Skip to main content

Main menu

  • Home
  • Current issue
  • ERJ Early View
  • Past issues
  • ERS Guidelines
  • Authors/reviewers
    • Instructions for authors
    • Submit a manuscript
    • Open access
    • COVID-19 submission information
    • Peer reviewer login
  • Alerts
  • Subscriptions
  • ERS Publications
    • European Respiratory Journal
    • ERJ Open Research
    • European Respiratory Review
    • Breathe
    • ERS Books
    • ERS publications home

User menu

  • Log in
  • Subscribe
  • Contact Us
  • My Cart
  • Log out

Search

  • Advanced search
  • ERS Publications
    • European Respiratory Journal
    • ERJ Open Research
    • European Respiratory Review
    • Breathe
    • ERS Books
    • ERS publications home

Login

European Respiratory Society

Advanced Search

  • Home
  • Current issue
  • ERJ Early View
  • Past issues
  • ERS Guidelines
  • Authors/reviewers
    • Instructions for authors
    • Submit a manuscript
    • Open access
    • COVID-19 submission information
    • Peer reviewer login
  • Alerts
  • Subscriptions

Official ERS technical standards: Global Lung Function Initiative reference values for the carbon monoxide transfer factor for Caucasians

Sanja Stanojevic, Brian L. Graham, Brendan G. Cooper, Bruce R. Thompson, Kim W. Carter, Richard W. Francis, Graham L. Hall on behalf of the Global Lung Function Initiative TLCO working group
European Respiratory Journal 2017 50: 1700010; DOI: 10.1183/13993003.00010-2017
Sanja Stanojevic
1Division of Respiratory Medicine, Hospital for Sick Children, Toronto, ON, Canada
2Institute of Health Policy Management and Evaluation, University of Toronto, Toronto, ON, Canada
  • Find this author on Google Scholar
  • Find this author on PubMed
  • Search for this author on this site
  • For correspondence: Sanja.Stanojevic@sickkids.ca
Brian L. Graham
3Division of Respirology, Critical Care and Sleep Medicine, University of Saskatchewan, Saskatoon, SK, Canada
  • Find this author on Google Scholar
  • Find this author on PubMed
  • Search for this author on this site
Brendan G. Cooper
4Lung Function and Sleep, University Hospitals Birmingham NHS Foundation Trust, Birmingham, UK
  • Find this author on Google Scholar
  • Find this author on PubMed
  • Search for this author on this site
Bruce R. Thompson
5Allergy Immunology and Respiratory Medicine, The Alfred Hospital and Monash University, Melbourne, Australia
  • Find this author on Google Scholar
  • Find this author on PubMed
  • Search for this author on this site
Kim W. Carter
6Bioinformatics, Telethon Kids Institute, Perth, Australia
7Centre for Child Health Research, University of Western Australia, Perth, Australia
  • Find this author on Google Scholar
  • Find this author on PubMed
  • Search for this author on this site
Richard W. Francis
6Bioinformatics, Telethon Kids Institute, Perth, Australia
7Centre for Child Health Research, University of Western Australia, Perth, Australia
  • Find this author on Google Scholar
  • Find this author on PubMed
  • Search for this author on this site
  • ORCID record for Richard W. Francis
Graham L. Hall
7Centre for Child Health Research, University of Western Australia, Perth, Australia
8Children's Lung Health, Telethon Kids Institute, Perth, Australia
9School of Physiotherapy and Exercise Science, Curtin University, Perth, Australia
  • Find this author on Google Scholar
  • Find this author on PubMed
  • Search for this author on this site
  • Article
  • Figures & Data
  • Info & Metrics
  • PDF
Loading

This article has a correction. Please see:

  • “Official ERS technical standards: Global Lung Function Initiative reference values for the carbon monoxide transfer factor for Caucasians.” Sanja Stanojevic, Brian L. Graham, Brendan G. Cooper, Bruce R. Thompson, Kim W. Carter, Richard W. Francis and Graham L. Hall on behalf of the Global Lung Function Initiative TLCO working group. Eur Respir J 2017; 50: 1700010. - October 01, 2020

Abstract

There are numerous reference equations available for the single-breath transfer factor of the lung for carbon monoxide (T LCO); however, it is not always clear which reference set should be used in clinical practice. The aim of the study was to develop the Global Lung Function Initiative (GLI) all-age reference values for T LCO.

Data from 19 centres in 14 countries were collected to define T LCO reference values. Similar to the GLI spirometry project, reference values were derived using the LMS (lambda, mu, sigma) method and the GAMLSS (generalised additive models for location, scale and shape) programme in R.

12 660 T LCO measurements from asymptomatic, lifetime nonsmokers were submitted; 85% of the submitted data were from Caucasians. All data were uncorrected for haemoglobin concentration. Following adjustments for elevation above sea level, gas concentration and assumptions used for calculating the anatomic dead space volume, there was a high degree of overlap between the datasets. Reference values for Caucasians aged 5–85 years were derived for T LCO, transfer coefficient of the lung for carbon monoxide and alveolar volume.

This is the largest collection of normative T LCO data, and the first global reference values available for T LCO.

Abstract

This is the largest collection of normative TLCO data and represents a step towards standardised interpretation http://ow.ly/4PcZ30dB1tn

Background

Lung function tests (LFTs) are important tools in the evaluation of the respiratory system. The correct interpretation of LFT results relies on the availability of appropriate reference values to help distinguish between health and disease and to assess the severity and nature of any functional impairment. Global Lung Function Initiative (GLI) multiethnic all-age reference values are available for spirometry [1]. However, there are no standardised reference values available for the second most clinically used LFT, the single-breath transfer factor of the lung for carbon monoxide (TLCO, or diffusing capacity of the lung for carbon monoxide (DLCO)). TLCO is a strong indicator of the efficiency of gas exchange in the lung, and is frequently used to inform diagnosis and monitor patients.

