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. 2019 Mar 26;9:5143. doi: 10.1038/s41598-019-41597-0

Longitudinal development of the airway microbiota in infants with cystic fibrosis

Bushra Ahmed 1,2,, Michael J Cox 1, Leah Cuthbertson 1, Phillip James 1, William O C Cookson 1, Jane C Davies 1,2, Miriam F Moffatt 1, Andrew Bush 1,2
PMCID: PMC6435666  PMID: 30914718

Abstract

The pathogenesis of airway infection in cystic fibrosis (CF) is poorly understood. We performed a longitudinal study coupling clinical information with frequent sampling of the microbiota to identify changes in the airway microbiota in infancy that could underpin deterioration and potentially be targeted therapeutically. Thirty infants with CF diagnosed on newborn screening (NBS) were followed for up to two years. Two hundred and forty one throat swabs were collected as a surrogate for lower airway microbiota (median 35 days between study visits) in the largest longitudinal study of the CF oropharyngeal microbiota. Quantitative PCR and Illumina sequencing of the 16S rRNA bacterial gene were performed. Data analyses were conducted in QIIME and Phyloseq in R. Streptococcus spp. and Haemophilus spp. were the most common genera (55% and 12.5% of reads respectively) and were inversely related. Only beta (between sample) diversity changed with age (Bray Curtis r2 = 0.15, P = 0.03). Staphylococcus and Pseudomonas were rarely detected. These results suggest that Streptococcus spp. and Haemophilus spp., may play an important role in early CF. Whether they are protective against infection with more typical CF micro-organisms, or pathogenic and thus meriting treatment needs to be determined.

Introduction

Respiratory infections begin early in CF even in the absence of symptoms1. More frequent exacerbations before 2 years of age are associated with reduced forced expiratory volume in one second (FEV1) at 5 years2. The pathophysiology of respiratory infections, however, remains poorly understood. Based on conventional culture techniques, organisms such as Staphylococcus aureus and Pseudomonas aeruginosa dominate. In the UK anti-staphylococcal prophylaxis is recommended for all CF infants. 16S rRNA gene sequencing, however, has revealed that the airways of patients with CF harbour rich communities of microbiota including anaerobes such as Veillonella spp.3,4 and the Streptococcus anginosus group5, which may be harmful, or protective by preventing the growth of more virulent organisms. Complex interactions between microorganisms are likely to be important57.

Adult studies have demonstrated an inverse relationship between microbial diversity and disease progression8,9. Whether reduced diversity is causative of end-stage disease or an effect of frequent antibiotics has yet to be determined. Studies in very early childhood may help identify strategies for maintaining lung health into adulthood.

Longitudinal studies of the airway microbiota in CF infants are challenging. Infants cannot spontaneously expectorate sputum and repeated sampling of the lower airway is neither feasible nor ethical. Longitudinal studies of bronchoalveolar lavage fluid (BAL) from CF infants thus far have taken samples every 6 months10 or annually11, thus limiting their ability to relate microbiota changes to symptoms. Nasopharyngeal samples, used to track changes in the airway microbiota in the first year of life, have demonstrated differences between CF infants and controls, with Staphylococcus spp. and Streptococcus spp. more prevalent in CF and Haemophilus spp. and Prevotella spp. more prevalent in controls12. Studies comparing nasopharyngeal sampling with sputum, however, have shown significant differences in both community diversity and composition between these two respiratory samples in children with CF13. Although an imperfect surrogate, oropharyngeal samples have shown better correlation with the lower airway microbiota14,15.

Larger data sets, coupling detailed clinical information with frequent sampling, are needed to better understand the progression of the CF airway microbiota. This present study aimed to describe how the CF infant microbiota develops over the first two years of life.

