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making sense of text and data
Turning Data into Knowledge - Semantic Technologies in Healthcare
Todor Primov
Nikola Tulechki
Svetla Boytcheva
June 2021
Why Ontotext?
Company profile –
Sirma AI (Ontotext)
Established in year 2000, as a
Research Lab of Sirma Holding
Unique mix of knowledge graphs and
advanced NLP
Leader in semantic web technology
and AI
Solid experience in
research projects
Attracted more than 15M Euro in
innovation funding through more than
50 research projects, funded by
H2020, FP7, FP6, and FP5.
Key competences include ontologies
and knowledge graphs, graph
embeddings, NLP and semantic
normalization, ML/DL, data analytics
High-profiled
commercial clients Life
sciences
Use cases: Enterprise KG; Enterprise
Semantic Search; Insights Platforms;
Decision support systems
Clients: from start-ups to top 10
pharma companies; from smart apps
to large hospitals and health
insurance companies
About 80% of
Electronic Health
Records are in
unstructured format
Need for NLP tools for
processing clinical text
Lack of multilingual
terminology
resources and
domain specific
ontologies
The automatic processing and knowledge extraction from
medical records is a task with public importance
Clinical text
OPERATIONS / PROCEDURES :Dobutamine stress test , cardiac
ultrasound , EGD , chest x-ray , PICC placement .The patient is a
62-year-old female with a history of diabetes mellitus ,
hypertension , COPD , hypercholesterolemia , depression and CHF
Why the task for concept normalization
is so important?
o Disambiguation
o Usage of URI
o Data integration
o Reasoning
o Similarity search
o Phenotypes
Text-based classification
a process of assigning tags or categories to text
according to its content.
https://icd.who.int/browse10/2019/en
https://icd.who.int/browse10/2019/en
https://ncpha.government.bg/index/301-mkb-10-mejdunarodna-statisticheska-klasifikacia-na-bolestite-i-problemite-svurzani-sus-zdraveto.html
https://mediately.co/bg/icd/?q=e11
E11,Неинсулинозависим захарен диабет
E11,диабетес мелитус- типус 2.
E11,зд2
E11,захарен диабет тип 2 с лош гликемичен контрол
E11,захарен диабет тип ІІ- неинсулинозависим тип
E11," захарен диабет -тип 2,компенсиран "
E11,захарен диабет т. 2
E11,захарен диабет 2 тип - новооткрит
E11," захарен диабет тип 2, новооткрит"
E11,захарен диабет тип2 с неврологични усложнения
E11," захарен диабет-тип 2, без усложнения "
E11,зд тип 2
E11," захарен диабет тип 2, незадовоблително компенсиран "
E11," захарен диабет- тип 2, инсулинозависим "
E11," захарен диабет тип 2, компесиран "
E11,захарен диабет тип 2 -в метаболитна декомпенсация
E11,захарен диабет тип II
E11," захарен диабет-тип 2, декомпенсиран "
E11,диабет тип 2
E11,захарен диабет
E11,Захарен диабет тип 2
E11,"Захарен диабет, тип 2"
E11,Type II diabetes Mellitus
E11,typus II diabete Mellitus
E11,типус II диабетес мелитус
Standard Classification & Ontologies
https://bioportal.bioontology.org/
SNOMED CT
https://bioportal.bioontology.org/ontologies/SNOMEDCT
SNOMED CT
https://www.snomed.org/
https://browser.ihtsdotools.org/?
ICD-10 CM
https://bioportal.bioontology.org/ontologies/ICD10CM
DOID
https://bioportal.bioontology.org/ontologies/DOID
https://disease-ontology.org/
Massive number of knowledge bases
#30
https://lod-cloud.net/
#31
Figure 1. The growth of the LOD Cloud diagram
over time. Diagrammatic representation of the
number of the LOD Cloud total datasets (blue
line) and LOD Cloud Life Sciences domain
datasets (red line) from 2009 to 2017 (top).
Evolution of the graphical view of the LOD
Cloud from 2007 to 2017 (bottom).
Published in 2018
Life Sciences Linked Open Data Datasets Connections to SNOMED CT, RxNORM & GO
Artemis Chaleplioglou, Sozon Papavlasopoulos, Marios Poulos
https://www.wikidata.org/wiki/Q84263196
https://wikidata.metaphacts.com/resource/wd:Q84263196
https://w.wiki/3Tqy
GraphDB Empowers Scientific Projects to Fight COVID-19 and Publish Knowledge Graphs
Ontotext’s GraphDB is used by Mayo Clinic to Publish CORD-19 with Semantic Annotations and by Cochranе for COVID-19 Study Register
https://www.ontotext.com/blog/graphdb-empowers-scientific-projects-to-fight-covid19-and-publish-knowledge-graphs/
Adverse Drug Reactions Predictions
#
Data
● Four types of input text segments
a. manufacturer - company names like
ALLERGAN --- Allergan --- Allergan plc --- Allergan, Inc --- Allergan, Inc.
