| Literature DB >> 30143034 |
K Leigh Greathouse1,2, James R White3, Ashely J Vargas1, Valery V Bliskovsky4, Jessica A Beck1, Natalia von Muhlinen1, Eric C Polley5, Elise D Bowman1, Mohammed A Khan1, Ana I Robles1, Tomer Cooks1, Bríd M Ryan1, Noah Padgett6, Amiran H Dzutsev7, Giorgio Trinchieri7, Marbin A Pineda8, Sven Bilke8, Paul S Meltzer8, Alexis N Hokenstad9, Tricia M Stickrod10, Marina R Walther-Antonio9,11, Joshua P Earl12, Joshua C Mell12, Jaroslaw E Krol12, Sergey V Balashov12, Archana S Bhat12, Garth D Ehrlich12, Alex Valm13, Clayton Deming13, Sean Conlan13, Julia Oh14, Julie A Segre13, Curtis C Harris15.
Abstract
BACKGROUND: Lung cancer is the leading cancer diagnosis worldwide and the number one cause of cancer deaths. Exposure to cigarette smoke, the primary risk factor in lung cancer, reduces epithelial barrier integrity and increases susceptibility to infections. Herein, we hypothesize that somatic mutations together with cigarette smoke generate a dysbiotic microbiota that is associated with lung carcinogenesis. Using lung tissue from 33 controls and 143 cancer cases, we conduct 16S ribosomal RNA (rRNA) bacterial gene sequencing, with RNA-sequencing data from lung cancer cases in The Cancer Genome Atlas serving as the validation cohort.Entities:
Keywords: Lung cancer; Microbiome; Mutation; Squamous cell carcinoma; TP53
Mesh:
Substances:
Year: 2018 PMID: 30143034 PMCID: PMC6109311 DOI: 10.1186/s13059-018-1501-6
Source DB: PubMed Journal: Genome Biol ISSN: 1474-7596 Impact factor: 13.583
Descriptive summary of population samples
| Control lung | NCI-MD study | TCGA study | ||||
|---|---|---|---|---|---|---|
| ImA | HBa | Normal adjacent | Tumor | Normal adjacent | Tumor | |
| ( | ( | ( | ( | ( | ( | |
| Age - mean (SD) | 39.5 (18.8) | 62.6 (7.7) | 65.5 (9.8) | 65.7 (9.9) | 66.9 (9.9) | 66.4 (9.2) |
| < Mean | 18 | 9 | 70 | 63 | 49 | 396 |
| ≥ Mean | 15 | 7 | 74 | 80 | 59 | 578 |
| Unknown | 5 | 128 | ||||
| Gender | ||||||
| M | 25 | 11 | 92 | 87 | 58 | 514 |
| F | 8 | 5 | 52 | 56 | 45 | 355 |
| Unknown | 5 | 105 | ||||
| Raceb | ||||||
| EA | 27 | 14 | 86 | 95 | 90 | 650 |
| AA | 5 | 2 | 58 | 48 | 8 | 42 |
| Other | 59 | |||||
| Unknown | 1 | 10 | 223 | |||
| Smoking statusb | ||||||
| Ever | 14 | 122 | 127 | 90 | 768 | |
| Former | 11 | 44 | 40 | 71 | 551 | |
| Current | 3 | 64 | 70 | 19 | 217 | |
| Never | 2 | 9 | 7 | 7 | 120 | |
| Unknown | ||||||
| Stage | ||||||
| I (a/b) | 69 | 52 | 454 | |||
| II (a/b) | 44 | 28 | 231 | |||
| III (a/b) | 11 | 19 | 155 | |||
| IV | 2 | 3 | 29 | |||
| Unknown | 16 | 6 | 105 | |||
| Histology | ||||||
| AD | 67 | 58 | 485 | |||
| SCC | 47 | 50 | 489 | |||
| Other | 29 | |||||
| TP53 mutation status | ||||||
| Wild-type (AD/SCC) | 32/11 | 125/59 | ||||
| Mutant (AD/SCC) | 29/35 | 104/118 | ||||
| Unknown | 36 | 568 | ||||
aTwo cases removed due to emphysema
bSmoking status and race self-reported
ImA immediate autopsy, HB hospital biopsy
Fig. 1The bacterial profile and diversity of the lung microbiome in non-diseased and cancerous tissues. a 16S rRNA gene sequences from non-diseased lung (ImA or HB; top), non-tumor adjacent (NT) and tumor (T) assigned to OTUs or proportional abundance of metatranscriptomic sequences (TCGA; bottom) at the phylum level showing the most dominant taxa for each tissue type. b Alpha diversity between non-diseased lung tissue (ImA and HB) non-tumor adjacent (NT) and tumors from 16S rRNA gene sequencing using Chao1 (richness) or inverse Simpson index. *p < 0.05, **p < 0.01. Test of significance is Mann–Whitney. PCoA plots from NCI-MD study of tissue microbiome beta-diversity colored by (c) all tissue types, (d) cancer cases, and (e) histological subtype; and from TCGA study of (f) cancer cases and (g) histological subtype. ImA immediate autopsy, HB hospital biopsy
Fig. 2Taxonomic consortia differentiating smoking status and histological subtype of lung cancer. a Heat maps showing top differentially abundant genera (NCI-MD) (Mann–Whitney p value < 0.05; * overlapping between NCI-MD and TCGA) between AD and SCC lung cancer tissue sorted by histological subtype and smoking status. b Heat map showing genera (TCGA) that that are differentially abundant between AD and SCC (Mann–Whitney FDR corrected p < 0.05), sorted by histological subtype and smoking. c Forest plot of odds ratios for genera in NCI-MD dataset that are significantly associated with SCC compared to AD in tumors (adjusted odds ratio p < 0.05). d Forest plot of odds ratios for species in the TCGA dataset that are significantly associated with SCC vs AD in tumors (adjusted odds ratio FDR corrected p < 0.05)
Fig. 3Relative abundance of Acidovorax stratified by smoking status and histological subtype. a Relative abundance of Acidovorax stratified by smoking status in the NCI-MD (left) and TCGA (right) datasets. b Relative abundance of Acidovorax in never, former, and current smokers stratified by histological subtype in the NCI-MD (left) and TCGA (right) datasets. c Representative FISH images of tumor tissue sections using fluorescent probe specific to Acidovorax. d Quantification of Acidovorax probe reactivity (10 fields; at least 300 cells counted) showing percentage (%) of cells with perinuclear probe reactivity from two lung cancer cases (15,713 – SCC/current smoker; 20,172 – SCC/former smoker). *p < 0.05, **p < 0.01, ****p < 0.0001. Tests of significance are Mann–Whitney or Kruskal–Wallis and Dunn’s multiple comparisons test. NS non-significant
Fig. 4Mutations in TP53 associated with abundance of taxonomic signature specific to squamous cell lung tumors. a Heat map of genus-level abundance in NCI-MD data colored by mutation status, TP53 wild-type or mutated, smoking, and histological subtype in all lung tumor samples. b Heat map of genus-level abundance from TCGA data in all tumors colored by mutation status, TP53 wild-type or mutated, smoking, and histological subtype. c, d Fold change in mean abundance of SCC-associated taxa in NCI-MD or TCGA tissues comparing TP53 mutated to wild-type. Test of significance is Mann–Whitney. Fold change among all taxa in (d) are significant after FDR correction < 0.01. (NCI-MD; SCCwt = 11, SCCmut = 35 and TCGA; SCCwt = 59, SCCmut = 118)