Results

Patient demographics

Thirty infants with CF were recruited (Table 1) and followed-up for a mean duration of 14 months (SD 5 months) with a median of 35 days (range 1–301 days) between each sample visit. Two patients (7%) were lost to follow up and three patients had only 6 monthly or annual follow up at the Royal Brompton Hospital (RBH). For individual sampling frequency see Supplementary Fig. S1. Due to being opportunistic, sampling frequency varied (Supplementary Fig. S1a) and consequently samples were clustered into age ranges (e.g. 3–4 months etc.) (Supplementary Fig. S1b). Where a child had more than one sample in a given time period, the first sample taken in that range was used.

Table 1.

Patient demographics.

Demographic (N = 30) Median (range) or N (%)
Age at recruitment (in days) 84 (35–235)
Gender (female) 17 (57%)
CFTR Genotype
Homozygous p.Phe508Del 12 (40%)
Heterozygous p.Phe508Del 17 (57%)
Other 1 (3%)
Extra-pulmonary features
Pancreatic insufficiency 22 (73%)
Meconium ileus 1 (3%)
GORD 8 (27%)
Birth history
Mode of delivery
Vaginal delivery 21 (70%)
Caesarian section 6 (20%)
Feeds in infancy
Breastfeeding (exclusively or in combination with formula) 16 (53%)
Exclusively formula fed 14 (47%)
Exacerbations & antibiotic use
Exacerbations 7 (23%)
Prophylactic antibiotics at recruitment 25 (83%)
Bacterial growth on TS culture
P. aeruginosa 7 (23%)
S. aureus 1 (3%)
H. influenzae 1 (3%)
Upper respiratory tract flora 1 (3%)

CFTR – cystic fibrosis transmembrane conductance regulator; GORD - gastro-oesophageal reflux disease; TS - throat swab. P. aeruginosaPseudomonas aeruginosa. S. aureus – Staphylococcus aureus. H. influenzae – Haemophilus influenzae.

Flucloxacillin was the first line prophylaxis in all participants. Seven patients did not tolerate Flucloxacillin and were later changed to Amoxicillin and Clavulanic acid (Co-amoxiclav) prophylaxis. Seven patients (23%) had one pulmonary exacerbation each. P. aeruginosa was the most commonly grown organism (23%, all “scanty” growths [=103 CFU/ml]) leading to treatment with three weeks of oral Ciprofloxacin and one month of Tobramycin nebulisers. Three patients who grew P. aeruginosa also received intravenous (IV) antibiotics.

Examining sequencing quality

Two hundred and forty one throat swabs (TS) were sequenced from thirty patients (median of nine samples/patient [range 1–15 samples]). 14,529,156 high quality reads were obtained.

Operational Taxonomic Units (OTUs) were identified as contaminants if they were abundant in the controls or had been identified as common reagent contaminants in previous literature16. The following organisms were consequently removed: Undibacterium spp., Comamonadaceae, Sediminibacterium spp., Methylobacterium spp., Planomicrobium spp. and a Burkholderia OTU (ID 1931).

Development of the airway microbiota in the first 2 years of life

A median of 48,877 copies of the 16S rRNA gene were obtained per swab (range 20–22,461,921 copies/swab). Bacterial load increased significantly between 12–21 months of age (Parameter estimate = 1.7, z-value = 2.3, standard error = 0.8, P = 0.022).

Streptococcus was the most common genus, representing over half the bacterial community (55% of reads). Other common genera included: Haemophilus (12.5%), Veillonella (7.4%) and Neisseria (5.6%). Staphylococcus spp. and Pseudomonas spp. had low relative abundance (0.1%). Examining trends in relative abundance of the five most common genera from baseline, Streptococcus spp. and Haemophilus spp. began with a similar relative abundance but diverged thereafter (Fig. 1). Streptococcus spp. increased in the first 7–8 months of life before reaching an asymptote (P < 0.001) (Table 2). In contrast, Haemophilus spp. decreased from 3 to 9 months of age and thereafter plateaued (P = 0.034). Granulicatella spp. gradually increased over the first two years of life (P < 0.001 at 19–21 months of age). Veillonella spp. decreased rapidly at 2 months of age (P < 0.001) and then remained at a similar relative abundance whereas the relative abundance of Neisseria spp. fluctuated.

