Cargando…

A Biomedical Knowledge Graph System to Propose Mechanistic Hypotheses for Real-World Environmental Health Observations: Cohort Study and Informatics Application

BACKGROUND: Knowledge graphs are a common form of knowledge representation in biomedicine and many other fields. We developed an open biomedical knowledge graph–based system termed Reasoning Over Biomedical Objects linked in Knowledge Oriented Pathways (ROBOKOP). ROBOKOP consists of both a front-end...

Descripción completa

Detalles Bibliográficos
Autores principales: Fecho, Karamarie, Bizon, Chris, Miller, Frederick, Schurman, Shepherd, Schmitt, Charles, Xue, William, Morton, Kenneth, Wang, Patrick, Tropsha, Alexander
Formato: Online Artículo Texto
Lenguaje:English
Publicado: JMIR Publications 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8335603/
https://www.ncbi.nlm.nih.gov/pubmed/34283031
http://dx.doi.org/10.2196/26714
_version_ 1783733144601493504
author Fecho, Karamarie
Bizon, Chris
Miller, Frederick
Schurman, Shepherd
Schmitt, Charles
Xue, William
Morton, Kenneth
Wang, Patrick
Tropsha, Alexander
author_facet Fecho, Karamarie
Bizon, Chris
Miller, Frederick
Schurman, Shepherd
Schmitt, Charles
Xue, William
Morton, Kenneth
Wang, Patrick
Tropsha, Alexander
author_sort Fecho, Karamarie
collection PubMed
description BACKGROUND: Knowledge graphs are a common form of knowledge representation in biomedicine and many other fields. We developed an open biomedical knowledge graph–based system termed Reasoning Over Biomedical Objects linked in Knowledge Oriented Pathways (ROBOKOP). ROBOKOP consists of both a front-end user interface and a back-end knowledge graph. The ROBOKOP user interface allows users to posit questions and explore answer subgraphs. Users can also posit questions through direct Cypher query of the underlying knowledge graph, which currently contains roughly 6 million nodes or biomedical entities and 140 million edges or predicates describing the relationship between nodes, drawn from over 30 curated data sources. OBJECTIVE: We aimed to apply ROBOKOP to survey data on workplace exposures and immune-mediated diseases from the Environmental Polymorphisms Registry (EPR) within the National Institute of Environmental Health Sciences. METHODS: We analyzed EPR survey data and identified 45 associations between workplace chemical exposures and immune-mediated diseases, as self-reported by study participants (n= 4574), with 20 associations significant at P<.05 after false discovery rate correction. We then used ROBOKOP to (1) validate the associations by determining whether plausible connections exist within the ROBOKOP knowledge graph and (2) propose biological mechanisms that might explain them and serve as hypotheses for subsequent testing. We highlight the following three exemplar associations: carbon monoxide-multiple sclerosis, ammonia-asthma, and isopropanol-allergic disease. RESULTS: ROBOKOP successfully returned answer sets for three queries that were posed in the context of the driving examples. The answer sets included potential intermediary genes, as well as supporting evidence that might explain the observed associations. CONCLUSIONS: We demonstrate real-world application of ROBOKOP to generate mechanistic hypotheses for associations between workplace chemical exposures and immune-mediated diseases. We expect that ROBOKOP will find broad application across many biomedical fields and other scientific disciplines due to its generalizability, speed to discovery and generation of mechanistic hypotheses, and open nature.
format Online
Article
Text
id pubmed-8335603
institution National Center for Biotechnology Information
language English
publishDate 2021
publisher JMIR Publications
record_format MEDLINE/PubMed
spelling pubmed-83356032021-08-20 A Biomedical Knowledge Graph System to Propose Mechanistic Hypotheses for Real-World Environmental Health Observations: Cohort Study and Informatics Application Fecho, Karamarie Bizon, Chris Miller, Frederick Schurman, Shepherd Schmitt, Charles Xue, William Morton, Kenneth Wang, Patrick Tropsha, Alexander JMIR Med Inform Original Paper BACKGROUND: Knowledge graphs are a common form of knowledge representation in biomedicine and many other fields. We developed an open biomedical knowledge graph–based system termed Reasoning Over Biomedical Objects linked in Knowledge Oriented Pathways (ROBOKOP). ROBOKOP consists of both a front-end user interface and a back-end knowledge graph. The ROBOKOP user interface allows users to posit questions and explore answer subgraphs. Users can also posit questions through direct Cypher query of the underlying knowledge graph, which currently contains roughly 6 million nodes or biomedical entities and 140 million edges or predicates describing the relationship between nodes, drawn from over 30 curated data sources. OBJECTIVE: We aimed to apply ROBOKOP to survey data on workplace exposures and immune-mediated diseases from the Environmental Polymorphisms Registry (EPR) within the National Institute of Environmental Health Sciences. METHODS: We analyzed EPR survey data and identified 45 associations between workplace chemical exposures and immune-mediated diseases, as self-reported by study participants (n= 4574), with 20 associations significant at P<.05 after false discovery rate correction. We then used ROBOKOP to (1) validate the associations by determining whether plausible connections exist within the ROBOKOP knowledge graph and (2) propose biological mechanisms that might explain them and serve as hypotheses for subsequent testing. We highlight the following three exemplar associations: carbon monoxide-multiple sclerosis, ammonia-asthma, and