Literature DB >> 32636652

Spirometry Utilization Among Patients with Asthma.

Prithwijit Roychowdhury1, Jasdeep Badwal2, Fadi Alkhatib3, Dilpreet Kaur Singh4, Peter K Lindenauer5,6, Alexander Knee5,7, Tara Lagu5,6.   

Abstract

OBJECTIVE: To examine predictors of spirometry use at a tertiary academic health system and association between receipt of spirometry and outcomes. PATIENTS AND METHODS: We conducted a retrospective cohort study of adult patients with an ICD-9 CM diagnostic code for asthma and a 2014 outpatient visit in either a community health center or private practice associated with a tertiary academic medical center. The main outcome was receipt of spirometry during a 2007-2015 "exposure period." We secondarily examined future hospitalizations and emergency department (ED) visits during a follow-up period (2016-2019).
RESULTS: In a sample of 394 patients, the majority were white (48%; n=188) and female (72%; n=284). Mean (SD) age was 52 years. Approximately half (185, 47%) of the patients received spirometry and 25% (n=97) saw a specialist during the exposure period. Nearly, 88% (n=85) of patients who saw a specialist received spirometry. More than half of the cohort (220/394, 56%) had an ED visit or admission during the follow-up period. Of these, 168 (76.4%) had not seen a specialist and 111 (50.5%) had not received spirometry within the exposure period. We saw no association between spirometry in the exposure window and future ED visit or hospitalization.
CONCLUSION: In a cohort of patients at a tertiary medical center, spirometry was underused. We observed a strong association between seeing a specialist and use of spirometry, suggesting a need to better incorporate spirometry into routine primary care for patients with asthma. Among 220 patients who had an asthma-related hospitalization or ED visit in 2016-2019, the majority had no record of receiving spirometry and no documentation indicating a prior specialist visit.
© 2020 Roychowdhury et al.

Entities:  

Keywords:  asthma; health care delivery; population health; quality of care; spirometry

Year:  2020        PMID: 32636652      PMCID: PMC7335289          DOI: 10.2147/JAA.S254431

Source DB:  PubMed          Journal:  J Asthma Allergy        ISSN: 1178-6965


Introduction

Asthma, a chronic inflammatory disorder of the airways that is characterized by reversible airflow obstruction, bronchial hyperresponsiveness and underlying inflammation, affects an estimated 39.5 million people in the United States.1 From 2008–2013, the estimated total cost of asthma was $81.9 billion, including $50.3 billion in medical expenses, $29 billion due to asthma-related mortality, and $3 billion in losses due to missed work and school days.2 Although a typical patient who presents with asthma reports episodes of wheezing, dyspnea, chest tightness and a cough that worsens in the night or early morning, according to the American Academy of Allergy, Asthma, and Immunology (AAAAI) history alone cannot be used to reliably diagnose asthma.3 Instead, most experts (including the National Asthma Education and Prevention Program (NAEPP), Global Initiative for Asthma (GINA), National Institute for Health and Care Excellence (NICE), and the Joint Task Force on Practice Parameters representing the AAAAI) recommend spirometry for all patients in whom the diagnosis of asthma is being considered or monitored.4–7 Spirometry is a basic lung function test that measures the volume, time, and flow of air throughout inspiration and expiration.8 Failure to use spirometry increases the risk of either a missed diagnosis or a false diagnosis of asthma9–12 which, in turn, increases the risk of inappropriate medication prescriptions.1,13 In addition, objectively assessing lung function at follow-up is an important element of monitoring improvement as well as risk of adverse future outcomes for patients with asthma.5,14 Evidence suggests that a Forced Expiratory Volume in One second (FEV1) <60% predicted is a potentially modifiable independent risk factor for exacerbations and fixed airflow limitation. Therefore assessing FEV1 may help identify patients who need medication adjustments.15–18 Yet prior research suggests that spirometry is widely underutilized in the diagnosis of asthma.19–22 Prior retrospective cohort studies that have examined pulmonary function testing (PFT) in asthma, show that an appointment with a specialist and higher income were associated with receiving spirometry.21,22 Therefore, we aimed to describe use of spirometry in a population of patients receiving primary care in a large health system that included both community health centers and private practices. We examined use of spirometry for both diagnosis and follow up and identified predictors of spirometry use to assess the effect of patient income as well as care by a specialist. As a secondary, exploratory analysis, we evaluated whether spirometry use was associated with future emergency department visits or hospitalizations.23

