| Literature DB >> 30621600 |
Floris Imhann1,2, K J Van der Velde2, R Barbieri1,2, R Alberts1,2, M D Voskuil1,2, A Vich Vila1,2, V Collij1,2, L M Spekhorst1,2, K W J Van der Sloot1, V Peters1, H M Van Dullemen1, M C Visschedijk1, E A M Festen1,2, M A Swertz2, G Dijkstra3, R K Weersma4.
Abstract
BACKGROUND: Inflammatory bowel disease (IBD) is a chronic complex disease of the gastrointestinal tract. Patients with IBD can experience a wide range of symptoms, but the pathophysiological mechanisms that cause these individual differences in clinical presentation remain largely unknown. In consequence, IBD is currently classified into subtypes using clinical characteristics. If we are to develop a more targeted treatment approach, molecular subtypes of IBD need to be discovered that can be used as new drug targets. To achieve this, we need multiple layers of molecular data generated from the same IBD patients. CONSTRUCTION AND CONTENT: We initiated the 1000IBD project ( https://1000ibd.org ) to prospectively follow more than 1000 IBD patients from the Northern provinces of the Netherlands. For these patients, we have collected a uniquely large number of phenotypes and generated multi-omics profiles. To date, 1215 participants have been enrolled in the project and enrolment is on-going. Phenotype data collected for these participants includes information on dietary and environmental factors, drug responses and adverse drug events. Genome information has been generated using genotyping (ImmunoChip, Global Screening Array and HumanExomeChip) and sequencing (whole exome sequencing and targeted resequencing of IBD susceptibility loci), transcriptome information generated using RNA-sequencing of intestinal biopsies and microbiome information generated using both sequencing of the 16S rRNA gene and whole genome shotgun metagenomic sequencing. UTILITY AND DISCUSSION: All molecular data generated within the 1000IBD project will be shared on the European Genome-Phenome Archive ( https://ega-archive.org , accession no: EGAS00001002702). The first data release, detailed in this announcement and released simultaneously with this publication, will contain basic phenotypes for 1215 participants, genotypes of 314 participants and gut microbiome data from stool samples (315 participants) and biopsies (107 participants) generated by tag sequencing the 16S gene. Future releases will comprise many more additional phenotypes and -omics data layers. 1000IBD data can be used by other researchers as a replication cohort, a dataset to test new software tools, or a dataset for applying new statistical models.Entities:
Keywords: Crohn’s disease; Dataset; Genome; Inflammatory bowel disease; Microbiome; Transcriptome; Ulcerative colitis
Mesh:
Substances:
Year: 2019 PMID: 30621600 PMCID: PMC6325838 DOI: 10.1186/s12876-018-0917-5
Source DB: PubMed Journal: BMC Gastroenterol ISSN: 1471-230X Impact factor: 3.067
Fig. 11000IBD Project Logo. This logo depicts the intestine and the multifaceted character of the project
Fig. 2Simplified 1000IBD data model. 1000IBD-ID is the 1000IBD identifier used in every data-layer, also referred to as primary key (PK) and foreign key 1 (FK1). RNAseq: RNA-sequencing, 16S: Sequencing data of the microbial 16S rRNA gene; WGS: whole genome shotgun sequencing
Clinical phenotypes of 1215 1000IBD participants
| No. of participants | 1215 |
| Age (Median ± IQR) | 41 ± 25 |
| Sex | |
| Male (%) | 510 (41.97) |
| Female (%) | 705 (58.03) |
| Diagnosis | |
| Crohn’s Disease (%) | 615 (50.62) |
| Ulcerative Colitis (%) | 495 (40.74) |
| IBDU (%) | 61 (5.02) |
| Other (microscopic colitis, IBDI, reconsidering IBD diagnosis) (%) | 44 (3.62) |
| Montreal Classification | |
| A: Age of Onset | |
| A1 (%) | 159 (13.09) |
| A2 (%) | 710 (58.44) |
| A3 (%) | 253 (20.82) |
| L: Disease Location (CD only) | |
| L1 (%) | 224 (36.42) |
| L2 (%) | 120 (19.51) |
| L3 (%) | 255 (41.46) |
| L4 (%) | 65 (10.57) |
| B: Disease Behaviour (CD only) | |
| B1 (%) | 301 (48.94) |
| B2 (%) | 208 (33.82) |
| B3 (%) | 102 (16.58) |
| Perianal | 189 (30.73) |
| E: Disease Extent (UC only) | |
| E1 (%) | 57 (10.25) |
| E2 (%) | 162 (29.13) |
| E3 (%) | 299 (53.78) |
| S: Disease Severity (UC only) | |
| S1 (%) | 29 (5.22) |
| S2 (%) | 139 (25.00) |
| S3 (%) | 191 (34.35) |
| S4 (%) | 119 (21.40) |
| Age at Diagnosis in years (Median ± IQR) | 27 ± 19 |
| Disease Duration at Recruitment in years (Median ± IQR) | 8 ± 12 |
| Medication Exposure | |
| Steroids % | 90.07 |
| Steroids CD % | 91.99 |
| Steroids UC % | 88.28 |
| Steroids IBDU % | 88.33 |
| Immunosuppressors % | 68.32 |
| Immunosuppressors CD % | 79.08 |
| Immunosuppressors UC % | 56.97 |
| Immunosuppressors IBDU % | 56.67 |
| Biologicals % | 37.30 |
| Biologicals CD % | 55.07 |
| Biologicals UC % | 17.37 |
| Biologicals IBDU % | 25.00 |
| Mesalazines % | 44.34 |
| Mesalazines CD % | 18.06 |
| Mesalazines UC % | 70.99 |
| Mesalazines IBDU % | 83.33 |
| Average Disease Activitya | |
| HBI (Average ± Standard Deviation) | 2.99 ± 3.18 |
| SSCAI (Average ± Standard Deviation) | 1.61 ± 1.97 |
aFor each patient, the median disease activity was determined. For the entire group the average of the individual medians is presented here
IQR interquartile range, CD Crohn’s disease, UC ulcerative colitis, IBDU inflammatory bowel disease undetermined, IBDI inflammatory bowel disease intermediate, HBI Harvey-Bradshaw Index, SSCAI Simple Clinical Colitis Activity Index
Fig. 3Flow of research data from the 1000IBD project. In Stage 1, data that has been generated or will be generated is announced. In Stage 2, summary statistics will be made available. In Stage 3, the data itself will be publicly released
Content of Data release 1. Released on June 5th, 2018
| Data | Available for number of participants | Format available |
|---|---|---|
| Clinical phenotypes | 1215 of 1215 participants of 1000IBD | TSV (Tab-separated file) |
| Genome | ||
| -Immunochip genotypes | 314 of 1215 participants of 1000IBD | IDAT |
| Microbiome | ||
| -16S rRNA gene sequences from stool samples | 315 of 1215 participants of 1000IBD | FASTQ |
| Microbiome | ||
| -16S rRNA gene sequences from biopsies | 107 of 1215 participants of 1000IBD | FASTQ |
| Microbiome | ||
| -Whole genome shotgun metagenomics sequences from stool samples | 355 of 1215 participants of 1000IBD | FASTQ |