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Peak oxygen uptake reference values for cycle ergometry for the healthy Dutch population: data from the LowLands Fitness Registry

Caspar Frederik Mylius, Wilhelmus Petrus Krijnen, Cornelis Peter van der Schans, Tim Takken
ERJ Open Research 2019 5: 00056-2018; DOI: 10.1183/23120541.00056-2018
Caspar Frederik Mylius
1Hanze University of Applied Sciences, Research Group Healthy Ageing, Allied Health Care and Nursing, Groningen, The Netherlands
2Centre of Expertise Primary Care Groningen (ECEZG), Groningen, The Netherlands
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  • For correspondence: c.f.mijlius@pl.hanze.nl
Wilhelmus Petrus Krijnen
1Hanze University of Applied Sciences, Research Group Healthy Ageing, Allied Health Care and Nursing, Groningen, The Netherlands
3Johann Bernoulli Institute for Mathematics and Computer Science, University of Groningen, Groningen, The Netherlands
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Cornelis Peter van der Schans
1Hanze University of Applied Sciences, Research Group Healthy Ageing, Allied Health Care and Nursing, Groningen, The Netherlands
4University of Groningen, University Medical Center Groningen, Dept of Rehabilitation Medicine, Groningen, The Netherlands
5University of Groningen, University Medical Center Groningen, Health Psychology Research, Groningen, The Netherlands
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Tim Takken
6University Medical Center Utrecht, Utrecht, The Netherlands
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Abstract

Peak oxygen uptake (V′O2peak) is recognised as the best expression of aerobic fitness. Therefore, it is essential that V′O2peak reference values are accurate for interpreting a cardiopulmonary exercise test (CPET). These values are country specific and influenced by underlying biological ageing processes. They are normally stratified per paediatric and adult population, resulting in a discontinuity at the transition point between prediction equations. There are currently no age-related reference values available for the lifespan of individuals in the Dutch population. The aim of this study is to determine the best-fitting regression model for V′O2peak in the healthy Dutch paediatric and adult populations in relation to age.

In this retrospective study, CPET cycle ergometry results of 4477 subjects without reported somatic diseases were included (907 females, age 7.9–65.0 years). Generalised additive models were employed to determine the best-fitting regression model. Cross-validation was performed against an independent dataset consisting of 3518 subjects (170 females, age 6.8–59.0 years).

An additive model was the best fitting with the largest predictive accuracy in both the primary (adjusted R2=0.57, standard error of the estimate (see)=556.50 mL·min−1) and cross-validation (adjusted R2=0.57, see=473.15 mL·min−1) dataset.

This study provides a robust additive regression model for V′O2peak in the Dutch population.

Abstract

Peak oxygen uptake has a nonlinear dependence on years of age in the paediatric and adult Dutch populations http://ow.ly/H3fH30nIjRy

Introduction

Peak oxygen uptake (V′O2peak) represents the functional limit of the body's ability to deliver and extract oxygen in muscles in order to satisfy the metabolic demands of vigorous exercise; it is recognised as the best expression of aerobic fitness [1]. V′O2peak is increasingly utilised to optimise risk stratification and to facilitate clinical decision making because it reflects therapeutic response and predicts adverse events such as post-operative complications and mortality after abdominal and thoracic surgery [2–5].

For the interpretation of a cardiopulmonary exercise test (CPET), it is essential to have accurate V′O2peak reference values corresponding with the ergometer used [7, 8]. These values are region or country specific, and change over time due to cultural differences and evolving population characteristics [8, 9]. Therefore, each country must have specific updated V′O2peak reference values that optimally reflect the characteristics of the current population tested, the equipment and the methodology utilised [8–10]. Although multiple countries provided up-to-date V′O2peak reference values derived from large cohorts exceeding 4000 participants [11–13], V′O2peak reference values from 1985 are the most commonly used in clinical settings in the Netherlands as there are none available derived for the Dutch adult population [14]. These commonly used V′O2peak reference value prediction equations were obtained from a relatively small sample of 100 participants from the North American population [14].

V′O2peak is highly influenced by underlying biological ageing processes such as physical development, pubertal status, age-induced neuromuscular deterioration, sarcopenia and cardiopulmonary decline [7, 15, 16]. It has been hypothesised in both the paediatric and adult populations that V′O2peak develops in a nonlinear and interrelated manner with the progression of age [7, 17–20]. Linear regression models are predominantly used to determine V′O2peak reference value prediction equations depending upon sex, age, height, weight and physical activity levels [9, 14, 16, 21].