Patients and Methods

Design and Study Population

We conducted a retrospective study of adults who had a diagnosis of asthma and an outpatient appointment in a private practice or community health center during the year of 2014. As transition from pediatric to adult medical care usually occurs around 21 years of age, we utilized 28 years of age as a minimum age cutoff to allow for a similar observation opportunity for our entire sample (eg these patients were 21 years old in 2007, the beginning of our observation window). We used the International Classification of Diseases, Ninth Revision, Clinical Modification (ICD-9-CM), to identify a range of asthma diagnoses (codes 493, 490.0, 493.00, 493.01, 493.1, 493.10, 493.11, 493.12, 493.2, 493.20, 439.21, 493.22, 493.8, 493.81, 493.82, 493.9, 493.90, 493.91, 493.92).22 We excluded patients diagnosed with neuromuscular conditions (eg myasthenia gravis, diaphragmatic paralysis, paraplegia, muscular dystrophy, poliomyelitis, amyotrophic lateral sclerosis, etc) and any history of pneumonectomy. We used random number generation to identify a subset of 400 patients from the total list of extracted patients. In order to evaluate the influence of practice types, 50% of the selected patients were taken from private practices and 50% from a population of patients served by a community health center. The community health centers included in the study consist of three clinics in a medically underserved city that are directly affiliated with an academic health center. The private practices were composed of nine distinct clinics representing various towns and neighborhoods within the county.

Data Collection

Three physicians reviewed clinical notes in the electronic health record (EHR). After confirming an asthma diagnosis, they collected patient demographics, laboratory data, spirometry results, and evidence of subspecialist visits. This data was manually entered into a REDCap database.24 Efforts were taken to standardize chart extraction and reduce inter-observer variability. All three physicians interrogated approximately 10 of the same patients records with similar results. Any differences were resolved via discussion and the reviewers extracted the remaining charts independently. Additionally, a billing database was used to collect ICD-9 codes for comorbidities at baseline and to identify ED visits and hospitalizations in the 4 years following extraction of the medical record.

Outcomes

We defined the presence or absence of spirometry based on documentation of this procedure within seven years prior to the sampled visit date or up to one year after (eg January 2007 - December 2015 study window or “exposure period”) (Figure 1). To assess this, patient records were manually reviewed for the presence of any documentation of spirometry in provider notes or reports. Among those who received spirometry, we summarized the indications for spirometry, the total occurrences within the observation window, and attempted to categorize whether the spirometry was obtained for incident asthma or follow-up. However, for many of the patients, we were unable to reliably discern from the medical record whether spirometry was ordered for diagnostic or follow-up purposes.
Figure 1

Study timeline.

Study timeline. In order to conduct an exploratory analysis of longer-term outcomes, we examined health system billing databases for the years January 2016 through March 2019. We identified visits to the emergency department (ED), admissions for inpatient or observation stays, and in-hospital deaths (Figure 1). We determined whether visits were related to asthma (principal diagnoses including respiratory failure/dyspnea, chest pain, chronic obstructive pulmonary disease (COPD) or pneumonia, or upper respiratory infections25–29 (ICD-10-CM diagnoses (J45.9xx, J45.xx, J96.01, J96.21, R06.00, R07.9, R07.89, J44.1, J44.9, J18.9, J69.0, J15.9, J12.1, J85.1, J21.1, J06.9).

Predictors

We recorded several demographic and clinical characteristics at the 2014 index visit, including: age, race, sex, employment and insurance type. Clinical characteristics included: private practice vs public community health center type, smoking status, functional status (according to the proportion of Activities of Daily Living (ADL) and Instrumental Activities of Daily Living Requiring Assistance (IADL)) and total number of medication classes used to control asthma. In addition, we assessed whether subjects had ever seen a specialist (pulmonologist and/or allergist) specifically for asthma assessment or management. We also captured comorbidities, based on ICD-9 coding as defined by Elixhauser, at the time of this 2014 visit.30

