Introduction
The incremental shuttle walk test (ISWT) was developed by Singh et al. (1992) [1] as an alternative field test to evaluate the respiratory, cardiac and metabolic responses during exercise [2]. The externally-paced incremental walking test gauges maximal walking capacity and is inexpensive and straightforward to administer. It is a reliable and valid method of assessing the cardiorespiratory fitness of patients with chronic pulmonary disease (COPD) [1, 3, 4], cardiac disease [5, 6], peripheral arterial disease [7] and lung cancer survivors [8]. According to a systematic review by Singh et al. (2014), the ISWT was comparable to the cardiopulmonary exercise testing (CPET) in that both tests were progressive and had a strong correlation (r = 0.75–0.88) between the distance walked during the ISWT (ISWD) and maximal oxygen uptake (VO2max) [9]. Parreira et al. (2014) conducted another systematic review, demonstrating that the ISWT is a highly responsive test with good test-retest reliability of interclass correlation coefficient (ICC) of 0.75 to 0.99 in individuals with COPD and cardiovascular disease [10]. Some studies indicated a robust link between the ISWD and the distance walked in the 6-minute walk test by individuals with COPD; the correlation was strong, with ICCs ranging from 0.70 to 0.91 [4, 11–13]. The test has expanded its usage beyond just COPD patients. Nowadays, it is a standard outcome measure in clinical and research settings [14] for various medical conditions, including but not limited to obesity, bronchiectasis, cardiovascular disease, cancer and critical illness [10]. Normative reference values (NRV) for the ISWD, presented as distance-walked measured in metres, provide clinicians with comparative benchmark performance to healthy individuals.
Studies from various countries have produced NRV and derived the regression equations for healthy adults [15–19]. Several variables, including age, gender, height, weight, lung function, and maximal voluntary contraction of the quadriceps, were examined for their correlation with ISWD in these studies. All five studies found a significant correlation and variance (50.3–71%) between ISWD and age, gender, height, weight, and body mass index (BMI). However, only one of the studies analysed the physiological responses and the impact of age and gender on the cardiopulmonary load generated by the test [16]. The evaluation of the individual walking performance requires comparing it to the performance of a relevant population. This comparison necessitates the availability of normative reference values (NRV) specific to that population [20]. Different regression equations derived from different NRV would all result in different predictive ISWD, and it is uncertain if these values would over- or underestimate the predictive ISWD of any given local population. This idea was first suggested by Agarwal et al. (2016) [15], who found that the reported NRV of ISWD from the Indian population is vastly different when compared to the studies reported from Brazil [17] and the United Kingdom [16, 18] despite all existing normative reference ISWD values meant for the healthy population. Demographic and anthropometric profiles are common factors that influence ISWD [15, 17–19]. For example, ageing results in muscle loss and age-related degenerative changes that would reduce exercise capacity [21]. One report suggested that taller individuals tend to have a longer stride length [22], leading to a higher ISWD since stride length is a good indicator of walking speed. Conversely, individuals with a heavier body weight might have a shorter ISWD due to the increased workload they need to overcome while walking, which can result in decreased ISWD [17].
Hence, the current ISWT normative reference values and regression equations may not represent the Singaporean population due to differences in demographic and anthropometric profiles [23]. Therefore, this study aims to: (1) establish the NRV of ISWD in the healthy Singaporean population aged 21 to 80 years; (2) determine the correlations of variables that could influence the ISWD; (3) establish the ISWD regression equations applicable to healthy adult Singaporean; (4) evaluate the age-matched comparisons of the Singapore data with published studies.
Methods
Study design and recruitment process
Between July 2019 and March 2021, a convenience sampling cross-sectional study was conducted at various community centres in Singapore. Approval of the study was obtained from the University Institutional Review Board (Project number: 2019090). Written informed consent was obtained from each subject before participation; only anonymised data were used during data analysis. No access to the information that could identify subjects was necessary after data collection.
