Mritunjay Rai | Real-Time Imaging Solutions | Best Researcher Award

Assist. Prof. Dr. Mritunjay Rai | Real-Time Imaging Solutions | Best Researcher Award

Shri Ramswaroop Memorial Univerity | India

Dr. Mritunjay Rai is an academic and researcher in Electronics and Communication Engineering with expertise in digital and thermal image processing, machine learning, and data science. He earned his Ph.D. from the Indian Institute of Technology (ISM), Dhanbad, focusing on developing and comparing real-time algorithms using thermal images for diverse applications. His research integrates image analysis and artificial intelligence, contributing to advancements in healthcare, surveillance, and intelligent transportation systems. He has published extensively in reputed SCI and Scopus-indexed journals on topics such as infrared image-based motion detection, early detection of diabetic foot ulcers, and smart traffic management using deep learning. Dr. Rai also led a government-funded project on thermal imaging-based smart healthcare for early diagnosis of diabetic complications. In addition to research, he plays an active role in academic quality assurance, innovation, and institutional development, promoting the integration of intelligent imaging technologies for practical and socially relevant problem-solving.

Profiles : Scopus | Orcid 

Featured Publications 

  • Maurya, T., Kumar, S., Rai, M., Saxena, A. K., Goel, N., & Gupta, G. (2025). Real time vehicle classification using deep learning—Smart traffic management. Engineering Reports.

  • Nain, V., Shyam, H. S., Kumar, N., Tripathi, P., & Rai, M. (2024). A study on object detection using artificial intelligence and image processing-based methods. In Mathematical models using artificial intelligence for surveillance systems (Chapter 6). Wiley.

  • Singh, S., Pandey, J. K., Rai, M., & Saxena, A. K. (2024). Advancements in facial expression recognition using machine and deep learning techniques. In Machine and deep learning techniques for emotion detection (Chapter 7). IGI Global.

  • Tripathi, P., Kumar, N., Paroha, K. K., Rai, M., & Panda, M. K. (2024). Applications of deep learning in healthcare in the framework of Industry 5.0. In Infrastructure possibilities and human-centered approaches with Industry 5.0 (Chapter 5). IGI Global.

  • Rai, M., Chandra, B., Tripathi, P., & Kumar, N. (2024). Artificial intelligence and image enhancement–based methodologies used for detection of tumor in MRIs of human brain. In Artificial intelligence in biomedical and modern healthcare informatics. Elsevier.

  • Veeraiah, V., Sharma, P., Saxena, K., Sahu, N. K., Sharma, K., Pandey, J. K., Yadav, R. K., & Rai, M. (2024). Brain tumor detection for recognizing critical brain damage in patients using computer vision. In Internet of things enabled machine learning for biomedical applications (Chapter 9). CRC Press.

  • Singh, S., Rai, M., Pandey, J. K., & Saxena, A. K. (2024). Emotional intelligence and collaborative dynamics in Industry 5.0 for human-machine interactions. In Human-machine collaboration and emotional intelligence in Industry 5.0 (Chapter 10). IGI Global.

Saeed Amal | Multimodal Imaging Techniques | Best Researcher Award

Prof. Saeed Amal | Multimodal Imaging Techniques | Best Researcher Award

Professor at Northeastern University, United States

Saeed Amal  is an accomplished researcher in Artificial Intelligence (AI) with a strong focus on healthcare and precision medicine. Currently serving as an Assistant Research Professor at Northeastern University, his work integrates cutting-edge AI methodologies such as deep learning, machine learning, and generative AI to address complex challenges in healthcare. With extensive experience spanning academia and industry, Saeed’s contributions are shaping the future of personalized medicine and intelligent healthcare solutions.

Profile

ORCID

Education🎓

Saeed’s academic journey reflects his dedication to innovation and interdisciplinary learning. He earned his Ph.D. in Computer Science from Haifa University , where he conducted pioneering research on machine learning, information retrieval, and recommender systems. During his postdoctoral fellowships at Stanford University and Haifa University, he expanded his expertise in deep learning, natural language processing (NLP), and healthcare applications of AI. His educational background also includes a Master’s degree in Computer Science and a Bachelor’s degree in the same field from Technion – Israel Institute of Technology, graduating with honors.