Statistical Analysis

We cross-tabulated each predictor with the presence of spirometry using frequencies and percentages as well as chi-squared or Fisher exact tests. We identified predictors of receiving spirometry using logistic regression models to estimate the crude and multivariable odds ratios and 95% confidence intervals (CI). We estimated that with 185 spirometry events, our model had sufficient stability to assess up to 18 predictors.31 Therefore, all predictors were included in both models in order to estimate effect sizes. We also created a similar model to evaluate predictors of a specialist visit. We estimated that in the case of a single binary predictor logistic model with a sample size of 400 observations (of which 50% are in each group) we would achieve 92% power at a 0.05 significance level to detect an odds ratio of 2.0. As observation time could vary, we were concerned about inadvertently capturing patients with a short amount of follow-up time in the system. These patients may have received asthma care elsewhere yet contributed to our denominator of patients. Therefore, we conducted sensitivity analyses reducing the exposure window from nine years (2007–2015) to four years (2012–2015). Analyses were performed using Stata 15.1. (College Station, TX). The study protocol was approved by Institutional Review Board of BMC.

Results

Among 400 randomly selected subjects, 394 met eligibility criteria. Of these, 197 patients were seen in community health centers and 197 from private practices (Table 1). The mean (SD) age was 5213 years, with a large proportion of the sample being white (48%; n=188) and female (72%; n=284). Comorbidities were relatively balanced between groups with the most common being hypertension (22%; n=87). Most patients (n=297, 75%) did not have a visit with a pulmonologist or allergist during the exposure period. A minority (185, 47%) received spirometry at any time during the exposure period, and a majority (209, 53%) did not. Of these, we determined that 64% (n=119) were for incident asthma, 12% (n=23) were for follow-up and 23% (n=43) were unknown. Dyspnea was the most common indication (35%, n=65) followed by history of asthma (33%, n=61).
Table 1

Patient Characteristics

OverallNo Spirometry n (col %)Yes Spirometry n (col%)Probability of Spirometryp-value
Overall n (%)394 (100.0)209 (53.0)185 (47.0)47.0%
Age Group, n (%)0.04
 28–3977 (19.5)52 (24.9)25 (13.5)32.5%
 40–4997 (24.6)50 (23.9)47 (25.4)48.5%
 50–59105 (26.6)55 (26.3)50 (27.0)47.6%
 60–6972 (18.3)35 (16.7)37 (20.0)51.4%
 70–9543 (10.9)17 (8.1)26 (14.1)60.5%
Number of Present Medication Classes, n (%)<0.01
 026 (6.6)19 (9.1)7 (3.8)26.9%
 1–2122 (31.0)79 (37.8)43 (23.2)35.2%
 3–6246 (62.4)111 (53.1)135 (73.0)54.9%
Race, n (%)0.01
 White188 (47.7)106 (50.7)82 (44.3)43.6%
 Black43 (10.9)20 (9.6)23 (12.4)53.5%
 Hispanic154 (39.1)74 (35.4)80 (43.2)51.9%
 Other9 (2.3)9 (4.3)0 (0.0)
Gender, n (%)0.05
 Female284 (72.1)142 (67.9)142 (76.8)50.0%
 Male110 (27.9)67 (32.1)43 (23.2)39.1%
Insurance, n (%)0.06
 Private144 (36.5)82 (39.2)62 (33.5)43.1%
 Medicare84 (21.3)39 (18.7)45 (24.3)53.6%
 Medicaid135 (34.3)66 (31.6)69 (37.3)51.1%
 None31 (7.9)22 (10.5)9 (4.9)29.0%
Clinic Type, n (%)<0.01
 Community Health Center197 (50.0)89 (42.6)108 (58.4)54.8%
 Private Practice197 (50.0)120 (57.4)77 (41.6)39.1%
Employment, n (%)0.09
 Unemployed95 (24.1)43 (20.6)52 (28.1)54.7%
 Employed153 (38.8)90 (43.1)63 (34.1)41.2%
 Retired42 (10.7)20 (9.6)22 (11.9)52.4%
 Disabled62 (15.7)29 (13.9)33 (17.8)53.2%
 Not Documented42 (10.7)27 (12.9)15 (8.1)35.7%
Smoking Status, n (%)0.36
 Unknown4 (1.0)3 (1.4)1 (0.5)25.0%
 Current83 (21.1)49 (23.4)34 (18.4)41.0%
 Never208 (52.8)110 (52.6)98 (53.0)47.1%
 Former99 (25.1)47 (22.5)52 (28.1)52.5%
Functional Status, n (%)0.76
 Unknown3 (0.8)2 (1.0)1 (0.5)33.3%
 Independent376 (95.4)198 (94.7)178 (96.2)47.3%
 Dependent3 (0.8)2 (1.0)1 (0.5)40.0%
Visit with Specialist, n (%)<0.01
 No297 (75.4)195 (94.2)102 (54.5)33.8%
 Yes97 (24.6)12 (5.8)85 (45.5)88.4%
Comorbidities**, n(%)
Chronic Pulmonary Disease0.14
 No39 (9.9)25 (12.0)14 (7.6)35.9%
 Yes355 (90.1)184 (88.0)171 (92.4)48.2%
Hypertension, Uncomplicated0.24
 No307 (77.9)158 (75.6)149 (80.5)48.5%
 Yes87 (22.1)51 (24.4)36 (19.5)41.4%
Obesity0.88
 No344 (87.3)182 (87.1)162 (87.6)47.1%
 Yes50 (12.7)27 (12.9)23 (12.4)46.0%
Depression0.30
 No351 (89.1)183 (87.6)168 (90.8)47.9%
 Yes43 (10.9)26 (12.4)17 (9.2)39.5%
Diabetes, Uncomplicated0.89
 No346 (87.8)184 (88.0)162 (87.6)46.8%
 Yes48 (12.2)25 (12.0)23 (12.4)47.9%
Hypothyroidism0.47
 No369 (93.7)194 (92.8)175 (94.6)47.4%
 Yes25 (6.3)15 (7.2)10 (5.4)40.0%