Subjects
Healthy individuals aged 21 to 80 residing in various residential districts in Singapore were recruited consecutively. A sample size 97 was estimated with a confidence level of 95%, a 10% error margin and assumed 50% of the population proportion. We allowed for a possible attrition rate of 30%; thus, a minimum of 127 subjects were needed to distribute across the age range. After written consent, all subjects completed the baseline evaluation with the Physical Activity Readiness Questionnaire for Everyone (PAR-Q+) [24], vital signs measurements and pulmonary function tests before data collection. Inclusion criteria were: community ambulant adults between 21 to 80 years old as of testing day; able to understand simple English; BMI ≤ 27 kg/m2. Subjects were excluded if they had: inability to converse in simple English; any visual, auditory, or neuromuscular conditions such as amyotrophic lateral sclerosis, muscular dystrophy, myasthenia gravis; psychiatric or psychological disorders which could affect adherence to or comprehension of instructions; recent musculoskeletal injuries and/or surgery affecting gait and walking performance; the use of walking aids; any acute and/or chronic respiratory or cardiac disease or cancer in the last six months; resting heart rate (HR) > 100 beats per minute (bpm) or < 50 bpm; resting systolic blood pressure (SBP) > 150 or < 90 mmHg, diastolic blood pressure (DBP) > 100 or < 50 mmHg; oxygen saturation (SpO2) < 95% at rest on room air. Individuals with abnormal lung function, i.e., forced expiratory volume in 1 second (FEV1) ≤ 80%, forced vital capacity (FVC) ≤ 80%, and FEV1/FVC ≤ 70%, were also excluded.
Data collection
Data collection was performed by researchers who were experienced in conducting the ISWT. The participants were instructed to wear comfortable, loose-fitting clothing and appropriate walking shoes. Data obtained from the subjects prior to the ISWT were: PAR-Q+, age, gender, height (Seca 213 portable stadiometer), weight (Omron digital weight scale, HN-286), spirometry [(FEV1, FVC, FEV1/FVC), MIR Spirolab], resting BP (Welch Allyn, Gold Series DS66 Trigger Aneroids), smoking history, medical history and medication use. The calculation of BMI followed the standard formula [25]. HR & SpO2 (NellcorTM, PM10N), dyspnea score using the modified Borg’s dyspnea scale [26], and Borg’s rating of perceived exertion (RPE) [27] were measured during the test as suggested by protocol [1]. Post-test BP was measured upon the immediate termination of the test.
Incremental shuttle walk test
With adherence to the standardised ISWT instructions and protocol described by Singh et al. (1992) [1], the test was conducted within an open 10-metre course marked by two cones placed 0.5 metres (m) inwards from either end. The standard audio instructions were played before commencing the walking test. As the speed of walking increases every minute, indicated by a triple bleep, researchers advised the subjects, "You now need to increase your speed of walking". Subjects did not receive additional encouragement during the test unless they missed a shuttle; only then was a standardised prompt, "You need to increase your speed to keep up with the test", to encourage the subject to pick up their speed. The researchers demonstrated the test to the subjects before data collection, and there was no practice trial. Two trials of ISWT were conducted on the same day to account for the potential learning effect [9]. A minimum of 30 minutes was given between the two trials to allow for sufficient recovery [28] and to ensure that HR, BP and SpO2 returned to baseline levels before the second trial. The HR, BP, SpO2, Borg’s dyspnea scale, and RPE were recorded before and after each ISWT. During the test, HR and SpO2 were measured by a portable pulse oximeter (NellcorTM PM10N). The ISWT termination criteria for all age groups, as described in the standardised protocol [1], included: (1) HR exceeding maximal HR (HRmax) using age-predicted HRmax = 220-age, (2) SpO2 falling below 80%, (3) inability to maintain the required speed due to dyspnea and/or leg fatigue, (4) missing two consecutive shuttles, and (5) when and if subjects indicate that they are unable to continue. The best distance walked was used for the analysis of NRV and the calculation of the regression equations.
