PhenoDis: a comprehensive database for phenotypic characterization of rare cardiac diseases

Abstract Background Thoroughly annotated data resources are a key requirement in phenotype dependent analysis and diagnosis of diseases in the area of precision medicine. Recent work has shown that curation and systematic annotation of human phenome data can significantly improve the quality and sel...

Full description

Bibliographic Details
Main Authors: Angela Adler, Pia Kirchmeier, Julian Reinhard, Barbara Brauner, Irmtraud Dunger, Gisela Fobo, Goar Frishman, Corinna Montrone, H.-Werner Mewes, Matthias Arnold, Andreas Ruepp
Format: Article
Language:English
Published: BMC 2018-01-01
Series:Orphanet Journal of Rare Diseases
Subjects:
Online Access:http://link.springer.com/article/10.1186/s13023-018-0765-y
id doaj-b8e4382893a74c09b45949f5d840b90a
record_format Article
collection DOAJ
language English
format Article
sources DOAJ
author Angela Adler
Pia Kirchmeier
Julian Reinhard
Barbara Brauner
Irmtraud Dunger
Gisela Fobo
Goar Frishman
Corinna Montrone
H.-Werner Mewes
Matthias Arnold
Andreas Ruepp
spellingShingle Angela Adler
Pia Kirchmeier
Julian Reinhard
Barbara Brauner
Irmtraud Dunger
Gisela Fobo
Goar Frishman
Corinna Montrone
H.-Werner Mewes
Matthias Arnold
Andreas Ruepp
PhenoDis: a comprehensive database for phenotypic characterization of rare cardiac diseases
Orphanet Journal of Rare Diseases
Rare cardiac diseases
Heart
Phenotype
Genotype
Precision medicine
Genetic disorders
author_facet Angela Adler
Pia Kirchmeier
Julian Reinhard
Barbara Brauner
Irmtraud Dunger
Gisela Fobo
Goar Frishman
Corinna Montrone
H.-Werner Mewes
Matthias Arnold
Andreas Ruepp
author_sort Angela Adler
title PhenoDis: a comprehensive database for phenotypic characterization of rare cardiac diseases
title_short PhenoDis: a comprehensive database for phenotypic characterization of rare cardiac diseases
title_full PhenoDis: a comprehensive database for phenotypic characterization of rare cardiac diseases
title_fullStr PhenoDis: a comprehensive database for phenotypic characterization of rare cardiac diseases
title_full_unstemmed PhenoDis: a comprehensive database for phenotypic characterization of rare cardiac diseases
title_sort phenodis: a comprehensive database for phenotypic characterization of rare cardiac diseases
publisher BMC
series Orphanet Journal of Rare Diseases
issn 1750-1172
publishDate 2018-01-01
description Abstract Background Thoroughly annotated data resources are a key requirement in phenotype dependent analysis and diagnosis of diseases in the area of precision medicine. Recent work has shown that curation and systematic annotation of human phenome data can significantly improve the quality and selectivity for the interpretation of inherited diseases. We have therefore developed PhenoDis, a comprehensive, manually annotated database providing symptomatic, genetic and imprinting information about rare cardiac diseases. Results PhenoDis includes 214 rare cardiac diseases from Orphanet and 94 more from OMIM. For phenotypic characterization of the diseases, we performed manual annotation of diseases with articles from the biomedical literature. Detailed description of disease symptoms required the use of 2247 different terms from the Human Phenotype Ontology (HPO). Diseases listed in PhenoDis frequently cover a broad spectrum of symptoms with 28% from the branch of ‘cardiovascular abnormality’ and others from areas such as neurological (11.5%) and metabolism (6%). We collected extensive information on the frequency of symptoms in respective diseases as well as on disease-associated genes and imprinting data. The analysis of the abundance of symptoms in patient studies revealed that most of the annotated symptoms (71%) are found in less than half of the patients of a particular disease. Comprehensive and systematic characterization of symptoms including their frequency is a pivotal prerequisite for computer based prediction of diseases and disease causing genetic variants. To this end, PhenoDis provides in-depth annotation for a complete group of rare diseases, including information on pathogenic and likely pathogenic genetic variants for 206 diseases as listed in ClinVar. We integrated all results in an online database ( http://mips.helmholtz-muenchen.de/phenodis/ ) with multiple search options and provide the complete dataset for download. Conclusion PhenoDis provides a comprehensive set of manually annotated rare cardiac diseases that enables computational approaches for disease prediction via decision support systems and phenotype-driven strategies for the identification of disease causing genes.
topic Rare cardiac diseases
Heart
Phenotype
Genotype
Precision medicine
Genetic disorders
url http://link.springer.com/article/10.1186/s13023-018-0765-y
work_keys_str_mv AT angelaadler phenodisacomprehensivedatabaseforphenotypiccharacterizationofrarecardiacdiseases
AT piakirchmeier phenodisacomprehensivedatabaseforphenotypiccharacterizationofrarecardiacdiseases
AT julianreinhard phenodisacomprehensivedatabaseforphenotypiccharacterizationofrarecardiacdiseases
