Evaluating gastroenteropancreatic neuroendocrine tumors through microRNA sequencing.

TitleEvaluating gastroenteropancreatic neuroendocrine tumors through microRNA sequencing.
Publication TypeJournal Article
Year of Publication2019
AuthorsPanarelli N, Tyryshkin K, Wong JJong Mun, Majewski A, Yang X, Scognamiglio T, Kim MKang, Bogardus K, Tuschl T, Chen Y-T, Renwick N
JournalEndocr Relat Cancer
Volume26
Issue1
Pagination47-57
Date Published2019 01 01
ISSN1479-6821
KeywordsAdolescent, Adult, Aged, Aged, 80 and over, Child, Female, Humans, Intestinal Neoplasms, Male, MicroRNAs, Middle Aged, Neuroendocrine Tumors, Pancreatic Neoplasms, Sequence Analysis, RNA, Stomach Neoplasms, Young Adult
Abstract

Gastroenteropancreatic neuroendocrine tumors (GEP-NETs) can be challenging to evaluate histologically. MicroRNAs (miRNAs) are small RNA molecules that often are excellent biomarkers due to their abundance, cell-type and disease stage specificity and stability. To evaluate miRNAs as adjunct tissue markers for classifying and grading well-differentiated GEP-NETs, we generated and compared miRNA expression profiles from four pathological types of GEP-NETs. Using quantitative barcoded small RNA sequencing and state-of-the-art sequence annotation, we generated comprehensive miRNA expression profiles from archived pancreatic, ileal, appendiceal and rectal NETs. Following data preprocessing, we randomly assigned sample profiles to discovery (80%) and validation (20%) sets prior to data mining using machine-learning techniques. High expression analyses indicated that miR-375 was the most abundant individual miRNA and miRNA cistron in all samples. Leveraging prior knowledge that GEP-NET behavior is influenced by embryonic derivation, we developed a dual-layer hierarchical classifier for differentiating GEP-NET types. In the first layer, our classifier discriminated midgut (ileum, appendix) from non-midgut (rectum, pancreas) NETs based on miR-615 and -92b expression. In the second layer, our classifier discriminated ileal from appendiceal NETs based on miR-125b, -192 and -149 expression, and rectal from pancreatic NETs based on miR-429 and -487b expression. Our classifier achieved overall accuracies of 98.5% and 94.4% in discovery and validation sets, respectively. We also found provisional evidence that low- and intermediate-grade pancreatic NETs can be discriminated based on miR-328 expression. GEP-NETs can be reliably classified and potentially graded using a limited panel of miRNA markers, complementing morphological and immunohistochemistry-based approaches to histologic evaluation.

DOI10.1530/ERC-18-0244
Alternate JournalEndocr Relat Cancer
PubMed ID30021866
Related Faculty: 
Theresa Scognamiglio, M.D.

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