4.8 Article

Rank-in: enabling integrative analysis across microarray and RNA-seq for cancer

Journal

NUCLEIC ACIDS RESEARCH
Volume 49, Issue 17, Pages -

Publisher

OXFORD UNIV PRESS
DOI: 10.1093/nar/gkab554

Keywords

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Funding

  1. National Key R&D Program of China [2017YFC1700200, 2019YFA0905900, 2017YFC0908405]
  2. National Natural Science Foundation of China [32070657, 81830080]

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Although transcriptomics technologies have advanced rapidly in the past decades, integrating mixed data from microarray and RNA-seq remains challenging due to inherent variability differences. Rank-In is a novel method proposed to correct nonbiological effects and enable consolidated analysis of blended data. Validated on public cell and tissue samples, Rank-In demonstrated superior classification and prediction accuracy, showing potential for integrative study of cancer profiles.
Though transcriptomics technologies evolve rapidly in the past decades, integrative analysis of mixed data between microarray and RNA-seq remains challenging due to the inherent variability difference between them. Here, Rank-In was proposed to correct the nonbiological effects across the two technologies, enabling freely blended data for consolidated analysis. Rank-In was rigorously validated via the public cell and tissue samples tested by both technologies. On the two reference samples of the SEQC project, Rank-In not only perfectly classified the 44 profiles but also achieved the best accuracy of 0.9 on predicting TaqMan-validated DEGs. More importantly, on 327 Glioblastoma (GBM) profiles and 248, 523 heterogeneous colon cancer profiles respectively, only Rank-In can successfully discriminate every single cancer profile from normal controls, while the others cannot. Further on different sizes of mixed seq-array GBM profiles, Rank-In can robustly reproduce a median range of DEG overlapping from 0.74 to 0.83 among top genes, whereas the others never exceed 0.72. Being the first effective method enabling mixed data of cross-technology analysis, Rank-In welcomes hybrid of array and seq profiles for integrative study on large/small, paired/unpaired and balanced/imbalanced samples, opening possibility to reduce sampling space of clinical cancer patients. Rank-In can be accessed at http://www.baddcao.net/rank-in/index.html.

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