Nawel Benchaabane | Medical Image Analysis | Research Excellence Award

Dr. Nawel Benchaabane | Medical Image Analysis | Research Excellence Award

Dr Chef De Projects | Audensiel Technologies | France 

Dr. Nawel Benchaabane is a researcher at Audensiel Technologies, Paris, France, specializing in artificial intelligence for healthcare and medical decision support. Her research focuses on AI-driven gait analysis, medical image understanding, and visual question answering for clinical diagnosis. She has authored 2 Scopus-indexed publications, with 17 citations and an h-index of 1, reflecting early but growing scientific impact. Her work has been published in high-impact venues such as Scientific Reports, IEEE EMBS Conference, and Intelligent Systems with Applications. Through interdisciplinary collaborations between AI and medical domains, her research contributes to improved diagnosis, patient monitoring, and data-driven healthcare innovation with tangible societal benefits.

Citation Metrics (Scopus)

40

30

20

10

0

Citations
17

Documents
2

h-index
1

🟦 Citations 🟥 Documents 🟩 h-index

View Scopus Profile

Featured Publications

Qi Lai | Medical Image Analysis | Women Researcher Award

Dr. Qi Lai | Medical Image Analysis | Women Researcher Award

Assistant Professor | Shenzhen Institutes of Advanced Technology | China

Dr. Qi Lai is a researcher at the Shenzhen Institutes of Advanced Technology, China, specializing in weakly supervised learning, medical image analysis, and multi-instance learning. He has authored 11 peer-reviewed publications, receiving over 52 citations with an h-index of 5. His work spans deep learning for pathology, object detection, semantic segmentation, and medical image restoration, often in collaboration with international teams across leading institutions. Notable contributions include interactive and hybrid MIL frameworks and contrastive learning methods that enhance diagnostic precision. His research advances reliable AI-driven clinical decision support, contributing to improved healthcare technologies and societal well-being.

 

Citation Metrics (Scopus)

200

150

100

50

0

Citations
52

Documents
11

h-index
5

🟦 Citations 🟥 Documents 🟩 h-index

View Scopus Profile
             View Google Scholar Profile
             View ORCID Profile

Featured Publications


Fast broad multiview multi-instance multilabel learning (FBM3L) with viewwise intercorrelation.

– IEEE Transactions on Neural Networks and Learning Systems (2024). Cited By: 5 

Interactive multiple instance learning network for whole slide image analysis.

– Expert Systems with Applications. (2026). Cited By:  1

Joint discriminative latent subspace learning for image classification

– IEEE Transactions on Circuits and Systems for Video Technology. (2022). Cited By:: 15

Yu Zhou | Medical Image Analysis | Best Researcher Award

Dr. Yu Zhou | Medical Image Analysis | Best Researcher Award

Lecturer | Henan University of Science and Technology | China

Dr. Yu Zhou is an emerging researcher in the intersecting domains of medical imaging, neuroscience, and artificial intelligence, recognized for advancing computational approaches that improve the understanding and diagnosis of neurological disorders. With 10 published research documents, 98 citations, an h-index of 7, and an i10-index of 6, his scholarly contributions reflect both productivity and growing international influence. His research has led to notable advancements in diffusion MRI analysis, white-matter connectivity modeling, and machine-learning-driven diagnostic frameworks, particularly within mild cognitive impairment (MCI), juvenile myoclonic epilepsy (JME), and neurobehavioral disorders.Yu Zhou’s most cited works demonstrate strong expertise in fiber-specific white matter analysis, CNN-based transfer learning, and automated classification systems, with contributions published in respected venues such as Cerebral Cortex, Frontiers in Aging Neuroscience, Frontiers in Neuroscience, and Journal of Neural Engineering. His research extends beyond human neuroscience to impactful cross-disciplinary applications, including AI-driven acoustic-based detection systems for livestock estrus identification, showcasing versatility and methodological depth.He has served as principal investigator for two provincial projects, participated in four additional provincial projects and one national project, and contributed to one consultancy/industry initiative, indicating growing leadership in funded research. His innovative capabilities are further evidenced by one granted patent and four patents under review, underscoring his commitment to translational and societally relevant technological development. With collaborations established across computational neuroscience and AI imaging research groups, he continues to contribute to global scientific networks.Yu Zhou’s ongoing work focuses on building interpretable deep-learning models, advancing multimodal data fusion for clinical diagnostics, and developing AI-assisted neuroimaging biomarkers for early disease identification. These contributions hold significant promise for clinical decision support, early-stage neurological assessment, and precision medicine applications. With increasing publication momentum and expanding collaborative research engagements, he is positioned to generate deeper scientific impact and contribute to the evolution of intelligent medical imaging and computational neuroscience.

