Skip to main content

The Role of Microarray in Modern Sequencing: Statistical Approach Matters in a Comparison Between Microarray and RNA-Seq.

Publication ,  Journal Article
Raplee, ID; Borkar, SA; Yin, L; Venturi, GM; Shen, J; Chang, K-F; Nepal, U; Sleasman, JW; Goodenow, MM
Published in: BioTech (Basel)
July 5, 2025

Gene expression analysis is crucial in understanding cellular processes, development, health, and disease. With RNA-seq outpacing microarray as the chosen platform for gene expression, is there space for array data in future profiling? This study involved 35 participants from the Adolescent Medicine Trials Network for HIV/AIDS Intervention protocol. RNA was isolated from whole blood samples and analyzed using both microarray and RNA-seq technologies. Data processing included quality control, normalization, and statistical analysis using non-parametric Mann-Whitney U tests. Differential expression analysis and pathway analysis were conducted to compare the outputs of the two platforms. The study found a high correlation in gene expression profiles between microarray and RNA-seq, with a median Pearson correlation coefficient of 0.76. RNA-seq identified 2395 differentially expressed genes (DEGs), while microarray identified 427 DEGs, with 223 DEGs shared between the two platforms. Pathway analysis revealed 205 perturbed pathways by RNA-seq and 47 by microarray, with 30 pathways shared. Both microarray and RNA-seq technologies provide highly concordant results when analyzed with consistent non-parametric statistical methods. The findings emphasize that both methods are reliable for gene expression analysis and can be used complementarily to enhance the robustness of biological insights.

Duke Scholars

Published In

BioTech (Basel)

DOI

EISSN

2673-6284

Publication Date

July 5, 2025

Volume

14

Issue

3

Location

Switzerland

Related Subject Headings

  • 3206 Medical biotechnology
  • 1004 Medical Biotechnology
 

Citation

APA
Chicago
ICMJE
MLA
NLM
Raplee, I. D., Borkar, S. A., Yin, L., Venturi, G. M., Shen, J., Chang, K.-F., … Goodenow, M. M. (2025). The Role of Microarray in Modern Sequencing: Statistical Approach Matters in a Comparison Between Microarray and RNA-Seq. BioTech (Basel), 14(3). https://doi.org/10.3390/biotech14030055
Raplee, Isaac D., Samiksha A. Borkar, Li Yin, Guglielmo M. Venturi, Jerry Shen, Kai-Fen Chang, Upasana Nepal, John W. Sleasman, and Maureen M. Goodenow. “The Role of Microarray in Modern Sequencing: Statistical Approach Matters in a Comparison Between Microarray and RNA-Seq.BioTech (Basel) 14, no. 3 (July 5, 2025). https://doi.org/10.3390/biotech14030055.
Raplee ID, Borkar SA, Yin L, Venturi GM, Shen J, Chang K-F, et al. The Role of Microarray in Modern Sequencing: Statistical Approach Matters in a Comparison Between Microarray and RNA-Seq. BioTech (Basel). 2025 Jul 5;14(3).
Raplee, Isaac D., et al. “The Role of Microarray in Modern Sequencing: Statistical Approach Matters in a Comparison Between Microarray and RNA-Seq.BioTech (Basel), vol. 14, no. 3, July 2025. Pubmed, doi:10.3390/biotech14030055.
Raplee ID, Borkar SA, Yin L, Venturi GM, Shen J, Chang K-F, Nepal U, Sleasman JW, Goodenow MM. The Role of Microarray in Modern Sequencing: Statistical Approach Matters in a Comparison Between Microarray and RNA-Seq. BioTech (Basel). 2025 Jul 5;14(3).

Published In

BioTech (Basel)

DOI

EISSN

2673-6284

Publication Date

July 5, 2025

Volume

14

Issue

3

Location

Switzerland

Related Subject Headings

  • 3206 Medical biotechnology
  • 1004 Medical Biotechnology