2024

106. Umair Mohammed, and Fahad Saeed, “Communication Evaluation of a Wireless 4-Channel Wearable EEG for BCI and Health Applications”, submitted 2024

105. Maryam, Serdar Bozdag, and Fahad Saeed, “PVTAD: Alzhimers disease diagnosis using pyramid vision transformer applied to white matter of T1-weighted structural MRI data”, submitted 2024 

104. Usman Tariq, and Fahad Saeed, “DeepAtles: Deep Attention-based Multitasking Network for Predicting Peptide Properties from Mass Spectrometry Data”, submitted 

2023

103. Fahad Almuqhim, Fahad Saeed, “ASD-GResTM: Deep Learning Framework for ASD classification using Gramian Angular Field”, Proceeding of IEEE International Conference on Bioinformatics and Biomedicine (BIBM), pp. 2837-2843, Dec 2023 IEEE Xplore

102. Umair Mohammed, Fahad Saeed, “Energy Efficient AI/ML based Continuous Monitoring at the Edge: ECG and EEG Case Study”, Proceeding of IEEE International Conference on Bioinformatics and Biomedicine (BIBM), pp. 3313-3320, Dec 2023 IEEE Xplore

101. Sumesh Kumar, Fahad Saeed, “Systems and methods for matching mass spectrometry data with a peptide database”, US Patent # 11,842,799 Dec 12, 2023 US Patent

100. Mohammad Al Olaimat, Jared Martinez, Fahad Saeed, Serdar Bozdag, “PPAD: A deep learning architecture to predict progression of Alzheimer’s disease”, Oxford Bioinformatics , Volume 39, Issue Supplement 1, June 2023, Pages i149–i157, July 2023 Oxford

99. Oswaldo Artiles, Zeina Al Masry, and Fahad Saeed* , “Confounding effects on the performance of machine learning analysis of static functional connectivity computed from rs-fMRI multi-site data”, pages 1-18, Springer Neuroinformatics, August 2023 Springer

98. Muhammad Haseeb, and Fahad Saeed*, “GPU-Acceleration of the Distributed-Memory Database Peptide Search of Mass Spectrometry Data “, Nature Scientific Reports, Vol 12, Article 18713, 2023 Nature

97. Leyva, Dennys, Usman Tariq, Muhammad, Jaffe, Rudolf, Fahad Saeed, Francisco Fernández-Lima, “Description of Dissolved Organic Matter transformational networks at the molecular level”, Vol 57, No. 6, pages 2672-2681, ACS Journal of Environmental Science & Technology, Jan 2023 America Chemical Society (ACS)

2022

96. Tianren Yang, Mai Al-Duailij, Serdar Bozdag, and Fahad Saeed* , “Classification of Autism Spectrum Disorder using Graph Convolutional Network and Graphlet Counting”, 2nd International Workshop on Multi-Modal Medical Data Analysis, Proceedings of IEEE International Conference on Big Data (IEEE BigData 2022), Osaka Japan, Dec 17-20 2022.

95. Fahad Saeed* , and Muhammad Haseeb, “High-Performance Algorithms for Mass Spectrometry-Based Omics”, ISBN-10: 3031019598, ISBN-13: 978-3031019593, Springer Nature Switzerland AG; 1st edition (September 3, 2022). Springer (Book: 10 Chapters, 156 pages)

94. Dennys Leyva, Rudolf Jaffé, Jessica Courson, John S. Kominoski, Muhammad Usman Tariq, Fahad Saeed and Francisco Fernandez-Lima “Molecular level characterization of DOM along a freshwater-to-estuarine coastal gradient in the Florida Everglades “, Springer Aquatic Sciences, volume 84, Article number: 63, Oct 2022 Springer

93. Umair Muhammad, and Fahad Saeed* SPERTL: Epileptic Seizure Prediction using EEG with ResNets and Transfer Learning“, Proceedings of IEEE International Conference on Biomedical and Health Informatics (BHI), Ioannina Greece, 27-30 September 2022.