Figure 1.

Figure 1

Changes in the relative abundance of the five most common genera with age in infants with CF. Figure shows the mean relative abundance of Streptococcus spp., Haemophilus spp., Neisseria spp., Veillonella spp. and Granulicatella spp. using a proportional scale where all samples have been rarefied to 600 reads. The error bars represent the standard deviation. An inverse relationship in the relative abundance of Streptococcus spp. and Haemophilus spp. in the first two years of life is observed.

Table 2.

Summary of genus level changes for 5 most common organisms with age.

Organism Age range
(in months)
Estimate z-value SE P-value
Streptococcus 7–8 0.77 3.6 0.22 <0.001
Haemophilus 9–10 −1.1 −2.1 0.50 0.034
Veillonella 2 −1.5 −3.5 0.44 <0.001
Neisseria 7–8 −1.6 −2.9 0.57 0.004
Granulicatella 19–21 2.3 3.7 0.62 <0.001

Shown above is the age range for each of the most common organisms at which the greatest change in relative abundance was seen using a non-linear mixed effects model using a negative binomial error structure controlling for patient. The model fits changes in abundance using a log scale. The mean change in relative abundance from baseline is shown by the “Estimate”. The z-value indicates the number of standard deviations of the estimate from the mean relative abundance at baseline. SE – standard error.

Several OTUs showed a small (r < 0.3) but significant (Padj < 0.05) increase in relative abundance with age, including several Streptococcus (IDs 412, 432 and 1841) and Haemophilus (IDs 2347 and 2369) OTUs (Table 3). One Streptococcus OTU (ID 1897) showed a decrease in relative abundance. Examining individual patient barplots revealed the airway microbiota was highly individual. No consistent changes were seen with changes in symptoms or positive growth on bacterial cultures (Fig. 2).

Table 3.

List of OTUs showing significant (Padj < 0.05) changes in relative abundance with age.

OTU name r value Adjusted P-value
Actinomyces (OTU ID 2665) 0.25 <0.001
Alysiella (OTU ID 2166) 0.23 0.006
Atopobium (OTU ID 1256) 0.21 0.013
Capnocytophaga (OTU ID 812) 0.20 0.016
Enterococcus (OTU ID 1712) 0.20 0.014
Haemophilus (OTU ID 2347) 0.23 0.006
Haemophilus (OTU ID 2369) 0.24 0.003
Lachnoanaerobaculum (OTU ID 251) 0.26 <0.001
Lactobacillus (OTU ID 1586) 0.19 0.025
Lautropia (OTU ID 2253) 0.26 <0.001
Leptotrichia (OTU ID 1059) 0.26 <0.001
Neisseria (OTU ID 2124) 0.19 0.025
Prevotella (OTU ID 657) 0.26 <0.001
Prevotella (OTU ID 692) 0.19 0.020
Rothia (OTU ID 2603) 0.21 0.013
Streptococcus (OTU ID 412) 0.23 0.006
Streptococcus (OTU ID 432) 0.25 0.002
Streptococcus (OTU ID 1841) 0.24 0.004
Streptococcus (OTU ID 1897) −0.19 0.016
Veillonella (OTU ID 1463) 0.24 0.006

Assessed using Spearman rank multiple correlation testing with FDR correction. Several species of Streptococcus spp., Haemophilus spp. and Prevotella spp., as well as other individual species showed a small (r < 0.3) but significant positive correlation with age in the first two years of life.

Figure 2.

Figure 2

Example individual patient barplots illustrating changes with age (in months) in relative abundance of genera, bacterial load (16S rRNA copies per swab), alpha diversity changes (measured by Inverse Simpson’s) and clinical variables. Clinical variables illustrated include: antibiotic administration at the time of sample collection (Intraveous [IV], oral and nebulised [nebs]); bacterial culture results, and presence of respiratory tract symptoms at the time of sample collection. All infants were on prophylactic antibiotics at the time of sample collection. Four individual patient barplots are shown. Little change was seen in bacterial load, the Inverse Simpson’s diversity index or community structure (shown by the barplot) with changes in symptoms, growth of P.aeruginosa or antibiotic treatment.