GlaxoSmithKline --- GlaxoSmithKline Biologicals ---
GlaxoSmithKline Biologicals Dresden --- GlaxoSmithKline Pharmaceuticals
a. indication - disease, condition like Back pain, Hypertension, Osteoarthritis
b. adverse event - disease, condition
c. intervention - drugs like FLUCLOXACILLIN, HYDROCORTISONE SODIUM SUCCINATE,
NORVIR SOFT GELATIN CAPSULES
● Data sources manufacturer indication adverse
event
intervention
ClinicalTrials.gov 12 313 604 506 2 468 553 100 000
FDAERS 9 032 469 22 206 659 26 570 878 32 575 511
Standard Classifications and Ontologies
Snomed CT - Systematized Nomenclature of Medicine Clinical
Terms
UMLS - Unified Medical Language System
CHEBI - Chemical Entities of Biological Interest Ontology
MESH - Medical Subject Headings
Concepts Normalization. Gazetteer Creation
● Use of existing ontologies and databases - UMLS (disease), Drug Central (drugs),
Wikidata (company)
● Re-writing rules to adjust the ontology labels to our needs
original ontology term re-written new label
Oppenheim's Disease Oppenheim Disease
Congenital chromosomal disease Congenital chromosomal disorder
Congenital ocular coloboma (disorder) Congenital ocular coloboma
Choledochal Cyst, Type I Type I Choledochal Cyst
Abnormality of the pulmonary artery the pulmonary artery Abnormality
Training Data
Adverse reaction suggestions
Where:
● ?subject iterates over all drugs in the dataset
● ?object iterates over all possible entities
Adverse Drug Reaction Suggestion
EXtreme-scale Analytics via Multimodal Ontology Discovery & Enhancement
Develop weakly supervised
knowledge discovery
algorithms for extreme
scale data, to associate:
• visual content of clinical
images
• semantic content included
in the diagnoses
Develop prediction &
analysis tools for clinical
settings & research
Clinical data are highly heterogeneous
• EHR
• Clinical Notes
• Biomedical data
• Medical Imaging Results
Data
AOEC Digital Workflow
STAINING
Microscope
Diagnosis
AOEC Digital Workflow
• New possibility to manage the block and slides archiving…
AOEC Digital Workflow
WSI
Annotations for image regions WSI
Implemented annotation system Virtum that transforms
the input to variety of standard output formats
Development of new ontologies
Development of new ontologies - ExaMode OWL 2
Ontology, including all the four diseases treated in the
project: colon carcinoma, cervix carcinoma, lung
carcinoma, and celiac disease.
• The ontology models the clinical cases for all the
diseases, including their intervention and locations.
• The ontology can be accessed through Mappings for
some standard ontologies in Healthcare domain
(available at:
https://zenodo.org/record/4081387#.YEoaymgzaHs )
https://examode.ontotext.com
Similarity search results
Acknowledgements
This work was carried out under the FROCKG project:
Fact Checking For Large Enterprise Knowledge Graphs
https://www.ontotext.com
This work was carried out under the ExaMode project: EXtreme-scale
Analytics via Multimodal Ontology Discovery & Enhancement
https://frockg.eu/
Thank you!
See Ontotext demos
Patient Insights: http://patient.ontotext.com/
Linked Life Data:
https://www.ontotext.com/knowledgehub/de
moservices/linked-life-data/
ExaMode: http://examode.ontotext.com/

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Turning Data into Knowledge - Semantic Technologies in Healthcare

  • 1. making sense of text and data Turning Data into Knowledge - Semantic Technologies in Healthcare Todor Primov Nikola Tulechki Svetla Boytcheva June 2021
  • 2. Why Ontotext? Company profile – Sirma AI (Ontotext) Established in year 2000, as a Research Lab of Sirma Holding Unique mix of knowledge graphs and advanced NLP Leader in semantic web technology and AI Solid experience in research projects Attracted more than 15M Euro in innovation funding through more than 50 research projects, funded by H2020, FP7, FP6, and FP5. Key competences include ontologies and knowledge graphs, graph embeddings, NLP and semantic normalization, ML/DL, data analytics High-profiled commercial clients Life sciences Use cases: Enterprise KG; Enterprise Semantic Search; Insights Platforms; Decision support systems Clients: from start-ups to top 10 pharma companies; from smart apps to large hospitals and health insurance companies
  • 3. About 80% of Electronic Health Records are in unstructured format Need for NLP tools for processing clinical text Lack of multilingual terminology resources and domain specific ontologies The automatic processing and knowledge extraction from medical records is a task with public importance
  • 4. Clinical text OPERATIONS / PROCEDURES :Dobutamine stress test , cardiac ultrasound , EGD , chest x-ray , PICC placement .The patient is a 62-year-old female with a history of diabetes mellitus , hypertension , COPD , hypercholesterolemia , depression and CHF
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  • 13. Why the task for concept normalization is so important? o Disambiguation o Usage of URI o Data integration o Reasoning o Similarity search o Phenotypes
  • 14. Text-based classification a process of assigning tags or categories to text according to its content.
