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Flow

Bioinformatics software for analyzing and visualizing multiomic data, supporting various sequencing and array technologies.

Solution by Partek
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Overview

Partek Flow software is designed for the analysis and visualization of next-generation sequencing and large-scale multiomic data. It features an intuitive interface, robust statistical algorithms, and information-rich visualizations, making it accessible to researchers of all skill levels. The software supports a wide range of applications, including bulk RNA-Seq, single-cell analysis, spatial transcriptomics, ChIP-Seq, ATAC-Seq, DNA-Seq, metagenomics, and microarray data.

Key features of Partek Flow include:

  • Intuitive Interface: Analyze multiomic datasets without needing advanced bioinformatics skills.
  • Powerful Statistics: Utilize industry-standard statistical methods for reliable results.
  • Interactive Visualizations: Create information-rich, publication-ready visualizations to explore data effectively.

The software is compatible with scalable DRAGEN secondary analysis and offers flexible installation options, catering to individual users, core laboratories, and large enterprises. It can be deployed on-premises or in the cloud, supporting technologies such as microarray and sequencing.

Partek Flow facilitates the exploration of complex biological relationships and pathways, aiding in the discovery of meaningful biological insights. It also supports proteomics analysis to identify potential biomarkers for early disease detection and prognosis.

Subscription options include Lab and Enterprise Editions, with features like RNA-Seq, ChIP-Seq/ATAC-Seq, DNA-Seq, metagenomics, and microarray analysis. Additional tools for single-cell and spatial analysis, as well as pathway analysis, can be added on. The software offers secure data storage and management, with options for Illumina-hosted or customer-hosted environments.

Meta

Category
Genomic Data Analysis
Field(s)
Omics & Data Analysis
Target user(s)
Bioinformatician / Data Scientist
Tag(s)
Genomics / NGS Analysis