Note: **Elixhauser comorbidities <5% not shown.

Patient Characteristics Note: **Elixhauser comorbidities <5% not shown. In our multivariable model, patients aged 70–95 were more likely to have spirometry (compared to those 28–39 years old, adjusted OR (aOR) = 4.76; 95% confidence interval (CI) 1.35–16.13) (Table 2). In addition, patients seen in the private practice were less likely to have spirometry compared to a community health center (aOR = 0.31; 95% CI = 0.12–0.77). However, the strongest predictor, by far, of receiving spirometry was a visit with a specialist (aOR 20.44; 95% CI = 9.36–44.63).
Table 2

Unadjusted and Multivariable Model for Predictors of Spirometry

UnadjustedMultivariable
Odds Ratio95% CIOdds Ratio95% CI
Age Group
 28–39ReferentReferent
 40–491.961.05–3.642.481.15–5.32
 50–591.891.03–3.492.171.02–4.64
 60–692.201.13–4.272.481.03–5.95
 70–953.181.46–6.914.761.35–16.13
Number of Present Medication Classes
 0ReferentReferent
 1–21.480.58–3.791.800.57–5.66
 3–63.301.34–8.142.360.78–7.07
Race
 WhiteReferentReferent
 Black1.490.76–2.890.810.30–2.18
 Hispanic1.400.91–2.140.690.28–1.71
 Other
Sex
 FemaleReferentReferent
 Male0.640.41 −1.000.570.32–1.02
Insurance
 PrivateReferentReferent
 Medicare1.530.89–2.621.130.54–2.35
 Medicaid1.380.86–2.221.130.59–2.18
 None0.540.23–1.260.650.21–2.04
Clinic Type
 Community Health CenterReferentReferent
 Private Practice0.530.35–0.790.310.12–0.77
Employment
 Unemployed1.731.03 −2.901.020.49–2.11
 EmployedReferentReferent
 Retired1.570.79–3.120.310.09–1.02
 Disabled1.630.90–2.941.190.54–2.60
 Not Documented0.790.39–1.610.730.31–1.74
Smoking Status
 Unknown0.370.04–3.661.960.16–23.78
 Current0.780.47–1.300.850.44–1.62
 NeverReferentReferent
 Former1.240.77–2.011.030.56–1.87
Functional Status
 Unknown0.560.05–6.190.770.04–15.20
 IndependentReferentReferent
 Dependent0.740.26–2.120.290.07–1.27
Visit with Specialist
 NoReferentReferent
 Yes14.977.6–29.3320.449.36–44.63
Chronic Pulmonary Disease
 NoReferentReferent
 Yes1.660.84–3.300.750.30–1.86
Hypertension, Uncomplicated
 NoReferentReferent
 Yes0.750.46–1.210.500.25–0.99
Obesity
 NoReferentReferent
 Yes0.960.53–1.741.700.77–3.74
Depression
 NoReferentReferent
 Yes0.710.37–1.360.720.31–1.69
Diabetes, Uncomplicated
 NoReferentReferent
 Yes1.040.57–1.910.960.42–2.18
Hypothyroidism
 NoReferentReferent
 Yes0.740.32–1.690.290.09–0.99
Unadjusted and Multivariable Model for Predictors of Spirometry Because seeing a specialist was the dominant predictor in these models, we constructed an additional multivariable model assessing predictors of seeing a specialist (Figure 2). In this model, being retired or unemployed (vs employed) was the only significant predictor of seeing a specialist (aOR 3.73; 95% CI = 1.24–11.17 and aOR 2.26; 95% CI = 1.04–4.90, respectively).
Figure 2

