Special Issue: Statistical Methods and its Applications in Biology and Medicine

Guest Editors

Prof. Dr. Yan Liu
School of Public Health, University of Nevada Reno, NV, USA
Email: yan.liu@tempus.com


Prof. Dr. Qi Zhao
School of Computer Science and Software Engineering, University of Science and Technology Liaoning, Anshan, China
Email: zhaoqi@lnu.edu.cn

Manuscript Topics

Statistical analysis has been a crucial part in biological and medical research. In this special issue, we invite researchers to contribute research articles and reviews focusing on statistical methods and applications in biological and medical sciences. In particular, this special issue publishes papers that propose statistically innovative methods to solve practical problems. Papers that use established methods for an important application are also encouraged. Topics of interests include, but not limited to,

• Biomarker evaluation
• Bioimaging analysis
• Causal inference in biological and medical research
• Experimental design
• Statistical analysis of genomics and proteomics data


Keywords
Biomarker/Biomonitoring analysis and evaluation, Bioinformatics, Causal inference, Clinical Trial, Human microbiota and complex diseases, Neuroimaging, ncRNA, Omics data analyses , Prognostic markers, Survival/longitudinal analysis, Single-cell data analyses


Instructions for authors
https://www.aimspress.com/mbe/news/solo-detail/instructionsforauthors
Please submit your manuscript to online submission system
https://aimspress.jams.pub/

Paper Submission

All manuscripts will be peer-reviewed before their acceptance for publication. The deadline for manuscript submission is 31 December 2024

Published Papers({{count}})

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