Professional Experience💼

Saeed’s professional journey is marked by impactful roles across academia and industry . At Northeastern University, he leads research on precision medicine, leveraging AI to detect and prevent diseases. His industry tenure includes roles as a Data Scientist and Researcher at Cognitech Smart AI, Dynamic Yield, and General Motors, where he developed AI-driven solutions for healthcare, recommender systems, and NLP. Saeed also has experience as a software engineer at Attunity and AMDOCS, designing large-scale systems with a focus on quality and performance. These experiences underscore his ability to translate theoretical AI concepts into practical, scalable applications.

Research Interests🏥

Saeed’s research interests lie at the intersection of AI and healthcare . His work focuses on the use of AI for early disease detection, multi-modal data integration, and improving diagnostic accuracy. He specializes in deep learning, NLP, large language models (LLM), and image processing to create advanced systems for precision medicine. His vision is to revolutionize healthcare through technology, making diagnosis and treatment more efficient and accessible. Saeed also has significant interest in explainable AI and its application to improve the interpretability and trustworthiness of AI systems.

Awards and Recognitions🏆

Saeed has received several accolades for his contributions to AI and healthcare . He has been a keynote and plenary speaker at major international conferences, including the “3rd International Conference on AI, ML, Data Science, and Robotics” in Rome (2023) and the “Public Health and Healthcare Management Conference” in Dubai (2023). He also chairs special sessions, such as the “Artificial Intelligence and Multimodal Data for Improving Disease Care” at the International Conference on Medical and Health Sciences. These roles highlight his leadership and impact in the global AI community.

Publications📚

“Analysis and Visualization of Confounders and Treatment Pathways Leading to Amputation and Non-Amputation in Peripheral Artery Disease Patients Using Sankey Diagrams”

  • Year: 2025-01-21
  • DOI: 10.3390/biomedicines13020258

“Evaluating Neural Network Performance in Predicting Disease Status and Tissue Source of JC Polyomavirus from Patient Isolates Based on the Hypervariable Region of the Viral Genome”

  • Year: 2024-12-25
  • DOI: 10.3390/v17010012

“Artificial Intelligence and Digital Pathology for Histologic Growth Pattern Classification in Lung Adenocarcinoma”

  • Year: 2024-11-25 (Preprint)
  • DOI: 10.20944/preprints202411.1804.v1

“Digital Pathology and Ensemble Deep Learning for Kidney Cancer Diagnosis: Dartmouth Kidney Cancer Histology Dataset”

  • Year: 2024-11-21 (Preprint)
  • DOI: 10.20944/preprints202411.1615.v1

“Gastric Cancer Detection with Ensemble Learning on Digital Pathology: Use Case of Gastric Cancer on GasHisSDB Dataset”

  • Year: 2024-08-12
  • DOI: 10.3390/diagnostics14161746

“Segmenting Tumor Gleason Pattern Using Generative AI and Digital Pathology: Use Case of Prostate Cancer on MICCAI Dataset”

  • Year: 2024-06-28 (Preprint)
  • DOI: 10.20944/preprints202406.2019.v1

“Multi-Scale Digital Pathology Patch-Level Prostate Cancer Grading Using Deep Learning: Use Case Evaluation of DiagSet Dataset”

  • Year: 2024-06-18
  • DOI: 10.3390/bioengineering11060624

“Ensemble Deep Learning-Based Image Classification for Breast Cancer Subtype and Invasiveness Diagnosis from Whole Slide Image Histopathology”

  • Year: 2024-06-14
  • DOI: 10.3390/cancers16122222

“Enhancing Prostate Cancer Diagnosis with a Novel Artificial Intelligence-Based Web Application”

  • Year: 2023-11-30
  • DOI: 10.3390/cancers15235659

Conclusion🌟

Dr. Saeed Amal is a highly suitable candidate for the Research for Best Researcher Award. With a strong foundation in AI for healthcare, an impressive publication record, and a clear demonstration of leadership in the scientific community, he embodies the qualities of an outstanding researcher. Enhancing public engagement and focusing on broader societal impacts can further bolster his profile for such recognitions.