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Article

Accuracy of Accuhaler, Ellipta, and Turbuhaler Testers in Patients with Chronic Obstructive Pulmonary Disease

by
Narongkorn Saiphoklang
*,
Thiravit Siriyothipun
and
Sarawut Panichaporn
Division of Pulmonary and Critical Care Medicine, Department of Internal Medicine, Faculty of Medicine, Thammasat University, Pathum Thani 12120, Thailand
*
Author to whom correspondence should be addressed.
Med. Sci. 2025, 13(2), 50; https://doi.org/10.3390/medsci13020050
Submission received: 23 February 2025 / Revised: 18 April 2025 / Accepted: 25 April 2025 / Published: 29 April 2025

Abstract

:
Background: Peak inspiratory flow rate (PIFR) measurement is an essential tool for assessing the effectiveness of inhaler therapy in chronic obstructive pulmonary disease (COPD). This study aimed to evaluate the accuracy of three different inhaler testers compared to the In-Check DIAL® device. Methods: A cross-sectional study was conducted in clinically stable COPD patients. Participants performed PIFR measurements using the In-Check DIAL® device and three inhaler testers (Accuhaler, Ellipta, and Turbuhaler). Optimal PIFR was defined as ≥60 L/min. Minimum PIFR was defined as ≥30 L/min. Results: A total of 82 COPD patients (93.9% male) were included, with a mean age of 73.3 ± 8.8 years. Post-bronchodilator forced expiratory volume in one second was 69.2 ± 21.0%. The prevalence of optimal PIFR was 78%, 74%, and 52% for the Accuhaler, Ellipta, and Turbuhaler testers, respectively. For detecting optimal PIFR, the Accuhaler tester demonstrated an accuracy of 80.5%, sensitivity of 100%, and specificity of 11.1%. The Ellipta tester showed an accuracy of 78.1%, sensitivity of 100%, and specificity of 14.3%, while the Turbuhaler tester achieved an accuracy of 56.1%, sensitivity of 100%, and specificity of 7.7%. All devices showed excellent accuracy (>95%), sensitivity (>98%), and specificity (100% except for the Turbuhaler tester) in detecting minimum PIFR. Conclusions: The majority of COPD patients achieved optimal PIFR across the three different devices, with the highest prevalence observed for the Accuhaler tester. All three inhaler testers demonstrated excellent accuracy in assessing PIFR in COPD patients, suggesting their potential as reliable alternatives to the In-Check DIAL® device in clinical practice.

1. Introduction

Chronic obstructive pulmonary disease (COPD) has emerged as a key global health problem. It ranks as the third leading cause of death globally, following ischemic heart disease and cerebrovascular disease [1]. While COPD remains incurable, symptoms can be managed and exacerbations reduced by not smoking, avoiding pollution, and using appropriate medication. Inhaled medications are the cornerstone of COPD treatment according to the Global Initiative for Chronic Obstructive Lung Disease (GOLD) [2]. The mainstay medications are long-acting beta-2 agonists (LABAs), long-acting muscarinic antagonists (LAMAs), and inhaled corticosteroids (ICSs). These medications are delivered through pressurized metered dose inhalers (pMDIs), soft mist inhalers (SMIs), or dry powder inhalers (DPIs). Device selection should consider not only the appropriate medication but also the patient’s ability to generate adequate inspiratory flow.
The optimal peak inspiratory flow rate (PIFR) is the maximal flow generated during a forced inspiratory maneuver, which is crucial for optimizing the DPI effectiveness in COPD patients [3,4]. Suboptimal PIFR (≤60 L/min) is common during acute exacerbation of COPD and predicts all-cause and COPD-related readmissions [5]. Patients with suboptimal PIFR who are discharged on nebulizers have significantly lower rates of COPD readmission compared to those discharged on DPIs [5].
Optimal PIFR requirements vary across different DPI devices. The Accuhaler tester requires a minimal flow of 30 L/min and operates optimally at 60 L/min, which significantly improves drug delivery and fine particle generation [4,6,7]. Similarly, the Turbuhaler tester requires a minimum of 30 L/min and performs optimally at 60 L/min, with drug delivery strongly correlating with flow rate [4,7,8]. The Ellipta tester, a medium-resistance device, delivers adequate drug output at standardized flow rates of ≥30 L/min and performs optimally at 60 L/min for both single and combination agents [4,9,10].
The In-Check DIAL® device is considered the gold standard for measuring PIFR [11]. However, its use is limited due to a lack of familiarity and availability among general practitioners [12]. Selecting appropriate inhaler devices based on patients’ PIFR has the potential to improve treatment outcomes in obstructive airway diseases, especially when using more accessible testing devices [13]. Inhaler testers may serve as alternative tools for assessing inspiratory force for COPD patients. Therefore, the purpose of this study was to evaluate the accuracy of three inhaler testers—Accuhaler, Ellipta, and Turbuhaler—compared to the In-Check DIAL® device in COPD patients.