isopropanol-allergic disease. RESULTS: ROBOKOP successfully returned answer sets for three queries that were posed in the context of the driving examples. The answer sets included potential intermediary genes, as well as supporting evidence that might explain the observed associations. CONCLUSIONS: We demonstrate real-world application of ROBOKOP to generate mechanistic hypotheses for associations between workplace chemical exposures and immune-mediated diseases. We expect that ROBOKOP will find broad application across many biomedical fields and other scientific disciplines due to its generalizability, speed to discovery and generation of mechanistic hypotheses, and open nature. JMIR Publications 2021-07-20 /pmc/articles/PMC8335603/ /pubmed/34283031 http://dx.doi.org/10.2196/26714 Text en ©Karamarie Fecho, Chris Bizon, Frederick Miller, Shepherd Schurman, Charles Schmitt, William Xue, Kenneth Morton, Patrick Wang, Alexander Tropsha. Originally published in JMIR Medical Informatics (https://medinform.jmir.org), 20.07.2021. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work, first published in JMIR Medical Informatics, is properly cited. The complete bibliographic information, a link to the original publication on https://medinform.jmir.org/, as well as this copyright and license information must be included.
spellingShingle Original Paper
Fecho, Karamarie
Bizon, Chris
Miller, Frederick
Schurman, Shepherd
Schmitt, Charles
Xue, William
Morton, Kenneth
Wang, Patrick
Tropsha, Alexander
A Biomedical Knowledge Graph System to Propose Mechanistic Hypotheses for Real-World Environmental Health Observations: Cohort Study and Informatics Application
title A Biomedical Knowledge Graph System to Propose Mechanistic Hypotheses for Real-World Environmental Health Observations: Cohort Study and Informatics Application
title_full A Biomedical Knowledge Graph System to Propose Mechanistic Hypotheses for Real-World Environmental Health Observations: Cohort Study and Informatics Application
title_fullStr A Biomedical Knowledge Graph System to Propose Mechanistic Hypotheses for Real-World Environmental Health Observations: Cohort Study and Informatics Application
title_full_unstemmed A Biomedical Knowledge Graph System to Propose Mechanistic Hypotheses for Real-World Environmental Health Observations: Cohort Study and Informatics Application
title_short A Biomedical Knowledge Graph System to Propose Mechanistic Hypotheses for Real-World Environmental Health Observations: Cohort Study and Informatics Application
title_sort biomedical knowledge graph system to propose mechanistic hypotheses for real-world environmental health observations: cohort study and informatics application
topic Original Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8335603/
https://www.ncbi.nlm.nih.gov/pubmed/34283031
http://dx.doi.org/10.2196/26714
work_keys_str_mv AT fechokaramarie abiomedicalknowledgegraphsystemtoproposemechanistichypothesesforrealworldenvironmentalhealthobservationscohortstudyandinformaticsapplication
AT bizonchris abiomedicalknowledgegraphsystemtoproposemechanistichypothesesforrealworldenvironmentalhealthobservationscohortstudyandinformaticsapplication
AT millerfrederick abiomedicalknowledgegraphsystemtoproposemechanistichypothesesforrealworldenvironmentalhealthobservationscohortstudyandinformaticsapplication
AT schurmanshepherd abiomedicalknowledgegraphsystemtoproposemechanistichypothesesforrealworldenvironmentalhealthobservationscohortstudyandinformaticsapplication
AT schmittcharles abiomedicalknowledgegraphsystemtoproposemechanistichypothesesforrealworldenvironmentalhealthobservationscohortstudyandinformaticsapplication
AT xuewilliam abiomedicalknowledgegraphsystemtoproposemechanistichypothesesforrealworldenvironmentalhealthobservationscohortstudyandinformaticsapplication
AT mortonkenneth abiomedicalknowledgegraphsystemtoproposemechanistichypothesesforrealworldenvironmentalhealthobservationscohortstudyandinformaticsapplication
AT wangpatrick abiomedicalknowledgegraphsystemtoproposemechanistichypothesesforrealworldenvironmentalhealthobservationscohortstudyandinformaticsapplication
AT tropshaalexander abiomedicalknowledgegraphsystemtoproposemechanistichypothesesforrealworldenvironmentalhealthobservationscohortstudyandinformaticsapplication
AT fechokaramarie biomedicalknowledgegraphsystemtoproposemechanistichypothesesforrealworldenvironmentalhealthobservationscohortstudyandinformaticsapplication
AT bizonchris biomedicalknowledgegraphsystemtoproposemechanistichypothesesforrealworldenvironmentalhealthobservationscohortstudyandinformaticsapplication
AT millerfrederick biomedicalknowledgegraphsystemtoproposemechanistichypothesesforrealworldenvironmentalhealthobservationscohortstudyandinformaticsapplication
AT schurmanshepherd biomedicalknowledgegraphsystemtoproposemechanistichypothesesforrealworldenvironmentalhealthobservationscohortstudyandinformaticsapplication
AT schmittcharles biomedicalknowledgegraphsystemtoproposemechanistichypothesesforrealworldenvironmentalhealthobservationscohortstudyandinformaticsapplication
AT xuewilliam biomedicalknowledgegraphsystemtoproposemechanistichypothesesforrealworldenvironmentalhealthobservationscohortstudyandinformaticsapplication
AT mortonkenneth biomedicalknowledgegraphsystemtoproposemechanistichypothesesforrealworldenvironmentalhealthobservationscohortstudyandinformaticsapplication
AT wangpatrick biomedicalknowledgegraphsystemtoproposemechanistichypothesesforrealworldenvironmentalhealthobservationscohortstudyandinformaticsapplication
AT tropshaalexander biomedicalknowledgegraphsystemtoproposemechanistichypothesesforrealworldenvironmentalhealthobservationscohortstudyandinformaticsapplication