Annarosa Scalcione | Machine learning | Research Excellence Award

Dr. Annarosa Scalcione | Machine learning | Research Excellence Award

Politecnico di Torino | Italy

Dr. Annarosa Scalcione is an early-career biomedical engineer at Politecnico di Torino with research expertise in medical image analysis, radiomics, and artificial intelligence–based diagnostic support systems. Her work focuses on end-to-end radiomic frameworks for the automated classification and three-dimensional visualization of vertebral lesions, aiming to enhance accuracy, reproducibility, and clinical interpretability in spinal and musculoskeletal imaging. She is the co-author of a peer-reviewed journal article published in Engineering (MDPI), reflecting her contribution to interdisciplinary research at the intersection of biomedical engineering, computer vision, and clinical imaging. Her research activities involve collaboration with multidisciplinary teams of engineers, clinicians, and imaging experts, underscoring a strong capacity for cooperative scientific work. While at an early stage of her academic career, her research demonstrates clear translational and societal impact by supporting improved diagnostic workflows, facilitating data-driven clinical decision-making, and contributing to the advancement of intelligent healthcare technologies with potential benefits for patient outcomes.


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Featured Publication

Chao Li | Machine Learning | Best Researcher Award

Assoc. Prof. Dr. Chao Li | Machine Learning | Best Researcher Award

Department Chair | Chengdu University of Technology | China

Assoc. Prof. Dr. Chao Li of Chengdu University of Technology is an expert in geophysical signal processing, seismic data reconstruction, and intelligent subsurface imaging, with a focus on integrating machine learning and advanced computational techniques into geoscience applications. He has authored 31 peer-reviewed publications cited 425 times, reflecting a strong research impact and an h-index of 12. His work includes the development of Generative Adversarial Networks for seismic reconstruction, non-subsampled contourlet transforms for low-amplitude structure detection, and hybrid neural architectures for source deblending, addressing critical challenges in exploration geophysics and subsurface data interpretation. Collaborating with over 50 co-authors, Dr. Li demonstrates a commitment to interdisciplinary and international research, bridging academia and industry. His contributions enhance the accuracy, efficiency, and sustainability of seismic exploration, providing tools for more reliable resource evaluation and environmental monitoring. By combining computational intelligence with applied geophysics, Dr. Li’s research promotes innovation in energy exploration, environmental stewardship, and global geoscience advancement, making significant scientific, industrial, and societal impacts.

Profile: Scopus

Featured Publications

1. Ke, C.-F., Zu, S.-H., Cao, J.-X., Jiang, X.-D., Li, C., & Liu, X.-Y. (2024). A hybrid WUDT‑NAFnet for simultaneous source data deblending. Petroleum Science, 21(3), 1649‑1659.
Cited by: 1

2. Low‑amplitude structure recognition method based on non‑subsampled contourlet transform. Petroleum Science.(2024)
Cited by: 1

3. Seismic Data Reconstruction via Least‑Squares Generative Adversarial Networks With Inverse Interpolation. IEEE Transactions on Geoscience and Remote Sensing.(2025)
Cited by: 1

Assoc. Prof. Dr. Chao Li’s pioneering work at the interface of geophysics and artificial intelligence is reshaping the future of seismic data interpretation, enabling smarter, data-driven exploration. His vision emphasizes leveraging AI-powered geoscience solutions to advance sustainable resource utilization and strengthen global resilience in energy and environmental systems.