Statistical analysis
GraphPad Prism Version 8.4.3 (686) (GraphPad Software, San Diego, California, USA) was used for the statistical analysis. The level of significance was set at p < 0.05. Demographic and anthropometric data of subjects were examined for normal distribution using the Shapiro-Wilk test. Descriptive statistics were used to analyse the central tendency, data spread, and dataset position using the median, interquartile range (IQR), and 95% confidence interval (95%CI) of median. The Mann-Whitney U test was used to compare variables between genders, while the Kruskal-Wallis test was employed to analyse non-normally distributed continuous variables across different age groups. The interclass correlation coefficient (ICC) was used to evaluate test-retest reliability, while Pearson’s correlation coefficients were used to determine the correlation between variables. Linear regression was applied to establish the reference equations for ISWD from the data collected. In order to compare the measured ISWD from the current study with published reference equations, the age of participants was matched to the same age range of the calculated distance obtained from the predictive regression formulae of four identified reports. This allowed for comparing the age-matched Singapore data and the published reference equations [15, 17–19]. The measured and predicted ISWD comparisons were analysed using paired t-tests, and described with mean and standard deviation (SD).
Results
Subject characteristics and ISWD
Two hundred and fourteen subjects were recruited for initial assessment, and 15 were excluded based on exclusion criteria. Nil other subjects withdrew from the study. Therefore, 199 subjects (85 males; 114 females) were included for data analysis, observing a 6.95% error margin with a confidence level of 95% and assuming a 50% population proportion. Data imputation method was used for missing data during statistical analysis. Tables 1 and 2 present the subjects’ characteristics during ISWT stratified by gender and age groups. The overall median ISWD was 660.0 m [interquartile range (IQR) 440.0 to 850.0], where males walked 790.0 m (IQR 580.0–1020.0) compared to females 640.0 m (IQR 440.0–750.0) (p < 0.001) (Table 1). The IWSD decreased progressively with age and ranged from 780.0 m (IQR 670.0–960.0) (age 21–39) to 430.0 m (IQR 350.0–450.0) (age 60–80) (Table 2). Test-retest reliability was excellent (ICC = 0.91). The highest HR achieved was 157.0 bpm (IQR 135.0–177.0) from the 21–39 year group, while the %PredHRmax ranged from 80.0% (IQR 69.0–90.0) (age 21–39) to 84.0 (IQR 77.0–91.0) (age 60–80) (p = 0.281) (Table 2).
[Figure omitted. See PDF.]
[Figure omitted. See PDF.]
Relationship between ISWD and variables
The correlations between ISWD, demographics and anthropometric variables are depicted in Table 3. Only BMI, resting HR and %PredHRmax were not correlated to ISWD. Age, gender, height, weight and FEV1/FVC are standard parameters assessed before and during the ISWT assessment, as protocol suggests [1]. This suggests the feasibility and usefulness of estimating and benchmarking the outcome measures. Post-test variables, namely Highest HR and HR change (difference between highest HR measured during the test–resting HR), attained statistically significant (p < 0.001).
[Figure omitted. See PDF.]
Regression equations between ISWD and variables
Multiple linear regression analysis revealed that among the pre-test variables, gender, age, weight, and height alone explained 67.2% of the variance (Table 4). However, with the addition of the post-test variable (HR change), the percentage of the variance increased to 74.1% (Table 5).
[Figure omitted. See PDF.]
[Figure omitted. See PDF.]
Comparisons with the ISWD estimated using the previously published equations
Table 6 illustrates the age-matched measured data from this study compared to the age-matched ISWD calculated using the predictive formulae from 4 previous similar studies [15, 17–19]. The distance walked by the subjects in this study was shorter in three out of the four studies, even though only one attained statistical significance (p < 0.001). On the contrary, the distance walked in this study was underestimated by 157.0 ± 152.0 m with the regression formula established by Agarwal et al. (2016) [15].
[Figure omitted. See PDF.]
