Prof. Dr. Galina Malykhina | Biomedical Engineering | Best Researcher Award

Prof. Dr. Galina Malykhina | Biomedical Engineering | Best Researcher Award

Prof. Dr. Galina Malykhina | Peter the Great Saint Petersburg Polytechnic University | Russia

Prof. Dr. Galina Malykhina is a distinguished scientist and educator affiliated with the Peter the Great St. Petersburg Polytechnic University, serving at the Institute of Informatics and Cybersecurity, Graduate School of Computer Technology and Information Systems. She earned her foundational and advanced degrees from the St. Petersburg Polytechnic Institute, completing her PhD in Technical Cybernetics and later defending her DSc thesis in Information, Measurement, and Control Systems. Over her prolific career, Galina Malykhina has made significant contributions to the development of technical diagnostics systems, measurement technologies for two-phase and multiphase flows in the oil industry, and intelligent medical measurement systems utilizing artificial neural networks. Her expertise extends to advanced control mechanisms for thermal power plants and industrial automation processes. As an academic, she has delivered comprehensive lectures on Information Technology, Computer Networks, and Machine Vision, shaping generations of engineers and researchers. Her research output includes 38 documents with 89 citations from 73 documents and an h-index of 5. Her scholarly influence is reflected through numerous publications indexed in Google Scholar, DBLP, Semantic Scholar, and ORCID. Galina Malykhina’s research continues to bridge cybernetics, intelligent systems, and applied informatics, reinforcing her reputation as a leading figure in Russian and international computer science and control engineering.

Profile: Scopus | Google Scholar | Orcid

Featured Publications

Malykhina, G. F., & Guseva, A. I. (2017). Early fire prevention in the plant. Industrial Engineering, Applications and Manufacturing (ICIEAM).

Tarkhov, D. A., & Malykhina, G. F. (2019). Neural network modelling methods for creating digital twins of real objects. Journal of Physics: Conference Series, 1236(1), 012056.

Malykhina, G. F., & Tarkhov, D. A. (2018). Digital twin technology as a basis of the industry in future. European Proceedings of Social and Behavioural Sciences, 51.

Lazovskaya, T., Malykhina, G., & Tarkhov, D. (2021). Physics-based neural network methods for solving parameterized singular perturbation problem. Computation, 9(9), 97.

Dashkina, A., Khalyapina, L., Kobicheva, A., Lazovskaya, T., Malykhina, G., & others. (2020). Neural network modeling as a method for creating digital twins: From industry 4.0 to industry 4.1. Proceedings of the 2nd International Scientific Conference on Innovations in …

Vasilyev, A. N., Tarkhov, D. A., & Malykhina, G. F. (2018). Methods of creating digital twins based on neural network modeling. Sovremennye Informatsionnye Tekhnologii i IT-Obrazovanie, 14(3), 521–532.*

Mr. Emmanuel Onah | Biomedical Engineering | Best Researcher Award

Mr. Emmanuel Onah | Biomedical Engineering | Best Researcher Award

Mr. Emmanuel Onah | Southern Illinois University | United States

Mr. Emmanuel Onah is a highly accomplished biomedical scientist and pharmaceutical researcher currently pursuing a Ph.D. in Biomedical Sciences with a concentration in Medicinal Chemistry at Southern Illinois University System. He holds a B. Pharm degree from the University of Nigeria, Nsukka, graduating with distinctions. His research expertise spans computational drug discovery, molecular modeling, pharmacognosy, and medicinal chemistry, with a strong focus on applying machine learning and in silico techniques to address biomedical challenges. Notably, he developed an innovative system to predict HIV-1 protease cleavage sites using hybrid machine learning classifiers, significantly accelerating the identification of novel protease inhibitors. He has also constructed predictive models for thyroid cancer recurrence and collaborated with leading medicinal chemists on molecular docking, pharmacophore modeling, and virtual screening of synthetic and natural compounds. His internship at the National Institute for Pharmaceutical Research and Development involved evaluating pharmaceutical formulations, assessing antimicrobial activity of plant extracts, and exploring hematinic properties of medicinal plants. As an undergraduate, he conducted in silico docking of FDA-approved drugs against antipsoriatic targets and synthesized pharmaceutical dyes characterized via UV-Vis spectroscopy. With 18 publications cited 192 times and an h-index of 7, Mr. Onah demonstrates a strong commitment to advancing medicinal chemistry and translational biomedical research.

Profile: Scopus | Orcid

Featured Publications

Onah, E., Ibezim, A., Osigwe, S. C., Okoroafor, P. U., Ukoha, O. P., de Siqueira-Neto, J. L., Ntie-Kang, F., & Ramanathan, K. (2024). Potential dual inhibitors of hexokinases and mitochondrial complex I discovered through machine learning approach. Scientific African.

Onah, E., Eze, U. J., Abdulraheem, A. S., Ezigbo, U. G., & Amorha, K. C. (2024, September 26). Optimizing unsupervised feature engineering and predictive models for thyroid cancer recurrence prediction [Preprint]. Crossref.

Ibezim, A., Onah, E., Osigwe, S. C., Okoroafor, P. U., Ukoha, O. P., de Siqueira-Neto, J. L., Ntie-Kang, F., & Ramanathan, K. (2023). Potential dual inhibitors of hexokinases and mitochondrial complex I discovered through machine learning approach [SSRN].

Onah, E., Uzor, P. F., Ugwoke, I. C., Eze, J. U., Ugwuanyi, S. T., Chukwudi, I. R., & Ibezim, A. (2022). Prediction of HIV-1 protease cleavage site from octapeptide sequence information using selected classifiers and hybrid descriptors. BMC Bioinformatics.

Onah, E., Uzor, P. F., Ugwoke, I. C., Eze, J. U., Ugwuanyi, S. T., Chukwudi, I. R., & Ibezim, A. (2022). Prediction of HIV-1 protease cleavage site from octapeptide sequence information using selected classifiers and hybrid descriptors [Preprint]. Research Square.

Ibezim, A., Onah, E., Dim, E. N., & Ntie-Kang, F. (2021). A computational multi-targeting approach for drug repositioning for psoriasis treatment. BMC Complementary Medicine and Therapies.