The European Respiratory Society (ERS) and American Thoracic Society (ATS) standards for the measurement of carbon monoxide gas transfer in the lungs were recently updated [2] and additional guidelines for interpretation of the technique are available [3]. There are several methodological aspects that may affect the interpretation of the results, with details presented in the documents. The interpretation guidelines provide a list of TLCO reference values; however, no consensus was reached, nor recommendations provided, regarding which equations were best for children, adults or those in the various ethnic groups other than to advise that laboratory directors should thoughtfully select reference values that match the values obtained from healthy individuals of appropriate background tested in their own laboratories. Changes in equipment, software and measurement techniques, combined with shifts in population characteristics, mean that some of the previously published reference values for TLCO may no longer be appropriate. The purpose of this study was to collate contemporary TLCO data from healthy individuals and derive GLI reference values for TLCO measurements.

Methods

An application was approved for an ERS task force to develop global TLCO reference values. Task force co-chairs were approved by the ERS. Task force members were scientists with experience in international guidelines, clinical experience of routine lung function testing and knowledge of gas transfer, including research publications. Potential conflicts of interest were disclosed and vetted.

Data sources

The authors of papers that published TLCO data in healthy individuals after the year 2000 were contacted and invited to share their data with the GLI TLCO task force. Of the 17 studies identified, 70% submitted data. Details about the equipment and methodology used were collected from the published papers, or from the authors or manufacturers directly, to confirm that methods were compatible with those currently available to customers. In addition, information about the task force was circulated through international and local respiratory societies to solicit unpublished data or published studies that had not been identified. All contributing authors provided explicit permission for data to be shared with the GLI group. An online, secure data portal was developed to capture de-identified data (www.gligastransfer.org.au). Data contributors signed a data-sharing agreement, submitted details about their study population, equipment, settings and research ethics. All data were submitted using a standard data template; initial data queries were performed and contributors were asked to correct errors before data were accepted. Inclusion criteria include nonsmokers without a history of respiratory disease. All data were uncorrected for haemoglobin (Hb) concentration. Outliers were identified using a priori criteria: forced expiratory volume in 1 s (FEV1) z-scores >5 or <−5 and height z-scores >5 or <−5 in children (aged ≤18 years). These limits were used to identify data discrepancies and exclude subjects at the extremes of the healthy population. In addition, observations were considered to be outliers if the alveolar volume (VA) was smaller than the forced vital capacity (FVC). Sensitivity analyses were performed excluding individuals who were obese, where obesity was defined as body mass index (BMI) centile >85% in children [4] and BMI >30 kg·m−2 in adults (aged >19 years). The z-scores derived for individuals in the full dataset and the “normal weight” dataset were compared using a paired t-test.

All TLCO data (and consequently transfer coefficient of the lung for carbon monoxide (KCO) data) were adjusted to the inspiratory oxygen partial pressure at standard barometric pressure (PB; 760 mmHg or 101.3 kPa) using the following equations [2, 5]: Embedded Image Embedded ImageFor TLCO datasets that did not provide PB data (n=11), the altitude of the centre in which the reference values were obtained was used to estimate PB, using the following equation [2, 6] where h is the altitude above sea level in m: Embedded Image Embedded ImageIn addition, we corrected corrected values in centres that used a fixed dead space correction of 150 mL (VD,an,fixed) such that the anatomic dead space was calculated as 2.2 mL·kg−1 (VD,an,est) [7]: Embedded ImageComplete details of the calculations can be found in the online supplementary material.

In addition, the following methodological considerations were investigated before the submitted data were combined: equipment type, breath-hold calculation, size and timing of alveolar sample collection and the year during which data were collected.

Statistical analyses

The complex nature of the relationship between body size, age, sex and lung function, particularly during periods of rapid growth, means that traditional linear regression analyses are not sufficient to derive appropriate reference values for lung function outcomes [8]. More flexible statistical modelling techniques allow the complexity of the relationship to be explained and to reflect biologically plausible relationships of lung function with age, sex and height. In the case of TLCO outcomes, we investigated body surface area as an independent predictor. Body surface area was defined as 0.007184·(weight^0.425)·(height^0.725) [9]. We have previously shown that the GAMLSS (generalised additive models of location shape and scale) [10] modelling approach is highly suitable to derive reference values for lung function outcomes [1, 8, 11]. The lambda, mu, sigma (LMS) method is an extension of regression analysis which includes three components: 1) the skewness (λ), which models the departure of the variables from normality using a Box–Cox transformation; 2) the median (μ); and 3) the coefficient of variation (σ), which models the spread of values around the median and adjusts for any nonuniform dispersion [12]. The three quantities (LMS) are allowed to change with height and/or age, to reflect changes in the distribution as people grow. We applied the LMS method using the GAMLSS package in the statistical programme R [10]. Goodness of fit was assessed using the Schwarz Bayesian criterion, Q-Q plots and worm plots [8].

Results

Study population

19 centres contributed data from 14 countries. Data from 12 659 individuals between the ages of 4 and 91 years were collected, of which 12 639 (99.8%) had valid TLCO data available. All TLCO values that were collected using traditional units (mL·min−1·mmHg−1) were converted to SI units (mmol·min−1·kPa−1), (TLCO traditional units = 2.986421 × TLCO SI units). Overall, the mean±sd FEV1 z-score for 11 473 individuals with spirometry data was 0.1±1.1, indicating a good fit with the GLI spirometry population [1]. 85% of the study population was Caucasian, with the remaining non-Caucasian population (n=1874) both from single sites (e.g. Japan (10%) and Hong Kong (4.5%)) and individuals where ethnic group was indicated as not Caucasian. Due to the lack of non-Caucasian data, TLCO reference values were developed for Caucasians only (table 1).