Discussion
This study produced the NRV and developed regression equations for ISWD of healthy Singaporeans aged 21 to 80. This study reported the overall mean ISWD, with male subjects walking significantly longer distances than female subjects. Furthermore, the mean ISWD decreased progressively with the advancement of age. The high ICC for repeated tests demonstrated good test-retest reliability. The ISWT is influenced by the learning effect [9, 29] as the second test distance was consistently higher than the first test by no more than 6%, except for group age 40–59 [0.00 m (IQR -82.5–82.5) 95% CI -70 to 70]. To mitigate the influence of the learning effect, this study employed a procedure where two standardised tests were conducted on the same day. The better result between the two tests was then selected for analysis to avoid potential biases.
Several factors significantly influenced the ISWD in this study, including age, gender, height, weight, FEV1/FVC, Highest HR, HR change, and %PredHRmax (Table 3). On the other hand, BMI and resting HR were not statistically significant predictors of ISWD. The impact of age, gender, height, and weight on ISWD has been extensively reported in previous studies concerning reference equations for ISWD [15–19]. The negative correlation between age and ISWD observed in this study may be attributed to a decline in physical fitness associated with ageing. Previous research has consistently shown that ageing is associated with muscle loss, reduction in maximum oxygen consumption (VO2max), decreased stride length, and alterations in gait. These age-related changes in musculoskeletal and cardiovascular function can collectively contribute to a decline in ISWD performance [21, 30, 31]. Ageing leads to muscle loss and a decrease in maximum oxygen consumption (VO2max) [21], which can affect overall physical fitness and performance in activities such as the ISWD. Similarly, it is well-established that females generally exhibit lower cardiovascular and muscular fitness levels than males [15–19].
In this study, the age group 21–39 recorded the highest ISWD of 780.0 m (IQR 670.0–960.0) despite the highest average height [1.67 m (IQR 1.61–1.73)] and weight [62.5 kg (IQR 54.3–71.8)] across the age groups. Jurgensen et al. (2001) previously proposed that taller individuals are likelier to have a longer stride length. This longer stride length enables them to walk faster, potentially resulting in a longer ISWD [17]. Noteworthily, weight was found to have a negative correlation (r = -0.27; p < 0.001) with ISWD. However, the magnitude of this influence might be compensated for by the influences of age (r = -0.62, p < 0.001) and height (r = 0.58, p < 0.001). In other words, although weight was negatively associated with ISWD, the effects of age and height on ISWD were more substantial and could potentially offset the negative impact of weight. These factors can collectively contribute to this study’s observed negative association between age, weight and ISWD [15–19]. Hence, a congruent trend observed in the current data reveals that male subjects walked an average of 790 m (IQR 580.0–1020.0) vs 640.0 m (IQR 440.0–750.0), with the female subjects [Table 1 (male: height = 1.71 m & weight = 66.5 kg; female: height = 1.60 m & weight = 54.8 kg, p < 0.001)].
Our subjects achieved 82.0% (IQR 72.0–91.0) of predicted maximal heart rate (%HRmaxPred) during the ISWT (Table 1), derived from the formula: highest HR achieved during ISWD ÷ (220-Age), indicating vigorous-intensity effort, consistent with previous studies [15–19] and the maximum nature of this field test. This value is comparable to previous reports of 78% to 81% [17, 19], which used the standard ISWT protocol [1, 17, 19], but considerably lower than the 99% reported by Probst et al. (2012), who used the modified version of the ISWT protocol instead [18]. The modified protocol extended the ISWT over three additional levels by increasing the speed by 0.17 metres per second (m/s) each minute [32], thus explaining the much higher %HRmaxPred.
Similar to the previous studies, we reported that age, gender, weight and height were statistically significant variables that estimate the ISWD. These simple pre-test variables alone can explain a significant amount of variance, up to 67.2%, indicating their predictive value and practical applicability in interpreting ISWD results. These variables provide specific information for understanding ISWT outcomes. Additionally, this equation holds particular relevance for individuals who are taking chronotropic agents, as these medications have the potential to influence the regularity and rhythm of heart rate, which in turn may impact the extent of heart rate variation during the ISWT. In contrast, the second reference equation comprised the addition of HR change and established a higher percentage of variance (R2 = 74.1%), which would be helpful for assessors to benchmark the ISWT performance for other individuals.
