Melania Ruggiero | Neuroinflammation | Best Researcher Award

Dr. Melania Ruggiero | Neuroinflammation | Best Researcher Award

Dr. Melania Ruggiero is a postdoctoral researcher at the University of Bari Aldo Moro, specializing in neuroinflammation and neurodegenerative diseases. She earned her Master’s degree in Medical Biotechnology and Nanobiotechnology from the University of Salento in 2020, followed by a PhD in Functional and Applied Genomics and Proteomics from the University of Bari Aldo Moro in 2024. Throughout her academic journey, she has attended specialized training in neuroscience and advanced fluorescence microscopy. Her research focuses on exploring bioactive compounds for neuroprotection, reprogramming astrocytes into neurons, and mitigating neuroinflammatory processes. She has contributed extensively to scientific literature, authoring multiple publications in high-impact journals, and currently serves as a reviewer for journals such as the International Journal of Molecular Sciences and Cells. Dr. Ruggiero actively collaborates with national and international research groups, contributing to innovative approaches in the treatment of neurodegenerative disorders.

Profile

🎓 Education

Dr. Melania Ruggiero’s academic journey began with her Master’s degree in Medical Biotechnology and Nanobiotechnology at the University of Salento (2020), where she gained a strong foundation in molecular biology, biotechnology, and nanomedicine. She subsequently pursued a PhD in Functional and Applied Genomics and Proteomics at the University of Bari Aldo Moro (2024), during which she engaged in extensive research focused on neurodegenerative disorders. Her doctoral studies were enriched by attending specialized courses, including the “Cellular, Behavioural and Cognitive Neuroscience” school and the “Fluomicro@ICGEB-ICGEB Practical Course of Fluorescence Microscopy and High Throughput Imaging.” These programs equipped her with advanced skills in cellular neuroscience, imaging, and data analysis. Her academic training provided a strong interdisciplinary foundation that bridges biotechnology, neuroscience, and clinical research, supporting her ongoing contributions to innovative treatments for neurodegenerative diseases.

🧪 Experience

Dr. Ruggiero’s professional experience encompasses advanced academic research and international collaboration. Currently a postdoctoral researcher at the Department of Biosciences, Biotechnology and Environment at the University of Bari Aldo Moro, she actively investigates neurodegeneration, neuroinflammation, and potential therapeutic interventions. Her research has led to seven completed and five ongoing research projects. Dr. Ruggiero’s expertise includes the study of bioactive compounds for neuroprotection, demonstrating their ability to reduce neuroinflammatory processes and promote astrocyte reprogramming. She has authored numerous peer-reviewed publications and is actively involved in peer-review activities for journals such as International Journal of Molecular Sciences and Cells. Her collaborative network extends across various esteemed institutions, including universities in Italy and Saudi Arabia. Dr. Ruggiero’s experience reflects a commitment to cutting-edge neuroscience research, fostering translational approaches to combat neurodegenerative disorders.

🏅 Awards and Honors

While specific awards are not listed, Dr. Ruggiero’s scholarly contributions demonstrate substantial recognition in the scientific community. Her numerous publications in internationally indexed journals, with a current h-index of 6, signify her growing influence and impact in the field of neuroscience. Serving as a peer reviewer for prestigious journals such as International Journal of Molecular Sciences and Cells highlights her standing as a respected expert. Additionally, her collaborations with multiple international institutions reflect her role as a valued scientific partner in global research networks. Her research findings, particularly on the neuroprotective roles of bioactive compounds and astrocyte reprogramming, position her as a strong candidate for the Best Researcher Award, acknowledging her innovative contributions to neuroscience and neurodegenerative disease research.

🔬 Research Focus

Dr. Ruggiero’s research centers on neuroinflammation and neurodegenerative diseases, with a particular emphasis on bioactive compounds as potential therapeutic agents. Her innovative work has demonstrated that compounds such as resveratrol, vitamin C, irisin, and lactoferrin can reduce astrogliosis and microgliosis, mitigating neuroinflammatory responses that underlie neurodegeneration. Significantly, she has pioneered findings showing that lactoferrin not only attenuates astrocyte reactivity but also reprograms astrocytes into neuronal precursor cells, promoting neurogenesis and counteracting neuronal loss. This groundbreaking research contributes to developing safer, more effective therapies for neurodegenerative disorders, minimizing side effects compared to conventional treatments. Her work integrates cellular biology, molecular neuroscience, and translational medicine, advancing novel therapeutic strategies for conditions such as Alzheimer’s and Parkinson’s disease. Her collaborations across national and international institutions further enhance the multidisciplinary nature and clinical relevance of her research.