View this table:
  • View inline
  • View popup
TABLE 1

Summary of Caucasian data included in the Global Lung Function Initiative transfer factor of the lung for carbon monoxide reference values

One centre was excluded because the breath-hold time was 5 s (n=211). 58 observations were excluded because the VA was smaller than the FVC. 11 observations were excluded because FEV1 values were >5 z-scores or <-5 z-scores. 775 observations were excluded because of missing height, weight or age. Correcting TLCO for barometric pressure, such that TLCO was standardised to sea level (PB=760 mmHg or 101.3 kPa), on average (95% CI) corrected TLCO values by −1.5 (−1.54–−1.51) SI units (online supplementary figure S1). Adjusting the anatomic dead space decreased the TLCO on average by 0.02 (0.01–0.02) SI units (online supplementary figure S2); the correction resulted in greater relative changes in TLCO in children (1.5%) compared with adults (0.7%). As expected, since females weigh less than males (average 65 kg in females; 78 kg in males) the anatomic dead space correction was negative in adult males and positive in adult females.

Reference values

The population used to derive reference equations for TLCO outcomes (n=9710), ranged in age from 4.5 to 91 years (median (interquartile range) 45 (26–57) years) (online supplementary figure S5); half of whom were male. Findings from preliminary modelling identified significant differences in predicted values between males (n=4859) and females (n=4851), therefore sex-specific equations were created for TLCO, VA and KCO (figure 1). Height and age were both independent predictors of TLCO, where natural logarithmic transformation of height and a spline function for age were necessary. As body surface area is correlated with alveolar surface area in children [13], we investigated body surface area as an independent predictor variable in the models. However, body surface area was highly correlated with height and therefore not included as an independent predictor.

FIGURE 1
  • Download figure
  • Open in new tab
  • Download powerpoint
FIGURE 1

a) Predicted transfer factor of the lung for carbon monoxide (TLCO) in i) males n=4859 and ii) females n=4851; b) alveolar volume (VA) (at standard temperature, pressure and dry conditions) in i) males n=4793 and ii) females n=4837; and c) transfer coefficient of the lung for carbon monoxide (KCO) in i) males n=4793 and ii) females n=4837. Data are presented as the predicted values for age (assuming an average height at each) and 95% confidence limits. Prediction equations are overlaid on observed values. The average height used in children was the 50th height-for-age centile from Centers for Disease Control and Prevention growth charts [4], whereas in adults, the average height observed in the study population was used (172 cm in males and 162 cm in females).

The between-individual variability of TLCO values was age dependent, with greater variability observed in children and older individuals (figure 2). On average, the variability of TLCO was greater than that observed for FEV1. Together with the median predicted values, the between-individual variability and skewness adjustment derived from the LMS method allowed for the calculation of a lower limit of normal (LLN), as well as the calculation of z-scores (figure 1 and table 2). The resulting z-scores had a mean of zero, and a standard deviation of one, indicating good fit to the data.

FIGURE 2
  • Download figure
  • Open in new tab
  • Download powerpoint
FIGURE 2

Between-subject variability of transfer factor of the lung for carbon monoxide (TLCO) across age; the variability of forced expiratory volume in 1 s (FEV1) in males and females is included as a comparator.

View this table:
  • View inline
  • View popup
TABLE 2

The corrected equations for predicted values for the median (M), the variability around the median (S) and the skewness (L) for each of the TLCO test outcomes (transfer factor of the lung for carbon monoxide (TLCO), transfer coefficient of the lung for carbon monoxide (KCO) and alveolar volume (VA))

Sensitivity analyses

To test whether the inclusion of overweight individuals (n=2630; 27% of total population) affects the interpretation of the results, we created reference values limiting the sample to adults with a BMI <30 kg·m−2 or children with a BMI <85% percentile (n=7771). The difference in z-scores for an individual, whether overweight individuals were included or not, was −0.05 units (95% CI −0.050–0.048). Since including overweight individuals did not bias the prediction models, we chose to include these in the final models to maximise the sample size and generalisability of the final reference values.

Physiologically relevant differences

Based on the observed variability of the TLCO we identified 0.5 z-scores as a threshold for a physiologically relevant difference. This equates to ∼0.3–0.8 mmol·min−1·kPa−1 or 10% relative change in TLCO, which was higher in older individuals.

Methodological differences

We only included data where breath-hold time was reported to be 10 s. 13 centres reported having used the Jones–Meade calculations; five reported that the calculation method was unknown. There was a minimal difference in TLCO z-scores (mean difference 0.04, 95% CI 0.0005–0.08; n=9630) between those that used the Jones–Meade method and those that did not report a method; these differences were not considered to be clinically or physiologically relevant. Most data were collected on commercial equipment (SensorMedics (29.5%; five centres), Jaeger (29.4%; five centres) and Collins (11.8%; two centres)), while 26.7% (six centres) reported “other” equipment not listed on our predefined list of commercial devices and one centre did not report the equipment type. There were minimal differences in TLCO between different equipment types, which was consistent between males and females (figure 3). Four centres reported using 19% oxygen, and TLCO values were corrected using the equation by Kanner and Crapo [14] (online supplementary figure S3). In the majority of centres, TLCO values were reported as an average of acceptable tests (eight centres, 47.1%). Others reported the largest value (three centres, 17.7%), values generated by equipment software (three centres, 17.7%), did not report the method used (two centres, 11.8%) or selected “other” (one centre, 5.9%). The method of reporting results did not lead to physiologically relevant differences in TLCO. The reporting of values was equipment-specific, except for the case of Jaeger and “other”, where reporting of values was centre-specific. A summary of the original and final corrected TLCO values used to derive the reference values is presented in online supplementary figure S4.

FIGURE 3
  • Download figure
  • Open in new tab
  • Download powerpoint
FIGURE 3

Differences in a) transfer factor of the lung for carbon monoxide (TLCO) in i) males n=4859 and ii) females n=4851; b) alveolar volume (VA) in i) males n=4793 and ii) females n=4837; and c) transfer coefficient of the lung for carbon monoxide (KCO) z-scores in i) males n=4793 and ii) females n=4837 according to equipment in Caucasian subjects. Boxplots indicate the median value (centre line); interquartile range (box) and minimum and maximum values, excluding outliers greater than three times the lower quartile (error bars).