Our ISWD reference equation explained 67.2% to 74.1% of the variance, similar to findings from other studies, ranging from 50% to 78.2% [15, 17–19], despite the different age groups of the subjects. Four published studies [15, 17–19] were selected to perform an age-matched comparison. These studies were utilised to compare the measured ISWD obtained from the current study with the predicted ISWD values derived from the regression equations mentioned. By employing this approach, a comprehensive assessment of how well the measured ISWD aligns with the predicted values can be made, providing valuable insights into the accuracy and reliability of those regression equations to our local population. Another formula derived by Harrison et al. (2013) contained additional variables unavailable in this current study and was therefore omitted from the comparison. Of the four studies being compared, the formulae from Probst et al. (2012) and Agarwal et al. (2016) were found respectively over-and under-estimate the ISWD of our subjects significantly (-289.0 ± 157.0 m, p < 0.001; 157.0 ± 152.0, p < 0.001). Furthermore, the variables in our equation, namely age, gender, height and weight, are readily available before the commencement of the test, thus highlighting the potential predictive application of the formula.
Some limitations of this study should be considered. Firstly, this study recruited 114 females of the 199 subjects (57.3%) and 122 subjects from the 21–39 age group (61.3%). The age groups 40–59 and 60–80 combined contributed to the remaining 38.7% of the overall sample size. This possibly skewed the results to the 21–39 age group and female subjects with an over-representation. There was also a 25.9% variance that the existing data could not explain. Future studies should aim to identify and incorporate additional variables that may contribute to the unexplained variance in ISWD. By considering these missing variables, researchers can potentially improve the predictive models and provide a more comprehensive understanding of the factors influencing ISWD. This could lead to more accurate assessments and better interpretations of ISWD outcomes in clinical and research settings.
Conclusions
This study represents a pioneering effort to establish normative reference values and regression equations for the Incremental Shuttle Walk Test in healthy Singaporean adults aged 21 to 80. The results revealed significant associations between ISWD and age, gender, height, weight, and heart rate change. It is crucial to note that utilising equations derived from other studies may lead to inaccurate estimations of ISWD in the Singaporean population, given the presence of population-specific variations. Therefore, this study’s value and reference equation hold substantial merit in establishing performance benchmarks and guiding interventions and rehabilitation strategies. Future follow-up studies should investigate the factors contributing to the unexplained variance observed in the developed equations, thus enhancing our understanding of the determinants of ISWD in this population.
Supporting information
S1 Table. Demographics and variables measured from subjects participated in ISWT.
https://doi.org/10.1371/journal.pone.0291132.s001
Acknowledgments
The authors thank all subjects who participated in the study.
