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High-Performance Algorithms for Mass Spectrometry-Based Omics

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  • © 2022

Overview

  • Numerous, advanced high-performance computing techniques and algorithms useful for omics practitioners
  • Suitable for both learning at undergraduate and graduate level as well as professional level
  • There is no other book like this anywhere, and this is at the cutting edge of research

Part of the book series: Computational Biology (COBO)

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Table of contents (10 chapters)

Keywords

About this book

To date, processing of high-throughput Mass Spectrometry (MS) data is accomplished using serial algorithms. Developing new methods to process MS data is an active area of research but there is no single strategy that focuses on scalability of MS based methods.

 

Mass spectrometry is a diverse and versatile technology for high-throughput functional characterization of proteins, small molecules and metabolites in complex biological mixtures. In the recent years the technology has rapidly evolved and is now capable of generating increasingly large (multiple tera-bytes per experiment) and complex (multiple species/microbiome/high-dimensional) data sets. This rapid advance in MS instrumentation  must  be matched by equally fast and rapid evolution of scalable methods developed for analysis of these complex data sets. Ideally, the new methods should leverage the rich heterogeneous computational resources available in a ubiquitous fashion in the form of  multicore,  manycore,  CPU-GPU, CPU-FPGA, and IntelPhi architectures.

 

The absence of these high-performance computing algorithms now hinders scientific advancements for mass spectrometry research. In this book we illustrate the need for high-performance computing algorithms for MS based proteomics, and proteogenomics and showcase our progress in developing these high-performance algorithms.

Authors and Affiliations

  • Knight Foundation School of Computing and Information, Florida International University, Miami, USA

    Fahad Saeed

  • Knight Foundation School of Computing and Information Sciences, Florida International University, Miami, USA

    Muhammad Haseeb

About the authors

Fahad Saeed is an Associate Professor with Tenure in the School of Computing and Information Sciences at Florida International University (FIU), Miami FL and is the director of Saeed Lab which is a parallel computing and data science group at FIU. Dr. Saeed’s research interests are at the intersection of machine-learning, high performance computing and real-world applications, especially in computational biology.

Dr. Saeed has published 80+ peer-reviewed research papers in leading peer-reviewed proceedings, and journals, 1 Book Chapter, and edited 4 Conference Proceedings, and 3 special issue journals. His research is supported by highly competitive grants mainly from National Science Foundation (NSF) and National Institutes of Health (NIH). He has secured over US$ 2.7 Million (directly went to his lab) in external research funds as principal investigator and about US$ 2.61 Million overall since 2015. He was awarded the NSF Research Initiation Initiative (CRII) Award bestowed to young and promising scientists in the first two years of their tenure-track position. Most recently he was awarded the NSF Faculty Early Career Development (CAREER) Award which is NSF’s most prestigious award in support of early-career faculty who have the potential to serve as academic role models in research and education. His research has been supported by WMU, NVIDIA, Intel/Altera, National Science Foundation (NSF) and National Institutes of Health (NIH).

Prior to joining FIU, Prof. Saeed was a tenure-track Assistant Professor in the Department of Electrical & Computer Engineering and Department of Computer Science at Western Michigan University (WMU), Kalamazoo Michigan since Jan 2014. He was tenured and promoted to the rank of Associate Professor at WMU in August 2018. Dr. Saeed was a Post-Doctoral Fellow and then a Research Fellow in the Systems Biology Center at National Institutes of Health (NIH), Bethesda MD from Aug 2010 to June 2011 and from June 2011to January 2014 respectively. He received his PhD in the Department of Electrical and Computer Engineering, University of Illinois at Chicago (UIC) in 2010. He has served as a visiting scientist in world-renowned prestigious institutions such as Department of Bio-Systems Science and Engineering (D-BSSE), ETH Zürich, Swiss Institute of Bioinformatics (SIB) and  Epithelial Systems Biology Laboratory (ESBL) at National Institutes of Health (NIH) Bethesda, Maryland.

