Keywords

Molecular Data, Cloud Computing, Cancer Genome Atlas, RNA Sequencing, Cancer Cell Line Encyclopedia

Abstract

Public compendia of sequencing data are now measured in petabytes. Accordingly, it is infeasible for researchers to transfer these data to local computers. Recently, the National Cancer Institute began exploring opportunities to work with molecular data in cloud-computing environments. With this approach, it becomes possible for scientists to take their tools to the data and thereby avoid large data transfers. It also becomes feasible to scale computing resources to the needs of a given analysis. We quantified transcript-expression levels for 12,307 RNA-Sequencing samples from the Cancer Cell Line Encyclopedia and The Cancer Genome Atlas. We used two cloud-based configurations and examined the performance and cost profiles of each configuration. Using preemptible virtual machines, we processed the samples for as little as $0.09 (USD) per sample. As the samples were processed, we collected performance metrics, which helped us track the duration of each processing step and quantified computational resources used at different stages of sample processing. Although the computational demands of reference alignment and expression quantification have decreased considerably, there remains a critical need for researchers to optimize preprocessing steps. We have stored the software, scripts, and processed data in a publicly accessible repository (https://osf.io/gqrz9).

Original Publication Citation

Tatlow PJ† and Piccolo SR. A cloud-based workflow to quantify transcript-expression levels in public cancer compendia. Scientific Reports, 2016; 6:39259. doi:10.1038/srep39259 [link]; highlighted in Science Translational Medicine

Document Type

Peer-Reviewed Article

Publication Date

2016-12-16

Publisher

Nature Research

Language

English

College

Life Sciences

Department

Biology

University Standing at Time of Publication

Associate Professor

Included in

Cell Biology Commons

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