Data supporting: “Deep molecular phenotyping reveals the identity of Barrett’s esophagus and its malignant transition.” Nowicki-Osuch, Zhuang et al. scRNAseq (BAM files) 38 Barrett's and normal samples
The dataset was generated for studying metastatic mechanism of pancreatic ductal adenocarcinoma (PDAC). It is consisted of pair-end raw RNA sequencing reads of 33 fresh froze PDAC specimens, which includes 6 tumor-adjacent normal tissues (N), 13 primary tumors (PT), and 14 hepatic metastases (HM) from 14 PDAC patients (6 N-PT-HM trios, 7 PT-HM paires, and 1 HM).
Data supporting: “Deep molecular phenotyping reveals the identity of Barrett’s esophagus and its malignant transition.” Nowicki-Osuch, Zhuang et al. RNAseq (BAM files) 12 Barrett's samples 12 normal oesophageal samples 11 normal gastric cardia samples
Sequencing data of 20 tumor runs (different tumors), which were uploaded to EGAS00001004813 and used in the ImmuNeo publication. The sequencing was always paired and run on Illumina HiSeq sequencers.
Clinical & biomarker data from IMagyn050: treatment arm, treatment approach, outcome of surgery, ECOG PS, PD-L1 status, race, age, disease stage, progression free survival (investigator assessed), overall survival, histology, tumor mutation burden and status, genomic loss of heterozygosity, microsatellite status, BRCA1/2 mutation status, tissue of origin. Mutation status based on FoundationOne NGS for the following genes is also being provided: TP53, BRCA1, CCNE1, MYC, NF1, PIK3CA, RAD21, TERC, PRKCI, KRAS, RB1, BRCA2, ARID1A, AKT2, PTEN, KDM5A, NOTCH3, FGF12, ERBB2, CDK12, EMSY, WHSC1L1, BCL2L1, CDKN2A, GNAS, ARFRP1, ZNF217, SOX2, CCND2, FGF6, FGF23, LYN, MUTYH, AURKA, FGFR1, MCL1, MLL2, MYCL1, ZNF703, BRAF, MAP2K4, CREBBP, TSC2
This study investigates high-risk rhabdomyosarcoma (RMS) using multiple single-cell and spatial genomic technologies. We generated and analysed single-cell and single-nucleus RNA-sequencing, chromatin accessibility, and spatial transcriptomics data from primary tumours and validation samples. These datasets characterise cellular diversity within rhabdomyosarcoma and identify cell states associated with aggressive disease. The data support research into tumour biology, risk stratification, and therapeutic target discovery. This repository houses the single-cell ATAC sequencing of RMS tumours data. . This dataset contains all the data available for this study on 2025-09-30.
This study investigates high-risk rhabdomyosarcoma (RMS) using multiple single-cell and spatial genomic technologies. We generated and analysed single-cell and single-nucleus RNA-sequencing, chromatin accessibility, and spatial transcriptomics data from primary tumours and validation samples. These datasets characterise cellular diversity within rhabdomyosarcoma and identify cell states associated with aggressive disease. The data support research into tumour biology, risk stratification, and therapeutic target discovery. This repository houses the single-cell RNA sequencing of RMS tumours data. . This dataset contains all the data available for this study on 2025-09-30.