2. Materials and Methods

2.1. Study Design and Participants

Between March 2024 and December 2024, a cross-sectional study was undertaken at the pulmonary outpatient department of Thammasat University Hospital in Thailand. The inclusion criteria were (1) patients aged 40 years or older; (2) a smoking history of 10 pack-years or more; and (3) a diagnosis of COPD confirmed by a post-bronchodilator (BD) forced expiratory volume in one second (FEV1) to forced vital capacity (FVC) ratio of less than 0.7. The exclusion criteria were (1) COPD exacerbation within 3 months prior to study recruitment; (2) the presence of other pulmonary diseases, such as asthma, bronchiectasis, or pulmonary fibrosis; (3) a history of stroke with upper limb weakness or paresis; (4) any conditions or medications causing muscle weakness; (5) inability to perform testing with inhaler testers or In-Check DIAL®; (6) tracheostomy or the need for home ventilator support (both invasive and non-invasive); and (7) inability to communication or follow to instructions.
Ethics approval was obtained from the Human Research Ethics Committee of Thammasat University (Medicine), Thailand (IRB No. MTU-EC-IM-0-016/67, COA No.095/2024, date of approval: 28 March 2024), in full compliance with international guidelines, including the Declaration of Helsinki, the Belmont Report, CIOMS Guidelines, and the International Conference on Harmonization Good Clinical Practice (ICH-GCP). All methods were performed in accordance with these guidelines and regulations. Written informed consent was obtained from all participants. This study was registered on ClinicalTrials.gov with the number NCT06346678.

2.2. Study Procedures

Demographic data, respiratory symptoms, and functional capacity (assessed using the modified Medical Research Council (mMRC) dyspnea scale [14] and the COPD Assessment Test (CAT) [15]), as well as spirometry data from the past 12 months, were collected. Baseline medications, including short-acting bronchodilator (SABD), ICS, LABA, and LAMA, were also recorded.
The severity of COPD, according to the GOLD classification, was determined using the post-BD FEV1 value: Grade 1 represented mild (≥80% of predicted value); Grade 2 was moderate (50–79%); and Grades 3 and 4 represented severe (<50%) and very severe (<30%) impairment, respectively [2]. Based on symptom burden and exacerbation history, patients were categorized into Groups A, B, and E [2].
PIFR was measured using the In-Check DIAL® device, as well as the Accuhaler, Ellipta, and Turbuhaler testers. Each device was tested three times with one-minute intervals between the tests, and the highest value was recorded. The testing sequence was randomized according to six different orders: (1) Accuhaler–Ellipta–Turbuhaler; (2) Turbuhaler–Ellipta–Accuhaler; (3) Ellipta–Accuhaler–Turbuhaler; (4) Ellipta–Turbuhaler–Accuhaler; (5) Turbuhaler–Accuhaler–Ellipta; or (6) Accuhaler–Turbuhaler–Ellipta. For each sequence, the In-Check DIAL® resistance was adjusted to match the corresponding tester device before testing with that device.

2.3. Outcomes

The primary outcomes were the accuracy, sensitivity, and specificity of the three inhaler testers in identifying optimal PIFR compared to the In-Check DIAL® device. The secondary outcomes included the prevalence rates of optimal, suboptimal, minimum, and insufficient PIFR. Additionally, factors associated with suboptimal PIFR were also considered secondary outcomes.
PIFR classifications were based on PIFR values [4,7,16,17]: optimal PIFR (≥60 L/min), suboptimal PIFR (<60 L/min), minimum PIFR (≥30 L/min), and insufficient PIFR (<30 L/min).

2.4. Statistical Analysis

The accuracy of inhaler testers in COPD patients has not been investigated. A study by Manuyakorn W et al. [18] reported the Accuhaler tester having a sensitivity of 95.4% in adolescents with asthma. We hypothesized that the sensitivity of the Accuhaler tester in COPD patients would be 85%. A sample size of 80 was proposed to achieve an alpha of 0.03 and a power of 0.86.
Descriptive statistics are presented as numbers (%) and mean ± standard deviation. Sensitivity, specificity, positive predictive value (PPV), negative predictive value (NPV), and accuracy were reported. The chi-squared test was used to compare categorical variables between the optimal and suboptimal PIFR groups. The independent t-test or Mann–Whitney U test was used to compare continuous variables between the two groups. Statistical analyses were conducted using SPSS software (version 25.0; IBM Corp., Armonk, NY, USA), and a two-sided p-value of <0.05 was considered statistically significant.

3. Results

3.1. Participants

Eighty-two COPD patients (93.9% male) were included, with a mean age of 73.3 ± 8.8 years. Common comorbidities included hypertension (61.0%), dyslipidemia (47.6%), and diabetes mellitus (20.7%). COPD Grade 2 and a higher proportion of Group E were commonly observed (40.2% and 40.3%, respectively). Triple inhalation therapy (ICS/LABA/LAMA) was the most frequent maintenance treatment (48.8%). The CAT scores were 9.1 ± 5.7, and the mMRC scores were 1.5 ± 1.1. Post-BD FEV1 was 69.2 ± 21.0% (Table 1).

3.2. Primary Outcomes

For detecting optimal PIFR, the Accuhaler, Ellipta, and Turbuhaler testers demonstrated accuracies of 80.5%, 78.1%, and 56.1%, respectively. All inhaler testers exhibited 100% sensitivity but low specificity (11.1%, 14.3%, and 7.7% for the Accuhaler, Ellipta, and Turbuhaler testers, respectively) (Table 2 and Figure 1). However, the accuracy and specificity of the Accuhaler, Ellipta, and Turbuhaler testers were higher when detecting minimum PIFR (Table 2).

