Irina-Oana Lixandru-Petre | Machine Learning | Best Researcher Award

Ms. Irina-Oana Lixandru-Petre | Machine Learning | Best Researcher Award

National University of Science and Technology POLITEHNICA Bucharest, Romania

Lixandru-Petre Irina-Oana is a highly skilled and dedicated researcher in the field of bioinformatics, specializing in cancer research through computational and systems biology approaches. With a strong academic foundation in systems engineering and over a decade of multidisciplinary professional experience in academia, IT, and research, she has made notable contributions to medical informatics, particularly in cancer genomics. Her current role as a postdoctoral researcher at eBio-hub allows her to apply advanced data analysis techniques to unravel the molecular mechanisms of diseases such as breast and colorectal cancer. Her research interests lie at the intersection of systems biology, data mining, artificial intelligence, and bioinformatics, where she employs integrated microarray analysis, Bayesian networks, and fuzzy systems to support diagnosis and clinical decision-making.

Profile

Scopus

Education

Irina-Oana’s academic journey began at the National University of Sciences and Technology POLITEHNICA Bucharest (UNSTPB), where she pursued a Bachelor’s Degree in Systems Engineering from 2008 to 2012. Her strong academic performance culminated in a perfect score in her final exam. She continued at the same institution for her Master’s in Intelligent Control Systems between 2012 and 2014, graduating with a GPA of 9.81 and a top dissertation grade. Her educational experience included a strong focus on control algorithms, decision techniques, and distributed processing systems. From 2014 to 2022, she pursued her PhD in Systems Engineering at UNSTPB. Her doctoral thesis, titled “Analysis of the molecular pathogenesis of breast cancer using integrated microarray analysis and gene modeling,” earned the distinction Magna Cum Laude and reflected her ability to merge computational intelligence with biological research.

Experience

Irina-Oana has held several significant roles throughout her career. Since 2023, she has worked as a postdoctoral researcher in bioinformatics at eBio-hub, focusing on high-impact research related to cancer genomics. Her responsibilities include publishing peer-reviewed articles, participating in conferences, and applying for competitive research grants at both national and international levels. Prior to this, she worked from 2013 as a computer systems programmer at GBA, where she developed expertise in PL/SQL, data analysis, and IT system monitoring. From 2012 to 2020, she served as a Laboratory Assistant at UNSTPB, teaching the course “Diagnostic and Decision Techniques,” where she employed tools like Weka, dTree, and Netica for teaching decision support systems. Her diverse experience across academia, IT, and research has made her a multidisciplinary contributor to biomedical informatics.

Research Interest

Irina-Oana’s research is centered around bioinformatics, cancer genomics, decision support systems, and data-driven medical diagnostics. She applies systems engineering techniques to analyze complex biomedical data, with a particular emphasis on breast and colorectal cancers. Her work frequently involves the integration of microarray gene expression data using advanced modeling techniques such as Bayesian networks and fuzzy logic systems. She has also explored the classification of malignant subtypes, diabetes modeling, and the use of artificial intelligence in thyroid cancer detection and prognosis. Her multidisciplinary approach bridges systems engineering with life sciences, making her research highly impactful in personalized medicine and computational biology.

Award

Irina-Oana’s commitment to scientific advancement was recognized when she was selected as the project director in the Romanian Academy of Sciences’ 2024–2025 research project competition for young researchers under the “AOSR-TEAMS-III” program. This award highlights her innovative contributions and leadership in medical bioinformatics, particularly in data-driven cancer research.

Publication

Irina-Oana has authored numerous scientific publications, of which the following seven are particularly noteworthy:

“An integrated gene expression analysis approach”, E-health and Bioengineering Conference, 2015 – Cited in WoS:000380397900095.

“Microarray Gene Expression Analysis using R”, International Conference on Advancements of Medicine and Health Care through Technology, 2016 – DOI: 10.1007/978-3-319-52875-5_74.

“A colon cancer microarray analysis technique”, E-health and Bioengineering Conference, 2017 – WOS:000445457500067.

“Modeling a Bayesian Network for a Diabetes Case Study”, E-Health and Bioengineering Conference, 2020 – WOS:000646194100054.

“An integrated breast cancer microarray analysis approach”, U.P.B. Scientific Bulletin, Series C, 2022 – WOS:000805648400007.

“Fast detection of bacterial gut pathogens on miniaturized devices: an overview”, Expert Review of Molecular Diagnostics, 2024 – DOI: 10.1080/14737159.2024.2316756.

“Machine Learning for Thyroid Cancer Detection, Presence of Metastasis, and Recurrence Predictions—A Scoping Review”, Cancers, 2025 – DOI: 10.3390/cancers17081308.

Each of these works contributes uniquely to the scientific community, particularly in the domain of bioinformatics and medical diagnostics, and several are indexed in prestigious databases such as Web of Science and IEEE Xplore.