Conclusion

Dr. Melania Ruggiero is an emerging leader in neurodegenerative research, whose pioneering work on bioactive compounds and astrocyte reprogramming offers innovative therapeutic avenues, demonstrated through extensive publications, international collaborations, and impactful scientific contributions, making her a strong candidate for the Best Researcher Award.

Publications

Aymane Edder | Ai and Iot in Healthcare | Best Researcher Award

Mr. Aymane Edder | Ai and Iot in Healthcare | Best Researcher Award

Edder Aymane is a highly motivated third-year PhD student specializing in Tiny Machine Learning (TinyML) for vital signs monitoring. Based in Casablanca, Morocco, his research focuses on developing efficient machine learning models deployable on embedded systems to analyze and interpret biomedical data in real-time, ultimately enhancing health monitoring and diagnostics. His technical expertise spans TinyML, embedded systems, IoT, biomedical signal processing, model optimization, and programming languages such as Python, C/C++, and MATLAB. Edder has gained hands-on experience through internships at ERAMEDIC, CHU Ibn Rochd, MEDICINA, and BRET LAB, contributing to various healthcare technology projects including the development of remote monitoring prototypes for COVID-19 patients. His academic journey reflects a strong foundation in biomedical engineering, industrial science physics, and medical analysis, complemented by extensive practical skills. Fluent in Arabic and English, with intermediate proficiency in French, Edder Aymane is committed to advancing real-time healthcare solutions through innovative machine learning applications.

Profile

🎓 Education

Edder Aymane’s educational path demonstrates a strong interdisciplinary foundation. He is currently pursuing his PhD at UM6SS, Casablanca (2023–present), focusing on TinyML applications for healthcare monitoring. He earned his Engineering Degree in Biomedical Sciences from ENSAM Rabat (2019–2022), where he worked on practical projects such as remote vital parameters monitoring for COVID-19 patients. Prior to that, he completed preparatory classes in Industrial Science Physics (PSI) (2017–2019), which equipped him with a strong base in physics and engineering principles. Throughout his academic training, Edder engaged in various internships at leading healthcare and research institutions, including ERAMEDIC, CHU Ibn Rochd, and MEDICINA, where he gained real-world experience in laboratory analysis, medical device installation, and healthcare informatics. His academic career combines theoretical learning with hands-on practice, positioning him well for advanced research in biomedical machine learning and embedded systems.

🧪 Experience

Edder Aymane has developed extensive professional experience through diverse internships and research projects related to healthcare technology and biomedical engineering. At ERAMEDIC (July–Sept 2021), he contributed to the installation of Neuro-Navigation Surgery Software and pre-installation of radiology rooms. During his time at MEDICINA (July–Aug 2020), he performed internal and external quality control of biochemistry, hematology, and serology automat systems. At CHU Ibn Rochd, he was involved in setting up COVID-19 services and developing remote monitoring prototypes for vital signs during the pandemic. His end-of-studies internship at BRET LAB (2023–present) further strengthened his research expertise in biomedical signal processing and TinyML model development. These experiences allowed him to apply his technical skills in embedded systems, IoT integration, and machine learning, giving him a well-rounded profile in both research and applied biomedical technologies.

🏅 Awards and Honors

While specific formal awards and honors are not listed, Edder Aymane’s consistent selection for highly technical internships and research projects at reputable healthcare institutions demonstrates recognition of his expertise and potential. His involvement in cutting-edge projects such as the development of a prototype remote vital parameters monitor for COVID-19, installation of complex neuro-navigation systems, and leadership roles during his internships indicate a high level of trust from supervisors and collaborators. His acceptance into the PhD program at UM6SS to work on emerging fields like TinyML reflects both academic and professional acknowledgment of his abilities. Additionally, his multidisciplinary skillset in machine learning, embedded systems, and biomedical signal processing showcases his outstanding technical competency, positioning him as a promising researcher poised for future honors as his academic career progresses.