Multivariable odds ratios for seeing a specialist as derived by multivariate logistic regression modeling of patient characteristics.

Multivariable odds ratios for seeing a specialist as derived by multivariate logistic regression modeling of patient characteristics. A total of 374 (95%) patients had at least one inpatient or outpatient visit in our health system between 2016–2019 (“follow-up” period). The median follow up time was 38 months (out of a maximum observation time of 39 months). Among those not lost to follow-up, 185 (49.5%) had a subsequent ED visit, 122 (32.6%) had an inpatient hospitalization and 7 (1.9%) visits ended in an in-hospital death (Table 3). Of all patients with follow up visits (n= 220), approximately 47% (103) were likely asthma-related (principal diagnosis of respiratory failure, asthma, COPD, chest pain, or upper respiratory infection). Most patients with ED visits and hospitalizations had never seen a specialist (168, 76.4%) and most (111, 50.5%) had not received spirometry during the exposure period. The unadjusted association between prior spirometry and future asthma-related hospital admissions was not statistically significant (OR = 1.73; 95% CI=0.88–3.42).
Table 3

Follow-Up Outcomes

Overall N=374No Spirometry n=199 (53.2%)Spirometry n=175 (46.8%)Crude OR & 95% CI
Visit Type: n(%)
 All Types of Visits*220 (58.8%)111 (55.8%)109 (62.3%)1.31 (0.87–1.98)
 Emergency Department185 (49.5%)92 (46.2%)93 (53.1)1.32 (0.88–1.98)
 Inpatient122 (32.6%)57 (28.6%)65 (37.1%)1.47 (0.95–2.27)
 In-Hospital Death7 (1.9%)2 (1.0%)5 (2.9%)2.90 (0.55–15.12)
Principal Discharge Diagnosis among those with “all visits” (n=220): n(%)
 Asthma Related**43 (19.6%)17 (15.3%)26 (23.9%)1.73 (0.88–3.42)
 Chest Pain32 (14.6%)15 (13.5%)17 (15.6%)1.18 (0.56–2.51)
 COPD or Pneumonia16 (7.3%)3 (2.7%)13 (11.9%)4.87 (1.35–17.62)
 Upper Respiratory Infection12 (5.6%)9 (8.1%)3 (2.8%)0.32 (0.08–1.22)

Notes: *Emergency department, inpatient/observation or in-hospital death. **Includes asthma diagnoses, respiratory failure or dyspnea.

Follow-Up Outcomes Notes: *Emergency department, inpatient/observation or in-hospital death. **Includes asthma diagnoses, respiratory failure or dyspnea. We also conducted a sensitivity analysis using a shorter observation window (2012–2015). Spirometry use was less common when using this window (31%, n=121). In regard to predictors of spirometry, the only factor that continued to have an association with spirometry was a visit with a specialist. When assessing future visit types and primary diagnoses, associations remained similar.