The frequently used age stratification between the paediatric and adult populations is somewhat arbitrary, and it introduces a discontinuity at the transition point between the two equations, which leads to a reference value shift from the paediatric to the adult population. Additionally, such an age stratification implies more prediction uncertainty as accuracy is lowest at the boundary of the sample age scale. Estimation of an up-to-date general prediction model across the paediatric as well as the adult population would facilitate a smooth transition into adult care. Therefore, the aim of this study is to determine the best-fitting regression model for V′O2peak in the healthy Dutch paediatric and adult populations in relation to age.

Methods

This retrospective multicentre study was conducted using the LowLands Fitness Registry [6], a primary dataset of 8900 subjects from 11 healthcare centres in the Netherlands that was aggregated with the aim of establishing CPET reference values for the Dutch population. Additionally, to determine the external and predictive validity of the reference value prediction model, a cross-validation procedure was performed on an independent sample as recommended by the American Thoracic Society/American College of Chest Physicians (ATS/ACCP) [8]. Specifically, the cross-validation in this study was performed against an additional dataset obtained from the Diving Medical Center (Den Helder, The Netherlands) and the Wilhelmina Children's Hospital (Utrecht, The Netherlands). The cross-validation dataset contained 4536 subjects that were not included in the primary dataset. Both datasets contain incremental CPET measurements collected between January 2010 and December 2016. Institutes that were included satisfied the following criteria: 1) to meet the ATS/ACCP statement equipment requirements to perform an incremental CPET using an electromagnetically braked cycle ergometry test utilising gas exchange analysis by bag collection, mixing chamber or breath-by-breath analysis based upon averaging the values measured during the last 30–60 s of the test [8] and 2) to perform equipment quality control in accordance with the ATS/ACCP statement [8].

Subjects included in both datasets underwent an individualised incremental CPET cycle ergometry test for multiple reasons, including: initiated by a healthcare professional, work- and sports-related (mandatory) annual health checks, participation in scientific studies or based on personal motivation (e.g. an exercise response evaluation for the aid of a training scheme). Every institute provided anonymised, coded patient information to the data coordinator at the University Medical Center Utrecht (Utrecht, The Netherlands). All records were previously screened for measurement failures. If there were any uncertainties, the testing institute was contacted to ensure the communication of correct data. It has been confirmed by the medical ethical research committee of the University Medical Center Utrecht that the Dutch Medical Research Involving Human Subjects (WMO) Act does not apply to the current study.

Study sample

All of the subjects included in the study were Dutch residents, aged ≤65 years. The status “healthy” was defined as the absence of any reported somatic signs of disease and the exclusion of registered available risk factors [22]. Therefore, subjects were excluded if they reported somatic diseases at the time of testing or showed ECG irregularities prior to testing. Additionally, subjects were excluded from further analysis if they included a missing predictor or outcome values. To ensure subjects reached their maximal measurement (i.e. V′O2peak), subjects were excluded if they did not reach a respiratory exchange peak ratio of at least 1.0 [23] or did not reach a minimum of 85% of the age-predicted maximum heart rate (beats·min−1) determined as 208−(0.7×age) [24]. Furthermore, due to the abnormal working capacity and cardiovascular responses to exercise in underweight patients and the recognition of obesity as a disease by the World Health Organization, subjects who had a body mass index (BMI) ≥30 kg·m−2 [25] or, in adult subjects, ≤18.5 kg·m−2 [26] were excluded. Due to the decrease in V′O2peak associated with smoking, subjects who actively smoked at the time of the test were excluded [27]. Lastly, professional athletes were excluded because they were considered as not representative for the average Dutch population due to the positive effects of exercise training on V′O2peak [28]. The exclusion criteria were applied in both the primary and cross-validation datasets.

Statistical analyses

Statistical analyses were performed using R version 3.4.4 [29]. A p-value ≤0.05 was considered significant. Continuous data were summarised as mean with standard deviation and categorical data as frequencies (percentage). The variables sex, age, weight and height were included in the analyses as these are commonly used as a basis for V′O2peak reference value prediction equations [9].

Generalised additive models (GAMs) were utilised to semiparametrically find the most appropriate fitting regression model [30, 31]. To determine the model best fitting the data, criteria such as the adjusted R2, Akaike Information Criterion (AIC) and Bayesian Information Criterion (BIC) were used [32, 33]. A higher adjusted R2 and a lower AIC and BIC were considered as improving the fit. In cases of inconsistency between these, the BIC criterion was taken as the most decisive. The interpretation of the BIC score was: 0–2 as “minimal” improvement, 2–6 as “positive” improvement, 6–10 as “strong” improvement and >10 as “very strong” improvement [34].