🔬 Research Focus

Edder Aymane’s research focuses on leveraging Tiny Machine Learning (TinyML) for real-time health monitoring and diagnostics. His work involves developing highly efficient machine learning models optimized for deployment on embedded systems with limited computational resources. Specifically, he focuses on analyzing biomedical signals such as ECG data, enabling continuous monitoring of vital signs directly from wearable or portable devices. His research integrates advanced signal processing techniques, noise filtering, IoT protocols (MQTT, CoAP, BLE), and real-time data interpretation, contributing to more accessible, scalable healthcare solutions. By combining biomedical engineering with embedded AI, Edder aims to bridge the gap between sophisticated machine learning models and practical, low-power medical devices. His work has significant implications for early diagnostics, remote patient monitoring, and scalable healthcare delivery, particularly in resource-limited settings. This research contributes to the growing field of personalized, preventive healthcare powered by intelligent, real-time monitoring systems.

Conclusion

Edder Aymane is an emerging biomedical researcher specializing in TinyML for vital signs monitoring, with a strong foundation in biomedical engineering, embedded systems, IoT, and machine learning; his hands-on experience across leading healthcare institutions and advanced research in real-time healthcare monitoring position him as a promising innovator poised to advance scalable, efficient, and accessible healthcare solutions through cutting-edge embedded AI technologies.

Publications

Ahmad Muhammad | Medical Image Analysis | Best Researcher Award

Mr. Ahmad Muhammad | Medical Image Analysis | Best Researcher Award

Muhammad Ahmad is a passionate AI researcher and software engineer currently pursuing a Master’s in Information and Communication Engineering at the University of Electronic Science and Technology of China (UESTC). With a Bachelor’s in Computer Science from the University of South Asia, Lahore, he has gained extensive experience in generative AI, LLMs, deep learning, and medical image analysis. He has served as a Software Engineer at E-teleQuote Inc. (USA), where he led projects involving LLaMA 3.1, sentiment analysis, and real-time chatbot systems. His academic contributions include first-author publications on Alzheimer’s disease and brain tumor diagnosis using hybrid deep learning models. Recognized with multiple awards and scholarships, including a fully funded Master’s scholarship, Ahmad brings together strong programming skills, leadership experience, and a commitment to innovation in healthcare AI. His work reflects a deep interest in combining machine learning with medical imaging to solve real-world challenges through intelligent systems.

Profile

🎓 Education

Muhammad Ahmad holds a Master’s degree in Information and Communication Engineering from UESTC, Chengdu, China, where he maintains a GPA of 3.54/4.0 and focuses on generative AI, LLMs, deep learning, and medical image analysis. Previously, he earned a BS in Computer Science from the University of South Asia, Lahore, Pakistan, graduating with a CGPA of 3.16/4.0. His final year project—Walmart Weekly Sales Prediction—reflected his early commitment to machine learning. His academic journey has been bolstered by self-motivated learning, with certifications from Stanford University, IBM, and DeepLearning.AI in TensorFlow, machine learning with Python, and data analysis. Alongside his formal education, Ahmad has organized machine learning workshops and led ACM and IEEE student chapters, showcasing a combination of technical proficiency and community leadership. His educational background lays a strong foundation for interdisciplinary AI research, especially in biomedical applications.

🧪 Experience

Muhammad Ahmad has valuable industry experience as a Software Engineer in AI at E-teleQuote Inc. (Florida, USA), where he led projects utilizing LLaMA 3.1 for document processing and chatbot development. He developed robust NLP solutions, including sentiment analysis and speech recognition systems, while deploying and optimizing AI models for production environments. Earlier, during his internship at Quid Sol (Lahore), he worked on deep learning-based object detection, segmentation, and noise reduction, applying feature engineering and model optimization techniques. Beyond technical roles, he held leadership positions, including Vice-Chair of the ACM Society and event organizer for IEEE, fostering innovation within academic communities. Ahmad’s experience combines hands-on coding with strategic project leadership in AI, making him adept at translating theoretical machine learning concepts into real-world applications, particularly in healthcare and image analysis domains.

🏅 Awards and Honors

Muhammad Ahmad’s academic excellence and leadership have earned him multiple awards. He received a fully funded scholarship from the University of Electronic Science and Technology of China (UESTC) to pursue his Master’s studies in AI. In 2020, he was awarded a semester scholarship for conducting a high-impact workshop on machine learning at the University of South Asia. His community engagement was recognized by the Rooh Foundation and the Government of Pakistan for volunteer work with the Humanity Welfare Foundation. In technical competitions, he secured 1st place at COMSATS University’s Web Development Competition (April 2018) and 2nd place at Superior University (September 2018), demonstrating his early programming excellence. Additionally, Ahmad has earned respected certifications in machine learning, deep learning, and data analysis from Stanford, IBM, and CognitiveClass.ai, highlighting his continuous pursuit of technical mastery in the field of artificial intelligence and data science.