3.3. Secondary Outcomes

The prevalence rates of optimal, suboptimal, minimum, and insufficient PIFR were as follows: for Accuhaler, 78.0%, 20.7%, 98.8%, and 1.2%, respectively; for Ellipta, 74.4%, 25.6%, 97.6%, and 2.4%; and for Turbuhaler, 52.4%, 47.6%, 93.9%, and 6.1%, respectively (Table 3).
For the Accuhaler tester, the factors associated with suboptimal PIFR included older age, lower body weight, a higher proportion of coronary artery disease, and higher CAT and mMRC scores. For the Ellipta tester, factors included older age, lower body weight and height, a higher amount of smoking, a higher proportion of atrial fibrillation, higher CAT and mMRC scores, a higher proportion of GOLD Group E, and a higher proportion of SABD use. For the Turbuhaler tester, factors included older age, lower body weight, height, and body mass index, lower FVC, higher CAT and mMRC scores, a higher proportion of GOLD Group E, and a higher proportion of SABD use (Table 4).

4. Discussion

This is the first study to evaluate three inhaler testers compared to the In-Check DIAL® device for PIFR measurement in COPD patients. Our findings revealed that all testers exhibited very high sensitivity and NPV (100%) but low specificity for optimal PIFR (7.7–14.3%). The accuracy of the Accuhaler and Ellipta testers (80.5% and 78.1%, respectively) was superior to that of the Turbuhaler tester (56.1%). The high sensitivity and NPV indicate that all the testers can be used for selecting an appropriate DPI for COPD patients. Although their low specificity indicates a tendency to produce false positives, the testers remain useful for minimizing inappropriate exclusion of patients from DPI therapy. Overall, the testers’ high sensitivity but low specificity suggests they are better suited as screening tools than replacements for the In-Check DIAL® device.
Minimum PIFR detection (≥30 L/min) for all the inhaler testers is a remarkable finding in our study. The Accuhaler and Ellipta testers demonstrated identical superior accuracy (98.8%) with perfect specificity (100%) and excellent sensitivity (98.8%). With strong PPVs (100%), these testers can effectively identify patients capable of using a DPI device. The Turbuhaler tester also showed excellent accuracy (95.1%) and high sensitivity (98.7%) despite having low specificity (40.0%). These minimum PIFR detection outcomes are beneficial for selecting DPI devices to deliver inhaled medication to the lungs, thereby improving treatment effectiveness. Based on these findings, these testers may be most useful for identifying patients with insufficient inspiratory force, although their PIFR may not necessarily be optimal.
Interestingly, our findings in the COPD study correspond to those of Manuyakorn W et al. [18] in asthmatic children and adolescents, despite differences in disease pathophysiology and patient age. The Accuhaler and Turbuhaler testers in their study showed slightly lower sensitivity than ours for identifying optimal PIFR (97% vs. 100% for Accuhaler and 98% vs. 100% for Turbuhaler). These findings suggest that the Accuhaler and Turbuhaler testers can be effectively used across patients with different baseline diseases and characteristics. However, the detection of suboptimal PIFR in our COPD patients (22.0% and 47.6% for Accuhaler and Turbuhaler, respectively) was significantly higher than in asthmatic children and adolescents (0% and 0–10% for Accuhaler and Turbuhaler, respectively). This highlights the importance of measuring PIFR before selecting DPIs in COPD patients.
A study by Melani AS et al. [19], which involved 644 patients, including those with asthma and COPD, assessed PIFR using the Diskus (Accuhaler) inhaler with the In-Check DIAL® device. It was found that 60% of patients with initially weak inhalation efforts had a PIFR below 30 L/min. However, after a brief instructional session emphasizing the need for more forceful inhalation, all patients achieved a PIFR of at least 30 L/min, indicating that proper technique can significantly improve inhaler performance. In contrast, when using the Turbuhaler tester, 77% demonstrated a PIF < 30 L/min. After counseling, 12% of patients still did not achieve a PIFR of at least 30 L/min.
In a study of 101 adult asthma patients by Engel T et al. [20], PIFR was measured both with and without the Turbuhaler device. While PIFR using the Turbuhaler tester was significantly lower than without it, only 4% of patients had a PIFR below 30 L/min, which is considered the minimum for effective drug delivery. This suggests that most patients can generate sufficient inspiratory flow using Turbuhaler. Another study by Brown P.H. assessed PIFR in 99 adults presenting with acute asthma exacerbations [21]. It was found that 98% of patients achieved a PIFR of at least 30 L/min using the Turbuhaler device, even before bronchodilator treatment, indicating that the majority could effectively use the device during acute episodes.
A randomized cross-over trial by Altman P et al. [22] compared PIFR among COPD patients using the Ellipta, Breezhaler, and HandiHaler devices. The study found that the mean PIFR achieved with the Ellipta inhaler was 78 L/min, which was higher than that with HandiHaler (49 L/min) but lower than with Breezhaler (108 L/min). This suggests that the Ellipta inhaler requires a moderate level of inspiratory effort, making it suitable for many COPD patients. These studies underscore the importance of assessing inspiratory flow rates when selecting an appropriate inhaler device for patients, as well as the potential benefits of patient education on inhaler technique to ensure effective drug delivery. Based on our study findings, if a patient’s test result is positive using the Accuhaler or Ellipta tester, it can be reasonably assumed that the patient has an optimal PIFR, as both devices demonstrated relatively high PPVs (80% and 77.2%, respectively). In contrast, the Turbuhaler tester showed a PPV of 54.4%, indicating a higher likelihood of false-positive results. In such cases, the In-Check DIAL® device is needed to confirm optimal PIFR. However, if testing with any of these testers yields negative results, it can be reliably concluded that the patient cannot generate a flow of at least 60 L/min for optimal PIFR, as all three testers demonstrated strong NPVs.
Our study found that 22%, 25.6%, and 47.6% of patients had suboptimal PIFR using the Accuhaler, Ellipta, and Turbuhaler testers, respectively. These findings are consistent with previous studies, which reported suboptimal PIFR ranging from 20.1% to 78% [5,23,24,25,26,27]. Insufficient PIFR (<30 L/min) was identified in only 1.2% to 6.1% of patients in our study, indicating that most stable COPD patients can generate the minimum required inspiratory flow for DPI use. These results support the use of DPI devices in COPD therapy. Therefore, if treatment effectiveness remains inadequate during DPI use, inspiratory flow testing should be performed to evaluate whether the device is suitable for the patient.
The factors associated with suboptimal PIFR in our COPD patients included older age, lower body weight, height, and body mass index, a higher smoking history, higher proportions of coronary artery disease and atrial fibrillation, and higher CAT and mMRC scores. Other factors included a higher proportion of GOLD Group E, lower FVC, and a higher proportion of SABD use. In a study by Suriyakul A et al. [26], hand grip strength, age, height, and FVC were identified as predictors for Accuhaler PIFR, while hand grip strength, female gender, age, and FVC were predictors for Turbuhaler PIFR in COPD patients. Represas-Represas C et al. [23] found that age and FVC were significantly associated with suboptimal PIFR in stable COPD patients. Additionally, a study by Duarte AG et al. [28] showed that PIFR correlated with inspiratory capacity (r = 0.40, p < 0.0001) and the ratio of residual volume to total lung capacity (r = −0.19, p = 0.002), indicating that air trapping impacts PIFR in COPD patients. Our study suggests that older age, lower body mass index, higher respiratory symptoms, a history of COPD exacerbation, frequent rescue SABD use, presence of heart disease, and lower lung function were associated with lower PIFR values. These predictors could be useful for physicians when selecting the appropriate inhaler devices for individual patients. They also suggest that physicians should consider measuring PIFR before prescribing medications with DPI devices to maximize drug delivery.
This study has a few limitations. Firstly, the findings might not be applicable to the broader population of individuals with COPD, as this was a single-center study that excluded patients with recent exacerbation or significant comorbidities. Additionally, the sample was predominantly male (94%), and potential order effects—such as learning or fatigue—may have influenced the outcomes. Secondly, although the testing sequence was randomized to minimize assessment bias, patient fatigue and learning effects may have influenced the results. Multicenter studies are needed to validate the inhaler tests in heterogeneous COPD cohorts and evaluate PIFR-guided device selection.

