| Literature DB >> 25847916 |
Damjan Vukcevic1, John B Carlin2, Louise King3, Graham L Hall4, Anne-Louise Ponsonby5, Peter D Sly6, Peter Vuillermin7, Sarath Ranganathan8.
Abstract
There is substantial interest in studying lung function in infants, to better understand the early life origins of chronic lung diseases such as asthma. Multiple breath washout (MBW) is a technique for measuring lung function that has been adapted for use in infants. Respiratory sighs occur frequently in young infants during natural sleep, and in accordance with current MBW guidelines, result in exclusion of data from a substantial proportion of testing cycles. We assessed how sighs during MBW influenced the measurements obtained using data from 767 tests conducted on 246 infants (50% male; mean age 43 days) as part of a large cohort study. Sighs occurred in 119 (15%) tests. Sighs during the main part of the wash-in phase (before the last 5 breaths) were not associated with differences in standard MBW measurements compared with tests without sighs. In contrast, sighs that occurred during the washout were associated with a small but discernible increase in magnitude and variability. For example, the mean lung clearance index increased by 0.36 (95% CI: 0.11-0.62) and variance increased by a multiplicative factor of 2 (95% CI: 1.6-2.5). The results suggest it is reasonable to include MBW data from testing cycles where a sigh occurs during the wash-in phase, but not during washout, of MBW. By recovering data that would otherwise have been excluded, we estimate a boost of about 10% to the final number of acceptable tests and 6% to the number of individuals successfully tested.Entities:
Keywords: Infants; lung function; multiple breath washout; sighing respirations
Year: 2015 PMID: 25847916 PMCID: PMC4425956 DOI: 10.14814/phy2.12347
Source DB: PubMed Journal: Physiol Rep ISSN: 2051-817X
Figure 1Raw data series from MBW tests, showing one example from each of the five scenarios (none, washin-pre, washin-post, washout-pre, washout-post). For each scenario, high-frequency series of the gas flow (Flow) and gas density (MM) measurements are shown.
The distribution of scenarios observed in the BIS project data. In other words, the number of acceptable MBW tests included in this study, split by the presence and location of the sigh in each test
| Scenario (presence/location of sigh) | Number of tests |
|---|---|
| None | 648 |
| Washin-pre | 50 |
| Washin-post | 3 |
| Washout-pre | 56 |
| Washout-post | 10 |
| Total | 767 |
Baseline characteristics and overall MBW outcomes (from acceptable testing cycles without sighs) of the infants included in this study. For baseline characteristics, we show simple summary statistics: the count for sex and the sample mean and standard deviation for the other variables. For the outcome measurements, we show the fitted mean and standard deviation for the ‘none’ scenario (representing tests without sighs)
| Characteristic (at time of testing) | Observed distribution |
|---|---|
| Sex | 123 male, 123 female |
| Weight (kg) | 4.7 (0.7) |
| Height (cm) | 56 (2.6) |
| BMI (kg/m2) | 15 (1.7) |
| Age (days) | 43 (12) |
This choice of summary was motivated by the unbalanced replication structure of the data. A ‘simpler’ summary of the outcome measurements is only available at the expense of excluding much of the data (to get a smaller data set without replicates).
Parameter estimates for the model fit to the BIS project data. Shown are the maximum likelihood estimates (for fixed effects) or the best linear unbiased predictors (BLUPs; for random effects), and the associated 95% confidence intervals. See the Appendix for the definitions of each parameter
| Parameter | LCI | CEV | FRC | MR1 | MR2 |
|---|---|---|---|---|---|
| Mean effects | |||||
| 6.82 (6.76, 6.88) | 0.682 (0.665, 0.699) | 0.0876 (0.0849, 0.0902) | 1.99 (1.97, 2.01) | 7.17 (7.03, 7.31) | |
| −0.135 (−0.278, 0.00813) | −0.00418 (−0.0264, 0.0181) | 0.000503 (−0.00265, 0.00365) | −0.0432 (−0.0802, −0.00627) | −0.336 (−0.616, −0.0564) | |
| 0.362 (0.107, 0.616) | 0.0520 (0.0191, 0.0848) | 0.00226 (−0.00128, 0.00581) | 0.0578 (0.00224, 0.113) | 0.695 (0.205, 1.19) | |
| Variance components | |||||
| 0.296 (0.204, 0.429) | 0.129 (0.115, 0.143) | 0.0193 (0.0174, 0.0214) | 0.113 (0.0929, 0.137) | 0.849 (0.688, 1.05) | |
| 0.186 (0.0759, 0.455) | 0.0288 (0.0107, 0.0774) | 0.00609 (0.00446, 0.00831) | 0.0527 (0.0259, 0.107) | 0.379 (0.161, 0.892) | |
| 0.437 (0.408, 0.469) | 0.0455 (0.0425, 0.0487) | 0.00716 (0.00669, 0.00767) | 0.116 (0.108, 0.124) | 0.890 (0.831, 0.954) | |
| Ratios of residual standard deviation (compared to no sigh) | |||||
| 0.823 (0.601, 1.13) | 1.16 (0.710, 1.89) | 0.535 (0.269, 1.06) | 0.683 (0.425, 1.10) | 0.694 (0.432, 1.11) | |
| 2.04 (1.64, 2.54) | 2.38 (1.84, 3.09) | 1.15 (0.804, 1.66) | 1.57 (1.24, 1.98) | 1.89 (1.51, 2.35) | |
Figure 2Ninety-five percent limits of agreement for the 5 MBW outcome variables, calculated using the fitted model. Comparisons are only shown for the three scenarios for which sufficient data were available to fit the model. For each scenario, two types of limits are shown, comparing different numbers and combinations of replicates (see Methods). Note that the comparisons for the ‘none’ scenario do not involve any sighs.