🔬 Research Focus

Muhammad Ahmad’s research focuses on deep learning, generative AI, and large language models (LLMs), particularly applied to medical image analysis. He is committed to enhancing diagnostic accuracy in complex medical conditions using AI. His notable work includes developing a hybrid deep learning architecture with adaptive feature fusion for multi-stage Alzheimer’s disease classification, published in Brain Sciences. Another study, submitted to the International Journal of Machine Learning and Cybernetics, proposes a dynamic fusion model for brain tumor diagnosis. His academic pursuits aim to integrate LLMs and computer vision for robust, intelligent medical systems. Ahmad’s goal is to bridge gaps between artificial intelligence and clinical practice, focusing on real-time, explainable, and scalable AI systems for healthcare. His research embodies a combination of theoretical rigor and practical implementation, striving to deliver solutions that are both impactful and clinically relevant.

Conclusion

Muhammad Ahmad is a driven AI researcher and engineer specializing in generative AI, LLMs, and deep learning for medical imaging, with proven academic, research, and industry experience, recognized through prestigious awards and impactful publications, currently contributing to advanced healthcare technologies at UESTC

Publications
  • Hybrid Deep Learning Architecture with Adaptive Feature Fusion for Multi-Stage Alzheimer’s Disease Classification

    Brain Sciences
    2025-06-06 | Journal article
    CONTRIBUTORS: Ahmad Muhammad; Qi Jin; Osman Elwasila; Yonis Gulzar
  • Dynamic Fusion of Local and Global Features for Superior Brain Tumor Diagnosis Submitted as First Author
    to International Journal of Machine Learning and Cybernetics. Submission ID: 6a1c905c-080c-44f9-98e8-
    4f23727a5dc7.

Ishrat Mahjabeen | Tumor Biomarkers | Best Scholar Award

Dr. Ishrat Mahjabeen | Tumor Biomarkers | Best Scholar Award

Academician/Research Scholar |COMSATS University Islamabad, Pakistan

Dr. Ishrat Mahjabeen is an accomplished molecular biologist and cancer geneticist currently serving as Associate Professor at COMSATS University Islamabad, with extensive expertise in head and neck cancer, gene regulation, and microRNA biology. She earned her PhD in Cancer Genetics from COMSATS and recently completed a prestigious Fulbright Postdoctoral Fellowship at Brown University, USA. Dr. Mahjabeen has over two decades of research and academic experience, contributing significantly to molecular oncology through her work on base excision repair pathway genes, miRNA dysregulation, and genetic polymorphisms. She has also been an active educator, having supervised numerous undergraduate and graduate students and taught a variety of bioscience courses. Her scholarly contributions include a Springer book chapter and multiple international conference presentations. With a deep commitment to cancer research and academic mentorship, she continues to shape the future of biomedical science in Pakistan and beyond through her innovative work and international collaborations.

Profile

🎓 Education

Dr. Ishrat Mahjabeen holds a diverse academic background rooted in biological sciences. She earned her Postdoctoral Research Fellowship (2023–2024) from Brown University, USA, through the esteemed Fulbright Scholarship Program. Her PhD in Cancer Genetics was awarded by COMSATS Institute of Information Technology Islamabad in 2013, where she conducted a thesis on deregulated base excision repair pathway genes and microRNAs in head and neck cancer. Prior to her doctorate, she completed her M.Phil. in Developmental Biology from Quaid-e-Azam University in 2006, focusing on methylcobalamin’s role in sciatic nerve regeneration in rabbits. Her academic journey began with an MSc in Zoology from the University of Arid Agriculture Rawalpindi in 2003, where she explored the impact of temperature on arthropod populations. This strong foundation across developmental biology, zoology, and cancer genetics has equipped her with a multi-dimensional understanding of complex biological systems, enabling her significant contributions to cancer research and biosciences education.

🧪 Experience

Dr. Ishrat Mahjabeen has over 20 years of rich research and academic experience in biosciences and molecular oncology. Since May 2024, she has been serving as Associate Professor at COMSATS University Islamabad, where she previously held the positions of Assistant Professor (2017–2024) and Senior Scientific Officer (2014–2017). Her academic journey began with research fellowships at leading institutions, including the Center for Molecular Biology of Oral Diseases at the University of Illinois at Chicago, Quaid-e-Azam University, and PMAS Arid Agriculture University. She also contributed as an honorary lecturer in Talagang. As a committed educator, she has supervised over 140 students across BS, MS, and PhD levels and has taught advanced courses in molecular biology, research techniques, and biochemistry. Her leadership in academia is marked by dedication to translational cancer research, curriculum development, and capacity building in the life sciences, fostering innovation and scientific rigor among emerging researchers.