AT barbarabrauner phenodisacomprehensivedatabaseforphenotypiccharacterizationofrarecardiacdiseases
AT irmtrauddunger phenodisacomprehensivedatabaseforphenotypiccharacterizationofrarecardiacdiseases
AT giselafobo phenodisacomprehensivedatabaseforphenotypiccharacterizationofrarecardiacdiseases
AT goarfrishman phenodisacomprehensivedatabaseforphenotypiccharacterizationofrarecardiacdiseases
AT corinnamontrone phenodisacomprehensivedatabaseforphenotypiccharacterizationofrarecardiacdiseases
AT hwernermewes phenodisacomprehensivedatabaseforphenotypiccharacterizationofrarecardiacdiseases
AT matthiasarnold phenodisacomprehensivedatabaseforphenotypiccharacterizationofrarecardiacdiseases
AT andreasruepp phenodisacomprehensivedatabaseforphenotypiccharacterizationofrarecardiacdiseases
_version_ 1725433484524126208
spelling doaj-b8e4382893a74c09b45949f5d840b90a2020-11-25T00:03:31ZengBMCOrphanet Journal of Rare Diseases1750-11722018-01-011311810.1186/s13023-018-0765-yPhenoDis: a comprehensive database for phenotypic characterization of rare cardiac diseasesAngela Adler0Pia Kirchmeier1Julian Reinhard2Barbara Brauner3Irmtraud Dunger4Gisela Fobo5Goar Frishman6Corinna Montrone7H.-Werner Mewes8Matthias Arnold9Andreas Ruepp10Technische Universität München, Chair of Genome Oriented Bioinformatics, Center of Life and Food ScienceInstitute for Bioinformatics and Systems Biology (IBIS), Helmholtz Zentrum München, German Research Center for Environmental Health (GmbH)Institute for Bioinformatics and Systems Biology (IBIS), Helmholtz Zentrum München, German Research Center for Environmental Health (GmbH)Institute for Bioinformatics and Systems Biology (IBIS), Helmholtz Zentrum München, German Research Center for Environmental Health (GmbH)Institute for Bioinformatics and Systems Biology (IBIS), Helmholtz Zentrum München, German Research Center for Environmental Health (GmbH)Institute for Bioinformatics and Systems Biology (IBIS), Helmholtz Zentrum München, German Research Center for Environmental Health (GmbH)Institute for Bioinformatics and Systems Biology (IBIS), Helmholtz Zentrum München, German Research Center for Environmental Health (GmbH)Institute for Bioinformatics and Systems Biology (IBIS), Helmholtz Zentrum München, German Research Center for Environmental Health (GmbH)Institute for Bioinformatics and Systems Biology (IBIS), Helmholtz Zentrum München, German Research Center for Environmental Health (GmbH)Institute for Bioinformatics and Systems Biology (IBIS), Helmholtz Zentrum München, German Research Center for Environmental Health (GmbH)Institute for Bioinformatics and Systems Biology (IBIS), Helmholtz Zentrum München, German Research Center for Environmental Health (GmbH)Abstract Background Thoroughly annotated data resources are a key requirement in phenotype dependent analysis and diagnosis of diseases in the area of precision medicine. Recent work has shown that curation and systematic annotation of human phenome data can significantly improve the quality and selectivity for the interpretation of inherited diseases. We have therefore developed PhenoDis, a comprehensive, manually annotated database providing symptomatic, genetic and imprinting information about rare cardiac diseases. Results PhenoDis includes 214 rare cardiac diseases from Orphanet and 94 more from OMIM. For phenotypic characterization of the diseases, we performed manual annotation of diseases with articles from the biomedical literature. Detailed description of disease symptoms required the use of 2247 different terms from the Human Phenotype Ontology (HPO). Diseases listed in PhenoDis frequently cover a broad spectrum of symptoms with 28% from the branch of ‘cardiovascular abnormality’ and others from areas such as neurological (11.5%) and metabolism (6%). We collected extensive information on the frequency of symptoms in respective diseases as well as on disease-associated genes and imprinting data. The analysis of the abundance of symptoms in patient studies revealed that most of the annotated symptoms (71%) are found in less than half of the patients of a particular disease. Comprehensive and systematic characterization of symptoms including their frequency is a pivotal prerequisite for computer based prediction of diseases and disease causing genetic variants. To this end, PhenoDis provides in-depth annotation for a complete group of rare diseases, including information on pathogenic and likely pathogenic genetic variants for 206 diseases as listed in ClinVar. We integrated all results in an online database ( http://mips.helmholtz-muenchen.de/phenodis/ ) with multiple search options and provide the complete dataset for download. Conclusion PhenoDis provides a comprehensive set of manually annotated rare cardiac diseases that enables computational approaches for disease prediction via decision support systems and phenotype-driven strategies for the identification of disease causing genes.http://link.springer.com/article/10.1186/s13023-018-0765-yRare cardiac diseasesHeartPhenotypeGenotypePrecision medicineGenetic disorders