Profiles:  Googlescholar | ResearchGate

Featured Publications

1.Zhou, Y., Si, X., Chen, Y., Chao, Y., Lin, C. P., Li, S., Zhang, X., Ming, D., & Li, Q. (2022). Hippocampus- and thalamus-related fiber-specific white matter reductions in mild cognitive impairment. Cerebral Cortex, 32(15), 3159–3174. Cited By : 23

2.Si, X., Zhang, X., Zhou, Y., Sun, Y., Jin, W., Yin, S., Zhao, X., Li, Q., & Ming, D. (2020). Automated detection of juvenile myoclonic epilepsy using CNN-based transfer learning in diffusion MRI. In 2020 42nd Annual International Conference of the IEEE Engineering in Medicine and Biology Society (EMBC). IEEE. Cited By : 18

3.Zhou, Y., Si, X., Chao, Y. P., Chen, Y., Lin, C. P., Li, S., Zhang, X., Sun, Y., & Ming, D. (2022). Automated classification of mild cognitive impairment by machine learning with hippocampus-related white matter network. Frontiers in Aging Neuroscience, 14, 866230.Cited By : 13

4.Wang, J., Si, Y., Wang, J., Li, X., Zhao, K., Liu, B., & Zhou, Y. (2023). Discrimination strategy using machine learning technique for oestrus detection in dairy cows by a dual-channel-based acoustic tag. Computers and Electronics in Agriculture, 210, 107949.Cited By : 13

5.Wang, J., Chen, H., Wang, J., Zhao, K., Li, X., Liu, B., & Zhou, Y. (2023). Identification of oestrus cows based on vocalisation characteristics and machine learning technique using a dual-channel-equipped acoustic tag. animal, 17(6), 100811.Cited By : 12

Dr. Yu Zhou’s work advances global healthcare innovation by integrating medical imaging, neuroscience, and artificial intelligence to enable earlier, more accurate detection of neurological disorders. His research drives the development of interpretable, data-driven diagnostic tools that strengthen clinical decision-making and support precision medicine. Through cross-disciplinary innovation, he envisions AI-empowered neuroimaging solutions that improve patient outcomes and transform future healthcare systems.

Tuğba Özge Onur | Image Reconstruction | Best Researcher Award

Assoc. Prof. Dr. Tuğba Özge Onur | Image Reconstruction | Best Researcher Award

Associate Professor | Zonguldak Bülent Ecevit University | Turkey

Assoc. Prof. Dr. Tuğba Özge Onur is a distinguished researcher specializing in signal processing, image reconstruction, and optimization. She earned her Ph.D. in electrical and electronics engineering from a leading university, where she developed a strong foundation in computational imaging and algorithm design. Her professional experience includes leading research projects, coordinating international collaborations, and mentoring students in both academic and applied research settings. Her research interests span computer vision, optimization techniques, and advanced signal processing methods, with a focus on developing innovative solutions for real-world challenges. She possesses a diverse set of research skills, including algorithm development, data analysis, experimental design, and implementation of complex computational models. She is actively engaged in the scientific community through professional memberships and collaborative initiatives. Her work has been widely recognized and published in reputed journals and conferences, demonstrating both the depth and impact of her contributions. Her commitment to advancing knowledge, mentoring emerging researchers, and participating in collaborative projects underscores her influence in the field. 98 Citations, 23 Documents, 6 h-index.

Profiles: Google Scholar | Scopus | ORCID | ResearchGate

Featured Publications

  1. Onur, T. Ö. (2022). Improved image denoising using wavelet edge detection based on Otsu’s thresholding. Acta Polytechnica Hungarica, 19(2), 79–92.

  2. Onur, Y. A., İmrak, C. E., & Onur, T. Ö. (2017). Investigation on bending over sheave fatigue life determination of rotation resistant steel wire rope. Experimental Techniques, 41(5), 475–482.