92. Fahad Saeed*, and Fahad Almuqhim, “Systems And Methods For Diagnosing Autism Spectrum Disorder Using fMRI Data“, U.S. Patent US 11379981 B1, Issued July 5th 2022 Local Copy | US Patent

91. Fahad Saeed*, and Muhammad Haseeb, “Systems and methods for peptide identification“, U.S. Patent 11,309,061 B1, Issued April 19, 2022 Local Copy | US Patent

90. Aledhari, Mohammed, Rehma Razzak, Basheer Qolomany, Ala Al-Fuqaha, and Fahad Saeed. “Biomedical IoT: Enabling Technologies, Architectural Elements, Challenges, and Future Directions.” IEEE Access (2022). IEEE

89. Leyva, Dennys, Muhammad Usman Tariq, Rudolf Jaffé, Fahad Saeed*, and Francisco Fernandez Lima. “Unsupervised Structural Classification of Dissolved Organic Matter Based on Fragmentation Pathways.” Environmental science & technology (2022). ACS

88. Fahad Saeed*, and Muhammad Usman Tariq. “Systems and methods for measuring similarity between mass spectra and peptides.” U.S. Patent 11,251,031, issued February 15, 2022. Local Copy | US Patent

87. Fahad Saeed*, Muhammad Haseeb, and SS Iyengar, “Communication lower-bounds for distributed-memory computations for mass spectrometry-based omics data”, Journal of Parallel and Distributed Computing (JPDC), Volume 161, Pages 37-47, March 2022 arXiv | JPDC

2021

86. Oswaldo Artiles and Fahad Saeed*, “A Multi-Factorial Assessment of Functional HumanAutistic Spectrum Brain Network Analysis”, International workshop on Reproducibility and Robustness in Biological Data Analysis (RROBIN), Proceedings of IEEE InternationalConference on Bioinformatics and Biomedicine (BIBM), December 9-12, 2021 IEEE | PubMed

85. Khandaker Mamun Ahmed, Taban Eslami, Fahad Saeed*, and M. Hadi Amini, “Deep-COVIDNet: Deep Convolutional Neural Network for COVID-19 Detection from Chest Ra-diographic Images”, International workshop on Machine Learning for Biological and MedicalImage Big Data, Proceedings ofIEEE International Conference on Bioinformatics and Biomedicine(BIBM), December 9-12, 2021 IEEE Xplore | PubMed

84. Muhammad Usman Tariq, Dennys Leyva, Francisco Fernandez Lima, and Fahad Saeed*, “Graph Theoretic Approach for the Analysis of Comprehensive Mass-Spectrometry (MS/MS) Data of Dissolved Organic Matter“, International Workshop on Biological Network Analysis and Integrative Graph-Based Approaches (IWBNA), Proceedings of IEEE International Conference on Bioinformatics and Biomedicine (BIBM), December 9-12, 2021 IEEE Xplore | PubMed

83. Usman Tariq, and Fahad Saeed* , “SpeCollate: Deep cross-modal similarity network for mass spectrometry data based peptide deductions“, PLoS ONE, Vol. 16, Issue 10, Oct 2021 PubMed | PLoS

82. Muhammad Haseeb, and Fahad Saeed* , “High performance computing framework for tera-scale database search of mass spectrometry data“, Nature Computational Science, Vol. 1, 550–561, August 2021 Arxiv | PubMed | Technical Report | Nature

81. Oswaldo Artiles, and Fahad Saeed*, “TurboBC: A Memory Efficient and Scalable GPU Based Betweenness Centrality Algorithm in the Language of Linear Algebra“, International Workshop on Deployment and Use of Accelerators (DUAC), Proceedings of 50th International Conference on Parallel Processing (ICPP), Chicago IL, August 2021 PubMed | ACM Digital Library

80. Umair Muhammad, and Fahad Saeed*, “Simulation Testbed for Evaluating Distributed Querying and Searching of Mass Spectrometry Big Data in a Network-based Infrastructure“, Proceedings of 7th IEEE International Conference on Big Data Service and Applications (IEEE BIGDATASERVICE), August 2021 IEEE Xplore

79. Umair Muhammad, and Fahad Saeed*, “Search Feasibility in Distributed MS-Proteomics Big Data“, Workshop on High Performance Computing, Big Data Analytics and Integration for Multi-Omics Biomedical Data (HPC-BOD), Proceedings of 12th ACM Conference on Bioinformatics, Computational Biology, and Health Informatics (ACM BCB), August 2021 (extended abstract) ACM Digital Library 

78. Sumesh Kumar, and Fahad Saeed*, “Real-time peptide identification from high-throughput Mass-spectrometry data“, Workshop on High Performance Computing, Big Data Analytics and Integration for Multi-Omics Biomedical Data (HPC-BOD), Proceedings of 12th ACM Conference on Bioinformatics, Computational Biology, and Health Informatics (ACM BCB), August 2021 (extended abstract) ACM Digital Library