5. Conclusions

The majority of COPD patients achieved optimal PIFR across different devices, with the Accuhaler tester showing the highest prevalence. Several factors were associated with suboptimal PIFR. All three inhaler testers demonstrated excellent accuracy in assessing PIFR in COPD patients, indicating their potential as reliable alternatives to the In-Check DIAL® device in clinical practice. However, the testers’ high sensitivity but low specificity suggests they are better suited as screening tools than replacements for the In-Check DIAL® device. These findings suggest that these devices could be effectively integrated into routine clinical assessments for managing COPD.

Author Contributions

Conceptualization, N.S., T.S. and S.P.; methodology, N.S. and T.S.; software, N.S.; validation, N.S., T.S. and S.P.; formal analysis, N.S.; investigation, T.S.; resources, N.S.; data curation, N.S., T.S. and S.P.; writing—original draft preparation, T.S.; writing—review and editing, N.S. and S.P.; visualization, S.P.; supervision, N.S.; project administration, T.S.; funding acquisition, T.S. All authors have read and agreed to the published version of the manuscript.

Funding

This research was funded by the Faculty of Medicine, Thammasat University, Thailand, Grant number: 1-20/2567.

Institutional Review Board Statement

This study was conducted in accordance with the Declaration of Helsinki and approved by the Human Research Ethics Committee of Thammasat University (Medicine), Thailand (IRB No. MTU-EC-IM-0-016/67, COA No.095/2024, date of approval: 28 March 2024).

Informed Consent Statement

Informed consent was obtained from all subjects involved in the study.

Data Availability Statement

The data supporting the results of this study are available within the article.

Acknowledgments

The authors thank Michael Jan Everts, Faculty of Medicine, Thammasat University, for proofreading this manuscript. This work was supported by the Thammasat University Research Unit in Respiratory Medicine, Thailand.

Conflicts of Interest

The authors declare no conflicts of interest. The funders had no role in the design of the study; in the collection, analyses, or interpretation of data; in the writing of the manuscript; or in the decision to publish the results.