  3. Narin, D., & Onur, T. Ö. (2022). The effect of hyperparameters on the classification of lung cancer images using deep learning methods. Erzincan University Journal of Science and Technology, 15(1), 258–268.

  4. Kaya, G. U., & Onur, T. Ö. (2022). Genetic algorithm based image reconstruction applying the digital holography process with the Discrete Orthonormal Stockwell Transform technique for diagnosis of COVID-19. Computers in Biology and Medicine, 148, 105934.

  5. Onur, T. (2021). An application of filtered back projection method for computed tomography images. International Review of Applied Sciences and Engineering, 12(2), 194–200.

Bor-Sheng Ko | Biomedical and Healthcare Applications | Best Researcher Award

Assoc. Prof. Dr. Bor-Sheng Ko | Biomedical and Healthcare Applications | Best Researcher Award

National Taiwan University Cancer Center, Taiwan

Author Profiles

Orcid

🎓 Academic and Professional Background

Dr. Ko earned his Medical Degree from NTUCM in 1995 and later completed his PhD in Clinical Medicine from the same institution. He has held prestigious leadership roles, including President of the Taiwan Society of Blood and Marrow Transplantation (2019–2022) and President of the Taiwan Society of Pharmacoeconomics and Outcome Research (2018–2023). He is also a member of the Executive Committee of the Asian-Pacific Blood and Marrow Transplantation (APBMT) Group, and currently presides over the Hematology Society of Taiwan (HST).

🏥 Designation and Institution

Assoc. Prof. Dr. Bor-Sheng Ko serves as the Director of the Department of Hematological Oncology at the National Taiwan University Cancer Center, Taiwan. He also holds dual roles as Director of the Tai-Cheng Cell Therapy Center and Associate Professor at the National Taiwan University College of Medicine (NTUCM).

🌍 Professional Memberships

Dr. Ko is actively engaged in numerous professional societies, including the Taiwan Society of Internal Medicine, Hematology Society of Taiwan, Taiwan Society of Blood and Marrow Transplantation, American Hematology Society, European Hematology Association, Asian-Pacific Bone and Marrow Transplantation Group, International Society of Pharmacoeconomics and Outcome Research, International Society of Cell Therapy, and the European Blood and Marrow Transplantation Group.

🔬 Areas of Research

Dr. Ko’s research spans hematology, hematopoietic stem cell transplantation (HSCT), pharmaco-economics, and the application of machine learning and deep learning in data science for clinical use. His interdisciplinary focus bridges traditional clinical research with cutting-edge computational methods.

📈 Research Contributions

Dr. Ko is a prominent figure in the study of hematopoietic diseases, particularly leukemia, lymphoma, and HSCT. He has recently led projects on medical databank development, big data analysis, and the integration of AI technologies—including machine learning and deep learning algorithms—into healthcare settings. A dedicated academic, Dr. Ko has published extensively in high-impact international journals, significantly advancing research in his fields of expertise.

Notable Publications📝


📝Recommendations for the treatment and management of adult B‐Cell acute lymphoblastic leukemia in Asia‐Pacific: Outcomes from a pilot initiative

Author: Zhentang Lao; Kwong Yok Lam; Yuk Man Carol Cheung; Chieh‐Lin Teng; Vivek Radhakrishnan; Dinesh Bhurani; Bor‐Sheng Ko; Yeow Tee Goh

Journal: Asia-Pacific Journal of Clinical Oncology

Year: 2024


📝Pooled analysis of pralatrexate single-agent studies in patients with relapsed/refractory peripheral T-cell lymphoma

Author: Owen A. O’Connor; Bor-Sheng Ko; Ming-Chung Wang; Dai Maruyama; Yuqin Song; Ee-Min Yeoh; Nick Manamley; Kensei Tobinai

Journal: Blood Advances

Year: 2024


📝Asia‐Pacific Leukemia Consortium: An innovative and collaborative initiative to improve care of leukemia and related diseases in the Asia‐Pacific region

Author: Zhentang Lao; Eric Wai Choi Tse; Suporn Chuncharunee; Yok Lam Kwong; Andrew Wei; Bor Sheng Ko; Jin Seok Kim; Soo Chin Ng; Jianxiang Wang; Yeow Tee Goh