There was no significant change in alpha diversity with increasing age (species richness, P > 0.05) (Fig. 3a). A significant influence of patient age on community structure was observed (beta diversity, Bray Curtis dissimilarity, r2 = 0.15, P = 0.03) with samples becoming less similar with age (Fig. 3b).

Figure 3.

Figure 3

Changes in diversity with age. (a) Boxplot illustrating changes in alpha diversity measured by species richness for each age group. Using a non-linear mixed effects model with a negative binomial distribution, there was no significant association between richness and age (P > 0.05). (b) Change in beta diversity with age measured using the Bray Curtis dissimilarity score. Mean and standard deviation in Bray Curtis dissimilarity score shown for each age group. This demonstrates an increase in dissimilarity by age (PERMANOVA, r2 = 0.15, P = 0.03).

Alpha and beta diversity testing were repeated to determine whether any clinical variables (full listing in Supplementary Material) influence community structure. Evenness and the Shannon diversity index were significantly higher in patients delivered by Caesarian section than vaginal delivery, although differences were small (e.g. Shannon diversity index median 0.4 [0.1–0.6] for Caesarian section and 0.345 [0.02–0.63] for vaginal delivery, P = 0.045]). Similarly, whilst several clinical variables had a significant influence on beta diversity, the degree of variance attributable was small (<3%) (Table 4). In contrast, 18% of the variation in beta diversity was explained by the patient the sample was from (Bray Curtis, r2 = 0.18, P = 0.001).

Table 4.

Influence of clinical variables on beta diversity.

Clinical variable r2 P-value
Mode of delivery 0.02 0.009*
Type of feeds (breast, bottle or mixed) 0.006 0.264
Homozygous p.Phe508Del 0.02 0.004*
Pancreatic insufficiency 0.009 0.06
Gastro-oesophageal reflux disease 0.005 0.215
Upper respiratory tract symptoms (yes/no) 0.01 0.027*
Lower respiratory tract symptoms (yes/no) 0.004 0.327
Any P. aeruginosa grown 0.01 0.015*
Nebulised antibiotics 0.01 0.039*
Oral antibiotics 0.01 0.006*

*Denotes clinical variables which exerted a significant influence (P < 0.05) on the Bray Curtis dissimilarity score as measured by permutational multivariate ANOVA (PERMANOVA).

Changes in the microbiota with the first exacerbation or growth of P. aeruginosa

Seven patients experienced a pulmonary exacerbation during the study period. Five patients had sequential samples collected prior to, during and following treatment of an exacerbation. Consequently only an exploratory analysis was performed. Samples were compared at:

  • Baseline (B) – within 1 month prior to admission for IV antibiotics

  • Exacerbation (E) – within 48 hours of starting IV antibiotics

  • Treatment (T) – at 10–14 days of IV antibiotics

  • Recovery (R) – within 1 month after completing 2 weeks of IV antibiotics

Overall, there was no significant differences in bacterial load or community composition with the first exacerbation at B, E, T and R timepoints (Supplementary Material, Supplementary Fig. S2).

Seven patients grew P. aeruginosa during the study period. Six had sequential samples prior to, during and after P. aeruginosa growth following treatment. Exploratory analysis of these patients revealed a low relative abundance (<1%) of Pseudomonas spp. at time of P. aeruginosa growth on culture. There was a significant difference in beta diversity only with growth of P. aeruginosa (Bray Curtis dissimilarity: r2 = 0.135, P = 0.036) (Supplementary Material, Supplementary Fig. S3).