Haemoglobin correction of TLCO outcomes

All of the TLCO data included in this healthy population were uncorrected for Hb. However, TLCO is dependent on the amount of Hb in the pulmonary capillary bed. To gauge the potential effect of variation from the standard reference values of 8.31 mmol·L−1 (134 g·L−1) for females and children and 9.06 mmol·L−1 (146 g·L−1) for adult males, we used the National Health and Nutrition Examination Survey (NHANES) III age-, sex- and ethnicity-specific reference values for Hb [15] to calculate an expected Hb level for all individuals and then calculated TLCO adjusted for the predicted Hb level using TLCOHb=TLCO×(1.7×Hb/(0.7×Hb reference+Hb)) [2]. There was no difference in the z-scores calculated using the Hb-corrected TLCO reference values versus the Hb-uncorrected TLCO reference values (mean difference <0.0001). In addition, adjusting for Hb as a covariate in the prediction model did not improve the overall model fit, nor was age- and sex-predicted Hb an independent predictor of TLCO.

Ethnic differences

85% of the data were from Caucasians, and there were insufficient data from any other ethnic group to derive all-age equations, therefore the final prediction equations are limited to Caucasians. The majority of the non-Caucasian individuals were adults from Japan (10%). TLCO z-scores calculated based on Caucasian data were on average −0.1±1.4 z-scores lower than for Caucasians, with a pattern of higher TLCO z-score values in younger individuals. For VA, the average z-score was 0.31±1.1 units higher than that for Caucasians. TLCO data collected in adult males from Hong Kong were −0.25±1.2 z-scores lower than Caucasians, with lower values in older individuals.

Comparison with existing reference values

Compared with many earlier TLCO reference values for adults, the GLI TLCO reference values are noticeably lower (figure 4a); however, compared with more-recently published equations, many of which are included in the GLI dataset, the new GLI TLCO equations are quite comparable (figure 4b). For an individual, interpretation of results can be quite different depending on which equation is used (table 3).

FIGURE 4
  • Download figure
  • Open in new tab
  • Download powerpoint
FIGURE 4

Comparison of transfer factor of the lung for carbon monoxide (TLCO) reference equations to the current Global Lung Function Initiative (GLI) equations. Equations found in a) most commercially available equipment and b) more recently published studies.

View this table:
  • View inline
  • View popup
TABLE 3

Comparison of predicted values for individuals using available transfer factor of the lung for carbon monoxide (TLCO) reference values

Discussion

These GLI reference values for TLCO are the largest and first internationally representative collection of data from healthy Caucasian individuals for this commonly used pulmonary function test. Development of the GLI reference values has taken into consideration several of the methodological and equipment differences that are known to influence TLCO values and presents a standardised way to interpret outcomes. Spirometry z-scores for the population used to derive the TLCO equations fit the GLI 2012 spirometry population very well. However, the present TLCO equations are limited to Caucasians, therefore additional data for non-Caucasians are urgently needed to increase the generalisability of these findings.

Similar to prediction equations for spirometry, sex, age and height were independent and significant predictors of TLCO. The TLCO equations are therefore sex-specific and describe a multiplicative relationship with age and height. Previous studies have used weight and/or surface area as predictor variables for TLCO [26]. In our analysis, prediction equations were virtually identical whether overweight individuals were included or excluded from the dataset; we chose to use the more inclusive, larger dataset in the final prediction equations. Furthermore, height and surface area were highly correlated and therefore surface area was not included in the prediction model.

Previous studies have shown large differences in the predicted values between different prediction equations [23, 26]. Many older publications reporting TLCO reference values were based on outdated equipment that is no longer available, and which often applied different assumptions and algorithms and using different gas concentrations. More recently, reference values have become available for TLCO in children [22, 23], which are included in the GLI dataset. The GLI equations have the advantage of seamlessly continuing into adulthood, a significant advantage given the large discontinuity between previously published paediatric and adult equations (figure 4b).

There were insufficient data to create multiethnic reference values. The largest sample of non-Caucasian data were from Japanese adults, who had lower TLCO z-scores on average and were biased by age. Older Japanese individuals had lower TLCO z-scores, which may partially be explained by secular changes in socioeconomic and general health conditions that have affected body frames and leg length in Japan; this hypothesis requires further investigation [29].

The 2005 ATS/ERS standards on interpretation of lung function state that for each lung function index, values below the 5th percentile of the frequency distribution of values measured in the reference population are considered to be below the expected “normal range” [3]. This is often referred to as the LLN. Values at the upper end of the distribution are generally considered to be physiological variants, and as such, there is no upper limit of normal. It may be argued that an upper limit of normal is required for TLCO, since conditions such as polycythaemia, left-to-right cardiac shunt or alveolar haemorrhage (e.g. Goodpasture's syndrome) can result in higher than expected values. In addition, some authors state that asthma increases TLCO [30], but not usually to a great extent. Other factors that increase pulmonary capillary blood volume, such as exercise or a decrease in intrathoracic pressure, such as during a Mueller manoeuvre, will also increase TLCO. Cases of left-to-right cardiac shunt or acute alveolar haemorrhage are very rarely seen upon pulmonary function testing and TLCO is not a standard test for their diagnosis. For these reasons, the LLN for TLCO provided in these reference values is the 5th percentile. Similarly, the 5th percentile is used for VA.

Although the same arguments can be applied to reference values for KCO, there is a need to consider the effect of VA on KCO. Failure to inhale completely to total lung capacity will reduce TLCO, but KCO will be increased. The KCO from a submaximal inhalation will be overestimated when compared to the reference value, yielding a normal or above-normal KCO when the TLCO is actually reduced [31]. Thus, the reference value and the normal range for KCO are only valid when the VA is normal. The LLN reported here for KCO is the 5th percentile, but interpreters must use caution when the VA differs from the reference value. An individual with a low TLCO and a low VA may have a KCO that erroneously lies within the normal range [3, 31].