Journal: Asia-Pacific Journal of Clinical Oncology

Year: 2023


📝A Chunking-for-Pooling Strategy for Cytometric Representation Learning for Automatic Hematologic Malignancy Classification

Author: Jeng-Lin Li; Yun-Chun Lin; Yu-Fen Wang; Sara A. Monaghan; Bor-Sheng Ko; Chi-Chun Lee

Journal: IEEE Journal of Biomedical and Health Informatics

Year: 2022


📝Iptacopan monotherapy in patients with paroxysmal nocturnal hemoglobinuria: a 2-cohort open-label proof-of-concept study

Author: Jun Ho Jang; Lily Wong; Bor-Sheng Ko; Sung-Soo Yoon; Katie Li; Irina Baltcheva; Prasanna Kumar Nidamarthy; Raghav Chawla; Guido Junge; Eng Soo Yap

Journal: Blood Advances

Year: 2022

Dr. Ghulam Murtaza | Image Processing | Best Academic Researcher Award

Dr. Ghulam Murtaza | Image Processing | Best Academic Researcher Award

Doctorate at National University of Modern Languages, Pakistan

👨‍🎓 Profiles

Scopus

Orcid

📌 Summary

Dr. Ghulam Murtaza is an Assistant Professor in the Department of Mathematics at the National University of Modern Languages (NUML), Islamabad. His research focuses on developing new mathematical models in cryptography, particularly in elliptic curve and chaotic maps-based cryptosystems. With a passion for innovation, he mentors students and actively contributes to cutting-edge research in mathematical cryptography and machine learning-based cryptosystems.

🎓 Education

  • PhD in Mathematics (2019–2023) – Quaid-i-Azam University
    Dissertation: Image Cryptosystems Using Elliptic Curve Cryptography

  • MPhil in Mathematics (2015–2017) – Quaid-i-Azam University
    Dissertation: Learning From Data Using Algebraic Geometry

  • MSc in Mathematics (2013–2015) – Quaid-i-Azam University

  • BSc in Mathematics & Physics (2010–2012) – Bahauddin Zakariya University

👨‍🏫 Professional Experience

  • Assistant Professor – NUML, Islamabad (2023–Present)

  • Visiting Assistant Professor – Quaid-i-Azam University (2023)

  • Visiting Lecturer – Quaid-i-Azam University (2023–2024)

  • Lecturer – University of Lahore, Pakpattan Campus (2017–2019)

🏆 Awards & Honors

  • First-class academic record from Matric to MPhil

  • Mrs. Rehmat Shahbuddin Memorial Scholarship (MSc, 2013–2015)

  • Merit Scholarship – Quaid-i-Azam University

  • Shahbaz Sharif Youth Initiative Laptop Scheme (2012)

🔬 Research Interests

  • Elliptic Curve Cryptography

  • Chaotic Maps-Based Cryptography

  • Machine Learning for Cryptosystems

  • Dynamical Systems & Isogeny-Based Cryptography

 

Publications

Efficient Image Encryption Algorithm Based on ECC and Dynamic S-Box

  • Author: Ghulam Murtaza, Umar Hayat
    Journal: Journal of Information Security and Applications
    Year: 2025

Enumerating Discrete Resonant Rossby/Drift Wave Triads and Their Application in Information Security

  • Author: Umar Hayat, Ikram Ullah, Ghulam Murtaza, Naveed Ahmed Azam, Miguel D. Bustamante
    Journal: Mathematics
    Year: 2022

Designing an Efficient and Highly Dynamic Substitution-Box Generator for Block Ciphers Based on Finite Elliptic Curves

  • Author: Ghulam Murtaza, Naveed Ahmed Azam, Umar Hayat, Iqtadar Hussain
    Journal: Security and Communication Networks
    Year: 2021

Prof Dr. Guoping Yan | Biomedical Imaging | Best Researcher Award

Structural reconstruction synthesis of highly luminous water-stable CsPbBr3@CsPb2Br5@DSPE core-shell perovskite nanocrystals for bioimaging, pattering, and LEDs

  • Author: Jiejun Ren, Longyun Liu, Fan Liu, Guoping Yan, Yuhua Wang
    Journal: Journal of Materials Science and Technology
    Year: 2025

