Dr. Rashidi combines his passion for patient care and education with his unique training in bioinformatics and machine learning (ML) to create innovative new tools and resources that improve clinical practice, research and education.
His experience in ML dates back to his graduate years at UCSD which subsequently allowed him to serve as the principal author and editor of several popular bioinformatics textbooks. This background has also enabled him to develop various novel AI-ML platforms. Before joining U Pitt / UPMC (as associate Dean of AI and Executive Director of CPACE Ai center), he served as the founding director of Cleveland Clinic’s PLMI Center for Ai and Data Science & Vice Chair of Technology Innovation & Computational Pathology, and before that he served as the Director of AI for University of California Davis Medical Center and Professor & Vice chair of informatics, leading a large number of AI / ML studies with numerous collaborators from various prominent institutions. These studies have also led to numerous products and filed patents (e.g. the University of California IP MILO: Machine Intelligence Learning Optimizer, the proprietary Automated ML platform) and it’s suite of 6 complimentary separate unique preprocessing and statistics Data Science Apps and Cleveland Clinic’s new automated synthetic data generator and Validation platform STNG, Synthetic Tabular Neural Generator) along with a large number of manuscripts in which he serves as corresponding author. These products have been licensed to several industry and academic institutions & serving as a powerful suite of data science tools for a large number of clinical, quality and educational projects while also starting to help optimize and expedite data access needs for all investigators.
In addition to the above, Dr. Rashidi is also a well known educator with numerous teaching awards who has created some of the AppStore’s most popular hematology Apps along with Cleveland Clinic’s most recent AI-ML course (launched Cleveland Clinic wide in Jan 2024). He is also the co-founder and senior editor of HematologyOutlines, a very popular digital hematology atlas that is used internationally and endorsed by the American Society of Clinical Pathology.
Dr. Rashidi’s efforts in the AI-ML & digital space are internationally recognized, as evidenced by his continuous invited talks, his various editorial & reviewer roles, the multitude of key invited review articles & his continued national committee roles within this space.
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Andrew D Jones, MD, John Paul Graff, DO, MD, Morgan Darrow, MD, Alexander Borowsky, MD, Kristin A. Olson, MD, Kristin A. Olson, MD, Regina Gandour-Edwards, MD, Ananya Datta-Mitra, MD, Dongguang Wei, MD, PhD, Guofeng Gao, MD PhD, Blythe Durbin-Johnson, PhD, and Hooman H. Rashidi*, MD. Impact of pre-analytic variables on deep learning accuracy in histopathology. Histopathology 2019
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Nam K. Tran, PhD, HCLD (ABB)1*, FACB; Soman Sen, MD, FACS2; Tina L. Palmieri, MD, FACS, FCCM2; Kelly Lima, BS1; Stephanie Falwell, BS1; Jeffrey Wajda, DO3; and Hooman H. Rashidi, MD, FASCP1*. Artificial Intelligence and Machine Learning for Predicting Acute Kidney Injury in Severely Burned Patients: A Proof of Concept. Burns 2019
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Hooman Rashidi, MD, Nam K. Tran, PhD, Elham Vali Betts, MD, Lydia P. Howell, MD, Ralph Green, MD, PhD. Artificial Intelligence and Machine Learning in Pathology: The Present Landscape of Supervised Methods. Academic Pathology, September 2019.
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Hooman H. Rashidi, MD, FASCP1*; Soman Sen, MD, FACS2; Tina L. Palmieri, MD, FACS, FCCM2; Thomas Blackmon, BS1; Jeffrey Wajda, DO3; and Nam K. Tran, PhD, HCLD (ABB), FACB1*. Early Recognition of Burn- and Trauma-Related Acute Kidney Injury: A Pilot Comparison of Machine Learning Techniques. Scientific Reports. Jan 2020
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Lorne Holland, MD, Dongguang Wei, MD, PhD, Kristin A. Olson, MD, John Paul Graff, DO, Andrew D Jones, MD, Blythe Durbin-Johnson, PhD, Ananya Datta-Mitra, MD, and Hooman H. Rashidi, MD. Effect of training set size on deep learning classification accuracy, a proof of concept of machine learning models for colon histology. Journal of Pathology Informatics. Feb 2020
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Nam K. Tran, PhD, Samer Albahra, MD, Tam N. Pham, MD, James Holmes IV, MD, David Greenhalgh, MD, Tina L. Palmieri, MD, Jeffrey Wajda, and Hooman H. Rashidi, MD. Novel Application of An Automated-Machine Learning Development Tool for Predicting Burn Sepsis. (July 2020; Scientific Reports)
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Hooman H. Rashidi, MD, FASCP1*, Amy Makley, MD2; Tina L. Palmieri, MD, FACS, FCCM3; Samer Albahra, MD1; Julia Loegering, BS1; Lei Fang, PhD4; Kensuke Yamaguchi, PhD4; Travis Gerlach, MD5; Dario Rodriquez Jr, MSc, RRT, FAARC6; and Nam K. Tran, PhD, HCLD (ABB), FAACC. Enhancing Military Burn- and Trauma-Related Acute Kidney Injury Prediction through an Automated Machine Learning Platform and Point-of-Care Testing. (Sept 2020; Archives of Pathology & Laboratory Medicine)
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Elham Vali-Betts, Kevin J. Krause, Alanna Dubrovsky, Kristin Olson, John Paul Graff, Anupam Mitra, Ananya Datta-Mitra, Kenneth Beck, Aristotelis Tsirigos, Cynthia Loomis, Antonio Galvao Neto, Esther Adler, Hooman H Rashidi. Effects of Image Quantity and Image Source Variation on Machine Learning Histology Differential Diagnosis Models. Journal of Pathology Informatics. Jan 2021.