77. Sumesh Kumar, and Fahad Saeed*, “Communication-optimized micro-architecture to compute Xcorr scores for peptide identification“, Proceedings of International Conference on Field-Programmable Logic and Applications (FPL), May 2021 IEEE Xplore | PubMed | Arxiv

76. Fahad Almuqhim, and Fahad Saeed*, “ASD-SAENet: Sparse Autoencoder for detecting Autism Spectrum Disorder (ASD) using fMRI data“, Frontiers in Computational Neuroscience, Vol. 15, p. 27, March 2021  Frontiers

75. Muaaz Awan, Abdullah Awan, and Fahad Saeed*, “Benchmarking Mass Spectrometry based Proteomics Algorithms using a Simulated Database“, Springer Network Modeling Analysis in Health Informatics and Bioinformatics, Vol. 10, Article 23, March 2021  Springer

74. Oswaldo Artiles, and Fahad Saeed*, “TurboBFS: GPU Based Breadth-First Search (BFS) Algorithms in the Language of Linear Algebra“, 11th IEEE Workshop Parallel/ Distributed Combinatorics and Optimization (PDCO 2021), Proceedings of IEEE International Parallel and Distributed Processing Symposium Workshops (IEEE IPDPSW), May 2021

73. Taban Eslami, Fahad Almuqhim, Joseph S. Raiker, Fahad Saeed*, “Machine Learning Methods for Diagnosing Autism Spectrum Disorder and Attention- Deficit/Hyperactivity Disorder Using Functional and Structural MRI: A Survey“, Frontiers of Neuroinformatics, Vol.  14, pp 62, 2021 Frontiers

72. Muhammad Usman Tariq, Muhammad Haseeb, Mohammed Aledhari, Rehma Razzak, Reza M Parizi, and Fahad Saeed*, “Methods for Proteogenomics Data Analysis, Challenges, and Scalability Bottlenecks: A Survey“, IEEE Access, vol. 9, pp. 5497-5516, 2021  IEEE Access

71. Taban Eslami, Joseph S Raiker, Fahad Saeed, “Explainable and Scalable Machine-Learning Algorithms for Detection of Autism Spectrum Disorder using fMRI Data”, Book Chapter In Neural Engineering Techniques for Autism Spectrum Disorder, pp. 39-54. Academic Press, 2021 Elsiever | arXiv 

2020

70. Bronte Wen, Hyun Jun Jung, Lihe Chen, Fahad Saeed, and Mark Knepper, “NGS-Integrator: An efficient tool for combining multiple NGS data tracks using minimum Bayes’ factors“, BMC Genomics, Nov 2020  BMC

69. Mohammed Aledhari, Rehma Razzak, Reza Parizi, and Fahad Saeed*, “Federated Learning: A Survey on Enabling Technologies, Protocols, and Applications“, IEEE Access, Vol. 8, pp. 140699–140725, July 2020  IEEE Access

2019

68. Taban Eslami, Vahid Mirjalili, Alvis Fong, Angela R. Laird, and Fahad Saeed*, “ASD-DiagNet: A Hybrid Learning Approach for Detection of Autism Spectrum Disorder Using fMRI DataFrontiers of Neuroinformatics, vol. 13, pages 70, Nov 2019 arXiv | Frontiers

67. Oswaldo Artiles, and Fahad Saeed*, “GPU-SFFT: A GPU based parallel algorithm for computing the Sparse Fast Fourier Transform (SFFT) of k-sparse signals”, Workshop on Performance Engineering with Advances in Software and Hardware for Big Data Sciences (PEASH), Proceedings of IEEE Conference on Big Data (IEEE BigData 2019), Los Angeles, CA, USA, Dec. 09-12, 2019 Tech Report | IEEE Xplore

66. Muhammad Haseeb, and Fahad Saeed*, “Efficient Shared Peak Counting in Database Peptide Search Using Compact Data Structure for Fragment-Ion Index”, Proceedings of IEEE International Conference on Bioinformatics and Biomedicine (IEEE BIBM), San Diego, CA, Nov 2019 (Acceptance Rate: 100/543=18%) Tech Report | IEEE Xplore