Discussion

In this study we have shown that the airway microbiota in CF infants is highly individual and develops gradually over the first two years of life. No relationship between age and alpha (within sample) diversity of the airway microbiota was found. A pronounced effect of age was however seen on beta (between sample) diversity, a measure of community nestedness and turnover, with 15% of variance attributed to the age of the patient with an increase in dissimilarity seen with age. This suggests that the oropharyngeal microbiota is less homogenous with age in infants with CF. Similarly, bacterial load increased between 12 and 21 months of age. This suggests there may be an accrual of organisms in the first two years of infancy although the prognostic significance of this will only be known through follow-up.

Streptococcus spp. and Haemophilus spp. were the most common genera present in the first two years of life (55.0% and 12.5% of total reads respectively). These high detection rates by sequencing were not reflected in the bacterial culture results and neither genera are thought to be particularly important clinically in CF. This confirms that bacterial cultures may fail to identify organisms present in the airway microbiota, even when they are highly abundant17. This has previously been demonstrated for the Streptococcus anginosus group at exacerbation18. Streptococcal species are often dismissed as “upper respiratory tract flora”, even when detected, but only one participant grew “upper respiratory tract flora” during this present study, so this is unlikely to be the explanation for the findings.

Over the first 2 years of life, trends in the relative abundance of Streptococcus spp. and Haemophilus spp. appear to have an inverse relationship: as the relative abundance of Streptococcus spp. increased in the first 9 months of life, the relative abundance of Haemophilus spp. decreased. Thus Streptococcus spp. and Haemophilus spp. may have an antagonistic relationship in the airways of CF infants. It is interesting to note that studies of the nasopharyngeal microbiota in CF infants have illustrated a higher relative abundance of Streptococcus spp. in CF and Haemophilus spp. in controls19. In vitro and when co-cultured, during its stationary phase of growth planktonic Streptococcus pneumoniae outcompetes Haemophilus influenzae, particularly, in low pH environments20. A pig model of CF lung disease has demonstrated that airway surface liquid (ASL) is more acidic in CF due to defective bicarbonate transport than in those with normal CFTR function resulting in reduced bacterial killing21. It is possible therefore, that in the airways of CF infants, low ASL pH creates an environment favouring overgrowth of Streptococcus spp. over Haemophilus spp. Communities with a higher relative abundance of Streptococcus spp. have been associated with less airway inflammation in CF measured by lower total cell counts and fewer neutrophils in BAL22. Cellular analysis could not be performed in this study to explore the relationship between the microbiota and airway inflammation as all our samples were immediately frozen on dry ice to prevent changes in the microbiota23, thus precluding cellular and cytokine analysis. Further data are required to explore this as well as determining whether the increase in Streptococcus species may pave the way for infection with more virulent organisms.

More commonly identified on bacterial cultures in children with CF, Staphylococcus spp. and Pseudomonas spp. had very low relative abundance in the microbiota in the first two years of life. However, it should be noted that all the children studied received prophylactic anti-staphylococcal antibiotics throughout the study period in accordance with UK CF Trust Guidelines24. It is possible that the low levels of Staphylococcus spp. seen reflect the suppression of Staphylococcus spp. growth due to this prophylaxis, the effects of which on the airway microbiota are uncertain.

Similarly, the influence of anti-staphylococcal prophylaxis on the relative abundance of Streptococcus spp. is unclear. Suppression of Staphylococcus spp. growth through use of flucloxacillin may create an environment which enables Streptococcus spp. to thrive. A higher relative abundance of Staphylococcus spp. was demonstrated in one cross-sectional study from Australia comparing 20-year old historical BAL samples in thirteen infants with CF not on antibiotic prophylaxis with nine control infants being investigated for stridor25. However, examining the composition of the microbiota of individual patients in this Australian cohort, Streptococcus spp. was also one of the most common organisms present in the majority of stable infants with CF, often in greater abundance than Staphylococcus spp. Furthermore, a comparison of BAL from 32 infants with CF on prophylaxis with those not on prophylaxis from Australia and USA respectively did not demonstrate an association between prophylaxis use and the relative abundance of specific genera, with the exception of Fusobacterium spp., which was increased in those not on prophylaxis26. A large cross-sectional comparison of BAL from 146 children and adults with CF from USA who were not on prophylaxis demonstrated that Streptococcus spp. was the most abundant organism in those under 2 years of age and decreased with age, similar to the findings in this study22. Thus, Streptococcus spp. appears to be a dominant organism in the airways of infants with CF regardless of prophylaxis use or sampling method (BAL or TS) and its role in CF lung disease warrants further exploration.