As expected, the coefficient of variation is higher for TLCO than FEV1, since TLCO is dependent on several factors in addition to size of the lungs (figure 2). As seen in figure 2, the between-individual variability of TLCO in females was greater than that observed in males. This sex-related difference in the coefficient of variation may be due to the previously observed mean changes of 13% in TLCO in females during the menstrual cycle [32]. The highest value was observed just before the menses, and the lowest on the third day of menses. This mechanism is further supported by the GLI all-age analysis of the combined datasets which shows that the sex-related difference in TLCO coefficient of variation is minimal in younger (aged <10 years) individuals, where the females were presumably prepubescent, and in the older (aged >55 years) individuals, where the females were presumably postmenopausal. For both males and females, alterations in lung structure and heterogeneity in ventilation that occur as the lung ages may reduce TLCO in some persons, which in turn, may contribute to an increase in the variation of TLCO in older adults [33].

Methodological differences

The GLI TLCO were limited to studies that used modern equipment and standardised methodology, although we did not apply specific exclusions based on equipment or methodology other than the 5-s breath-hold. Where possible, we corrected data for altitude, oxygen concentration and anatomic dead space to standardise the interpretation of results between centres.

Within the data collected for the GLI task force, two key methodological differences between datasets were identified: 1) the method for correcting for dead space and 2) the altitude of the sites, both of which have a direct impact on TLCO values. The updated standards [2, 34] note that the equipment dead space (filter, valve and mouthpiece) are not negligible (up to 350 mL) and should be considered in combination with anatomic dead space when determining TLCO values. In adults, the combined dead space may be relatively small compared to the size of the lungs, but the likelihood of contamination of the sample volume is higher and may result in lower VA and TLCO values. However, the effect of dead space could be larger in smaller individuals and especially in children where the combined equipment and anatomical dead space is relatively large compared to the size of their lungs. Within the GLI dataset, two different methods for estimating the anatomic dead space were used: 1) fixed volume of 150 mL and 2) estimated based on body size (see the online supplementary material for details). We observed that paediatric datasets that had a fixed dead space volume underestimated the TLCO. When TLCO values were adjusted based on estimated dead space relative to body weight, the differences between datasets was minimised. Secondly, we observed that TLCO was higher for sites that were not at sea level. A contributory factor to the increase in TLCO at these sites could be the lower alveolar oxygen tension due to the decreased PB with increasing altitude. Using the altitude of the site as a proxy for PB, we corrected all TLCO data to 101.3 kPa (760 mmHg). Since KCO was calculated as TLCO/VA, KCO was also corrected for standard pressure. Although the use of a fixed PB for a given site based on its altitude corrects for the mean effect of PB, it does not correct for the day-to-day variations that occur in PB due to high and low pressure cells, which are rarely outside the range of ±3.33 kPa (±25 mmHg). These pressure changes translate to a variation of up to ±1.5% in TLCO, which contributes to between-individual variation in the combined datasets. The altitude correction is based on experimental evidence which measured the change in TLCO with altitude, and thus does not assume any underlying physiological abnormality [5]. Finally, while we adjusted for altitude of the site, we could not adjust for the individual's Hb level, and there may be residual effects of higher altitude on Hb levels.

TLCO is dependent on both the overall surface area and thickness of the alveolar–capillary membrane and the amount of Hb in the pulmonary capillary blood. As carbon monoxide competes with oxygen for binding with Hb, TLCO is also dependent on the pulmonary capillary oxygen concentration. Ruíz-Argüelles et al. [35] showed that Hb in an adult Mexican population living at an altitude of 2670 m was 5 g·L−1 higher in adult males and 15 g·L−1 higher in adult females compared to the Mexican population living at sea level. Laboratories at >1000 m above sea level need to consider Hb and be aware that further adjustments may be necessary. Ideally, individual TLCO measurements should be corrected for the individual's Hb levels [3, 34], since Hb concentration will affect the rate of carbon monoxide uptake; but few clinical pulmonary function laboratories routinely make this correction. Only four of the available datasets provided Hb values, and therefore we could not derive Hb-corrected TLCO reference values. The 2005 ATS/ERS statement recommends that predicted TLCO values are corrected to standard Hb values using the equation derived by Cotes and colleagues [36, 37]; however, the correction is dependent on the assumptions that the alveolar partial pressure of oxygen is 14.63 kPa (110 mmHg) and that the ratio of the membrane diffusing capacity to pulmonary capillary blood volume times the reaction rate of carbon monoxide with oxyhaemoglobin is 0.7 mL−1·min−1·mmHg−1·mL-blood. While these equations provide a simple correction to 146 g·L−1 for males aged ≥15 years and 134 g·L−1 for females and children, measures of Hb levels in the general USA population (NHANES III) were substantially different from these fixed reference values, especially in children, males and non-Caucasians [15, 38]. White males have peak Hb of 155 g·L−1 at the age of 30 years, while both male and female African-American subjects have Hb levels ∼8–10% lower than white subjects. Furthermore, the relationship between TLCO and Hb in heathy individuals may not reflect that observed in disease groups, and thus there is a need to define clinically relevant correction factors for Hb.

Implementation

The updated TLCO standards recommend that TLCO is reported as the measured value, as well as the value adjusted to standard pressure [39]. Furthermore, table 4 summarises the additional adjustments that should be made by users prior to applying the GLI TLCO reference values. The format of the TLCO equations and look-up tables is identical to the GLI spirometry equations, which will facilitate implementation into many devices which already have the GLI spirometry equations programmed. The prediction equations (table 2) and look-up tables are provided in both SI and traditional units (www.lungfunction.org), and a worked example is included in the online supplementary material. Similar to previous GLI tools, researchers, clinicians and manufactures can access individual calculators, and other tools for applying these equations for large research datasets are also available at www.lungfunction.org.