All models fitted to the data included an age by sex interaction term to account for the different V′O2peak levels between male and female subjects [11]. In order to compare with a best-performing polynomial regression model, each predictive variable was modelled using linear, quadratic and cubic effects by stepwise minimum BIC procedures [35]. The resulting model was employed to represent the polynomial model type in the model fitting procedures. Additionally, based upon the hypothesised nonlinear age dynamics for V′O2peak, an additive model with a smooth spline type of transformation for age was included [17–20, 31].

To determine the fit of the models in the separate paediatric and adult populations, the predictive accuracy of the models was measured using stratified age groups by comparing the residual standard error of the estimate (see). The groups were stratified by ≤20 and >20 years of age. The better the predictive fit of either of the three types of models, the less variability there is and the smaller the standard error of the estimate [36].

Models are of little clinical value unless these have predictive accuracy for independent samples. A cross-validation procedure was performed using each identified model per type (linear, polynomial and GAM) against a cross-validation dataset. Similar to criteria for the primary analysis, the model performance was evaluated by a larger adjusted R2 and a smaller standard error of the estimate.

For the purpose of illustration, examples of V′O2peak predictions are reported using the best-performing regression model. For these examples, cases with an increase of 5 years per paediatric case and 10 years per adult case are used; corresponding average height and weight were used determined by data provided by Statistics Netherlands (www.cbs.nl). The 2.5th, 5th, 10th, 25th, 50th, 75th, 90th, 95th and 97.5th prediction percentile intervals are reported.

Results

The complete registry consisted of 8900 cases (1641 females); after applying the exclusion criteria for missing values (n=2674), nonmaximal tests (n=480), BMI ≥30 kg·m−2 or, in adults, ≤18.5 kg·m−2 (n=324), smokers (n=881) and professional athletes (n=64), a sample of 4477 cases labelled as “healthy” remained (907 females) with age ranging from 7.9 to 65.0 years. The cross-validation sample contained 4536 subjects; after applying the exclusion criteria for missing values (n=0), nonmaximal tests (n=64), BMI ≥30 kg·m−2 or, in adults, ≤18.5 kg·m−2 (n=260), smoking (n=694) and professional athletes (n=0), a sample of 3518 subjects (170 females) with an age range from 6.8 to 59.0 years remained. Table 1 summarises the characteristics of both samples. Figure 1 shows the age distribution of the primary sample.

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TABLE 1

Sample characteristics

FIGURE 1
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FIGURE 1

Age distribution of the primary sample.

The best-performing polynomial regression model that was found via stepwise minimum BIC was: V′O2peak (mL·min−1)= −1469+(673.00×sex)+(16.87×age)+(−0.47×age2)+(0.07×height2)+(39.70×weight)+(−0.16×weight2) (adjusted R2=0.56, AIC=69 480.15, BIC=69 531.40), where male=1 and female=0, age is in years, height is in centimetres, and weight is in kilograms.

Table 2 summarises various estimated models and their fit measures. The best-fitting model to the dataset was the additive model that includes a smooth spline transformation for age and an interaction term between age and sex plus linear terms for weight and height. The fit of the model yields an adjusted R2=0.57, AIC=69 342.81 and BIC=69 449.50. This additive model demonstrates “very strong” improvements [34] compared with both the linear model (BIC difference=170.34) and the polynomial model (BIC difference=81.9). The age-dependent transformations of V′O2peak are shown in figure 2. Additionally, the linear dependencies of weight and length are shown in figures 3 and 4.

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TABLE 2

Fitting comparison by regression model type

FIGURE 2
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FIGURE 2

Age-dependent transformation of mean peak oxygen uptake (V′O2peak). Shading represents the pointwise 95% confidence interval.

FIGURE 3
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FIGURE 3

Relationship between mean peak oxygen uptake (V′O2peak) and weight. Shading represents the pointwise 95% confidence interval.

FIGURE 4
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FIGURE 4

Relationship between mean peak oxygen uptake (V′O2peak) and height. Shading represents the pointwise 95% confidence interval.

The fit of the models compared in the combined and separate paediatric and adult populations is shown in table 3. The additive model provides the largest predictive accuracy overall with an adjusted R2=0.57 and see=556.50 mL·min−1 in the entire primary sample; the polynomial and the additive models performed equally against the cross-validation sample, specifically R2=0.57 compared with the linear model with R2=0.55. Additionally, the additive model also provided the smallest standard error of the estimate in the stratified age groups in both samples, i.e. see=495.18 and 420.72 mL·min−1 in those ≤20 years old and see=563.82 and 476.92 mL·min−1 in those >20 years old. The largest improvement between models in both samples occurred in the ≤20-year-old age group. In this age group, the additive model has a better fit than both the linear and polynomial models, with an equal adjusted R2 difference=0.05. Similar improvements are discerned in the standard error of the estimate between the additive and the linear and polynomial models of see=65.47 and 53.62 mL·min−1 in the primary sample and see=108.14 and 35.81 mL·min−1 in the cross-validation sample, respectively.