65. Mohammed Aledhari, Shelby Joji, Mohamed Hefeida, and Fahad Saeed*, “Optimized CNNbased Diagnosis System to Detect the Pneumonia from Chest Radiographs”, Workshop on Computational Aspects for Clinical Diagnostics and Decision Making in Healthcare using Biomedical Signal and Image, Proceedings of IEEE International Conference on Bioinformatics and Biomedicine (IEEE BIBM), San Diego, CA, Nov 2019 Tech Report | IEEE Xplore

64. Taban Eslami, and Fahad Saeed*, “Auto-ASD-Network: A technique based on Deep Learning and Support Vector Machines for diagnosing Autism Spectrum Disorder using fMRI data”, Workshop on Machine Learning Models for Multi-omics Data Integration, in Proceedings of 10th ACM Conference on Bioinformatics, Computational Biology (ACM BCB), Niagara Falls, New York, September 7-10, 2019. ACM | Tech Report

63. Muhammad Haseeb, Fatima Afzali, and Fahad Saeed*, “LBE: A Computational Load Balancing Algorithm for Speeding up Parallel Peptide Search in Mass-Spectrometry based Proteomics “, Proceedings of IEEE International Parallel & Distributed Processing Symposium Workshops (IPDPSW), Brazil, May 20, 2019 IEEE Xplore | Tech Report

62. Taban Eslami, and Fahad Saeed*, “GPU-DFC: A GPU-based parallel algorithm for computing dynamic-functional connectivity of big fMRI data“, Proceedings of IEEE International Conference On Big Data Service And Applications (IEEE Big Data Service 2019), San Francisco East Bay, California, USA, April 4 – 9, 2019 IEEE Xplore | Tech Report

2018

61. Muaaz Awan, and Fahad Saeed*, “MaSSSimulator: A Highly Configurable Simulator for Generating MS/MS Datasets for Benchmarking of Proteomics Algorithms“, Wiley Proteomics, Oct 2018 WileyPubMed

60. Muaaz Awan, Taban Eslami, and Fahad Saeed*, “GPU-DAEMON: GPU Algorithm Design, Data Management & Optimization template for array based big omics data”, Elsevier Computers in Biology and Medicine, Aug 2018 Elsevier | PubMed

59. Fahad Saeed*, “Towards quantifying psychiatric diagnosis using machine learning algorithms and big fMRI data”, BMC Big Data Analytics, Vol. 3, No. 1, pp. 1-7, May 2018 Springer | BMC

58. Taban Eslami, and Fahad Saeed*, “Fast-GPU-PCC: A GPU-Based Technique to Compute Pairwise Pearson’s Correlation Coefficients for Time Series Data – An fMRI Study“, MDPI High-Throughput, April 2018 MDPI | PubMed

57. Mohammed Aledhari, Marianne Di Pierro, Mohamed Hefeida, and Fahad Saeed*, “A Deep Learning-Based Data Minimization Algorithm for Fast and Secure Transfer of Big Genomic Datasets“, IEEE Transactions on Big Data, Feb 2018 IEEE Xplore

56. Usman Tariq, and Fahad Saeed*, “Parallel Sampling-Pipeline for Indefinite Stream of Heterogeneous Graphs using OpenCL for FPGAs”, Workshop on Energy-Efficient Big Data Analytics, Proceedings of IEEE International Conference on Big Data (IEEE BigData), pp. 1-10, Seattle, WA Dec 10-13, 2018 IEEE Xplore

55. Mohammed Aledhari, Marianne Di Pierro, and Fahad Saeed*, “A Fourier-Based Data Minimization Algorithm for Fast and Secure Transfer of Big Genomic Datasets”, Proceedings of IEEE Big Data Congress, San Francisco CA USA, July 2-7, 2018 IEEE Xplore

54. Taban Eslami, and Fahad Saeed*, “Similarity based classification of ADHD using Singular Value Decomposition“, Proceedings of ACM Conference on Computing Frontiers (ACM-CF), Ischia, Italy, May 2018 ACM | Tech ReportPresentation (YouTube)

2017

53. Sandino Vargas-Pérez and Fahad Saeed*, “A Hybrid MPI-OpenMP Strategy to Speedup the Compression of Big Next-Generation Sequencing Datasets“, IEEE Transactions on Parallel and Distributed Systems, March 2017 Tech Report | IEEE Xplore