Citation: Azman MZB, Huang KS, Koh WJ, Leong SS, Ong B, Soon JL, et al. (2023) Normative reference values, determinants and regression equations for the incremental shuttle walk test (ISWT) in healthy Asian population aged 21 to 80 years. PLoS ONE 18(9): e0291132. https://doi.org/10.1371/journal.pone.0291132
About the Authors:
Muhammad Zulhaziq Bin Azman
Contributed equally to this work with: Muhammad Zulhaziq Bin Azman, Katherin S. Huang
Roles: Data curation, Investigation, Writing – original draft
Affiliations: Health and Social Sciences Cluster, Singapore Institute of Technology, Singapore, Singapore, Department of Physiotherapy, Ng Teng Fong General Hospital, Singapore, Singapore
Katherin S. Huang
Contributed equally to this work with: Muhammad Zulhaziq Bin Azman, Katherin S. Huang
Roles: Conceptualization, Investigation, Writing – original draft
Affiliation: Health and Social Sciences Cluster, Singapore Institute of Technology, Singapore, Singapore
ORICD: https://orcid.org/0000-0003-4649-8038
Wei Jun Koh
Roles: Data curation, Investigation
Affiliation: Health and Social Sciences Cluster, Singapore Institute of Technology, Singapore, Singapore
Sarah S. Leong
Roles: Data curation, Investigation
Affiliations: Health and Social Sciences Cluster, Singapore Institute of Technology, Singapore, Singapore, Department of Physiotherapy, Ng Teng Fong General Hospital, Singapore, Singapore
Benjamin Ong
Roles: Data curation, Investigation
Affiliations: Health and Social Sciences Cluster, Singapore Institute of Technology, Singapore, Singapore, Department of Physiotherapy, Sengkang General Hospital, Singapore, Singapore
Johanna L. Soon
Roles: Data curation, Investigation
Affiliations: Health and Social Sciences Cluster, Singapore Institute of Technology, Singapore, Singapore, Department of Physiotherapy, Tan Tock Seng Hospital, Singapore, Singapore
Sherman W. Tan
Roles: Data curation, Investigation
Affiliations: Health and Social Sciences Cluster, Singapore Institute of Technology, Singapore, Singapore, Department of Physiotherapy, Tan Tock Seng Hospital, Singapore, Singapore
ORICD: https://orcid.org/0000-0002-8252-892X
Melissa Y. Chan
Roles: Conceptualization, Investigation, Writing – review & editing
Affiliation: Health and Social Sciences Cluster, Singapore Institute of Technology, Singapore, Singapore
Mingxing Yang
Roles: Formal analysis, Methodology, Writing – review & editing
Affiliation: Department of Physiotherapy, Singhealth Polyclinics, Singapore, Singapore
Meredith T. Yeung
Roles: Conceptualization, Formal analysis, Funding acquisition, Methodology, Project administration, Resources, Supervision, Writing – review & editing
E-mail: [email protected]
Affiliation: Health and Social Sciences Cluster, Singapore Institute of Technology, Singapore, Singapore
ORICD: https://orcid.org/0000-0002-4294-4187
1. Singh SJ, Morgan MD, Scott S, Walters D, Hardman AE. Development of a shuttle walking test of disability in patients with chronic airways obstruction. Thorax. 1992;47(12):1019–24. pmid:1494764
2. Spruit MA, Singh SJ, Garvey C, ZuWallack R, Nici L, Rochester C, et al. An official American Thoracic Society/European Respiratory Society statement: key concepts and advances in pulmonary rehabilitation. Am J Respir Crit Care Med. 2013;188(8):e13–64. pmid:24127811
3. Campo LA, Chilingaryan G, Berg K, Paradis B, Mazer B. Validity and reliability of the modified shuttle walk test in patients with chronic obstructive pulmonary disease. Arch Phys Med Rehabil. 2006;87(7):918–22. pmid:16813778
4. Onorati P, Antonucci R, Valli G, Berton E, De Marco F, Serra P, et al. Non-invasive evaluation of gas exchange during a shuttle walking test vs. a 6-min walking test to assess exercise tolerance in COPD patients. Eur J Appl Physiol. 2003;89(3–4):331–6. pmid:12736842
5. Green DJ, Watts K, Rankin S, Wong P, O’Driscoll JG. A comparison of the shuttle and 6 minute walking tests with measured peak oxygen consumption in patients with heart failure. J Sci Med Sport. 2001;4(3):292–300. pmid:11702916
6. Lewis ME, Newall C, Townend JN, Hill SL, Bonser RS. Incremental shuttle walk test in the assessment of patients for heart transplantation. Heart. 2001;86(2):183–7. pmid:11454837
7. da Cunha-Filho IT, Pereira DA, de Carvalho AM, Campedeli L, Soares M, de Sousa Freitas J. The reliability of walking tests in people with claudication. Am J Phys Med Rehabil. 2007;86(7):574–82. pmid:17581292
8. Win T, Jackson A, Groves AM, Sharples LD, Charman SC, Laroche CM. Comparison of shuttle walk with measured peak oxygen consumption in patients with operable lung cancer. Thorax. 2006;61(1):57–60. pmid:16244091
9. Singh SJ, Puhan MA, Andrianopoulos V, Hernandes NA, Mitchell KE, Hill CJ, et al. An official systematic review of the European Respiratory Society/American Thoracic Society: measurement properties of field walking tests in chronic respiratory disease. Eur Respir J. 2014;44(6):1447–78. pmid:25359356
10. Parreira VF, Janaudis-Ferreira T, Evans RA, Mathur S, Goldstein RS, Brooks D. Measurement properties of the incremental shuttle walk test. a systematic review. Chest. 2014;145(6):1357–69. pmid:24384555
11. Satake M, Shioya T, Takahashi H, Kawatani M. Ventilatory Responses to Six-minute Walk Test, Incremental Shuttle Walking Test, and Cycle Ergometer Test in Patients with Chronic Obstructive Pulmonary Disease. Biomedical Research. 2003;24:309–16.
