Dr. Jingni He

Assistant Professor

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Biography

Dr. Jingni is currently a Research Fellow in the Department of Neuroscience at Monash University, specializing in the intersection of computational biology, genomics, and translational medicine. With a multidisciplinary background in medicine and bioinformatics, her research focuses on developing advanced statistical and computational methods to elucidate the genetic architecture of complex human diseases. Dr. Jingni began her academic career by obtaining a Master of Medicine from Xiangya Hospital, Central South University, China, which laid a strong foundation for her clinical practice and research. She completed her PhD in Bioinformatics at the University of Calgary, Canada, where she developed novel algorithms for analyzing large-scale multi-omics datasets. She has published in high-impact journals such as J Hum Genet, Nat Commun, and Genetics. Dr. Jingni's research interests include the development of statistical bioinformatics tools for multi-omics data integration and the identification of genetic loci and biomarkers associated with complex diseases and drug responses. Additionally, she is passionate about mentoring aspiring scientists and guiding research projects focused on genome-wide association studies and machine learning applications.

Research Interests

Requirements for Monash University

Master Program
Requirements
GPA Requirement
Required:3
IELTS
Listening
Required:6
Reading
Required:6
Writing
Required:6
Speaking
Required:6
Overall
Required:6.5
TOEFL
Listening
Required:12
Reading
Required:13
Writing
Required:21
Speaking
Required:18
Total
Required:79
Prerequisites
Bachelor degree (or equivalent) in a related field
Application Checklist
  • Academic Transcripts
  • Proof of English Proficiency
  • Curriculum Vitae
  • Copy of Passport
Specialization Notes

Requirements are standardized across the Faculty of Information Technology for most Master's programs including Computer Science and Data Science.