Pseudomonas spp. was an uncommon genus present in the samples taken from patients at the time of P. aeruginosa growth (relative abundance of 0.1%). It is highly unlikely that this represents an error in sequencing as Pseudomonas spp. was readily sequenced from the mock communities included in each sequencing run. This, however, most likely reflects the high sensitivity of bacterial cultures for isolating P. aeruginosa, even when it is present in small numbers and the success of clinical microbiology protocols in actively seeking to identify P. aeruginosa when present. It may also reflect the ability of P. aeruginosa to outgrow other organisms when co-cultured, highlighting the potential lack of bias when performing 16S rRNA gene sequencing to analyse the airway microbiota. Additionally, in this study overgrowth of P. aeruginosa on samples for culture independent analysis was limited by rapid freezing of samples at the point of collection.

Pulmonary exacerbations are recognised to be an important determinant of later FEV1 in children with CF2. Whilst no overall changes in the microbiota were seen with exacerbations, this is likely due to the small numbers of patients who met the definition of pulmonary exacerbation used in this study. This limited the analyses to those patients with the most severe exacerbation who required IV antibiotics and may have missed changes in patients with milder symptoms who were treated with oral antibiotics but may still have had significant lung function decline27. Use of oral antibiotics was not included for two reasons. Firstly, because in current clinical practice there is a low threshold for initiating oral antibiotic treatment for even mild respiratory symptoms. Secondly, because this relied on retrospective parental reports of oral antibiotic usage in which there was a lack of confidence. Individual patient barplots, tracking changes in the microbiota with clinical variables, did not identify a bacterial biomarker associated with changes in symptoms necessitating oral or IV antibiotics. Larger sample sizes are needed to explore further changes occurring at pulmonary exacerbation.

An exploratory analysis, as sample size was small, was conducted to investigate whether changes in the microbiota occur prior to first P. aeruginosa growth, at the time of growth and following treatment for P. aeruginosa. Samples at each of these timepoints were compared within patients. Whilst there was no significant difference in bacterial load or alpha diversity, between samples difference in beta diversity was seen. This suggests that there are differences in community structure with growth and treatment of P. aeruginosa but larger studies are needed to explore these findings further.

To our knowledge, this is the largest prospective, longitudinal study of the oropharyngeal microbiota in infants with CF to date with more frequent sampling (median 5 weeks between samples) than previously reported and consequently has resulted in greater opportunity to identify changes in the microbiota with symptoms. At each timepoint, patient sampling was paired with collection of detailed clinical data resulting in several variables, such as mode of delivery, being identified as important factors exerting a small but nonetheless significant influence on the airway microbiota in the first 2 years of life.

There are, however, several important limitations in this study. Firstly, whilst the number of participants studied is larger than previously reported, this study is still relatively small. During the 18-month recruitment period, the families of thirty infants out of thirty-five (86%) diagnosed with CF consented to take part in the research thus obtaining a greater sample size was not realistically feasible. Nevertheless despite the small sample size, changes in the microbiota with age were seen and the additional findings highlight that a further multi-centre study is warranted.

