KOR

e-Article

CRAM-Seq: Accelerating RNA-Seq Abundance Quantification Using Computational RAM
Document Type
Periodical
Source
IEEE Transactions on Emerging Topics in Computing IEEE Trans. Emerg. Topics Comput. Emerging Topics in Computing, IEEE Transactions on. 10(4):2055-2071 Jan, 2022
Subject
Computing and Processing
Sequential analysis
Biology
Throughput
Random access memory
RNA
Magnetic tunneling
Genomics
Abundance
accelerator
CRAM
quantification
RNA- seq
SHE-MTJ
spintronics
Language
ISSN
2168-6750
2376-4562
Abstract
RNA Sequence (RNA-Seq) abundance quantification is an important application in different fields of genomic studies, e.g., analysis offunctionally similar genes in a biological sample. This application depends on the availability of high volume of sequence data for high accuracy abundance estimation, which is made possible by next generation sequencing platforms. Large scale data processing requirements of this quantification application push conventional computing systems to their limits due to excessive data movement required between processing and memory elements. Processing-In-memory presents a viable solution to this drawback, through in-situ processing of the genomic data. In this paper, we present CRAM-Seq, an accelerator for RNA-Seq abundance quantification based on Computational RAM (CRAM) – an in-memory processing substrate capable of high degree of parallel processing with very low energy consumption. Through hardware/software co-design, we demonstrate that CRAM-Seq outperforms a commonly used state-of-the-art software abundance quantification algorithm, Kallisto – in terms of throughput and energy efficiency, while being highly scalable.