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Identifying improved sites for heterologous gene integration using ATAC-seq

dataset
posted on 2024-06-11, 06:24 authored by Koch Institute
We analyzed the chromatin accessibility and nucleosome positioning by ATAC-seq of both null and transgene-expressing strains of Komagataella phaffii (Pichia pastoris) under different growth conditions. These data enabled identification of the features that determine performance of various integration sites for transgene expression. Understanding chromatin accessibility and nucleosome positioning can provide further clarity into gene regulation and expression broadly in this organism. Overall design: ATAC-seq was performed on Komagataella phaffii NRRL Y-11430 after 24h growth on glycerol-containing medium as well as after an additional 24h growth on methanol-containing medium. Four strains were analyzed: 1 null (wild-type) strain and 3 transgene-expressing strains with modified pPICZA (Invitrogen) vectors integrated upstream of the AOX1, DAS2, or OLE1 genes. For all samples, accessibility peaks and nucleosome positioning were determined.

History

Data contact name

BioProject Curation Staff

Publisher

National Center for Biotechnology Information

Temporal Extent Start Date

2020-07-13

Theme

  • Non-geospatial

ISO Topic Category

  • biota

Ag Data Commons Group

  • ARS Culture Collection

National Agricultural Library Thesaurus terms

epigenetics; genome; genomics

Pending citation

  • No

Public Access Level

  • Public

Accession Number

PRJNA645901

Preferred dataset citation

It is recommended to cite the accession numbers that are assigned to data submissions, e.g. the GenBank, WGS or SRA accession numbers. If individual BioProjects need to be referenced, state that "The data have been deposited with links to BioProject accession number PRJNA645901 in the NCBI BioProject database (https://www.ncbi.nlm.nih.gov/bioproject/)."

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