52. Usman Tariq, Umer Cheema and Fahad Saeed*“Power-Efficient and Highly Scalable Parallel Graph Sampling using FPGAs”, Proceedings of International Conference on Reconfigurable Computing and FPGAs (ReConFig), Cancun, Mexico, December 4-6, 2017 Tech ReportIEEE Xplore

51. Sandino Vargas-P’erez and Fahad Saeed*, “Scalable Data Structure to Compress Next-Generation Sequencing Files and its Application to Compressive Genomics“, Proceedings of IEEE International Conference on Bioinformatics and Biomedicine (IEEE BIBM),Kansas City, MO, USA, Nov 13-16, 2017 Tech Report | IEEE Xplore

50. Muaaz Gul Awan and Fahad Saeed*, “An Out-of-Core GPU based dimensionality reduction algorithm for Big Mass Spectrometry Data and its application in bottom-up Proteomics“, Proceedings of ACM Conference on Bioinformatics, Computational Biology, and Health Informatics (ACM BCB), Boston MA, August 2017 Tech ReportACM | PubMed

49. Taban Eslami, Muaaz Gul Awan and Fahad Saeed*, “GPU-PCC: A GPU based technique to compute pairwise Pearson’s Correlation Coefficients for big fMRI data“, Workshop on Parallel and Cloud-based Bioinformatics and Biomedicine (ParBio), Proceedings of ACM Conference on Bioinformatics, Computational Biology, and Health Informatics (ACM BCB), Boston MA, August 2017 Tech ReportACM

48. Mohammed Aledhari, Ali Marhoon, Ali Al-Qaabi, and Fahad Saeed*A New Cryptography Algorithm to Protect Cloud-based Healthcare Services“, Proceedings of Workshop on Safe, Energy-Aware, & Reliable Connected Health, IEEE/ACM Conference on Connected Health: Applications, Systems and Engineering Technologies (IEEE/ACM CHASE-SEARCH), Philadelphia PA, July 2017 IEEE Xplore

2016

47. Pablo C. Sandoval, J’Neka S. Claxton, Jae Wook Lee, Fahad Saeed, Jason D. Hoffert and Mark A. Knepper, “Systems-level analysis reveals selective regulation of Aqp2 gene expression by vasopressin“, Nature Scientific Reports, Vol. 6, article number 34863, October 2016 Nature | PubMed

46. Muaaz Awan and Fahad Saeed*“MS-REDUCE: An ultrafast technique for reduction of Big Mass Spectrometry Data for high-throughput processing”, accepted in Oxford Bioinformatics, Jan 2016 Tech ReportPubMed | Oxford

45. Muaaz Gul Awan and Fahad Saeed*, “GPU-ArraySort: A parallel, in-place algorithm for sorting large number of arrays“, Proceedings of Workshop on High Performance Computing for Big Data, International Conference on Parallel Processing (ICPP-2016), Philadelphia PA, August 2016 Tech ReportIEEE Xplore

44. Majdi Maabreh, Ajay Gupta and Fahad Saeed*, “A Parallel Peptide Indexer and Decoy Generator for Crux Tide using OpenMP“, Proceedings of Workshop on High Performance Computing Systems for Biomedical, Bioinformatics and Life Sciences, International Conference on High Performance Computing & Simulation (HPCS 2016), Innsbruck, Austria, July 2016 IEEE Xplore

43. Mohammed Aledhari, Mohamed S Hefeida and Fahad Saeed*, “A Variable-Length Network Encoding Protocol for Big Genomic Data“, Proceedings of International Conference on Wired & Wireless Internet Communications (WWIC 2016), Thessaloniki, Greece May 2016 Springer

42. Mohamed S Hefeida and Fahad Saeed*, “Data Aware Communication for Energy Harvesting Sensor Networks“, Proceedings of International Conference on Wired & Wireless Internet Communications (WWIC 2016), Thessaloniki, Greece May 2016 Springer

2015

41. Sookkasem Khositseth, Panapat Uawithya, Poorichaya Somparn, Komgrid Charngkaew, Nattakan Thippamom, Jason D. Hoffert, Fahad Saeed, D. Michael Payne, Shu Hui Chen, Robert A. Fenton and Trairak Pisitkun, “Autophagic degradation of aquaporin-2 is an early event in hypokalemia-induced nephrogenic diabetes insipidus“, Nature Scientific Reports, Dec 2015 NaturePubMed

40. Fahad Saeed*,  “Big Data Proteogenomics and High Performance Computing: Challenges and Opportunities“, Symposium on Signal and Information Processing for Software-Defined Ecosystems, and Green Computing, Proceedings of IEEE Global Conference on Signal and Information Processing (IEEE GlobalSIP), Orlando Florida, Dec 2015 Tech ReportIEEE Xplore

39. Proceedings of 7th International Conference on Bioinformatics and Computational Biology (BICoB), with Hisham Al-Mubaid and Nurit Haspel, March 2015.