12. Turner SE, Eastwood PR, Cecins NM, Hillman DR, Jenkins SC. Physiologic responses to incremental and self-paced exercise in COPD: a comparison of three tests. Chest. 2004;126(3):766–73. pmid:15364755
13. Vagaggini B, Taccola M, Severino S, Marcello M, Antonelli S, Brogi S, et al. Shuttle walking test and 6-minute walking test induce a similar cardiorespiratory performance in patients recovering from an acute exacerbation of chronic obstructive pulmonary disease. Respiration. 2003;70(6):579–84. pmid:14732787
14. Pinho T, Jacome C, Pinto J, Marques A. Reference equation for the incremental shuttle walk test in Portuguese children and adolescents. Pulmonology. 2019;25(4):208–14. pmid:31076288
15. Agarwal B, Shah M, Andhare N, Mullerpatan R. Incremental shuttle walk test: Reference values and predictive equation for healthy Indian adults. Lung India. 2016;33(1):36–41. pmid:26933305
16. Harrison SL, Greening NJ, Houchen-Wolloff L, Bankart J, Morgan MD, Steiner MC, et al. Age-specific normal values for the incremental shuttle walk test in a healthy British population. J Cardiopulm Rehabil Prev. 2013;33(5):309–13. pmid:23959208
17. Jurgensen SP, Antunes LC, Tanni SE, Banov MC, Lucheta PA, Bucceroni AF, et al. The incremental shuttle walk test in older Brazilian adults. Respiration. 2011;81(3):223–8. pmid:20639622
18. Probst VS, Hernandes NA, Teixeira DC, Felcar JM, Mesquita RB, Goncalves CG, et al. Reference values for the incremental shuttle walking test. Respir Med. 2012;106(2):243–8. pmid:21865021
19. Itaki M, Kozu R, Tanaka K, Senjyu H, Clinical Pulmonary Functions Committee of the Japanese Respiratory S, Development Committee for Reference Values for the Field Walking Tests of the Japanese Society for Respiratory C, et al. Reference equation for the incremental shuttle walk test in Japanese adults. Respir Investig. 2018;56(6):497–502.
20. O’Connor PJ. Normative data: their definition, interpretation, and importance for primary care physicians. Fam Med. 1990;22(4):307–11. pmid:2200734
21. Fleg JL, Lakatta EG. Role of muscle loss in the age-associated reduction in VO2 max. J Appl Physiol (1985). 1988;65(3):1147–51. pmid:3182484
22. Jerome GJ, Ko SU, Kauffman D, Studenski SA, Ferrucci L, Simonsick EM. Gait characteristics associated with walking speed decline in older adults: results from the Baltimore Longitudinal Study of Aging. Arch Gerontol Geriatr. 2015;60(2):239–43. pmid:25614178
23. Grasgruber P, Sebera M, Hrazdíra E, Cacek J, Kalina T. Major correlates of male height: A study of 105 countries. Economics & Human Biology. 2016;21:172–95. pmid:26948573
24. Warburton DE, Jamnik VK, Bredin SS, Gledhill N. The physical activity readiness questionnaire for everyone (PAR-Q+) and electronic physical activity readiness medical examination (ePARmed-X+). The Health & Fitness Journal of Canada. 2011;4(2):3–17.
