabaldin Alqalyoobi; Evans R Fernández Pérez; Justin M Oldham
Journal:  BMC Pulm Med       Date:  2020-11-07       Impact factor: 3.317

9.  Underlying and immediate causes of death in patients with idiopathic pulmonary fibrosis.

Authors:  Miia Kärkkäinen; Hanna Nurmi; Hannu-Pekka Kettunen; Tuomas Selander; Minna Purokivi; Riitta Kaarteenaho
Journal:  BMC Pulm Med       Date:  2018-05-11       Impact factor: 3.317

10.  Comparison of disease progression subgroups in idiopathic pulmonary fibrosis.

Authors:  Miia Kärkkäinen; Hannu-Pekka Kettunen; Hanna Nurmi; Tuomas Selander; Minna Purokivi; Riitta Kaarteenaho
Journal:  BMC Pulm Med       Date:  2019-11-29       Impact factor: 3.317

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