38. Sandino N. V. Perez and Fahad Saeed*,  “A Parallel Algorithm for Compression of Big Next-Generation Sequencing (NGS) Datasets“, Proceedings of Parallel and Distributed Processing with Applications (IEEE ISPA-15), Vol.3. pp. 196-201 Helsinki Finland, Aug 2015 Tech ReportIEEE Xplore

37. Mohammed Aledhari and Fahad Saeed*“Design and Implementation of Network Transfer Protocol for Big Genomic Data”Proceedings of IEEE International Congress on Big Data (IEEE BigData Congress), pp. 281-288, New York City, USA, June 2015 (18% acceptance rate) Tech ReportIEEE Xplore

36. Muaaz Awan and Fahad Saeed*“On the sampling of Big Mass Spectrometry Data”, Proceedings of Bioinformatics and Computational Biology (BICoB)Conference, Honolulu Hawaii, March 2015 Tech Report

2014

35. Akshay Sanghi, Matthew Zaringhalam, Callan Corcoran, Fahad Saeed, Jason D. Hoffert, Pablo C Sandoval, Trairak Pisitkun, and Mark A. Knepper, “A Knowledge Base of Vasopressin Actions in Kidney“, American Journal of Physiology, July 2014 AJPPubMed

34. Fahad Saeed*, Jason Hoffert, Trairak Pisitkun, Mark Knepper, “Exploiting thread-level and instruction-level parallelism to cluster mass spectrometry data using multicore architectures”Network Modeling Analysis in Health Informatics and Bioinformatics,  3, No. 1, pp 1-19, Feb. 2014 Springer | PubMed

33. Jason D. Hoffert, Trairak Pisitkun, Fahad Saeed, Justin L. Wilson and, Mark A. Knepper, “Global analysis of the effects of the V2 receptor antagonist satavaptan on protein phosphorylation in collecting duct“, American Journal of Physiology, Vol. 306, No. 410-421, Feb. 2014 AJP | PubMed 

32. Proceedings of 6th International Conference on Bioinformatics and Computational Biology (BICoB), with Bhaskar Dasgupta, Hisham Al-Mubaid and Nurit Haspel, March 2014.

31. Fahad Saeed*, Jason Hoffert and Mark Knepper, “CAMS-RS: Clustering Algorithm for Large-Scale Mass Spectrometry Data using Restricted Search Space and Intelligent Random-Sampling“, IEEE/ACM Transactions on Computational Biology and Bioinformatics,11, No.1, pp.128,141, Jan. 2014 Tech Report | PubMed | IEEE Xplore

2013

30. Fahad Saeed*, Trairak Pisitkun, Jason D. Hoffert, Sara Rashidian, Guanghui Wang, Marjan Gucek, and Mark A. Knepper, “PhosSA: Fast and Accurate Phosphorylation Site Assignment Algorithm for Mass Spectrometry Data”Proteome Science Volume 11, Supplement 1, November 2013 Proteome Science| PubMed

29. Pablo C. Sandoval, Dane H. Slentz, Trairak Pisitkun, Fahad Saeed, Jason D. Hoffert and Mark A. Knepper, “Proteome-wide measurement of protein half-lives and translation rates in vasopressin-sensitive collecting duct cells“, Journal of the American Society of Nephrology (JASN), March 2013 JASN PubMed

28. Fahad Saeed*, Jason D. Hoffert, and Mark A. Knepper, “A High Performance Algorithm for Clustering of Large-Scale Protein Mass Spectrometry Data using Multi-Core Architectures“, proceedings of IEEE/ACM International Symposium on Network Enabled Health Informatics, Biomedicine and Bioinformatics (HI-BI-BI), August 2013 (25%  acceptance rate for full papers) Tech ReportIEEE Xplore

27. Steven J Bolger, Patricia A Gonzales, Jason D Hoffert, Fahad Saeed, Trairak Pisitkun and Mark A Knepper, “Quantitative phosphoproteomics implicates clusters of proteins involved in cell-cell adhesion and transcriptional regulation in the vasopressin signaling network.” FASEB JOURNAL. Vol. 27. 9650 ROCKVILLE PIKE, BETHESDA, MD 20814-3998 USA: FEDERATION AMER SOC EXP BIOL, 2013.

