Research Excellence Award

Zhen Zhong
Tianjin University of Technology and Education, China
Zhen Zhong
Affiliation Tianjin University of Technology and Education
Country China
Scopus ID 56424760300
Documents 16
Citations 156
h-index 6
Subject Area Digital Health
Event Global Diseases Research Awards

The Research Excellence Award is a scholarly recognition presented under the framework of international scientific evaluation programs, acknowledging contributions in the field of Digital Health and interdisciplinary research innovation. The award highlights academic productivity, citation impact, and research relevance in global health domains. In this context, the profile of Zhen Zhong from Tianjin University of Technology and Education, China, demonstrates measurable academic output and citation performance as indexed in Scopus database records [1].

Abstract

This article presents a structured academic overview of the Research Excellence Award in relation to the scholarly profile of Zhen Zhong. The evaluation considers bibliometric indicators such as publication count, citation metrics, and h-index to assess research influence within Digital Health. The award framework emphasizes interdisciplinary innovation and global research engagement in health-related technologies and systems [1].

Keywords

Digital Health, Research Excellence, Bibliometrics, Scopus Indexing, Academic Impact, Global Diseases Research Awards.

Introduction

Research excellence awards serve as structured mechanisms for recognizing scientific contributions across disciplines. These awards typically evaluate research productivity, citation performance, and thematic relevance to global challenges. In the field of Digital Health, such recognition is increasingly associated with data-driven healthcare innovation and interdisciplinary collaboration [1].

Research Profile

The academic profile of Zhen Zhong is associated with Tianjin University of Technology and Education, China. The researcher’s bibliometric indicators include 16 indexed documents, 156 citations, and an h-index of 6, reflecting consistent scholarly contributions within the domain of Digital Health research [1].

Research Contributions

The research contributions attributed to this academic profile are aligned with digital transformation in healthcare systems, including data analytics, health informatics, and technology-enabled medical solutions. These contributions support the broader objective of improving healthcare accessibility and efficiency through computational and digital methodologies [3]

Publications

The publication record associated with this researcher reflects peer-reviewed journal articles and conference proceedings indexed in Scopus. These publications contribute to emerging discussions in Digital Health technologies and their applications in clinical and public health environments [4].

Research Impact

The citation impact of 156 reflects moderate scholarly recognition within the academic community. Citation-based metrics such as h-index are commonly used to evaluate research visibility and influence across scientific disciplines, particularly in health informatics and digital innovation domains [5].

Award Suitability

Based on available bibliometric indicators, the profile demonstrates alignment with criteria commonly associated with research excellence recognition programs. The combination of publication output, citation performance, and subject relevance supports eligibility considerations for academic award evaluation frameworks such as the Global Diseases Research Awards [1].

Conclusion

The Research Excellence Award profile highlights the academic standing of Zhen Zhong within the Digital Health research domain. The structured evaluation of bibliometric indicators suggests sustained scholarly engagement and contribution to the field. Such recognition frameworks play a critical role in promoting global research visibility and interdisciplinary collaboration [1].

External Links

References

1. Elsevier. (n.d.). Scopus author details: Zhen Zhong, Author ID 56424760300. Scopus.
https://www.scopus.com/authid/detail.uri?authorId=56424760300
2. Global Diseases Research Awards. (n.d.). Official Program Overview.
https://globaldiseases.org/
3. Zhong, Z., Qiu, T., Chi, Z., & Yu, Q. (2026). A novel infrared and visible image fusion method for pig-body multi-feature detection. Engineering Applications of Artificial Intelligence, 172, 114352.
https://doi.org/10.1016/j.engappai.2026.114352
4. Zhong, Z., Wang, M., Gao, W., & Zheng, L. (2021). A novel multisource pig-body multifeature fusion method based on Gabor features.
https://doi.org/10.1007/s11045-020-00744-x
5. Zhong, Z., Wang, M., Gao, W., & Zheng, L. (2020). A multisource image fusion method for multimodal pig-body feature detection.
https://itiis.org/digital-library/24031

 

Zhen Zhong | Digital Health | Research Excellence Award

You May Also Like