A genome scale transcriptional regulatory model of the human placenta.
Alison G PaquetteKylia AhunaYeon Mi HwangJocelynn R PearlHanna LiaoPaul ShannonLeena KadamSamantha LapehnMatthew BucherRyan T RoperCory C FunkJames W MacDonaldTheo K BammlerPriyanka BaloniHeather BrockwayW Alex MasonNicole R BushKaja Z LewinnCatherine J KarrJohn A StamatoyannopoulosLouis J MugliaHelen N JonesYoel SadovskyLeslie MyattSheela SathyanarayanaNathan D PricePublished in: Science advances (2024)
Gene regulation is essential to placental function and fetal development. We built a genome-scale transcriptional regulatory network (TRN) of the human placenta using digital genomic footprinting and transcriptomic data. We integrated 475 transcriptomes and 12 DNase hypersensitivity datasets from placental samples to globally and quantitatively map transcription factor (TF)-target gene interactions. In an independent dataset, the TRN model predicted target gene expression with an out-of-sample R 2 greater than 0.25 for 73% of target genes. We performed siRNA knockdowns of four TFs and achieved concordance between the predicted gene targets in our TRN and differences in expression of knockdowns with an accuracy of >0.7 for three of the four TFs. Our final model contained 113,158 interactions across 391 TFs and 7712 target genes and is publicly available. We identified 29 TFs which were significantly enriched as regulators for genes previously associated with preterm birth, and eight of these TFs were decreased in preterm placentas.
Keyphrases
- transcription factor
- genome wide identification
- genome wide
- preterm birth
- gene expression
- dna methylation
- endothelial cells
- copy number
- dna binding
- low birth weight
- gestational age
- genome wide analysis
- poor prognosis
- single cell
- bioinformatics analysis
- induced pluripotent stem cells
- pluripotent stem cells
- big data
- deep learning
- oxidative stress
- preterm infants
- drug induced
- long non coding rna
- hyaluronic acid