26. Special issue on selected papers from the 5th international conference on bioinformatics and computational biology (BICoB 2013) with Bhaskar Dasgupta and Hisham Al-Mubaid, Journal of Bioinformatics and Computational Biology (JBCB) Volume 11, Issue 05, October 2013

25. Proceedings of 5th International Conference on Bioinformatics and Computational Biology (BICoB), with Bhaskar Dasgupta, Hisham Al-Mubaid and Reda Al-Hajj (ISBN: 978-1-880843-89-5), March 2013

2012

24. Steven Bolger, Patricia Gonzales Hurtado, Jason Hoffert, Fahad Saeed, Trairak Pisitkun, and Mark Knepper, “Quantitative Phosphoproteomics in Nuclei of Vasopressin-Sensitive Renal Collecting Duct Cells“, American Journal of Physiology (AJP), September 2012 AJP | PubMed

23. Boyang Zhao, Trairak Pisitkun, Jason D. Hoffert, Mark A. Knepper, and Fahad Saeed*, “CPhos: A Program to Calculate and Visualize Evolutionarily Conserved Functional Phosphorylation Sites“, Wiley PROTEOMICS,August 2012 Wiley | PubMed

22. Jacqueline Douglass, Ruwan Gunaratne, Davis Bradford, Fahad Saeed, Jason D. Hoffert, Peter J. Steinbach, Mark A. Knepper, and Trairak Pisitkun, “Identifying Protein Kinase Target Preferences Using Mass Spectrometry“, American Journal of Physiology (AJP), June 2012 AJPPubMed

21. Fahad Saeed, Alan Perez-Rathke, Jaroslaw Gwarnicki, Tanya Berger-Wolf, Ashfaq Khokhar, “A High Performance Multiple Sequence Alignment System for Pyrosequencing Reads from Multiple Reference Genomes“, Journal of Parallel and Distributed Computing (JPDC), Volume 72, Issue 1, Pages 83-93, January 2012 JPDC|PubMed

20. Jason D. Hoffert, Trairak Pisitkun, Fahad Saeed, Jae H. Song, Chung-Lin Chou, and Mark A. Knepper, “Dynamics of the G protein-coupled vasopressin V2 receptor Signaling Network revealed by Quantitative Phosphoproteomics” Mol Cell Proteomics (MCP),Feb 2012 MCP | PubMed

19. Trairak Pisitkun, Jason D. Hoffert, Fahad Saeedand Mark Knepper, “NHLBI-AbDesigner: An online tool for design of peptide-directed antibodies“, American Journal of Physiology (AJP), Jan 2012 AJP | PubMed

18. Fahad Saeed*, Trairak Pisitkun, Jason Hoffert, Guanghui Wang, Marjan Gucek, and Mark Knepper, “An Efficient Dynamic Programming Algorithm for Phosphorylation Site Assignment of Large-Scale Mass Spectrometry Data“, International Workshop on Computational Proteomics, proceedings of IEEE International Conference on Bioinformatics and Biomedicine (BIBM), Philadelphia USA, Oct 2012 (20% acceptance rate) IEEE Xplore PubMed

17. Fahad Saeed*, Trairak Pisitkun, Jason Hoffert, and Mark A. Knepper, “High Performance Phosphorylation Site Assignment Algorithm for Mass Spectrometry Data using Multicore Systems“, accepted in International Workshop on Parallel and Cloud-based Bioinformatics and Biomedicine (ParBio), ACM Conference on Bioinformatics, Computational Biology and Biomedicine (ACM-BCB), Orlando Florida USA, Oct 2012 (33 papers accepted out of 159 papers submitted: 21% acceptance rate) ACM | Tech Report 

16. Fahad Saeed*, Trairak Pisitkun, Mark Knepper, and Jason Hoffert, “An Efficient Algorithm for Clustering of Large-Scale Mass Spectrometry Data“, accepted in IEEE International Conference on Bioinformatics and Biomedicine (BIBM), Philidelphia USA, Oct 2012. (62 short paper accepted out of 299 papers submitted: 20.7 % acceptance rate) IEEE XplorearXiv:1301.0834 | PubMed