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Kuang-Yu Jen, Samer Albahra, Felicia Yen, Junichiro Sageshima, Ling-Xin Chen, Hooman H. Rashidi. Automated En Masse Machine Learning Model Generation Shows Comparable Performance as Classic Regression Models for Predicting Delayed Graft Function in Renal Allografts. (Jan 2021; Transplantation)
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Nam K. Tran, Taylor Howard, Ryan Walsh, John Pepper, Julia Loegering, and Hooman H. Rashidi. NOVEL APPLICATION OF MACHINE LEARNING WITH MALDI-TOF-MS FOR RAPID HIGH-THROUGHPUT IDENTIFICATION OF COVID-19: A PROOF OF CONCEPT. Scientific Reports. March 2021
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Hooman H. Rashidi, Nam Tran PhD, Samer Albahra MD, Luke T. Dang. Machine Learning in Healthcare and Laboratory Medicine: General Overview of Supervised Learning and Auto-ML. Int. J. Lab. Hematology. July 2021.
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Rashidi HH, Luke T. Dang, Samer Albahra, Resmi Ravindran & Imran Khan. Automated Machine Learning for Endemic Active Tuberculosis Prediction from Multiplex Serological Data: Proof of Concept. Nature’s Scientfic Reports. Sept. 2021.
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Tran NK, Samer Albahra, Larissa May, Sarah Waldman, Scott Crabtree, Scott Bainbridge, Rashidi HH. Evolving Applications of Artificial Intelligence and Machine Learning in Infectious Diseases Testing. Clin. Chem. Jan 2022.
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Hooman H. Rashidi, Imran Khan, Ujjwal Ratan, Nihir, Chadderwala, Wilson To, Prathima Srinivas, Jeffery Wajda, Luke T. Dang, Nam K. Tran. Prediction of Tuberculosis using an Automated Machine Learning platform for Models Trained on Synthetic Data: A Proof of Concept. J. Path. Info. Jan 2022.
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Hooman H Rashidi. John Pepper, Taylor Howard, Karina Klein, Larissa May, Samer Albahra, Bret Phinney, Michelle Salemi, Nam K Tran. Comparative performance of two automated machine learning platforms for Covid-19 detection by MALDI-TOF-MS. PLOS One, 2022.
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Hooman H Rashidi, Kelly Bowers, Morayma Gil Reyes. Machine learning in the coagulation and hemostasis arena: An overview and evaluation of methods, review of literature, and future directions. J. Thromb. Hemostasis 2023.
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Samer Albahra, Tom Gorbett, Scott Robertson, Giana D’Aleo, Sushasree Vasudevan Suseel Kumar, Samuel Ockunzzi, Daniel Lallo, Bo Hu, Hooman H. Rashidi. Artificial intelligence and machine learning overview in pathology & laboratory medicine: A general review of data preprocessing and basic supervised concepts. Seminars in Diagnostic Pathology. Volume 40, 71-87, 2023.
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Hooman H. Rashidi, Samer Albahra, Scott Robertson, Nam K Tran, Bo Hu. Common statistical concepts in the supervised Machine Learning arena. Front. Oncol. 13:1130229. 2023.
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Rashidi HH, Fennell BD, Albahra S, Hu B, Gorbett T. The ChatGPT conundrum: Human-generated scientific manuscripts misidentified as AI creations by AI text detection tool, J Path Inform, Oct. 2023. https://doi.org/10.1016/j.jpi.2023.100342