25. Deurenberg P, Weststrate JA, Seidell JC. Body mass index as a measure of body fatness: age- and sex-specific prediction formulas. Br J Nutr. 1991;65(2):105–14. pmid:2043597
26. Borg GA. Psychophysical bases of perceived exertion. Med Sci Sports Exerc. 1982;14(5):377–81. pmid:7154893
27. Borg GA. Perceived exertion. Exerc Sport Sci Rev. 1974;2:131–53. pmid:4466663
28. Ribeiro LRG, Mesquita RB, Vidotto LS, Merli MF, Carvalho DR, de Castro LA, et al. Are 30 minutes of rest between two incremental shuttle walking tests enough for cardiovascular variables and perceived exertion to return to baseline values? Brazilian journal of physical therapy. 2015;19(2):105–13. pmid:25789556
29. Holland AE, Spruit MA, Troosters T, Puhan MA, Pepin V, Saey D, et al. An official European Respiratory Society/American Thoracic Society technical standard: field walking tests in chronic respiratory disease. Eur Respir J. 2014;44(6):1428–46. pmid:25359355
30. Dao T, Green AE, Kim YA, Bae SJ, Ha KT, Gariani K, et al. Sarcopenia and Muscle Aging: A Brief Overview. Endocrinol Metab (Seoul). 2020;35(4):716–32. pmid:33397034
31. Ligibel JA, Schmitz KH, Berger NA. Sarcopenia in aging, obesity, and cancer. Transl Cancer Res. 2020;9(9):5760–71. pmid:33163373
32. Bradley J, Howard J, Wallace E, Elborn S. Validity of a modified shuttle test in adult cystic fibrosis. Thorax. 1999;54(5):437–9. pmid:10212110
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Abstract
Background
The validated Incremental Shuttle Walk Test (ISWT) is widely used for evaluating maximal exercise capacity, with the distance-walked (IWSD) as the primary outcome. However, there are no normative reference values (NRV) and reference equations to predict ISWD for the Singaporean population.
Objectives
This study aims to establish the NRV and reference equations for ISWD in healthy Singaporeans aged 21 to 80 and investigate the determining variables during ISWT.
Methods
This cross-sectional study recruited community-dwelling healthy subjects aged 21–80 from the community via convenience sampling. Each subject completed two trials of the ISWT according to the standard protocol. Variables measured during the trials included ISWD, pre-and post-test heart rate (HR), oxygen saturation, blood pressure (BP), modified Borg’s dyspnoea score and Borg’s rate of perceived exertion (RPE).
Results
199 healthy Singaporean (females = 114, males = 85) participated in the study. The overall median ISWD was 660.0 metres (m) [interquartile range (IQR):440.0–850.0]. The age-stratified mean ISWD ranged from 430.0 m (IQR:350.0–450.0) (aged 60–80) to 480.0 m (IQR:438.0–650.0) (aged 40–59) to 780.0 m (IQR:670.0–960.0) (aged 21–39). Gender, age, weight, height and HR change (highest post-test HR minus pre-test HR) were the most significant variables (p < 0.001). IWSD (m) = 651.4(Height, m) +89.7(Gender, male = 1; female = 0) –6.31(Age, years) –3.61(Weight, kilograms) +2.54(HR change, beats per minute); R2 = 0.741. Previously published ISWT reference equations cannot accurately predict the ISWD in the Singaporean population.
Conclusions
This study investigated the ISWD NRV and established reference equations for healthy Singaporeans aged 21–80. The information would be beneficial in setting performance benchmarks to guide physical assessment, intervention and rehabilitation.
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