Another limitation of this study is that it was not feasible to include a healthy control group due to practical difficulties in recruiting healthy babies and ensuring regular, frequent attendances for TS collection. It is difficult to know therefore whether changes seen in this study are related to CF disease processes or may be normal changes occurring in infants during the first 2 years of life of infants. Streptococcus and Haemophilus have been found to be common organisms in one study of the nasopharyngeal microbiota in the first two years of life in 60 healthy infants, with notably Haemophilus replacing earlier Staphylococcus-dominated profiles with age28. Whether the healthy oropharyngeal microbiota shows similar changes is unknown.

A common limitation of longitudinal study of the airway microbiota in infants is the difficulty in obtaining frequent lower airway samples. Infants cannot spontaneously expectorate sputum and BAL cannot be performed frequently due to the need for a general anaesthetic. For this reason, TS were used in this study as previous work from our group demonstrated that TS are an imperfect but reasonable surrogate for lower airway sampling (BAL or bronchial brushings) in children with chronic lung diseases15. This included twelve infants with CF from this cohort who had a bronchoscopy between three and five months of age. Nonetheless, microbiota profiles in TS are not identical to lower airway samples. Comparing upper airway samples and BAL from seventeen infants with CF, one study demonstrated comparable relative abundance of Streptococcus spp. but reduced Staphylococcus spp. between oropharyngeal samples and BAL19. Thus, it is possible that the low relative abundance of Staphylococcus spp. seen in this study may be influenced by the sampling method.

Ideally the participants in this study would have been recruited as soon as possible following diagnosis i.e. within the first 1–2 months of life. Whilst many families are admitted for 2 days following diagnosis for education, it was felt to be insensitive to attempt to recruit participants during this highly emotional time. Consequently, participants were therefore recruited at their next routine clinical appointment following their educational visit. This resulted in variability in the age of recruitment. In addition, patient sampling was performed opportunistically during routine clinical appointments by a single operator. Whilst this ensured consistency in sampling, it did sometimes result in missed samples at a given timepoint.

In addition, all of the CF children in this study received anti-staphylococcal prophylaxis which may have impacted community structure. This prophylaxis is not a policy adopted worldwide and the benefit of antibiotic prophylaxis in children with CF is still under debate. Therefore, a future study comparing longitudinal changes in the microbiota between infants with CF on antibiotic prophylaxis with those receiving no prophylaxis, such as in the CF START study (www.cfstart.org.uk), would provide real insights into the role of antibiotic prophylaxis in airway infections in CF.

Despite this, the results of this present study suggest that Streptococcus spp. and Haemophilus spp. may play an important role in early CF. Whether either or both are protective against infection with more typical CF micro-organisms, or pathogenic and thus meriting treatment needs to be determined.

Methods

For additional details see Supplementary Material.

Study subjects

Patients with a diagnosis of CF confirmed on NBS were recruited opportunistically at RBH from December 2012–March 2014. All participants were prescribed prophylactic anti-staphylococcal antibiotics during the study period. The study was approved by the RBH Biomedical Research Unit Advanced Lung Disease Biobank (NRES reference 10/H0504/9) and all methods performed in accordance with the relevant guidelines and regulations. Informed written consent and age-appropriate assent was obtained from parents and children respectively.

Study design

TS and paired clinical information (see Supplementary Material) were prospectively collected during routine clinical appointments for up to two years. An exacerbation was defined as a change in symptoms necessitating an admission to hospital for intravenous (IV) antibiotics (determined by paediatricians blinded to the microbiota results).

Using cotton-tipped sterile swabs TS were collected by a single operator. Technical controls were taken to test for contamination. All samples were immediately frozen on dry ice and stored at −80 °C until DNA extraction. Microbial culture was performed as per standard clinical practice for CF samples in accordance with CF Trust Guidelines29.

16S rRNA gene library preparation and sequencing

DNA was extracted from frozen swab heads using the MP Bio FastDNA Spin Kit for Soil (http://www.mpbio.com). Blank controls with no sample added were taken from each DNA extraction kit to test for contamination16.