Conclusion

Lixandru-Petre Irina-Oana stands at the forefront of bioinformatics research in Romania, combining her deep knowledge in systems engineering with a profound commitment to advancing biomedical sciences. Her work continues to explore innovative solutions in cancer diagnosis and decision-support systems, driven by a passion for translating computational methods into clinical insights. As a researcher, educator, and project leader, she exemplifies a model of interdisciplinary excellence and contributes meaningfully to the future of precision medicine.

Youlong Lv | Artificial Intelligence | Best Researcher Award

Assoc. Prof. Dr. Youlong Lv | Artificial Intelligence | Best Researcher Award

Associate professor at Institute of Artificial Intelligence, Donghua University, China

Dr. Youlong Lyu is an associate professor at the Institute of Artificial Intelligence, Donghua University. With a strong background in intelligent production, scheduling, and quality control, he has contributed significantly to the field of artificial intelligence applications in industrial settings. He has led multiple national and municipal research projects focused on optimizing manufacturing processes, integrating AI into production systems, and improving efficiency through data-driven methodologies. His expertise spans across various aspects of industrial AI, from smart healthcare to intelligent scheduling systems, making a notable impact in both academic and practical applications.

Profile

Scopus

Education

Dr. Lyu earned his doctoral degree from Shanghai Jiao Tong University, where he specialized in intelligent manufacturing and AI-driven optimization. His academic journey has been marked by a deep exploration of machine learning, genetic algorithms, and big data analytics, which have fueled his research into enhancing production processes. His educational background has equipped him with the technical and analytical skills necessary to advance AI applications in industrial and manufacturing domains.

Experience

Dr. Lyu has a wealth of experience in AI-driven industrial applications, having undertaken pivotal roles in numerous research projects. As a principal investigator, he has spearheaded national and municipal initiatives aimed at enhancing workshop scheduling, production line efficiency, and aerospace product assembly. His work in intelligent control systems and data-driven decision-making has led to the development of innovative methodologies for optimizing manufacturing processes. Additionally, he has played a crucial role in consulting for industry projects, particularly in the aerospace sector, where his expertise in simulation and optimization has been instrumental in improving production line operations.

Research Interests

Dr. Lyu’s research interests lie at the intersection of artificial intelligence, smart manufacturing, and industrial optimization. He focuses on intelligent production scheduling, AI-driven quality control, and big data applications in manufacturing. His work seeks to bridge the gap between theoretical AI models and practical industrial applications, leveraging machine learning algorithms, genetic regulatory networks, and deep reinforcement learning to optimize complex manufacturing processes. Additionally, he has contributed to research in smart healthcare, applying AI techniques to enhance medical imaging and diagnostic accuracy.

Awards

Dr. Lyu’s contributions to AI in industrial applications have been widely recognized. He has received multiple grants from prestigious institutions, including the Natural Science Foundation of China and the Shanghai Municipal Commission of Science and Technology. His work has also been acknowledged through awards in AI research and industrial big data analytics. As a dedicated scholar, he continues to push the boundaries of AI applications in manufacturing, earning accolades for his innovative research and impactful contributions to the field.

Publications

Zuo L, Zhang J, Lyu Y, et al. Multi-graph attention temporal convolutional network-based radius prediction in three-roller bending of thin-walled parts. Advanced Engineering Informatics, 2025. (Cited by X articles)

Yang B, Zhang J, Lyu Y, et al. Automatic computed tomography image segmentation method for liver tumor. Quantitative Imaging in Medicine and Surgery, 2025. (Cited by X articles)

Zhang J, Yang B, Lyu Y. Multi-objective optimization based robotic path planning for CT data reconstruction. Journal of Radiation Research and Applied Sciences, 2024. (Cited by X articles)

Lyu Y, Zhang J, Zuo L. Genetic regulatory network-based optimization of master production scheduling. International Journal of Bio-Inspired Computation, 2022. (Cited by X articles)

Lyu Y, Ji Q, Liu Y, Zhang J. Data-driven sensitivity analysis of contact resistance for fuel cells. Measurement and Control, 2020. (Cited by X articles)

Lyu Y, Zhang J. Genetic regulatory network-based method for sequencing in mixed-model assembly lines. Mathematical Biosciences and Engineering, 2019. (Cited by X articles)

Lyu Y, Qin W, Yang J, Zhang J. Adjustment mode decision using support vector data description. Industrial Management & Data Systems, 2018. (Cited by X articles)

Conclusion

Dr. Youlong Lyu’s research and contributions in AI-driven industrial optimization have made significant strides in intelligent manufacturing and quality control. His extensive experience in leading research projects, publishing in high-impact journals, and developing innovative AI applications has solidified his position as a leading expert in industrial artificial intelligence. His commitment to advancing smart manufacturing and AI-integrated production systems continues to drive progress in the field, setting new benchmarks for AI applications in industrial settings.