Dr. Ziyi Li | Computational Biology | Best Researcher Award
Assistant Professor at University of Texas | MD Anderson Cancer Center | Department of Biostatistics | United States
Dr. Ziyi Li is an accomplished researcher and academic whose career reflects a strong commitment to advancing science and technology through innovative research, teaching, and collaboration. He earned his Ph.D. in [insert specialization] from [insert university and year], following earlier academic achievements that laid a solid foundation in [related field]. Over the years, Dr. Li has held significant professional positions, including roles as a lecturer, assistant professor, and research fellow at esteemed institutions, where he has combined teaching excellence with cutting-edge research. His professional journey includes contributions to high-impact projects supported by national and international funding bodies, participation in cross-disciplinary collaborations, and mentorship of graduate and postgraduate students, all of which highlight his leadership in academic and applied research. Dr. Li’s research interests span [insert areas, e.g., artificial intelligence, biomedical engineering, materials science], with a particular focus on developing innovative solutions to real-world problems, such as [insert applied area]. He has consistently demonstrated expertise in advanced methodologies, including experimental design, data analytics, computational modeling, machine learning algorithms, and laboratory-based techniques, which have enabled him to publish in leading peer-reviewed journals indexed in Scopus, IEEE, and Web of Science, as well as present at international conferences. His research skills extend to project management, proposal writing, interdisciplinary collaboration, and the ability to integrate theory with practical applications, making him a versatile scholar in his domain. Recognized for his academic and professional excellence, Dr. Li has received prestigious awards and honors, such as [insert awards, fellowships, or scholarships], and has been actively involved in professional memberships with organizations like [IEEE, ACM, or relevant associations], further enriching his contributions to the global scientific community. Through his work, he continues to influence both academia and industry, advancing knowledge while fostering innovation and sustainability. In conclusion, Dr. Ziyi Li exemplifies the qualities of a dedicated researcher, educator, and innovator whose achievements not only showcase academic brilliance but also reflect his vision for addressing global challenges through impactful science, making him a valuable contributor to his field and an inspiration to future generations of researchers.
Profile: Orcid | Google Scholar
Featured Publications
Li, L., Zang, L., Zhang, F., Chen, J., Shen, H., Shu, L., Liang, F., Feng, C., Chen, D., & Li, Z. (2017). Fat mass and obesity-associated (FTO) protein regulates adult neurogenesis. Human Molecular Genetics, 26(13), 2398–2411.
Lal, B. K., Zhou, W., Li, Z., Kyriakides, T., Matsumura, J., Lederle, F. A., Freischlag, J., & Veterans Affairs Open Versus Endovascular Repair (OVER) Trial Investigators. (2015). Predictors and outcomes of endoleaks in the Veterans Affairs Open Versus Endovascular Repair (OVER) trial of abdominal aortic aneurysms. Journal of Vascular Surgery, 62(6), 1394–1404.
Kang, Y., Zhou, Y., Li, Y., Han, Y., Xu, J., Niu, W., Li, Z., Liu, S., Feng, H., Huang, W., … (2021). A human forebrain organoid model of fragile X syndrome exhibits altered neurogenesis and highlights new treatment strategies. Nature Neuroscience, 24(10), 1377–1391.
Li, Z., & Wu, H. (2019). TOAST: Improving reference-free cell composition estimation by cross-cell type differential analysis. Genome Biology, 20(1), 190.
Ganan-Gomez, I., Yang, H., Ma, F., Montalban-Bravo, G., Thongon, N., … Li, Z. (2022). Stem cell architecture drives myelodysplastic syndrome progression and predicts response to venetoclax-based therapy. Nature Medicine, 28(3), 557–567.
Li, Z., Jiang, X., Wang, Y., & Kim, Y. (2021). Applied machine learning in Alzheimer’s disease research: Omics, imaging, and clinical data. Emerging Topics in Life Sciences, 5(6), 765–777.
Cheng, Y., Sun, M., Chen, L., Li, Y., Lin, L., Yao, B., Li, Z., Wang, Z., Chen, J., & Miao, Z. (2018). Ten-Eleven Translocation proteins modulate the response to environmental stress in mice. Cell Reports, 25(11), 3194–3203.e4.