Discussion

Despite guidelines4–7 suggesting use of spirometry in all initial diagnoses and in the follow-up care for asthma, we found that spirometry is underutilized in the evaluation of asthma. The probability of receiving spirometry was strongly associated with seeing a specialist; 88% of those who had a specialist visit received spirometry, compared to 34% of those who did not have a specialist visit. In addition, patients who received spirometry tended to be older, which suggests a potential need to evaluate the practice of incorporating spirometry into the care of younger patients with asthma. Among patients who had a diagnosis of asthma in 2014 and an asthma-related hospitalization or ED visit in 2016–2019, the majority had never had spirometry performed in the 2007–2015 study window and had never seen a specialist. However, we saw no association between receipt of spirometry and the likelihood of being hospitalized for an asthma-related diagnosis. Prior studies have demonstrated rates of spirometry utilization around 42.7% for incident asthma and 47.6% respectively within 1 year of diagnosis.21,22 Our study attempted to look at use of spirometry over a longer period of time and incorporated spirometry used for both diagnosis and monitoring. Our finding that 47% of our sample had ever received spirometry within a nine-year observation window is consistent with prior work and affirms that spirometry is underutilized in the diagnosis or ongoing management of patients with asthma. Similar to our results, a previous study completed by Sokol et al, showed that patients cared for by specialists were more likely to receive spirometry than those cared for by primary care physicians (80.1% vs 23.3%, respectively).22 Given the retrospective nature of our study, we were unable to determine whether the specialist or the primary care physician ordered the test. However, we strongly suspect that specialists are more likely to order the test than primary care physicians. These findings suggest that education is needed to help primary care physicians understand the importance of ordering spirometry and relaying its value to young patients with respiratory symptoms. The reasons for the low rates of spirometry utilization that others and we have observed may be related to barriers to routine spirometry that have been previously described.19,21,22 For example, some clinicians may hold attitudes and beliefs about asthma diagnosis that differ from the NAEPP guidelines while others may not be aware of the existence of the guidelines.21,32 Other clinicians may fail to order the study because of cost, lack of time, lack of access to in-office spirometry, lack of proper training, limited staff and other organizational structures that do not permit easy ordering of the test.19,20,32-34 Patient factors such as disinterest in learning about a diagnosis or inability to perform the test may play a role as well.20 Although we could not identify the reasons that the test was not ordered, it is notable that most of our included patients had insurance, all had a primary care physician, and our health system has spirometry readily available at a nearby outpatient facility. Future work will focus on qualitative studies to further characterize the specific barriers that primary care clinicians face in ordering spirometry within our health system. Unlike Gershon et al, our study found that older adult patients were more likely to receive spirometry.21 This difference may be due to these authors evaluating patients with incident asthma in a large sample (nearly 20,000 patients age 70 or greater) and an outcome of PFTs 1–2.5 years following diagnosis. Our sample was much smaller and our outcome was evaluated over a 9-year window. In addition, there may be regional variation in care delivery and insurance coverage that contributed to the observed differences (eg, greater prevalence of high deductible insurance plans in younger populations of some states). Racial disparities in asthma diagnosis and treatment have also been well documented, but we did not find a statistically or clinically significant association between race and receipt of spirometry.35–40 We hypothesize that this is due to the racial makeup of our community health center patients which are majority non-white whereas the private practices tend to be majority white. Patients in the community health centers, in this study, received spirometry more frequently. We hypothesize that this is because these centers are teaching practices and are highly focused on evidence-based care. There is mixed evidence about spirometry and asthma-related outcomes. Our finding, like one prior study, showed that there was no association between receipt of spirometry and outcomes.41 However, at least one other study suggested that integration of spirometry into intensive management with a specialist is a strong predictor of improved outcomes in severe asthma.42 Additionally, spirometry in the context of an in-home asthma disease management program may also reduce hospitalizations, in-patient days, cost and other health-quality outcomes for patients with asthma.43 Taken in the context of prior studies, our findings suggest a need for future work evaluating the benefits of spirometry for patients with mild vs severe asthma and across care delivery models (eg, intensive vs usual disease management). Our study is novel because it focuses on a primary care population of adult patients and includes distinct primary care models (private practices vs community health centers). In addition, we further characterized the relationship between receipt of spirometry and future asthma-related ED visits and admissions.23 Our study also adds to the literature because it offers a longer snapshot around the time interval during which patients received spirometry and it further validates the role of the specialist as the main determinant for receipt of spirometry.21,22 This study also has limitations. First, it was a retrospective chart review and was subject to the limitations of data in the medical record. Further, the included length of time varied for each patient to allow the maximum time period for any patient to have completed spirometry. It is notable that despite being very inclusive, we still had a rate of less than 50% of patients receiving spirometry at any time. In addition, we did not gather data about the chronology of when a patient saw a specialist or received spirometry. This is a limitation as it does not allow us to say with certainty if patients are seeing the specialist as a result of poor spirometry outcomes or vice versa. We were also unable to determine the timing of asthma diagnosis in some cases, so for some patients we could not determine whether the spirometry was used for diagnostic or follow-up purposes. Our sample size was small, resulting in wide confidence intervals. We were unable to determine whether patients received spirometry or had ED visits or hospitalizations outside of our health system, which further limits the generalizability of the findings. Nevertheless, our health system is large with few competitors, meaning that most patients receive nearly all of their care within the system.