Abbreviations

The following abbreviations are used in this manuscript:
CATCOPD Assessment Test
COPDchronic obstructive pulmonary disease
FEV1forced expiratory volume in one second
FVCforced vital capacity
GOLDGlobal Initiative for Chronic Obstructive Lung Disease
ICSinhaled corticosteroid
LABAlong-acting beta-2 agonist
LAMAlong-acting muscarinic antagonist
mMRCmodified Medical Research Council
NPVnegative predictive value
PIFRpeak inspiratory flow rate
pMDIpressurized metered dose inhaler
PPVpositive predictive value
SABDshort-acting bronchodilator
SMIsoft mist inhaler

References

  1. World Health Organization. Chronic Obstructive Pulmonary Disease (COPD). Available online: https://www.who.int/news-room/fact-sheets/detail/chronic-obstructive-pulmonary-disease-(copd) (accessed on 1 November 2023).
  2. Global Initiative for Chronic Obstructive Lung Disease. Global Strategy for the Diagnosis, Management and Prevention of Chronic Obstructive Pulmonary Disease 2023 Report. Available online: https://goldcopd.org/2023-gold-report-2/ (accessed on 1 November 2023).
  3. Laube, B.L.; Janssens, H.M.; de Jongh, F.H.; Devadason, S.G.; Dhand, R.; Diot, P.; Everard, M.L.; Horvath, I.; Navalesi, P.; Voshaar, T.; et al. What the pulmonary specialist should know about the new inhalation therapies. Eur. Respir. J. 2011, 37, 1308–1331. [Google Scholar] [CrossRef] [PubMed]
  4. Ghosh, S.; Ohar, J.A.; Drummond, M.B. Peak inspiratory flow rate in chronic obstructive pulmonary disease: Implications for dry powder inhalers. J. Aerosol Med. Pulm. Drug Deliv. 2017, 30, 381–387. [Google Scholar] [CrossRef] [PubMed]
  5. Loh, C.H.; Peters, S.P.; Lovings, T.M.; Ohar, J.A. Suboptimal inspiratory flow rates are associated with chronic obstructive pulmonary disease and all-cause readmissions. Ann. Am. Thorac. Soc. 2017, 14, 1305–1311. [Google Scholar] [CrossRef]
  6. Kamin, W.E.; Genz, T.; Roeder, S.; Scheuch, G.; Trammer, T.; Juenemann, R.; Cloes, R.M. Mass output and particle size distribution of glucocorticosteroids emitted from different inhalation devices depending on various inspiratory parameters. J. Aerosol Med. 2002, 15, 65–73. [Google Scholar] [CrossRef]
  7. Haidl, P.; Heindl, S.; Siemon, K.; Bernacka, M.; Cloes, R.M. Inhalation device requirements for patients’ inhalation maneuvers. Respir. Med. 2016, 118, 65–75. [Google Scholar] [CrossRef]
  8. Abdelrahim, M.E.; Assi, K.H.; Chrystyn, H. Dose emission and aerodynamic characterization of the terbutaline sulphate dose emitted from a Turbuhaler at low inhalation flow. Pharm. Dev. Technol. 2013, 18, 944–949. [Google Scholar] [CrossRef] [PubMed]
  9. Grant, A.C.; Walker, R.; Hamilton, M.; Garrill, K. The ELLIPTA(R) dry powder inhaler: Design, functionality, in vitro dosing performance and critical task compliance by patients and caregivers. J. Aerosol Med. Pulm. Drug Deliv. 2015, 28, 474–485. [Google Scholar] [CrossRef]
  10. Anderson, M.; Collison, K.; Drummond, M.B.; Hamilton, M.; Jain, R.; Martin, N.; Mularski, R.A.; Thomas, M.; Zhu, C.Q.; Ferguson, G.T. Peak inspiratory flow rate in COPD: An analysis of clinical trial and real-world data. Int. J. Chronic Obstr. Pulm. Dis. 2021, 16, 933–943. [Google Scholar] [CrossRef]
  11. Chrystyn, H. Is inhalation rate important for a dry powder inhaler? Using the In-Check Dial to identify these rates. Respir. Med. 2003, 97, 181–187. [Google Scholar] [CrossRef]
  12. Kawamatawong, T.; Khiawwan, S.; Pornsuriyasak, P. Peak inspiratory flow rate measurement by using In-Check DIAL for the different inhaler devices in elderly with obstructive airway diseases. J. Asthma Allergy 2017, 10, 17–21. [Google Scholar] [CrossRef]
  13. Usmani, O.S. Choosing the right inhaler for your asthma or COPD patient. Ther. Clin. Risk Manag. 2019, 15, 461–472. [Google Scholar] [CrossRef]
  14. Mahler, D.A.; Wells, C.K. Evaluation of clinical methods for rating dyspnea. Chest 1988, 93, 580–586. [Google Scholar] [CrossRef] [PubMed]
  15. Jones, P.W.; Harding, G.; Berry, P.; Wiklund, I.; Chen, W.H.; Kline Leidy, N. Development and first validation of the COPD Assessment Test. Eur. Respir. J. 2009, 34, 648–654. [Google Scholar] [CrossRef]
  16. Broeders, M.E.; Molema, J.; Vermue, N.A.; Folgering, H.T. In Check Dial: Accuracy for Diskus and Turbuhaler. Int. J. Pharm. 2003, 252, 275–280. [Google Scholar] [CrossRef] [PubMed]
  17. Atkins, P.J. Dry powder inhalers: An overview. Respir. Care 2005, 50, 1304–1312; discussion 1312. [Google Scholar]
  18. Manuyakorn, W.; Direkwattanachai, C.; Benjaponpitak, S.; Kamchaisatian, W.; Sasisakulporn, C.; Teawsomboonkit, W. Sensitivity of Turbutester and Accuhaler tester in asthmatic children and adolescents. Pediatr. Int. 2010, 52, 118–125. [Google Scholar] [CrossRef] [PubMed]
  19. Melani, A.S.; Bracci, L.S.; Rossi, M. Reduced peak inspiratory effort through the Diskus((R)) and the Turbuhaler((R)) due to mishandling is common in clinical practice. Clin. Drug Investig. 2005, 25, 543–549. [Google Scholar] [CrossRef]
