4.4 Article

Evaluating gastroenteropancreatic neuroendocrine tumors through microRNA sequencing

Journal

ENDOCRINE-RELATED CANCER
Volume 26, Issue 1, Pages 47-57

Publisher

BIOSCIENTIFICA LTD
DOI: 10.1530/ERC-18-0244

Keywords

gastroenteropancreatic neuroendocrine tumors; classification; biomarkers; microRNA; small RNA sequencing

Funding

  1. Southeastern Ontario Academic Medical Organization Innovation Fund
  2. Canada Foundation for Innovation John R Evans Leaders Fund
  3. Ontario Research Fund-Research Infrastructure

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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-theart 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.

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