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TABLE 3

Fit of model type per age group and sample set

Reference values with corresponding prediction intervals are constructed using average weight and height per sex and age provided by Statistics Netherlands. Table 4 shows the predictions for the female cases and table 5 shows the predictions for the male cases. In both sexes, the 2.5th and 97.5th prediction interval in the 60-year-old cases is the largest: 352 mL·min−1 for the female cases and 213 mL·min−1 for the male cases. The 2.5th and 97.5th prediction interval of the 30-year-old cases is the smallest: 131 and 78 mL·min−1, respectively. Both sexes have increasing V′O2peak prediction until the age of 20 years followed by a decline.

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TABLE 4

Additive model peak oxygen uptake (V′O2peak) prediction percentiles: female cases

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TABLE 5

Additive model peak oxygen uptake (V′O2peak) prediction percentiles: male cases

Discussion

The aim of this study was to determine reference values for V′O2peak based upon an optimal regression model in healthy Dutch paediatric and adult populations. Based on adjusted R2, AIC, BIC and standard error of the estimate, the additive model was the best fitting with the largest predictive accuracy. From the model, it can be concluded that V′O2peak is sex specific and depends nonlinearly on years of age.

We determined that the additive model results in a smaller standard error of the estimate especially in the ≤20-year-old subjects because, in contrast to the linear model, the additive model is able to adjust for age-related transformations such as the increase in V′O2peak associated with the growth-related weight and height gain during childhood and adolescence. The increase in skeletal muscle mass during this life phase accounts for the majority of weight gained [37]. As skeletal muscle mass is responsible for the majority of oxygen utilised during exercise, the increase in skeletal muscle mass associated with increasing age in ≤20-year-old subjects partially explains the increase in V′O2peak during this life phase [38]. During adulthood, the increase in skeletal muscle mass and height are limited. V′O2peak decreases during adulthood because of a decrease in muscle mass and a loss of chronotropic competence [24, 39].

Our additive regression model differs from previously utilised linear and polynomial regression models [9, 40, 41]. The use of the advanced statistical analysis method, GAM, in the current study makes it possible to determine the best-fitting regression model for the combined paediatric and adult populations. This method fits the data through cubic-type splines with the degree of smoothness determined by generalised cross-validation, which facilitates combining the previously hypothesised nonlinear and interrelated fashion of more than one independent variable in the paediatric and adolescent populations, and the curvilinear decline with age in the adult population [7, 17–20]. This method results in an improved fit across the entire population [17, 18, 20]. Therefore, prediction of V′O2peak in the transition group between adolescents and adulthood is more precise when using the additive model.

In comparison with the prediction models currently utilised in the Dutch clinical settings, the additive model improves the fit in both the adult and paediatric populations. The linear prediction model for adults provided by Jones et al. [14] yields R2=0.41 to the primary sample and R2=0.33 to the cross-validation sample compared with R2=0.52 and 0.38, respectively, in the additive model. The linear prediction equation provided by Ten Harkel et al. [41] is most frequently used in the Dutch paediatric population, this equation yields R2=0.58 and 0.73 compared with R2=0.76 and 0.84 in the primary and cross-validation sample, respectively. These improved fits make the additive model provided by the current study a more adequate reference prediction equation to utilise in both the paediatric and adult populations.

Primary sample analysis and cross-validation showed consistent results, specifically a stronger predictive accuracy in ≤20-year-old subjects, and accuracy improvement in >20-year-old subjects and the entire sample. This consistent increase in predictive accuracy indicates a good generalisability to the Dutch population. This is underlined by the fit of R2=0.54 (see=556.55 mL·min−1) of the additive model to the whole sample, including smokers, all BMI values and athletes. The somewhat lower adjusted R2 of the additive model obtained in the cross-validation >20-year-old subgroup suggests a difference from the primary sample analysis. This is possibly caused by the use of a variety of more institutions providing >20-year-old subjects in the cross-validation sample. Every subject >20 years old in this sample was tested at a single institute aimed at test indications such as sport- and work-related (mandatory) annual health checks. The underrepresentation of tests initiated by a healthcare professional results in a cross-validation sample with higher aerobic fitness compared with the more heterogeneous primary sample (healthy workers effect).