View this table:
  • View inline
  • View popup
TABLE 4

Summary of the practical recommendations for applying Global Lung Function Initiative transfer factor of the lung for carbon monoxide (TLCO) reference values

Limitations

While the GLI TLCO data represents the largest collection of normative data for TLCO, the lack of data from non-Caucasians limits the generalisability. The extent to which ethnic differences for TLCO occur is unclear and could not be explored in the current GLI dataset due to the limited sample of non-Caucasians. Some differences were observed between different equipment types and between centres, but these were generally within the limits of physiological variability. In a few cases, results were outside the physiologically defined limits and warrant further investigation, since it was not possible to ascertain whether differences within the current dataset were attributable to equipment, population or methodology. Since many of the causes of potential differences in TLCO affect results in opposite directions, between-individual variability would be expected to increase, thereby underestimating the LLN, but this should not affect the predicted value. The adjustments traditionally used on TLCO to correct for oxygen tension, barometric pressure and Hb levels have been challenged. The correction for barometric pressure (or altitude) is based on scant data [5] and may not be linear [39]. Further research on the effect of altitude on TLCO is well warranted.

Conclusions

GLI reference values for TLCO (2017) provide a generalisable reference to standardise the reporting and interpretation of TLCO data for Caucasians. Data collection in non-Caucasians and future validation with measurements made using contemporary equipment and updated ATS/ERS recommendations are necessary.

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 ERJ-00010-2017_Supplement

Lookup table (S.I. units); this supplementary file has been republished in an amended form subsequent to the correction article published in the October 2020 issue of the European Respiratory Journal ERJ-00010-2017_Lookup_Table_SI_Units

Lookup table (traditional units); this supplementary file has been republished in an amended form subsequent to the correction article published in the October 2020 issue of the European Respiratory Journal ERJ-00010-2017_Lookup_Table_Traditional_Units

TLCO calculator ERJ-00010-2017_TLCO_Calculator

TLCO calculator help document ERJ-00010-2017_TLCO_Calculator_Help

Acknowledgements

The Global Lung Function Initiative (GLI) TLCO working group consists of the authors and the following additional members. Philip Quanjer (Rotterdam, the Netherlands), Janet Stocks (London, UK), Darcy Marciniuk (Saskatoon, SK, Canada), Mary Sau Man Ip (Hong Kong, China) and Juan-Carlos Vazquez (Mexico City, Mexico).

Contributors to the GLI TLCO database were Emma Smith (Brisbane, Australia), Debbie Zagami (Queensland, Australia), Stefan Kostianev (Plovdiv, Bulgaria), Winfried Baden (Tübingen, Germany), Pavlos Michailopoulos (Thessaloniki, Greece), Mary Sau Man Ip (Hong Kong, China), Vito Brusasco (Genoa, Italy), Masaru Kubota (Sagamihara, Japan), Laura Gochicoa (Texcoco, Mexico), Hubertus Arets (Utrecht, the Netherlands), Bruce Thompson (Melbourne, Australia), Ivo van der Lee (Hoofddorp, the Netherlands), Andrew Collingwood (Auckland, New Zealand), Piotr Boros (Warsaw, Poland), Linda Ekerljung (Gothenburg, Sweden), Kim Young-Jee (Indianapolis, IN, USA) and Gerald Zavorsky (Atlanta, GA, USA).

Footnotes

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

  • This document was endorsed by the ERS Executive Committee in July 2017 and by the American Thoracic Society, American College of Chest Physicians and Asian Pacific Society of Respirology in August 2017.

  • Support statement: Funding was received from the European Respiratory Society, grant number TF-2013-05. Funding information for this article has been deposited with the Crossref Funder Registry.

  • Conflict of interest: None declared.