🏅 Awards and Honors

Dr. Ishrat Mahjabeen has been honored with the prestigious Fulbright Postdoctoral Research Fellowship (2023–2024) at Brown University, USA—an international recognition of her excellence in cancer genetics research. Her academic achievements and research impact have earned her continued faculty promotions within COMSATS University Islamabad, reflecting her contributions to teaching, student mentorship, and scientific leadership. She has received recognition for her work through invited talks and presentations at notable global scientific platforms, including the American Association of Extracellular Vesicles (AAEV 2023) in Boston and multiple international conferences in Turkey and Pakistan. Her chapter contribution in a Springer book on head and neck cancer highlights her thought leadership in molecular oncology. These accolades underscore her pioneering work in cancer biology, particularly in miRNA and gene regulation research, as well as her role in fostering academic excellence and collaborative innovation across borders.

🔬 Research Focus

Dr. Ishrat Mahjabeen’s research centers on molecular oncology with a focus on genetic and epigenetic mechanisms underlying cancer development, particularly head and neck cancers. Her PhD work explored deregulated base excision repair pathway genes and the role of microRNAs in tumor progression. She investigates how miRNA dysregulation, gene polymorphisms, and checkpoint kinase alterations contribute to tumorigenesis, with significant emphasis on gliomas, gastric cancer, and H. pylori-associated pathogenesis. Dr. Mahjabeen is also involved in studying exosomal miRNAs and their functional targets, aiming to identify biomarkers and therapeutic targets. Her translational research approach integrates molecular biology with bioinformatics to unravel cancer pathways and personalize treatment strategies. Her postdoctoral research at Brown University further broadened her scope, allowing global collaborations and access to advanced genomic tools. She remains committed to bridging basic research and clinical relevance to improve early cancer diagnostics and targeted therapies in low-resource healthcare settings.

Conclusion

Dr. Ishrat Mahjabeen stands out as a dynamic academic and cancer researcher, combining excellence in teaching, mentorship, and cutting-edge molecular oncology. Her global exposure, leadership in translational research, and unwavering commitment to biosciences make her an asset to the scientific community.

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Publications

Milena Živković | Artificial Intelligence in Medicine | Best Researcher Award

Ms. Milena Živković | Artificial Intelligence in Medicine | Best Researcher Award

Research Associate| University of Kragujevac, Faculty of Science, Serbia

Milena Živković is a Research Associate at the University of Kragujevac, Faculty of Science, Serbia, with a background in physics and a research focus on the integration of artificial intelligence into medical physics and science education. Her expertise lies in AI-supported educational systems, Monte Carlo simulations in radiotherapy, and environmental radioactivity. With over 38 published papers, her work bridges physics, machine learning, and curriculum innovation. Milena is recognized for her mentorship of gifted students, contribution to interdisciplinary AI-based learning models, and international collaborations with researchers in Europe and the Middle East. She has co-authored dosimetric simulation software for cancer treatment optimization and earned accolades such as Best Oral Presentation Awards at international conferences. As an active member of the Serbian and German Physical Societies, she fosters science communication through national outreach projects and educational initiatives. Her contributions span both academic excellence and impactful community-based science promotion efforts.

Profile

🎓 Education

Milena Živković earned her formal education in physics, culminating in specialized research focused on medical physics, radiation dosimetry, and educational technology. She has completed advanced academic training in English for Academic Communication and Python programming, including Stanford’s “Code in Place.” She holds a Cambridge English Certificate and multiple certificates from the University of Kragujevac in academic writing and pedagogy. Her achievements during her student years include receiving the Annual Award for Best Student from 2015 to 2019, reflecting both academic excellence and extracurricular engagement. Additionally, she has participated in numerous interdisciplinary workshops, competitions, and science communication events, contributing to both her intellectual and pedagogical growth. With a strong foundation in applied physics, her academic journey has been characterized by the seamless integration of theoretical knowledge and practical research, which she continues to expand through post-academic training, conference participation, and interdisciplinary research collaboration with clinical and educational institutions.

