Characterizing and classifying neuroendocrine neoplasms through microRNA sequencing and data mining.

TitleCharacterizing and classifying neuroendocrine neoplasms through microRNA sequencing and data mining.
Publication TypeJournal Article
Year of Publication2020
AuthorsNanayakkara J, Tyryshkin K, Yang X, Wong JJM, Vanderbeck K, Ginter PS, Scognamiglio T, Chen Y-T, Panarelli N, Cheung N-K, Dijk F, Ben-Dov IZ, Kim MKang, Singh S, Morozov P, Max KEA, Tuschl T, Renwick N
JournalNAR Cancer
Volume2
Issue3
Paginationzcaa009
Date Published2020 Sep
ISSN2632-8674
Abstract

Neuroendocrine neoplasms (NENs) are clinically diverse and incompletely characterized cancers that are challenging to classify. MicroRNAs (miRNAs) are small regulatory RNAs that can be used to classify cancers. Recently, a morphology-based classification framework for evaluating NENs from different anatomical sites was proposed by experts, with the requirement of improved molecular data integration. Here, we compiled 378 miRNA expression profiles to examine NEN classification through comprehensive miRNA profiling and data mining. Following data preprocessing, our final study cohort included 221 NEN and 114 non-NEN samples, representing 15 NEN pathological types and 5 site-matched non-NEN control groups. Unsupervised hierarchical clustering of miRNA expression profiles clearly separated NENs from non-NENs. Comparative analyses showed that miR-375 and miR-7 expression is substantially higher in NEN cases than non-NEN controls. Correlation analyses showed that NENs from diverse anatomical sites have convergent miRNA expression programs, likely reflecting morphological and functional similarities. Using machine learning approaches, we identified 17 miRNAs to discriminate 15 NEN pathological types and subsequently constructed a multilayer classifier, correctly identifying 217 (98%) of 221 samples and overturning one histological diagnosis. Through our research, we have identified common and type-specific miRNA tissue markers and constructed an accurate miRNA-based classifier, advancing our understanding of NEN diversity.

DOI10.1093/narcan/zcaa009
Alternate JournalNAR Cancer
PubMed ID32743554
PubMed Central IDPMC7380486
Grant ListUL1 TR001866 / TR / NCATS NIH HHS / United States
Related Faculty: 
Theresa Scognamiglio, M.D.

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