| Literature DB >> 35581637 |
G P Ralli1, R D Carter1,2,3, F M Buffa1, J D Fenwick4, D R McGowan5,6, W-C Cheng1, D Liu1, E J Teoh1,7,8, N Patel7, F Gleeson1,7, A L Harris1,8, S R Lord1,8.
Abstract
BACKGROUND: PET imaging of 18F-fluorodeoxygucose (FDG) is used widely for tumour staging and assessment of treatment response, but the biology associated with FDG uptake is still not fully elucidated. We therefore carried out gene set enrichment analyses (GSEA) of RNA sequencing data to find KEGG pathways associated with FDG uptake in primary breast cancers.Entities:
Keywords: Breast cancer; FDG-PET; GSEA; Glycolysis/gluconeogenesis; Immune pathways; RNA sequencing
Mesh:
Substances:
Year: 2022 PMID: 35581637 PMCID: PMC9115966 DOI: 10.1186/s13058-022-01529-9
Source DB: PubMed Journal: Breast Cancer Res ISSN: 1465-5411 Impact factor: 8.408
Patient and tumour characteristics
| Total recruited | 41 |
| With PET data available | 36 |
| With PET and mRNA sequencing data available | 31 |
| Analysed | 30 |
| ER positive/negative | 22/8 |
| HER2 positive/negative | 5/25 |
| Triple negative (ER negative and HER2 negative) | 8 |
| Ductal/lobular/mixed carcinoma | 24/4/2 |
| Grade 1/2/3 | 1/15/14 |
| Age at study entry (years) | 50 (34–67) |
| Tumour size on MRI scan (mm) | 48 (30–118) |
| Body mass index | 26.2 (19.6–44.9) |
Fig. 1Overview of the FDG-PET imaging data and kinetic analysis. a Schematic diagrams of compartment models of FDG uptake. b Arterial and tumour time-activity-curves obtained from a patient’s dynamic FDG-PET scan. c Coronal maximum intensity projection through the patient’s static FDG-PET scan collected after dynamic imaging. The primary tumour lies at the centre of the dashed circle. Activity is also pronounced in the brain, heart kidneys and bladder. The static scan comprised data acquired at several bed positions whereas the dynamic scan comprised sequential images collected at one bed position. d Correlations between SUV, TBR and kinetic model flux-constants. e Interquartile ranges of model parameters
Fig. 2Pearson-based associations between KEGG pathways and image measures. a Plot showing pathways significantly associated with each imaging measure. The associated pathways are shaded by their normalised enrichment scores (NES) and GLYC-GLUC and immune-related pathways highlighted by green and orange arrows. b Numbers of pathways associated with model flux-constants and SUV and TBR measures. c Cumulative distribution function (CDF) showing numbers of pathways (false positives) associated with permuted SUVmax values in 100 synthetic datasets
Fig. 3Overlaps between leading-edge genes belonging to pathways significantly associated with Patlak K according to Pearson-based scores. Each column shows in red genes belonging to a particular pathway. The yellow ellipse picks out 17 genes of the human leucocyte antigen group which contribute to 11 of the pathways
Fig. 4Pearson r coefficients of correlations between image measures and antigen presentation and processing pathway genes. a Heatmap of correlations between the image measures and gene expression. b Violin plots of r values for Patlak K and SUVmax
Fig. 5Spearman-based associations between KEGG pathways and image measures. a Plot showing pathways significantly associated with each imaging measure. The associated pathways are shaded by their normalised enrichment scores (NES) and GLYC-GLUC and immune-related pathways highlighted by green and orange arrows. b Numbers of pathways associated with model flux-constants and SUV and TBR measures. c Cumulative distribution function (CDF) showing numbers of pathways (false positives) associated with permuted SUVmax values in 100 synthetic datasets