Synthesis and property of 1,1,3,3-tetramethylisoindolin-2-yloxyl-containing polythiophene

  • Author: Fan Liu, Yanchun Shen, Guoping Yan
    Journal: Journal of Alloys and Compounds
    Year: 2025

Lead-Doped Cesium Manganese Halide Perovskite Nanocrystals for Light-Emitting Diodes: Room-Temperature Synthesis, Energy Transfer, and Phase Modulating

  • Author: Jiejun Ren, Longyun Liu, Huiping Liu, Guoping Yan, Yuhua Wang
    Journal: ACS Materials Letters
    Year: 2025

Carbonic Anhydrase IX Targeted Polyaspartamide Fluorescent Probes for Tumor Imaging

  • Author: Yu Zhang, Fan Liu, Chuntao Shao, Jun Huang, Guoping Yan
    Journal: International Journal of Nanomedicine
    Year: 2025

Synthesis and Characterization of Sulfonamide-Containing Naphthalimides as Fluorescent Probes

  • Author: Zhiwei Liu, Fan Liu, Chuntao Shao, Guoping Yan, Jiangyu Wu
    Journal: Molecules
    Year: 2024

Mr. Jiahao Nie | Image Processing | Best Researcher Award

Mr. Jiahao Nie | Image Processing | Best Researcher Award

Hangzhou Dianzi University, China

👨‍🎓 Profiles

Scopus

Google Scholar

📌 Summary

Mr. Jiahao Nie is a dedicated Ph.D. candidate at Hangzhou Dianzi University (HDU) and Hanyang University (HYU), specializing in computer vision, 2D image processing, and 3D point cloud processing. Under the guidance of Prof. Zhiwei He and Assoc. Prof. Dong-Kyu Chae, he is actively engaged in cutting-edge research in autonomous driving and object tracking.

🎓 Education

  • Ph.D. in Electronic Science and Technology (HDU, 2022-2025)
  • Joint Ph.D. in Computer Science (HYU, 2024-2025)
  • B.Eng. in Electronic Information Engineering (HDU, 2020-2022)

🔬 Research Interests

His research is primarily focused on computer vision, including 2D image processing, 3D point cloud processing, and object tracking for autonomous driving.

🏆Honors & Awards

  • Ph.D. National Scholarship (Rank: 1/75) | Full Postgraduate Scholarship (2020-2025)
  • First-Class Academic Scholarship (Top 3%) | National Scholarship for Studying Abroad (2023)

📑 Academic Contributions

  • Reviewer for ICCV, CVPR, ICLR, ICML, ECCV, NeurIPS, AAAI, ACM MM
  • Presenter at ICLR (2024), IJCAI (2023), AAAI (2023)

 

Publications

TTSNet: state-of-charge estimation of Li-ion battery in electrical vehicles with temporal transformer-based sequence network

  • Authors: Zhengyi Bao, Jiahao Nie, Huipin Lin, Kejie Gao, Zhiwei He, Mingyu Gao
  • Journal: IEEE Transactions on Vehicular Technology
  • Year: 2024

A fine-grained feature decoupling based multi-source domain adaptation network for rotating machinery fault diagnosis

  • Authors: Xiaorong Zheng, Jiahao Nie, Zhiwei He, Ping Li, Zhekang Dong, Mingyu Gao
  • Journal: Reliability Engineering & System Safety
  • Year: 2024

A progressive multi-source domain adaptation method for bearing fault diagnosis

  • Authors: Xiaorong Zheng, Zhiwei He, Jiahao Nie, Ping Li, Zhekang Dong, Mingyu Gao
  • Journal: Applied Acoustics
  • Year: 2024

Dual-task learning for joint state-of-charge and state-of-energy estimation of lithium-ion battery in electric vehicle

  • Authors: Zhengyi Bao, Jiahao Nie, Huipin Lin, Zhi Li, Kejie Gao, Zhiwei He, Mingyu Gao
  • Journal: IEEE Transactions on Transportation Electrification
  • Year: 2024

TM2B: Transformer-Based Motion-to-Box Network for 3D Single Object Tracking on Point Clouds

  • Authors: Anqi Xu, Jiahao Nie*, Zhiwei He, Xudong Lv
  • Journal: IEEE Robotics and Automation Letters
  • Year: 2024

Dr. Hua Ren | Image Processing | Best Researcher Award

Dr. Hua Ren | Image Processing | Best Researcher Award

Doctorate at Henan Normal University, China

👨‍🎓 Profiles

Scopus

Orcid

📌 Summary

Dr. Hua Ren is a dedicated researcher and lecturer specializing in image security, encryption, and data hiding. His expertise lies in visually secure encryption and authentication technologies, contributing significantly to high-impact journals and research projects in these domains.