  20. Engel, T.; Heinig, J.H.; Madsen, F.; Nikander, K. Peak inspiratory flow and inspiratory vital capacity of patients with asthma measured with and without a new dry-powder inhaler device (Turbuhaler). Eur. Respir. J. 1990, 3, 1037–1041. [Google Scholar] [CrossRef]
  21. Brown, P.H.; Ning, A.C.; Greening, A.P.; McLean, A.; Crompton, G.K. Peak inspiratory flow through Turbuhaler in acute asthma. Eur. Respir. J. 1995, 8, 1940–1941. [Google Scholar] [CrossRef]
  22. Altman, P.; Wehbe, L.; Dederichs, J.; Guerin, T.; Ament, B.; Moronta, M.C.; Pino, A.V.; Goyal, P. Comparison of peak inspiratory flow rate via the Breezhaler(R), Ellipta(R) and HandiHaler(R) dry powder inhalers in patients with moderate to very severe COPD: A randomized cross-over trial. BMC Pulm. Med. 2018, 18, 100. [Google Scholar] [CrossRef]
  23. Represas-Represas, C.; Aballe-Santos, L.; Fernandez-Garcia, A.; Priegue-Carrera, A.; Lopez-Campos, J.L.; Gonzalez-Montaos, A.; Botana-Rial, M.; Fernandez-Villar, A. Evaluation of suboptimal peak inspiratory flow in patients with stable COPD. J. Clin. Med. 2020, 9, 3949. [Google Scholar] [CrossRef] [PubMed]
  24. Mahler, D.A.; Demirel, S.; Hollander, R.; Gopalan, G.; Shaikh, A.; Mahle, C.D.; Elder, J.; Morrison, C. High prevalence of suboptimal peak inspiratory flow in hospitalized patients with COPD: A real-world study. Chronic Obstr. Pulm. Dis. 2022, 9, 427–438. [Google Scholar] [CrossRef] [PubMed]
  25. Mahler, D.A.; Niu, X.; Deering, K.L.; Dembek, C. Prospective evaluation of exacerbations associated with suboptimal peak inspiratory flow among stable outpatients with COPD. Int. J. Chronic Obstr. Pulm. Dis. 2022, 17, 559–568. [Google Scholar] [CrossRef]
  26. Suriyakul, A.; Saiphoklang, N.; Barjaktarevic, I.; Cooper, C.B. Correlation between Hand Grip Strength and Peak Inspiratory Flow Rate in Patients with Stable Chronic Obstructive Pulmonary Disease. Diagnostics 2022, 12, 3050. [Google Scholar] [CrossRef] [PubMed]
  27. Mohapatra, M.M.; Vemuri, M.B.; Saka, V.K.; Upadhya, P.; Govindharaj, V. Prevalence and predictors of suboptimal peak inspiratory flow rates in the management of chronic obstructive pulmonary disease. Monaldi Arch. Chest Dis. 2024. Available online: https://pubmed.ncbi.nlm.nih.gov/39749893/ (accessed on 1 November 2024). [CrossRef]
  28. Duarte, A.G.; Tung, L.; Zhang, W.; Hsu, E.S.; Kuo, Y.F.; Sharma, G. Spirometry measurement of peak inspiratory flow identifies suboptimal use of dry powder inhalers in ambulatory patients with COPD. Chronic Obstr. Pulm. Dis. 2019, 6, 246–255. [Google Scholar] [CrossRef]
Figure 1. Sensitivity and specificity of testers for detecting minimum and optimal PIFR in COPD patients. COPD = chronic obstructive pulmonary disease, PIFR = peak inspiratory flow rate.
Figure 1. Sensitivity and specificity of testers for detecting minimum and optimal PIFR in COPD patients. COPD = chronic obstructive pulmonary disease, PIFR = peak inspiratory flow rate.
Medsci 13 00050 g001
Table 1. Baseline characteristics of COPD patients.
Table 1. Baseline characteristics of COPD patients.
CharacteristicsData (n = 82)
Age, years73.3 ± 8.8
Male/female77 (93.9)/5 (6.1)
Body mass index, kg/m222.0 ± 3.9
Smoking, pack-years30.6 ± 23.4
Comorbidity
Hypertension50 (61.0)
Dyslipidemia39 (47.6)
Diabetes mellitus17 (20.7)
Coronary artery disease13 (15.9)
Atrial fibrillation5 (6.1)
Congestive heart failure2 (2.4)
Obstructive sleep apnea5 (6.1)
Allergic rhinitis6 (7.3)
COPD Grade
131 (37.8)
233 (40.2)
315 (18.3)
43 (3.7)
COPD Group
A32 (39.0)
B17 (20.7)
E33 (40.3)
Medication
SABD38 (46.3)
LAMA7 (8.5)
LABA/LAMA28 (34.1)
ICS/LABA7 (8.5)
ICS/LABA/LAMA40 (48.8)
Methylxanthine15 (18.3)
Oral beta-2 agonist3 (3.7)
Macrolide2 (2.4)
PDE4 inhibitor2 (2.4)
Current inhalation device
Metered dose inhaler11 (13.4)
Accuhaler8 (9.8)
Turbuhaler6 (7.3)
Ellipta36 (43.9)
Soft mist inhaler23 (28.0)
HandiHaler16 (19.5)
Functional capacity
CAT scores9.1 ± 5.7
mMRC scores1.5 ± 1.1
Spirometry data
Post-bronchodilator FVC, L2.93 ± 0.82
Post-bronchodilator FVC, %predicted94.4 ± 19.4
Post-bronchodilator FEV1, L1.62 ± 0.58
Post-bronchodilator FEV1, %predicted69.2 ± 21.0
Post bronchodilator FEV1/FVC, %54.9 ± 11.9
Data are presented as n (%) or mean ± SD. CAT = COPD Assessment Test, COPD = chronic obstructive pulmonary disease, mMRC = modified Medical Research Council, FEV1 = forced expiratory volume in one second, FVC = forced vital capacity, ICS = inhaled corticosteroids, kg = kilograms, L = liters, LABA = long-acting beta-2 agonist, LAMA = long-acting muscarinic antagonist, m = meter, mm = millimeter, PDE4 = phosphodiesterase-4, SABD = short-acting bronchodilator.
Table 2. Sensitivity and specificity of testers for detecting minimum and optimal PIFR in COPD patients.
Table 2. Sensitivity and specificity of testers for detecting minimum and optimal PIFR in COPD patients.
ParameterAccuhaler TesterEllipta TesterTurbuhaler Tester
Minimum PIFR
Sensitivity, %98.898.898.7
Specificity, %100.0100.040.0
PPV, %100.0100.096.2
NPV, %50.066.766.7
