Mr Bhavya Gandhi | Data Science for Health | Best Researcher Award |

Mr. Bhavya Gandhi | Data Science for Health | Best Researcher Award | 

Medical Student , at Michael G. DeGroote School of Medicine , Canada.

Mr. Bhavya Gandhi is an aspiring physician-researcher with a growing reputation for his contributions at the intersection of medicine, artificial intelligence, and global health. Currently pursuing his Doctor of Medicine at the Michael G. DeGroote School of Medicine (McMaster University), he has already led and collaborated on several research projects with a strong focus on AI applications in clinical diagnostics and patient safety. Bhavya’s profile reflects a rare blend of academic excellence, innovative thinking, and research leadership, making him a standout early-career scholar in Canadian medical academia.

Professional Profile

Orcid

Education πŸŽ“

Bhavya is currently enrolled in the Doctor of Medicine (M.D.) program at the Michael G. DeGroote School of Medicine, Hamilton Campus (2023–Present). He previously earned a Bachelor of Science at the University of Toronto (2020–2023), majoring in Biology for Health Sciences with minors in Biomedical Communication and Environmental Science. He graduated with a perfect 4.00 GPA and was recognized as a Dean’s List Scholar throughout his undergraduate studies, underscoring his academic diligence and commitment to excellence.

Experience πŸ‘©β€

Bhavya brings valuable hands-on experience from both research and clinical settings. From 2021 to 2023, he served as a Clinical Study Coordinator at Albion Finch Medical Centre, working on high-profile clinical trials for pharmaceutical companies including Moderna. This role involved responsibilities as a blinded/unblinded coordinator and pharmacist, providing him with a robust foundation in trial design and execution. Concurrently, he has held various Research Assistant and Lead Investigator roles at McMaster University and the Research Institute of St. Joe’s Hamilton, contributing to numerous interdisciplinary and collaborative studies involving AI, medication safety, and systematic reviews.

Research Interests πŸ”¬

Bhavya’s research primarily centers on the integration of artificial intelligence and machine learning into clinical decision-making, with a focus on infectious diseases, cardiac risk prediction, and electronic medical record optimization. He has led or co-led projects examining the use of large language models (LLMs) in analyzing returning traveler infections, fever diagnostics, and AI-driven medication safety alerts. His work also extends to machine learning in myocardial injury prediction post-surgery and computational tools for evaluating prescribing competency in medical students. These contributions place him at the forefront of the evolving field of digital health and AI-enhanced clinical practice.

Awards πŸ†

Among Bhavya’s accolades is the NSERC Undergraduate Student Research Award (USRA), awarded for his work in molecular neuroscience and protein interaction studies. He has also been recognized multiple times on the Dean’s List at the University of Toronto for maintaining a perfect GPA. His early leadership in impactful research projects has led to presentations at respected academic forums such as the Research Institute of St. Joe’s Hamilton and the EMRG Annual Student Seminar, further validating his scholarly contributions.

Top Noted Publications πŸ“š

Title: Applications of Generative Artificial Intelligence in Electronic Medical Records: A Scoping Review
Authors: Leo Morjaria, Bhavya Gandhi, Nabil Haider, Matthew Mellon, Matthew Sibbald
Journal: Information
DOI: 10.3390/info16040284
Publication Year: 2025
Publication Date: April 1, 2025
Indexing: Indexed in major academic databases including Scopus, Web of Science, and MDPI

Conclusion

Bhavya Gandhi is a highly promising researcher with notable leadership, academic rigor, and innovation, especially in the emerging domain of AI in healthcare. For student, early-career, or innovation-focused research awards, Bhavya is extremely well-qualified. With a few more published works and individual accolades, Bhavya could easily rise into the top tier of emerging researchers in Canadian medical academia.

Mr Ernesto Diaz | Data Scientist | Best Researcher Award

Mr Ernesto Diaz |  Data Scientist | Best Researcher Award

Assistant Specialist at University of California, San Francisco – Radiology & Biomedical Imaging , United States.

Ernesto Diaz is an accomplished researcher and data scientist specializing in biomedical imaging and artificial intelligence applications in healthcare. With a strong background in medical imaging, deep learning, and data science, he has contributed significantly to Hyperpolarized Carbon-13 MRI research, cancer imaging, and radiation oncology. His work has been recognized through prestigious NIH awards, peer-reviewed publications, and multiple conference presentations. Passionate about advancing healthcare technology, Ernesto combines technical expertise with a commitment to mentorship and diversity in STEM.

Professional Profile

Orcid

Education πŸŽ“

Ernesto earned his Bachelor of Science in Computer Science from San Francisco State University in 2022, graduating with Dean’s List honors (2020-2022). His education provided a strong foundation in programming, data analysis, and computational research, which he has applied extensively in biomedical imaging and artificial intelligence projects.

Professional Experience πŸ’Ό

  • As a Data Scientist at UCSF’s Department of Radiology and Biomedical Imaging, Ernesto leads software development for medical imaging analysis, enhancing data processing and visualization tools. His previous research experience includes working on automated radiation treatment planning and bioinformatics coding for population health studies. His contributions have improved efficiency in clinical workflows and advanced AI applications in medical imaging.

Research Interests 🌍

His research revolves around Hyperpolarized Carbon-13 MRI, deep learning for medical image segmentation, and automation in radiation oncology. At UCSF, he developed a DICOM standardization tool for metabolic imaging and co-developed a U-Net deep learning model for prostate cancer segmentation. Additionally, he has explored health disparities in underserved communities, analyzing COVID-19’s impact on marginalized populations.

Awards & Honors πŸ†

  • NIH Diversity Supplement Award (2022-2024) – Recognized for contributions to Hyperpolarized 13C MRI research.
  • NIH-SF BUILD Scholar (2021-2022) – Selected for leadership potential and commitment to diversity in research.
  • Dean’s List (2020-2022) – Awarded for academic excellence at San Francisco State University.

Top Noted Publications πŸ“š

Title: Deep Learning-Based Tumor Segmentation of Murine Magnetic Resonance Images of Prostate Cancer Patient-Derived Xenografts

Authors: Satvik Nayak, Henry Salkever, Ernesto Diaz, Avantika Sinha, Nikhil Deveshwar, Madeline Hess, Matthew Gibbons, Sule Sahin, Abhejit Rajagopal, Peder E. Z. Larson, et al.

Journal: Tomography

Publication Year: 2025

DOI: 10.3390/tomography11030021

Indexing: Indexed in major scientific databases.

Conclusion

Ernesto Diaz is a rising leader in medical imaging research, blending AI, data science, and biomedical imaging to drive innovation. With his technical skills, research excellence, and dedication to mentorship, he continues to push the boundaries of healthcare technology and scientific discovery. πŸš€