🎓 Education

  • Ph.D. in Computer Science and Technology, Beijing University of Posts and Telecommunications (2019-2023)
  • Master’s in Computer Science and Technology, Henan Normal University (2016-2019)
  • Bachelor’s in Computer Science and Technology, Henan Normal University (2012-2016)

💼 Work & Research Experience

  • Lecturer (2023-Present) – School of Computer and Information Engineering, Henan Normal University
  • Principal Investigator – Henan Science and Technology Research Project on image reversible authentication (2025-2026)

🔬 Research Interests

  • Image Security & Encryption
  • Reversible Data Hiding
  • Visual Authentication & Cryptography
  • Digital Image Processing

 

Publications

A novel reversible data hiding method in encrypted images using efficient parametric binary tree labeling

  • Authors: Hua Ren, Zhen Yue, Feng Gu, Ming Li, Tongtong Chen, Guangrong Bai
  • Journal: Knowledge-Based Systems
  • Year: 2024

Multi-scale attention context-aware network for detection and localization of image splicing

  • Authors: Ruyong Ren, Shaozhang Niu, Junfeng Jin, Jiwei Zhang, Hua Ren, Xiaojie Zhao
  • Journal: Applied Intelligence
  • Year: 2023

ERINet: Efficient and robust identification network for image copy-move forgery detection and localization

  • Authors: Ruyong Ren, Shaozhang Niu, Junfeng Jin, Keyang Xiong, Hua Ren
  • Journal: Applied Intelligence
  • Year: 2023

ESRNet: Efficient Search and Recognition Network for Image Manipulation Detection

  • Authors: Ruyong Ren, Shaozhang Niu, Hua Ren, Shubin Zhang, Tengyue Han, Xiaohai Tong
  • Journal: ACM Transactions on Multimedia Computing, Communications, and Applications
  • Year: 2022

Joint encryption and authentication in hybrid domains with hidden double random-phase encoding

  • Authors: Hua Ren, Shaozhang Niu
  • Journal: Multimedia Tools and Applications
  • Year: 2022

Prof. Nema Salem | Image Processing | Best Researcher Award

Prof. Nema Salem | Image Processing | Best Researcher Award

Professor at Effat University, Saudi Arabia

👨‍🎓 Profiles

Scopus

Orcid

Google Scholar

🎓 Early Academic Pursuits

Prof. Nema Salem’s academic journey began with a strong foundation in engineering and medical imaging. She earned her B.Sc. with honors in 1987 and later obtained her M.Sc. in 1990 from Alexandria University (AU), Egypt, specializing in mitral valve diagnosis. She further pursued her Ph.D. in “Classification of Breast Tumors by Acutance Measure and Shape Factors” through a joint program between the University of Calgary, Canada, and AU in 1996. Her early research laid the groundwork for advancements in medical diagnostics, particularly in breast cancer detection, setting the stage for a distinguished academic and research career.

🏆 Professional Endeavors

Prof. Salem’s professional trajectory spans multiple prestigious institutions. Since 1987, she has held progressive academic roles at AU, the Asian Institute of Technology (AIT), Hadramout University in Yemen, and Effat University in Saudi Arabia, where she has been an Assistant Professor since 2008. She has also served as the Chair of the Electrical and Computer Engineering Department at Effat University, contributing to curriculum development and accreditation processes such as NCAAA and ABET. Her leadership extends beyond academia, as she has organized international competitions like the IET GCC Robotics Challenge and the World Robot Olympiad, promoting innovation among young engineers.