Dr. Saeed has established a global profile as an Independent Researcher and leader in the field, and has been sought as panelist at the National and International funding agencies. These include serving as panelist at various study sections at National Institutes of Health (NIH), National Science Foundation (NSF), NIH NIDDK, National Nuclear Security Administration (NNSA) Department of Energy (DOE), and as International expert and panelist for Croatian Science Foundation (CSF), University of Queensland Diamantina Institute in Australia, Belgium Fund for Scientific Research (F.R.S.– FNRS), and Natural Sciences & Engineering Research Council of Canada. He has served as the program co-chair of the Bioinformatics and Computational Biology (BICoB) Conference and IEEE International Conference on Bioinformatics and Biomedicine (IEEE BIBM). He is also a founding chair of IEEE Workshop on HPC solutions to Big Data Computational Biology (IEEE HPC-BCB). He also serves on the editorial board of Springer Journal of Network Modeling Analysis in Health Informatics and Bioinformatics, on the Editorial board of Journal of the American Society of Nephrology, and as Associate Editor for Frontiers of Digital Public Health (specialty section of Frontiersin Public Health, Frontiers in ICT and Frontiers in Computer Science). He has served on numerous IEEE/ACM program committees and is peer-reviewer for more than a two dozen journals.

Dr. Saeed is a Senior Member of ACM and also a Senior Member of IEEE. His honorsinclude ThinkSwiss Fellowship (2007,2008), NIH Postdoctoral Fellowship Award (2010), Fellows Award for Research Excellence (FARE) at NIH (2012), NSF CRII Award (2015), WMU Outstanding New Researcher Award (2016), WMU Distinguished Research and Creative Scholarship Award (2018), NSF CAREER Award (2017), and FIU SCIS Excellence in Applied Research Award (2020).

Muhammad Haseeb is a Ph.D. candidate at the Knight Foundation School of Computing and Information Sciences (KFSCIS), Florida International University (FIU). He is also a Graduate Research Assistant at the KFSCIS, FIU working under the supervision of Dr. Fahad Saeed. His doctoral research focuses on the design of novel high performance computing algorithms and techniques for scalable acceleration of computational proteomics analyses on supercomputing machines. Haseeb has worked as an Application Performance Intern at the National Energy Research and Scientific Computing Center (NERSC) at the Lawrence Berkeley National Lab (LBNL) where he developed software for platform-independent (+ Python) GPU-acceleration of ADEPT ExaBiome sequence alignment kernels. He also contributed towards the development of a modular HPC application instrumentation and performance analysis software called Timemory. Prior to his PhD career, Haseeb worked as a senior software engineer at Mentor Graphics Corporation where he contributed towards the development of tracing, profiling, system partitioning, remote processor life cycle management, and inter-processor communication software for MEMF and Nucleus OS.

Bibliographic Information

  • Book Title: High-Performance Algorithms for Mass Spectrometry-Based Omics

  • Authors: Fahad Saeed, Muhammad Haseeb

  • Series Title: Computational Biology

  • DOI: https://doi.org/10.1007/978-3-031-01960-9

  • Publisher: Springer Cham

  • eBook Packages: Computer Science, Computer Science (R0)

  • Copyright Information: The Editor(s) (if applicable) and The Author(s), under exclusive license to Springer Nature Switzerland AG 2022

  • Hardcover ISBN: 978-3-031-01959-3Published: 03 September 2022

  • Softcover ISBN: 978-3-031-01962-3Published: 04 September 2023

  • eBook ISBN: 978-3-031-01960-9Published: 02 September 2022

  • Series ISSN: 1568-2684

  • Series E-ISSN: 2662-2432

  • Edition Number: 1

  • Number of Pages: XVI, 140

  • Number of Illustrations: 4 b/w illustrations, 49 illustrations in colour

  • Topics: Bioinformatics, Mass Spectrometry, Theory of Computation, Computer Science, general

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