LRP10, PGK1 and RPLP0: Best Reference Genes in Periprostatic Adipose Tissue under Obesity and Prostate Cancer Conditions.
Jesús M Pérez-GómezFrancisco Porcel-PastranaMarina De La Luz-BorreroAntonio J Montero-HidalgoEnrique Gómez-GómezAura D Herrera-MartínezRocío Guzmán-RuizMaría M MalagónManuel D GaheteRaul Miguel LuquePublished in: International journal of molecular sciences (2023)
Obesity (OB) is a metabolic disorder characterized by adipose tissue dysfunction that has emerged as a health problem of epidemic proportions in recent decades. OB is associated with multiple comorbidities, including some types of cancers. Specifically, prostate cancer (PCa) has been postulated as one of the tumors that could have a causal relationship with OB. Particularly, a specialized adipose tissue (AT) depot known as periprostatic adipose tissue (PPAT) has gained increasing attention over the last few years as it could be a key player in the pathophysiological interaction between PCa and OB. However, to date, no studies have defined the most appropriate internal reference genes (IRGs) to be used in gene expression studies in this AT depot. In this work, two independent cohorts of PPAT samples ( n = 20/ n = 48) were used to assess the validity of a battery of 15 literature-selected IRGs using two widely used techniques (reverse transcription quantitative PCR [RT-qPCR] and microfluidic-based qPCR array). For this purpose, ΔCt method, GeNorm (v3.5), BestKeeper (v1.0), NormFinder (v.20.0), and RefFinder software were employed to assess the overall trends of our analyses. LRP10 , PGK1 , and RPLP0 were identified as the best IRGs to be used for gene expression studies in human PPATs, specifically when considering PCa and OB conditions.
Keyphrases
- adipose tissue
- insulin resistance
- prostate cancer
- gene expression
- high fat diet
- dna methylation
- case control
- metabolic syndrome
- radical prostatectomy
- type diabetes
- genome wide
- high fat diet induced
- weight loss
- public health
- high throughput
- healthcare
- endothelial cells
- systematic review
- high resolution
- weight gain
- skeletal muscle
- working memory
- oxidative stress
- palliative care
- image quality
- transcription factor
- physical activity
- genome wide identification
- single cell
- social media
- magnetic resonance
- dual energy
- risk assessment
- young adults
- genome wide analysis
- contrast enhanced
- data analysis
- positron emission tomography