  • Received January 3, 2017.
  • Accepted June 14, 2017.
  • Copyright ©ERS 2017

References

  1. ↵
    1. Quanjer PH,
    2. Stanojevic S,
    3. Cole TJ
    , et al. Multi-ethnic reference values for spirometry for the 3–95-yr age range: the global lung function 2012 equations. Eur Respir J 2012; 40: 1324–1343.
    OpenUrlAbstract/FREE Full Text
  2. ↵
    1. Graham BL,
    2. Brusasco V,
    3. Burgos F
    , et al. Executive summary: 2017 ERS/ATS standards for single-breath carbon monoxide uptake in the lung. Eur Respir J 2017; 49: 16E0016.
    OpenUrlAbstract/FREE Full Text
  3. ↵
    1. Pellegrino R,
    2. Viegi G,
    3. Brusasco V
    , et al. Interpretative strategies for lung function tests. Eur Respir J 2005; 26: 948–968.
    OpenUrlFREE Full Text
  4. ↵
    1. Kuczmarski R,
    2. Ogden CL,
    3. Guo S
    , et al. CDC Growth Charts. Atlanta, National Center for Health Statistics, 2000.
  5. ↵
    1. Gray G,
    2. Zamel N,
    3. Crapo RO
    . Effect of a simulated 3,048 meter altitude on the single-breath transfer factor. Bull Eur Physiopathol Respir 1986; 22: 429–431.
    OpenUrlPubMedWeb of Science
  6. ↵
    1. National Oceanic and Atmospheric Administration
    . Pressure Altitude Calculator. www.weather.gov/epz/wxcalc_pressurealtitude Date last accessed: November 11, 2016.
  7. ↵
    1. Cotes JE
    . Lung Function. 5th edn. London, Blackwell Scientific Publications, 1993.
  8. ↵
    1. Stanojevic S,
    2. Wade A,
    3. Stocks J
    , et al. Reference ranges for spirometry across all ages: a new approach. Am J Respir Crit Care Med 2008; 177: 253–260.
    OpenUrlCrossRefPubMedWeb of Science
  9. ↵
    1. Dubois D,
    2. Dubois E
    . A formula to estimate the approximate surface area if height and weight be known. Arch Intern Med 1916; 17: 863–871.
    OpenUrlWeb of Science
  10. ↵
    1. Rigby RA,
    2. Stasinopoulos DM
    . Smooth centile curves for skew and kurtotic data modelled using the Box-Cox power exponential distribution. Stat Med 2004; 23: 3053–3076.
    OpenUrlCrossRefPubMedWeb of Science
  11. ↵
    1. Cole TJ,
    2. Stanojevic S,
    3. Stocks J
    , et al. Age- and size-related reference ranges: a case study of spirometry through childhood and adulthood. Stat Med 2009; 28: 880–898.
    OpenUrlCrossRefPubMedWeb of Science
  12. ↵
    1. Cole TJ,
    2. Green PJ
    . Smoothing reference centile curves: the LMS method and penalized likelihood. Stat Med 1992; 11: 1305–1319.
    OpenUrlCrossRefPubMedWeb of Science
  13. ↵
    1. Thurlbeck WM
    . Postnatal human lung growth. Thorax 1982; 37: 564–571.
    OpenUrlAbstract/FREE Full Text
  14. ↵
    1. Kanner RE,
    2. Crapo RO
    . The relationship between alveolar oxygen tension and the single-breath carbon monoxide diffusing capacity. Am Rev Respir Dis 1986; 133: 676–678.
    OpenUrlPubMedWeb of Science
  15. ↵
    1. Hollowell JG,
    2. van Assendelft OW,
    3. Gunter EW
    , et al. Hematological and iron-related analytes – reference data for persons aged 1 year and over: United States, 1988-94. Vital Health Stat 2005; 11: 1–156.
    OpenUrl
    1. Crapo RO,
    2. Morris AH
    . Standardized single breath normal values for carbon monoxide diffusing capacity. Am Rev Respir Dis 1981; 123: 185–189.
    OpenUrlPubMedWeb of Science
    1. Roca J,
    2. Rodriguez-Roisin R,
    3. Cobo E
    , et al. Single-breath carbon monoxide diffusing capacity prediction equations from a Mediterranean population. Am Rev Respir Dis 1990; 141: 1026–1032.
    OpenUrlCrossRefPubMedWeb of Science
    1. Zapletal A,
    2. Motoyama EK,
    3. Van De Woestijne KP
    , et al. Maximum expiratory and airway conductance in children and adolescents. J Appl Physiol 1969; 26: 308–316.
    OpenUrlPubMedWeb of Science
    1. Miller A,
    2. Thornton JC,
    3. Warshaw R
    , et al. Single breath diffusing capacity in a representative sample of the population of Michigan, a large industrial state. Predicted values, lower limits of normal, and frequencies of abnormality by smoking history. Am Rev Respir Dis 1983; 127: 270–277.
    OpenUrlPubMedWeb of Science
    1. Rosenthal M,
    2. Cramer D,
    3. Bain SH
    , et al. Lung function in white children aged 4 to 19 years: II – single breath analysis and plethysmograpy. Thorax 1993; 48: 803–808.
    OpenUrlAbstract/FREE Full Text
    1. Polgar G,
    2. Promadhat V
    . Pulmonary Function Tests in Children: Techniques and Standards. Philadelphia, Saunders, 1971.
  16. ↵
    1. Koopman M,
    2. Zanen P,
    3. Kruitwagen CL
    , et al. Reference values for paediatric pulmonary function testing: the Utrecht dataset. Respir Med 2011; 105: 15–23.
    OpenUrlCrossRefPubMed
  17. ↵
    1. Kim YJ,
    2. Hall GL,
    3. Christoph K
    , et al. Pulmonary diffusing capacity in healthy Caucasian children. Pediatr Pulmonol 2012; 47: 469–475.
    OpenUrlPubMed
    1. Thomas A,
    2. Hanel B,
    3. Marott JL
    , et al. The single-breath diffusing capacity of CO and NO in healthy children of European descent. PLoS One 2014; 9: e113177.
    OpenUrl
    1. Michailopoulos P,
    2. Kontakiotis T,
    3. Spyratos D
    , et al. Reference equations for static lung volumes and TLCO from a population sample in northern Greece. Respiration 2015; 89: 226–234.
    OpenUrl
  18. ↵
    1. Thompson BR,
    2. Johns DP,
    3. Bailey M
    , et al. Prediction equations for single breath diffusing capacity (TLCO) in a middle aged caucasian population. Thorax 2008; 63: 889–893.
    OpenUrlAbstract/FREE Full Text
    1. Garcia-Rio F,
    2. Dorgham A,
    3. Galera R
    , et al. Prediction equations for single-breath diffusing capacity in subjects aged 65 to 85 years. Chest 2012; 142: 175–184.
    OpenUrlCrossRefPubMed
    1. Gutierrez C,
    2. Ghezzo RH,
    3. Abboud RT
    , et al. Reference values of pulmonary function tests for Canadian Caucasians. Can Respir J 2004; 11: 414–424.
    OpenUrlCrossRefPubMed
  19. ↵
    1. Quanjer PH,
    2. Kubota M,
    3. Kobayashi H
    , et al. Secular changes in relative leg length confound height-based spirometric reference values. Chest 2015; 147: 792–797.
    OpenUrlCrossRefPubMed
  20. ↵
    1. Collard P,
    2. Njinou B,
    3. Nejadnik B
    , et al. Single breath diffusing capacity for carbon monoxide in stable asthma. Chest 1994; 105: 1426–1429.
    OpenUrlCrossRefPubMedWeb of Science
  21. ↵
    1. Hughes JM,
    2. Pride NB
    . Examination of the carbon monoxide diffusing capacity (DLCO) in relation to its KCO and VA components. Am J Respir Crit Care Med 2012; 186: 132–139.
    OpenUrlCrossRefPubMedWeb of Science
  22. ↵
    1. Sansores RH,
    2. Abboud RT,
    3. Kennell C
    , et al. The effect of menstruation on the pulmonary carbon monoxide diffusing capacity. Am J Respir Crit Care Med 1995; 152: 381–384.
    OpenUrlCrossRefPubMedWeb of Science
  23. ↵
    1. Thompson BR,
    2. Kim Prisk G,
    3. Peyton P
    , et al. Inhomogeneity of ventilation leads to unpredictable errors in measured DLCO. Respir Physiol Neurobiol 2005; 146: 205–214.
    OpenUrlCrossRefPubMedWeb of Science
  24. ↵
    1. Macintyre N,
    2. Crapo RO,
    3. Viegi G
    , et al. Standardisation of the single-breath determination of carbon monoxide uptake in the lung. Eur Respir J 2005; 26: 720–735.
    OpenUrlAbstract/FREE Full Text
  25. ↵
    1. Ruíz-Argüelles GJ,
    2. Sánchez-Medal L,
    3. Loría A
    , et al. Red cell indices in normal adults residing at altitude from sea level to 2670 meters. Am J Hematol 1980; 8: 265–271.
    OpenUrlPubMedWeb of Science
  26. ↵
    1. Cotes JE,
    2. Chinn DJ,
    3. Quanjer PH
    , et al. Standardization of the measurement of transfer factor (diffusing capacity). Eur Respir J 1993; 6: Suppl. 16, 41–52.
    OpenUrl
  27. ↵
    1. Cotes JE,
    2. Dabbs JM,
    3. Elwood PC
    , et al. Iron-deficiency anaemia: its effect on transfer factor for the lung (diffusing capacity) and ventilation and cardiac frequency during sub-maximal exercise. Clin Sci 1972; 42: 325–335.
    OpenUrlCrossRefPubMed
  28. ↵
    1. Beutler E,
    2. Waalen J
    . The definition of anemia: what is the lower limit of normal of the blood hemoglobin concentration? Blood 2006; 107: 1747–1750.
    OpenUrlAbstract/FREE Full Text
  29. ↵
    1. Kang MY,
    2. Sapoval B
    . Time-based understanding of DLCO and DLNO. Respir Physiol Neurobiol 2016; 225: 48–59.
    OpenUrl
PreviousNext
Back to top
View this article with LENS
Vol 50 Issue 3 Table of Contents
European Respiratory Journal: 50 (3)
  • Table of Contents
  • Index by author
Email

