Assessing Concordance between RNA-Seq and NanoString Technologies in Ebola-Infected Nonhuman Primates Using Machine Learning
Mostafa Rezapour, Aarthi Narayanan, Wyatt H. Mowery, Metin Nafi Gurcan

TL;DR
This study compares RNA-Seq and NanoString gene expression platforms in Ebola-infected primates, demonstrating high concordance and identifying key immune response genes with machine learning, highlighting their complementary strengths.
Contribution
It introduces a machine learning approach that accurately distinguishes infection status across platforms and identifies shared and unique gene markers in Ebola infection.
Findings
Strong correlation between RNA-Seq and NanoString data (mean Spearman 0.83)
OAS1 gene achieves 100% accuracy in infection classification across platforms
Identifies 12 common significant genes involved in immune response
Abstract
This study evaluates the concordance between RNA sequencing (RNA-Seq) and NanoString technologies for gene expression analysis in non-human primates (NHPs) infected with Ebola virus (EBOV). We performed a detailed comparison of both platforms, demonstrating a strong correlation between them, with Spearman coefficients for 56 out of 62 samples ranging from 0.78 to 0.88, with a mean of 0.83 and a median of 0.85. Bland-Altman analysis further confirmed high consistency, with most measurements falling within 95% confidence limits. A machine learning approach, using the Supervised Magnitude-Altitude Scoring (SMAS) method trained on NanoString data, identified OAS1 as a key marker for distinguishing RT-qPCR positive from negative samples. Remarkably, when applied to RNA-Seq data, OAS1 also achieved 100% accuracy in differentiating infected from uninfected samples using logistic regression,…
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Taxonomy
TopicsViral Infections and Outbreaks Research
MethodsOntology