15. Fahad Saeed*and Ashfaq Khokhar, “Parallel Algorithm for Center-Star Sequence Alignments with applications to Short Reads” accepted in 4th International Conference on Bioinformatics and Computational Biology (BICoB), Las Vegas, Nevada, USA, March 12 – 14, 2012

14. Boyang Zhao, Trairak Pisitkun, Jason D. Hoffert, Mark A. Knepper, and Fahad Saeed, “An Information Theory-Based Approach to Assess the Functional Significance of Phosphorylation Sites in Proteomes of Renal Tubule Epithelia“, poster at International Society of  Nephrology (ISN) Symposium, Ann Arbor Michigan, USA, June 2012

13. Proceedings of 4th International Conference on Bioinformatics and Computational Biology (BICoB), with Hisham Al-Mubaid and Ashfaq Khokhar (ISBN: 978-1-880843-85-7), March 2012

2011

12. Fahad Saeed*, Trairak Pisitkun, Mark A. Knepper, and Jason D. Hoffert, “Mining Temporal Patterns from iTRAQ Mass Spectrometry(LC-MS/MS) Data” In proceedings ofBioinformatics and Computational Biology Conference (BICoB)pp 152-159, New Orleans USA, March 23-25, 2011 arXiv:1104.5510v1

11. Fahad Saeed, J. Hoffert, P. Pisitkun, M. Knepper, “Mapping-based temporal pattern mining algorithm identifies unique clusters of phosphopeptides regulated by vasopressin in collecting duct“, meeting abstractsExperimental Biology (EB), Washington DC, USA April 2011

10. Hoffert, T. Pisitkun, Fahad Saeed, J. Song, M. Knepper, “Large-scale iTRAQ-based quantification of phosphorylation changes during vasopressin signaling“, Featured Topic and abstract Experimental Biology (EB), Washington DC USA April 2011

2010

9. Fahad Saeed,High performance computational biology algorithms“, (Doctoral dissertation). Retrieved from ProQuest Dissertations and Theses(Accession Order No. AAT 3431281, ISBN: 9781124308067) ProQuest

8. Fahad Saeedand Ashfaq Khokhar, “Parallel Algorithm for Center Star Sequence and Alignments with applications to short reads” International conference on bioinformatics and computational biology (ACM-BCB) Poster Session, in August 2010

7. Fahad Saeed, Lukas Burger, Ashfaq Khokhar, and Mihaela Zavolan, “A graph-theoretic framework for efficient computation of HMM based motif finder“, Technical Report, University of Illinois at Chicago, Jan 2010

2009

6. Fahad Saeed, Ashfaq Khokhar, “A Domain Decomposition Strategy for Alignment of Multiple Biological Sequences on Multiprocessor Platforms“, Journal of Parallel and Distributed Computing (JPDC)Vol 69, Issue 7, July 2009 arXiv:0905.1744v1 | JPDC

5. Fahad Saeedand Lukas Burger “High Performance Graph Theoretic model for finding Regulatory Elements and motifs“, Technical Report, Zavolan Group, Swiss Institute of Bioinformatics (SIB), University of Basel Switzerland, August 2009

4. Fahad Saeed, Ashfaq Khokhar, Osvaldo Zagordi and Niko Beerenwinkel. “Multiple Sequence Alignment System for Pyrosequencing Reads” Lecture Notes in Computer Science (LNCS), Volume 5462/2009, 2009 arXiv:0901.2753Springer  

2008 and earlier

3. Fahad Saeedand Ashfaq Khokhar, “Sample-Align-D: A High Performance Multiple Sequence Alignment System using Phylogenetic Sampling and Domain Decomposition“, in Proc. IEEE International Workshop on High Performance Computational Biology (HiCOMB 2008), IPDPS, Monday, April 14, 2008. arXiv:0901.2742 | IEEE Xplore

2. Fahad Saeed“Pyro-Align: Sample-Align based Multiple Alignment system for Pyrosequencing Reads of Large Number“, Technical Report, Beerenwinkel Group Computational Biology, Department of Biosystems Science and Engineering, Eth Zurich Switzerland, August 2008. arXiv:0901.2751

1. Fahad Saeedand Ashfaq Khokhar, “An overview of multiple sequence alignments and their limitations“, Technical Report, Multimedia System Laboratory, University of Illinois at Chicago, May 2007 arXiv:0901.2747