🔬 Contributions and Research Focus

Prof. Salem’s research portfolio is marked by interdisciplinary contributions in medical imaging, artificial intelligence, control systems, and renewable energy. She has pioneered AI-driven applications, including ECG analysis, skin lesion segmentation, and glaucoma detection, enhancing the accuracy of medical diagnostics. Additionally, she has played a crucial role in renewable energy advancements, optimizing solar power generation and thermoelectric systems. Her expertise in robotics and control engineering is evident in her work on PID and LQR controllers for performance enhancement in automation and energy-efficient designs.

🌍 Impact and Influence

Prof. Salem’s influence extends beyond her research, as she actively mentors students, supervises master’s and Ph.D. theses, and collaborates with international researchers. Her dedication to fostering innovation has resulted in students winning prestigious awards, including a bronze medal at the 49th International Exhibition in Geneva. She has also contributed significantly to the academic community through her editorial roles and peer-reviewing for high-impact journals. Her recognition includes the Queen Effat Award for Teaching Excellence (2019-2020, 2022-2023) and a UK Fellowship for teaching excellence, affirming her commitment to quality education and research.

📚 Academic Citations and Publications

Prof. Salem’s research is well-documented in reputable journals and conferences. She has published extensively in IEEE Transactions on Medical Imaging, PLOS ONE, Sensors, and IEEE Access, with a strong presence in high-impact publications. Her work is widely cited, reflecting its significance in medical imaging, artificial intelligence, and renewable energy. Her research contributions are accessible via Google Scholar and the AD Scientific Index 2024, demonstrating her academic reach and influence.

💡 Technical Skills and Expertise

Prof. Salem possesses a diverse technical skill set, encompassing AI-driven signal and image processing, robotics, logic design, and renewable energy optimization. She has expertise in developing machine learning models for medical diagnostics, implementing control strategies for automation, and designing CMOS-based circuits. Her ability to integrate interdisciplinary approaches has made her a sought-after researcher in multiple domains, from biomedical engineering to energy-efficient systems.

📖 Teaching and Mentorship

With over three decades of teaching experience, Prof. Salem has played a pivotal role in shaping the next generation of engineers. She has designed and delivered courses in signal processing, artificial intelligence, control systems, and electronics. Her student-centered approach has been recognized through multiple teaching awards. She actively engages in student mentorship, encouraging innovative research projects and guiding them to success in international competitions and academic publishing.

🔮 Legacy and Future Contributions

Prof. Salem’s legacy is defined by her relentless pursuit of innovation and knowledge dissemination. Her research continues to push the boundaries of technology, particularly in AI-driven healthcare and renewable energy systems. She remains committed to mentoring students, expanding research collaborations, and advancing engineering education. Through her leadership, she aims to drive impactful change in medical diagnostics, sustainable energy, and robotics, ensuring a lasting influence in academia and industry.

 

Publications

Artificially Intelligent Detection of Retinal Pigment Sign Using P3S-Net for Retinitis Pigmentosa Analysis

  • Authors: Syed Muhammad Ali Imran, Abida Hussain, Nema Salem, Muhammad Arsalan
    Journal: Results in Engineering
    Year: 2025

Causal Speech Enhancement Using Dynamical-Weighted Loss and Attention Encoder-Decoder Recurrent Neural Network

  • Authors: Fahad Khalil Peracha, Abdullah M. Mutawa, Muhammad Irfan Khattak, Nema Salem, Nasir Saleem
    Journal: PLOS ONE
    Year: 2023

Artificial Intelligence-Based Detection of Human Embryo Components for Assisted Reproduction by In Vitro Fertilization

  • Authors: Abeer Mushtaq, Maria Mumtaz, Ali Raza, Nema Salem, Muhammad Naveed Yasir
    Journal: Sensors
    Year: 2022

Automated Diagnosis of Leukemia: A Comprehensive Review

  • Authors: Afshan Shah, Syed Saud Naqvi, Khuram Naveed, Nema Salem, Mohammad A. U. Khan, Khurram S. Alimgeer
    Journal: IEEE Access
    Year: 2021

DAVS-NET: Dense Aggregation Vessel Segmentation Network for Retinal Vasculature Detection in Fundus Images

  • Authors: Mohsin Raza, Khuram Naveed, Awais Akram, Nema Salem, Amir Afaq, Hussain Ahmad Madni, Mohammad A. U. Khan, Mui-zzud-din
    Journal: PLOS ONE
    Year: 2021