Benito Farina | Spatio-Temporal CV | Best Researcher Award

Mr. Benito Farina | Spatio-Temporal CV | Best Researcher Award

Researcher | Universidad Politecnica de Madrid | Spain

Benito Farina is a dedicated researcher in artificial intelligence, machine learning, and biomedical engineering with a strong focus on medical imaging, cancer screening, and predictive modeling. He completed his bachelor’s and master’s degrees in Biomedical Engineering with highest honors at Università degli Studi di Napoli Federico II, where his theses explored machine learning for breast cancer histopathology and deep learning models for lung nodule malignancy detection. He pursued his doctoral studies in Electrical Engineering at Universidad Politécnica de Madrid, graduating with distinction for his research on spatio-temporal image analysis methods to enhance lung cancer screening and therapy response prediction. Professionally, he gained extensive experience as a Junior Research Scientist at Universidad Politécnica de Madrid, where he developed AI-based medical imaging datasets, implemented advanced models including CNNs, RNNs, and transformers, and explored generative models and explainable AI for clinical applications. He later joined the Centro de Investigación Biomédica en Red as a Research Scientist, leading projects in medical image segmentation, classification, and interpretability, managing GPU-based deployments, and contributing to international collaborations and grant proposals. His international exposure includes visiting scientist positions at Harvard University’s Brigham and Women’s Hospital, where he worked on image harmonization techniques to improve consistency in multi-center datasets. His research interests lie in artificial intelligence for healthcare, medical image processing, radiomics, generative models, self-supervised learning, and explainable AI with a vision of translating computational tools into clinical practice. Throughout his career, he has guided undergraduate and master’s students, actively contributed to competitive AI challenges, and engaged in cultural leadership as Vice-President of a community association promoting cultural heritage and development. He has presented his research at reputed conferences, published in indexed journals, and continues to expand his academic contributions through collaborative projects. His research skills include proficiency in Python, R, MATLAB, TensorFlow, PyTorch, and Keras, expertise in GPU cluster computing, dataset development, model deployment with Docker, and technical documentation with LaTeX. Fluent in Italian, Spanish, and English, he thrives in multicultural academic environments and has demonstrated both technical excellence and leadership capabilities. Benito has earned academic distinctions for his outstanding performance in higher education and doctoral research, reflecting his commitment to excellence. With strong foundations in artificial intelligence and biomedical engineering, he aspires to drive advancements in precision medicine, foster global collaborations, and translate AI innovations into impactful healthcare solutions.

Profile: Google Scholar | Scopus Profile | ORCID Profile

Featured Publications

Farina, B., Guerra, A. D. R., Bermejo-Peláez, D., Miras, C. P., Peral, A. A., & others. (2023). Integration of longitudinal deep-radiomics and clinical data improves the prediction of durable benefits to anti-PD-1/PD-L1 immunotherapy in advanced NSCLC patients. Journal of Translational Medicine, 21(1), 174.

Farina, B., Guerra, A. D. R., Miras, C. P., Madueño, G. G., Muñoz-Barrutia, A., & others. (2021). Delta-radiomics signature for prediction of survival in advanced NSCLC patients treated with immunotherapy. In 2021 IEEE 18th International Symposium on Biomedical Imaging (ISBI) (pp. 886–890). IEEE.

Farina, B., Benito, R. C., Montalvo-García, D., Bermejo-Peláez, D., Maceiras, L. S., & others. (2025). Spatio-temporal deep learning with temporal attention for indeterminate lung nodule classification. Computers in Biology and Medicine, 196, 110813.

Ramos-Guerra, A. D., Farina, B., Rubio Pérez, J., Vilalta-Lacarra, A., & others. (2025). Monitoring peripheral blood data supports the prediction of immunotherapy response in advanced non-small cell lung cancer based on real-world data. Cancer Immunology, Immunotherapy, 74(4), 120.