The strength of our study is the wide age range of 7.9–65.0 years. The LowLands Fitness Registry that we used in our study is a reasonable representation of the Dutch population. Additionally, the utilisation of a diverse variety of healthcare centres, including hospitals, sports medicine clinics and occupational medicine clinics, ensures representation of every conditioning status. The familiarity of the Dutch population with cycling and the low risk of injury during testing ensures this method of measurement is fitting for the population and participants of all ages [8].

Study results are limited by the retrospective and institution-based nature of the study. Preferably, V′O2peak reference value research should be performed using a prospective community-based method [8], since a retrospective study design has potential data quality issues. Although every institution used measurement methods and equipment described by the ACCP/ATS statement [8], the exclusion of 4364 subjects emphasises the variety of data quality in the primary sample. The majority of excluded subjects were due to missing values, accounting for 2674 excluded subjects. It is of primary importance that CPET instructors increase their skills and knowledge, and stringently apply the test guidelines provided by the ATS/ACCP statement in order to facilitate data harmonisation [8].

Representative reference V′O2peak values are genuinely needed because of the current lack of reference data in the Dutch population. The currently employed North American reference values from 1985 may plausibly underestimate the aerobic fitness for the Dutch population; hence, subjects are misclassified as having normal aerobic fitness. The additive regression equation presented in the current study can be used to determine a reference value for the Dutch population. In future research aimed at determining reference value prediction equations, the type of regression model fitted to the data may be conveniently modelled by semiparametric regression. This research can best be performed in a prospective, community-based setting with emphasis on the inclusion of sufficient numbers of female participants.

Conclusion

In conclusion, this study has provided a robust additive regression model for V′O2peak in the Dutch population. V′O2peak is sex specific and has a nonlinear relationship with age. Publicly usable reference values can be conveniently obtained by suitable software implementation.

Supplementary material

Supplementary Material

Please note: supplementary material is not edited by the Editorial Office, and is uploaded as it has been supplied by the author.

Supplementary material 00056-2018.supp

Acknowledgements

We would like to thank the collaborating centres for providing the anonymous exercise testing data.

Footnotes

  • This article has supplementary material available from openres.ersjournals.com

  • The LowLands Fitness Registry Study Group: Harriet Wittink (University of Applied Science Utrecht, Utrecht, The Netherlands), Marcel Schmitz (In2motion, Roermond, The Netherlands), Pieter-Jan van Ooi (The Royal Netherlands Navy's Diving Medical Center, Den Helder, The Netherlands), Geert van Beek (AZ Jan Portaels, Vilvoorde, Belgium), Leendert van Galen (InspanningLoont, Utrecht, The Netherlands), Jeroen Molinger (Belife Human Performance Lab, Rotterdam, The Netherlands), Robert Rozenberg (Erasmus Medical Center, Rotterdam, The Netherlands), Marieke van den Oord (The Center for Man and Aviation, Soesterberg, The Netherlands), Yvonne Hartman (Radboud University Medical Center, Nijmegen, The Netherlands), Nicolle Verbaarschot (St-Anna Hospital, Geldrop, The Netherlands), Aernout Snoek (Isala Hospital, Zwolle, The Netherlands), Jaap Stomphorst (Isala Hospital) and Joep van Kesteren (Sport Medical Center Sportmax, Veldhoven, The Netherlands) .

  • Conflict of interest: C.F. Mylius has nothing to disclose.

  • Conflict of interest: W.P. Krijnen has nothing to disclose.

  • Conflict of interest: C.P. van der Schans has nothing to disclose.

  • Conflict of interest: T. Takken has nothing to disclose.

  • Received April 16, 2018.
  • Accepted February 6, 2019.
  • Copyright ©ERS 2019
http://creativecommons.org/licenses/by-nc/4.0/

This article is open access and distributed under the terms of the Creative Commons Attribution Non-Commercial Licence 4.0.

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Peak oxygen uptake reference values for cycle ergometry for the healthy Dutch population: data from the LowLands Fitness Registry
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Peak oxygen uptake reference values for cycle ergometry for the healthy Dutch population: data from the LowLands Fitness Registry
Caspar Frederik Mylius, Wilhelmus Petrus Krijnen, Cornelis Peter van der Schans, Tim Takken
ERJ Open Research Apr 2019, 5 (2) 00056-2018; DOI: 10.1183/23120541.00056-2018

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Peak oxygen uptake reference values for cycle ergometry for the healthy Dutch population: data from the LowLands Fitness Registry
Caspar Frederik Mylius, Wilhelmus Petrus Krijnen, Cornelis Peter van der Schans, Tim Takken
ERJ Open Research Apr 2019, 5 (2) 00056-2018; DOI: 10.1183/23120541.00056-2018
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