Conclusion

In conclusion, more than half of our patients with asthma never received spirometry. In a subset of patients with future hospitalizations or ED visits, spirometry was also used infrequently in the years prior to the event. This suggests an urgent need for education for primary care physicians to increase the use of this guideline-recommended care that can reduce misdiagnoses in patients with cough and wheezing, improve asthma control, and ultimately improve population health.
  36 in total

Review 1.  The importance of spirometry in COPD and asthma: effect on approach to management.

Authors:  B R Celli
Journal:  Chest       Date:  2000-02       Impact factor: 9.410

2.  The impact of health literacy and socioeconomic status on asthma disparities.

Authors:  Laura M Curtis; Michael S Wolf; Kevin B Weiss; Leslie C Grammer
Journal:  J Asthma       Date:  2012-01-25       Impact factor: 2.515

Review 3.  Home monitoring in asthma self-management.

Authors:  Harry Kotses; Andrew Harver; C Thomas Humphries
Journal:  J Asthma       Date:  2006-11       Impact factor: 2.515

4.  Spirometry in primary care practice: the importance of quality assurance and the impact of spirometry workshops.

Authors:  T Eaton; S Withy; J E Garrett; J Mercer; R M Whitlock; H H Rea
Journal:  Chest       Date:  1999-08       Impact factor: 9.410

5.  Eliminating Disparities in Asthma Care: Identifying Broad Challenges in Quality Improvement.

Authors:  Joseph P Anarella; Victoria L Wagner; Susan G McCauley; Jennifer B Mane; Patricia A Waniewski
Journal:  Am J Med Qual       Date:  2016-12-17       Impact factor: 1.852

6.  Misdiagnosis of asthma and COPD and underuse of spirometry in primary care unselected patients.

Authors:  Enrico Heffler; Claudia Crimi; Salvatore Mancuso; Raffaele Campisi; Francesca Puggioni; Luisa Brussino; Nunzio Crimi
Journal:  Respir Med       Date:  2018-07-24       Impact factor: 3.415

Review 7.  Asthma-COPD overlap syndrome: pathogenesis, clinical features, and therapeutic targets.

Authors:  Janice M Leung; Don D Sin
Journal:  BMJ       Date:  2017-09-25

8.  Asthma as a risk factor for invasive pneumococcal disease.

Authors:  Thomas R Talbot; Tina V Hartert; Ed Mitchel; Natasha B Halasa; Patrick G Arbogast; Katherine A Poehling; William Schaffner; Allen S Craig; Marie R Griffin
Journal:  N Engl J Med       Date:  2005-05-19       Impact factor: 91.245

9.  Assessing future need for acute care in adult asthmatics: the Profile of Asthma Risk Study: a prospective health maintenance organization-based study.

Authors:  Molly L Osborne; Kathryn L Pedula; Mark O'Hollaren; Kenneth M Ettinger; Thomas Stibolt; A Sonia Buist; William M Vollmer
Journal:  Chest       Date:  2007-06-15       Impact factor: 9.410

10.  Addressing asthma health disparities: a multilevel challenge.

Authors:  Glorisa Canino; Elizabeth L McQuaid; Cynthia S Rand
Journal:  J Allergy Clin Immunol       Date:  2009-05-17       Impact factor: 10.793

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