PCR of the 16S rRNA V4 region was performed in quadruplicate using a custom indexed forward primer S-D-Bact-0564-a-S-15 (5′ AYT GGG YDT AAA GNG 3′), reverse primer S-D-Bact-0785-b-A-18 (5′ TAC NVG GGT ATC TAA TCC 3′) and a high fidelity Taq polymerase master mix (Q5, New England Biolabs). Primer sequences were based on Klindworth et al.30, with dual-barcoding as per Kozich et al.31 with adaptors from Illumina.

A mock community (Table S1) was included to assess sequencing quality. PCR cycling conditions were: 95 °C for 2 minutes followed by 35 cycles of 95 °C for 20 seconds, 50 °C for 20 seconds and 72 °C for 5 minutes. Amplicons were purified, quantified and equi-molar pooled and the library paired-end sequenced (Illumina MiSeq V2 reagent kit)31 as previously described15.

16S rRNA gene quantitative PCR (qPCR)

Bacterial load was quantified using KAPA BioSystems SYBR Fast qPCR Kit with the same 16S rRNA V4 primers used for sequencing. See Supplementary Material for further details of qPCR conditions.

Analysis

Sequence processing was performed in QIIME (version 1.9.0)32. Community level differences in alpha and beta diversity and OTU level differences were analysed using Phyloseq in R (version 3.2.0).

The sequencing depth differed widely between samples. To maintain power as many sequential samples as possible were retained by using two different approaches: for alpha diversity using mixed effects models, random re-sampling with replacement whilst for beta diversity using permutational multivariate ANOVA using the adonis function in Phyloseq, samples were rarefied to 600 reads. See Supplementary Material for further details of the rationale for this approach.

Non-linear mixed effects modelling using a negative binomial distribution was performed using the glmmADMB package in R33 controlling for patient to assess the relationship between age (clustered into age-ranges) and: (a) bacterial load; (b) alpha diversity, and (c) the relative abundance of the most common genera agglomerated by genus (See Supplementary Material).

Between sample beta-diversity differences (measured using Bray Curtis dissimilarity) were tested using a permutational multivariate ANOVA (adonis)34 blocked by participant study number. OTU level changes were assessed using multiple correlation testing using Spearman’s rank with a false discovery rate (FDR) correction. A P value of less than 0.05 was considered statistically significant. Sequence data is available at the ENA (Accession number: PRJEB26618).

Supplementary information

41598_2019_41597_MOESM1_ESM.doc (356.5KB, doc)

Supplementary material: Longitudinal development of the airway microbiota in infants with cystic fibrosis

Acknowledgements

NIHR Biomedical Research Unit at Royal Brompton and Harefield NHS Foundation Trust. AB was supported by the NIHR Respiratory Disease Biomedical Research Unit at the Royal Brompton and Harefield NHS Foundation Trust and Imperial College London. BA was supported by NIHR. MFM and WOCC were supported by the Asmarley Trust and Wellcome Trust.

Author Contributions

B.A. planned the project, recruited participants, designed and performed experiments, analysed the data and wrote the manuscript; M.J.C. planned the project, designed experiments and analysed the data; L.C. and P.J. designed experiments and analysed the data, W.O.C.C., J.C.D., M.F.M. and A.B. planned the project, designed experiments, analysed the data and wrote the manuscript. All authors reviewed, revised and approved the manuscript for submission.

Data Availability

Sequence data is available at the ENA (Accession Number: PRJEB26618).

Competing Interests

The authors declare no competing interests.

Footnotes

Publisher’s note: Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.

Miriam F. Moffatt and Andrew Bush jointly supervised this work.

Supplementary information

Supplementary information accompanies this paper at 10.1038/s41598-019-41597-0.

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Associated Data

This section collects any data citations, data availability statements, or supplementary materials included in this article.

Supplementary Materials

41598_2019_41597_MOESM1_ESM.doc (356.5KB, doc)

Supplementary material: Longitudinal development of the airway microbiota in infants with cystic fibrosis

Data Availability Statement

Sequence data is available at the ENA (Accession Number: PRJEB26618).


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