Seijo, L., Bermejo-Peláez, D., Gil-Bazo, I., Farina, B., Domine, M., & others. (2023). Integration of longitudinal deep-radiomics and clinical data improves the prediction of durable benefits to anti-PD-1/PD-L1 immunotherapy in advanced NSCLC patients. Journal of Translational Medicine, 21(1), 174.

Bolaños, M. C., Farina, B., Guerra, A. D. R., Miras, C. P., Madueño, G. G., & others. (2020). Design and implementation of predictive models based on radiomics to assess response to immunotherapy in non-small-cell lung cancer. In XXXVIII Congreso Anual de la Sociedad Española de Ingeniería Biomédica.

Prof. Krishan Berwal | Video Analysis | Best Researcher Award

Prof. Krishan Berwal, Video Analysis, Best Researcher Award

Krishan Berwal at Military College of Telecommunication Engg, India

Professional Profile

🎓 Education:

Dr. Krishan Berwal holds a Ph.D. (Computer Science & Engg.) and M.Tech. (Computer Science & Engg.) from Visvesvaraya National Institute of Technology, Nagpur, Maharashtra, India. He completed his B.Tech. (Computer Science & Engg.) from Chaudhary Devi Lal Memorial Government Engineering College, Panniwala Mota, under Chaudhary Devi Lal University, Sirsa, Haryana, India.

🏫 Work Experience:

Dr. Berwal is currently serving as an Associate Professor at the Faculty of Communication Engineering, Military College of Telecommunication Engineering, MHOW, Indore, India, under the Ministry of Defence, Govt. of India. Previously, he held positions at National Institute of Technology Kurukshetra and National Institute of Technology Uttarakhand, where he also served as the Head of the Department and Coordinator of various committees.

🔬 Research Interest:

His research interests span several domains including machine learning, deep learning, video processing, NLP, multimedia analysis, cyber forensics, and cloud computing.

🌐 Professional Contributions:

Dr. Berwal has authored over 100 technical research articles in reputed international conferences and journals, including IEEE and ACM Transactions. He has supervised numerous M.Tech. and Ph.D. scholars and has been actively involved as a reviewer and editorial member for various prestigious journals and conferences.

🏆 Awards and Recognitions:

He has received numerous accolades such as the Best Faculty Award 2022 at NIT Uttarakhand, the Best Student Paper Award in an international conference, and has been recognized as one of the top scientists globally by Stanford University in 2023.

📝 Editorial Roles:

Dr. Berwal serves as an Editor at the IETE Journal of Research (SCI), Editor at the IETE Journal of Education (UGC), and Senior Editor at Artificial Intelligence Evolution. He has also contributed significantly as a guest editor and organizer for various international conferences and workshops.

🎤 Invited Talks and Outreach

He has delivered over 20 invited talks on topics ranging from deep learning techniques to cloud computing and AI applications in various sectors. His contributions extend to hands-on sessions and expert lectures at esteemed institutions across India.

📖 Publications Top Noted:

Paper Title: ASL-3DCNN: American sign language recognition technique using 3-D convolutional neural networks
  • Authors: Shikhar Sharma, Krishan Kumar
  • Journal: Multimedia Tools and Applications
  • Year: 2021
Paper Title: Deep neural architecture for face mask detection on simulated masked face dataset against covid-19 pandemic
  • Authors: Alok Negi, Krishan Kumar, Prachi Chauhan, RS Rajput
  • Year: 2021
Paper Title: Text query based summarized event searching interface system using deep learning over cloud
  • Authors: Krishan Kumar
  • Journal: Multimedia Tools and Applications
  • Year: 2021
Paper Title: Deep learning‐based image classifier for malaria cell detection
  • Authors: Negi Alok, Kumar Krishan, Prachi Chauhan
  • Journal: Machine learning for healthcare applications
  • Year: 2021
Paper Title: Deep neural network‐based multi‐class image classification for plant diseases
  • Authors: Alok Negi, Krishan Kumar, Prachi Chauhan
  • Journal: Agricultural informatics: automation using the IoT and machine learning
  • Year: 2021