Multi-omic dataset of patient-derived tumor organoids of neuroendocrine neoplasms

Author:

Alcala Nicolas1ORCID,Voegele Catherine1ORCID,Mangiante Lise12ORCID,Sexton-Oates Alexandra1ORCID,Clevers Hans34ORCID,Fernandez-Cuesta Lynnette1ORCID,Dayton Talya L34ORCID,Foll Matthieu1ORCID

Affiliation:

1. Rare Cancers Genomics Team (RCG), Genomic Epidemiology Branch (GEM), International Agency for Research on Cancer/World Health Organization (IARC/WHO) , Lyon 69008 , France

2. Department of Medicine, Stanford University School of Medicine , Stanford, CA 94305 , USA

3. Hubrecht Institute, Royal Netherlands Academy of Arts and Sciences (KNAW) and UMC Utrecht , 3584 CT Utrecht , The Netherlands

4. Oncode Institute, Hubrecht Institute , 3584 CT Utrecht , The Netherlands

Abstract

Abstract Background Organoids are 3-dimensional experimental models that summarize the anatomical and functional structure of an organ. Although a promising experimental model for precision medicine, patient-derived tumor organoids (PDTOs) have currently been developed only for a fraction of tumor types. Results We have generated the first multi-omic dataset (whole-genome sequencing [WGS] and RNA-sequencing [RNA-seq]) of PDTOs from the rare and understudied pulmonary neuroendocrine tumors (n = 12; 6 grade 1, 6 grade 2) and provide data from other rare neuroendocrine neoplasms: small intestine (ileal) neuroendocrine tumors (n = 6; 2 grade 1 and 4 grade 2) and large-cell neuroendocrine carcinoma (n = 5; 1 pancreatic and 4 pulmonary). This dataset includes a matched sample from the parental sample (primary tumor or metastasis) for a majority of samples (21/23) and longitudinal sampling of the PDTOs (1 to 2 time points), for a total of n = 47 RNA-seq and n = 33 WGS. We here provide quality control for each technique and the raw and processed data as well as all scripts for genomic analyses to ensure an optimal reuse of the data. In addition, we report gene expression data and somatic small variant calls and describe how they were generated, in particular how we used WGS somatic calls to train a random forest classifier to detect variants in tumor-only RNA-seq. We also report all histopathological images used for medical diagnosis: hematoxylin and eosin–stained slides, brightfield images, and immunohistochemistry images of protein markers of clinical relevance. Conclusions This dataset will be critical to future studies relying on this PDTO biobank, such as drug screens for novel therapies and experiments investigating the mechanisms of carcinogenesis in these understudied diseases.

Funder

NET Research Foundation

Worldwide Cancer Research

The French National Cancer Institute

La Ligue Nationale contre le Cancer

EMBO

Marie Skłodowska-Curie IF

The Dutch Cancer Society

Publisher

Oxford University Press (OUP)

Reference70 articles.

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