🧪 Experience

Milena Živković has significant experience as a Research Associate at the University of Kragujevac, where she combines artificial intelligence with physics education and medical applications. Her research includes machine learning models for radiation dosimetry, classification systems in physics education, and anomaly detection in environmental radioactivity. She serves as a section editor and reviewer for journals like Imaging and Radiation Research and Radiation Science and Technology. Milena is also a contributor to national gifted education programs, curriculum development initiatives, and AI-assisted learning models. She has collaborated with international institutions, including projects with the Clinical Center Kragujevac and partners from Iraq, enhancing the practical application of her research. She has guided STEM projects for youth and mentored students in high school competitions. Her book on Monte Carlo simulations is used in academic and clinical contexts. Her scientific outreach projects further amplify her impact across the academic, educational, and public spheres.

🏅 Awards and Honors

Milena Živković has been the recipient of numerous awards recognizing both academic and community contributions. She received the Best Researcher Award at the University of Kragujevac in 2023 and multiple Best Oral Presentation Awards at international conferences in gynecology, women’s health, and ophthalmology. She also won the Bridge of Mathematics First Place Projects (2023, 2024), highlighting innovative physics education. From 2015 to 2019, she was honored with the Annual Best Student Award and continues to receive high praise for promoting science through projects funded by Serbia’s Center for the Promotion of Science. These include thematic campaigns like Brian May and the Queen of Physics, Our Air = Our Health, and Work + Active = Radioactive. Additionally, she holds advanced training certifications in pedagogy, communication, academic writing, and programming. Her dedication to science communication, youth mentorship, and educational innovation has made her a strong contender for the Young Scientist or Best Researcher Award.

🔬 Research Focus

Milena Živković’s research sits at the intersection of artificial intelligence, medical physics, and education technology. She focuses on developing machine learning-based models for radiation dose analysis, anomaly detection in environmental radioactivity, and AI-assisted problem classification in physics education. Her contributions to the FOTELP-VOX Monte Carlo platform enable precision 3D dose distribution modeling, now applied in clinical settings. She also investigates the ecological effects of radionuclide transfer and food safety. Milena’s interdisciplinary work includes collaborations with philosophers, clinicians, educators, and AI developers to improve curriculum delivery and treatment outcomes. She actively integrates AI into educational strategies to support gifted students and has co-authored software tools used in radiotherapy optimization. Her studies are not only technical but are aimed at real-world impact—ensuring safer radiation practices, informed public health strategies, and accessible science education. Her research promotes knowledge translation, making complex physics applicable to both education and healthcare.

Conclusion

Milena Živković exemplifies a new generation of researchers merging artificial intelligence with applied physics to transform education, healthcare, and science communication. Through interdisciplinary projects, academic excellence, and outreach initiatives, she continues to redefine how science serves society while mentoring future innovators and advancing clinical safety and educational equity.

Publications
  • FOTELP-VOX-OA: Enhancing radiotherapy planning precision with particle transport simulations and Optimization Algorithms

    Computer Methods and Programs in Biomedicine
    2025-08 | Journal article
    CONTRIBUTORS: Milena Zivkovic; Filip Andric; Marina Svicevic; Dragana Krstic; Lazar Krstic; Bogdan Pirkovic; Tatjana Miladinovic; Mohamed El Amin Aichouche
  • FOTELP-VOX 2024: Comprehensive overview of its capabilities and applications

    Nuclear Technology and Radiation Protection
    2024 | Journal article
    CONTRIBUTORS: Milena Zivkovic, P.; Tatjana Miladinovic, B.; Zeljko Cimbaljevic, M.; Mohamed Aichouche, E.A.; Bogdan Pirkovic, A.; Dragana Krstic, Z.
  • Radionuclide contamination in agricultural and urban ecosystems: A study of soil, plant, and milk samples

    Kragujevac Journal of Science
    2024 | Journal article
    CONTRIBUTORS: Mohamed Aichouche, E.A.; Mihajlo Petrović, V.; Milena Živković, P.; Dragana Krstić, Ž.; Snežana Branković, R.
  • Development of DynamicMC for PHITS Monte Carlo package

    Radiation Protection Dosimetry
    2023-11-13 | Journal article
    Part of ISSN: 0144-8420
    Part of ISSN: 1742-3406
    CONTRIBUTORS: Hiroshi Watabe; Tatsuhiko Sato; Kwan Ngok Yu; Milena Zivkovic; Dragana Krstic; Dragoslav Nikezic; Kyeong Min Kim; Taiga Yamaya; Naoki Kawachi; Hiroki Tanaka et al.