Accuracy, %98.898.895.1
Optimal PIFR
Sensitivity, %100.0100.0100.0
Specificity, %11.114.37.7
PPV, %80.077.254.4
NPV, %100.0100.0100.0
Accuracy, %80.578.156.1
COPD = chronic obstructive pulmonary disease, L = liter, NPV = negative predictive value, PIFR = peak inspiratory flow rate, PPV = positive predictive value. Minimum PIFR was defined as PIFR ≥ 30 L/min; optimal PIFR was defined as PIFR ≥ 60 L/min.
Table 3. Peak inspiratory flow rate in COPD patients.
Table 3. Peak inspiratory flow rate in COPD patients.
ParameterAccuhaler (n = 82)Ellipta (n = 82)Turbuhaler (n = 82)
PIFR, L/min71.5 ± 19.070.8 ± 18.359.0 ± 17.2
Optimal PIFR64 (78.0)61 (74.4)43 (52.4)
Suboptimal PIFR18 (22.0)21 (25.6)39 (47.6)
Minimum PIFR81 (98.8)80 (97.6)77 (93.9)
Insufficient PIFR1 (1.2)2 (2.4)5 (6.1)
Data are presented as n (%) or mean ± SD. COPD = chronic obstructive pulmonary disease, L = liter, PIFR = peak inspiratory flow rate. Optimal PIFR was defined as PIFR ≥ 60 L/min, suboptimal PIFR was defined as PIFR < 60 L/min, minimum PIFR was defined as PIFR ≥ 30 L/min, and insufficient PIFR was defined as PIFR < 30 L/min.
Table 4. Factors associated with optimal PIFR in COPD patients for Accuhaler, Ellipta, and Turbuhaler.
Table 4. Factors associated with optimal PIFR in COPD patients for Accuhaler, Ellipta, and Turbuhaler.
VariableAccuhaler (n = 82)Ellipta (n = 82)Turbuhaler (n = 82)
OptimalSuboptimalp-ValueOptimalSuboptimalp-ValueOptimalSuboptimalp-Value
Patients64 (78.0)18 (22.0)NA61 (74.4)21 (25.6)NA43 (52.4)39 (47.6)NA
Maximal PIFR, L/min78.8 ± 14.045.5 ± 9.0<0.00178.7 ± 13.047.9 ± 10.0<0.00172.5 ± 9.044.2 ± 10.3<0.001
Sex 0.068 0.103 0.186
Male62 (96.9)15 (83.3) 59 (96.7)18 (85.7) 42 (97.7)35 (89.7)
Female2 (3.1)3 (16.7) 2 (3.3)3 (14.3) 1 (2.3)4 (10.3)
Age, years72.3 ± 8.977.0 ± 7.80.04371.7 ± 8.877.8 ± 7.50.00669.7 ± 8.977.2 ± 6.9<0.001
Body weight, kg61.9 ± 12.455.2 ± 13.10.04962.1 ± 11.855.4 ± 14.30.03764.4 ± 11.556.0 ± 12.80.003
Height, cm166.1 ± 6.9163.0 ± 9.30.124166.6 ± 6.8162.0 ± 8.70.015167.7 ± 6.6162.9 ± 7.80.004
BMI, kg/m222.3 ± 3.820.7 ± 4.00.10622.3 ± 3.421.0 ± 4.90.20222.8 ± 3.421.0 ± 4.10.030
Active smoking6 (9.4)1 (5.6)0.3726 (9.8)1 (4.8)0.2195 (11.6)2 (5.1)0.276
Smoking, pack-years28.5 ± 24.538.3 ± 17.70.11925.7 ± 19.044.9 ± 29.10.00126.8 ± 18.734.9 ± 27.30.116
Comorbidity
Hypertension39 (60.9)11 (61.1)0.98938 (62.3)12 (57.1)0.67625 (58.1)25 (64.1)0.580
Dyslipidemia30 (46.9)9 (50.0)0.81527 (44.3)12 (57.1)0.30819 (44.2)20 (51.3)0.521
Diabetes mellitus13 (20.3)4 (22.2)1.00013 (21.3)4 (19.0)1.00010 (23.3)7 (17.9)0.554
Coronary artery disease7 (10.9)6 (33.3)0.0328 (13.1)5 (23.8)0.3026 (14.0)7 (17.9)0.621
Atrial fibrillation2 (3.1)3 (16.7)0.0681 (1.6)4 (19.0)0.0141 (2.3)4 (10.3)0.186
Congestive heart failure2 (3.1)0 (0)1.0002 (3.3)0 (0)1.0001 (2.3)1 (2.6)1.000
Obstructive sleep apnea4 (6.3)1 (5.6)1.0004 (6.6)1 (4.8)1.0003 (7.0)2 (5.1)1.000
Allergic rhinitis6 (9.4)0 (0)0.3306 (9.8)0 (0)0.3301 (2.3)5 (12.8)0.097
Spirometry data
Post-BD FEV1, %70.4 ± 21.164.9 ± 20.40.33171.0 ± 20.563.8 ± 22.00.18172.9 ± 19.465.0 ± 22.20.092
Post-BD FVC, %99.4 ± 19.990.3 ± 16.30.08099.3 ± 20.191.8 ± 16.70.128101.5 ± 18.792.9 ± 19.40.046
COPD Grade 3 and 413 (20.3)5 (27.8)0.52712 (19.7)6 (28.6)0.5418 (18.6)10 (25.6)0.442
Functional performance
CAT scores8.3 ± 4.812.0 ± 7.80.0147.9 ± 4.812.4 ± 7.10.0137.2 ± 4.211.2 ± 6.50.002
CAT ≥ 1024 (37.5)11 (61.1)0.07422 (36.1)13 (61.9)0.03913 (30.2)22 (56.4)0.017
mMRC scores1.3 ± 1.12.3 ± 1.00.0011.2 ± 1.02.4 ± 1.0<0.0011.1 ± 0.92.0 ± 1.2<0.001
mMRC ≥ 219 (29.7)13 (72.2)0.00116 (26.2)16 (76.2)<0.0019 (20.9)23 (59.0)<0.001
GOLD Group E24 (37.5)9 (50.0)0.33920 (32.8)13 (61.9)0.01911 (25.6)22 (56.4)0.004
Medication
SABD27 (42.2)11 (61.1)0.15524 (39.3)14 (66.7)0.03014 (32.6)24 (61.5)0.009
LAMA4 (6.3)3 (16.7)0.1754 (6.6)3 (14.3)0.3654 (9.3)3 (7.7)1.000
LABA/LAMA21 (32.8)7 (38.9)0.63122 (36.1)6 (28.6)0.53215 (34.9)13 (33.3)0.882
ICS/LABA7 (10.9)0 (0)0.3387 (11.5)0 (0)0.1825 (11.6)2 (5.1)0.436
ICS/LABA/LAMA32 (50.0)8 (44.4)0.67728 (45.9)12 (57.1)0.37419 (44.2)21 (53.8)0.382
Methylxanthine11 (17.2)4 (22.2)0.73110 (16.4)5 (23.8)0.5166 (14.0)9 (23.1)0.286
Oral beta-2 agonist3 (4.7)0 (0)1.0003 (4.9)0 (0)0.5662 (4.7)1 (2.6)1.000
Macrolide1 (1.6)1 (5.6)0.3931 (1.6)1 (4.8)0.4490 (0)2 (5.1)0.223
PDE4 inhibitor2 (3.1)0 (0)1.0001 (1.6)1 (4.8)0.4490 (0)2 (5.1)0.223
Data are presented n (%) or mean ± SD. BD = bronchodilator, BMI = body mass index, CAT = COPD Assessment Test, DBP = diastolic blood pressure, FEV1 = force expiratory volume in 1 s, FVC = forced vital capacity, GOLD = Global Initiative for Obstructive Lung Disease, HGS = hand grip strength, ICS = inhaled corticosteroid, LABA = long-acting beta-2 agonist, LAMA = long-acting muscarinic antagonist, mMRC = modified Medical Research Council, PDE4 = phosphodiesterase-4, PIFR = peak inspiratory flow rate, SABD = short-acting bronchodilator, SBP = systolic blood pressure, SpO2 = oxygen saturation.
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MDPI and ACS Style