Thank you for your interest in spreading the word on European Respiratory Society .

NOTE: We only request your email address so that the person you are recommending the page to knows that you wanted them to see it, and that it is not junk mail. We do not capture any email address.

Enter multiple addresses on separate lines or separate them with commas.
Official ERS technical standards: Global Lung Function Initiative reference values for the carbon monoxide transfer factor for Caucasians
(Your Name) has sent you a message from European Respiratory Society
(Your Name) thought you would like to see the European Respiratory Society web site.
CAPTCHA
This question is for testing whether or not you are a human visitor and to prevent automated spam submissions.
Print
Citation Tools
Official ERS technical standards: Global Lung Function Initiative reference values for the carbon monoxide transfer factor for Caucasians
Sanja Stanojevic, Brian L. Graham, Brendan G. Cooper, Bruce R. Thompson, Kim W. Carter, Richard W. Francis, Graham L. Hall
European Respiratory Journal Sep 2017, 50 (3) 1700010; DOI: 10.1183/13993003.00010-2017

Citation Manager Formats

  • BibTeX
  • Bookends
  • EasyBib
  • EndNote (tagged)
  • EndNote 8 (xml)
  • Medlars
  • Mendeley
  • Papers
  • RefWorks Tagged
  • Ref Manager
  • RIS
  • Zotero

Share
Official ERS technical standards: Global Lung Function Initiative reference values for the carbon monoxide transfer factor for Caucasians
Sanja Stanojevic, Brian L. Graham, Brendan G. Cooper, Bruce R. Thompson, Kim W. Carter, Richard W. Francis, Graham L. Hall
European Respiratory Journal Sep 2017, 50 (3) 1700010; DOI: 10.1183/13993003.00010-2017
Reddit logo Technorati logo Twitter logo Connotea logo Facebook logo Mendeley logo
Full Text (PDF)

Jump To

  • Article
    • Abstract
    • Abstract
    • Background
    • Methods
    • Results
    • Discussion
    • Conclusions
    • Supplementary material
    • Acknowledgements
    • Footnotes
    • References
  • Figures & Data
  • Info & Metrics
  • PDF

Subjects

  • Lung structure and function
  • Tweet Widget
  • Facebook Like
  • Google Plus One

More in this TOC Section

Task Force Reports

  • ERS/ESICM/ESCMID/ALAT guidelines for management of HAP/VAP
  • Inducible laryngeal obstruction: ERS/ELS statement
Show more Task Force Reports

ERS technical standards

  • Technical standards for using type III devices to diagnose sleep disordered breathing
  • Technical standards for respiratory oscillometry
  • ERS technical standard on bronchial challenge testing
Show more ERS technical standards

Related Articles

Navigate

  • Home
  • Current issue
  • Archive

About the ERJ

  • Journal information
  • Editorial board
  • Press
  • Permissions and reprints
  • Advertising

The European Respiratory Society

  • Society home
  • myERS
  • Privacy policy
  • Accessibility

ERS publications

  • European Respiratory Journal
  • ERJ Open Research
  • European Respiratory Review
  • Breathe
  • ERS books online
  • ERS Bookshop

Help

  • Feedback

For authors

  • Instructions for authors
  • Publication ethics and malpractice
  • Submit a manuscript

For readers

  • Alerts
  • Subjects
  • Podcasts
  • RSS

Subscriptions

  • Accessing the ERS publications

Contact us

European Respiratory Society
442 Glossop Road
Sheffield S10 2PX
United Kingdom
Tel: +44 114 2672860
Email: journals@ersnet.org

ISSN

Print ISSN:  0903-1936
Online ISSN: 1399-3003

Copyright © 2023 by the European Respiratory Society