Saiphoklang, N.; Siriyothipun, T.; Panichaporn, S. Accuracy of Accuhaler, Ellipta, and Turbuhaler Testers in Patients with Chronic Obstructive Pulmonary Disease. Med. Sci. 2025, 13, 50. https://doi.org/10.3390/medsci13020050

AMA Style

Saiphoklang N, Siriyothipun T, Panichaporn S. Accuracy of Accuhaler, Ellipta, and Turbuhaler Testers in Patients with Chronic Obstructive Pulmonary Disease. Medical Sciences. 2025; 13(2):50. https://doi.org/10.3390/medsci13020050

Chicago/Turabian Style

Saiphoklang, Narongkorn, Thiravit Siriyothipun, and Sarawut Panichaporn. 2025. "Accuracy of Accuhaler, Ellipta, and Turbuhaler Testers in Patients with Chronic Obstructive Pulmonary Disease" Medical Sciences 13, no. 2: 50. https://doi.org/10.3390/medsci13020050

APA Style

Saiphoklang, N., Siriyothipun, T., & Panichaporn, S. (2025). Accuracy of Accuhaler, Ellipta, and Turbuhaler Testers in Patients with Chronic Obstructive Pulmonary Disease. Medical Sciences, 13(2), 50. https://doi.org/10.3390/medsci13020050

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