  • 19. E11,Неинсулинозависим захарен диабет E11,диабетес мелитус- типус 2. E11,зд2 E11,захарен диабет тип 2 с лош гликемичен контрол E11,захарен диабет тип ІІ- неинсулинозависим тип E11," захарен диабет -тип 2,компенсиран " E11,захарен диабет т. 2 E11,захарен диабет 2 тип - новооткрит E11," захарен диабет тип 2, новооткрит" E11,захарен диабет тип2 с неврологични усложнения E11," захарен диабет-тип 2, без усложнения " E11,зд тип 2 E11," захарен диабет тип 2, незадовоблително компенсиран " E11," захарен диабет- тип 2, инсулинозависим " E11," захарен диабет тип 2, компесиран " E11,захарен диабет тип 2 -в метаболитна декомпенсация E11,захарен диабет тип II E11," захарен диабет-тип 2, декомпенсиран " E11,диабет тип 2 E11,захарен диабет E11,Захарен диабет тип 2 E11,"Захарен диабет, тип 2" E11,Type II diabetes Mellitus E11,typus II diabete Mellitus E11,типус II диабетес мелитус
  • 20. Standard Classification & Ontologies https://bioportal.bioontology.org/
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  • 30. Massive number of knowledge bases #30 https://lod-cloud.net/
  • 31. #31 Figure 1. The growth of the LOD Cloud diagram over time. Diagrammatic representation of the number of the LOD Cloud total datasets (blue line) and LOD Cloud Life Sciences domain datasets (red line) from 2009 to 2017 (top). Evolution of the graphical view of the LOD Cloud from 2007 to 2017 (bottom). Published in 2018 Life Sciences Linked Open Data Datasets Connections to SNOMED CT, RxNORM & GO Artemis Chaleplioglou, Sozon Papavlasopoulos, Marios Poulos
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  • 37. GraphDB Empowers Scientific Projects to Fight COVID-19 and Publish Knowledge Graphs Ontotext’s GraphDB is used by Mayo Clinic to Publish CORD-19 with Semantic Annotations and by Cochranе for COVID-19 Study Register https://www.ontotext.com/blog/graphdb-empowers-scientific-projects-to-fight-covid19-and-publish-knowledge-graphs/
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  • 41. Adverse Drug Reactions Predictions
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  • 44. Data ● Four types of input text segments a. manufacturer - company names like ALLERGAN --- Allergan --- Allergan plc --- Allergan, Inc --- Allergan, Inc. GlaxoSmithKline --- GlaxoSmithKline Biologicals --- GlaxoSmithKline Biologicals Dresden --- GlaxoSmithKline Pharmaceuticals a. indication - disease, condition like Back pain, Hypertension, Osteoarthritis b. adverse event - disease, condition c. intervention - drugs like FLUCLOXACILLIN, HYDROCORTISONE SODIUM SUCCINATE, NORVIR SOFT GELATIN CAPSULES ● Data sources manufacturer indication adverse event intervention ClinicalTrials.gov 12 313 604 506 2 468 553 100 000 FDAERS 9 032 469 22 206 659 26 570 878 32 575 511
  • 45. Standard Classifications and Ontologies Snomed CT - Systematized Nomenclature of Medicine Clinical Terms UMLS - Unified Medical Language System CHEBI - Chemical Entities of Biological Interest Ontology MESH - Medical Subject Headings
  • 46. Concepts Normalization. Gazetteer Creation ● Use of existing ontologies and databases - UMLS (disease), Drug Central (drugs), Wikidata (company) ● Re-writing rules to adjust the ontology labels to our needs original ontology term re-written new label Oppenheim's Disease Oppenheim Disease Congenital chromosomal disease Congenital chromosomal disorder Congenital ocular coloboma (disorder) Congenital ocular coloboma Choledochal Cyst, Type I Type I Choledochal Cyst Abnormality of the pulmonary artery the pulmonary artery Abnormality
  • 48. Adverse reaction suggestions Where: ● ?subject iterates over all drugs in the dataset ● ?object iterates over all possible entities
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  • 50. Adverse Drug Reaction Suggestion
  • 51. EXtreme-scale Analytics via Multimodal Ontology Discovery & Enhancement Develop weakly supervised knowledge discovery algorithms for extreme scale data, to associate: • visual content of clinical images • semantic content included in the diagnoses Develop prediction & analysis tools for clinical settings & research
  • 52. Clinical data are highly heterogeneous • EHR • Clinical Notes • Biomedical data • Medical Imaging Results Data
  • 54. AOEC Digital Workflow • New possibility to manage the block and slides archiving…
  • 56. WSI
  • 57. Annotations for image regions WSI Implemented annotation system Virtum that transforms the input to variety of standard output formats
  • 58. Development of new ontologies Development of new ontologies - ExaMode OWL 2 Ontology, including all the four diseases treated in the project: colon carcinoma, cervix carcinoma, lung carcinoma, and celiac disease. • The ontology models the clinical cases for all the diseases, including their intervention and locations. • The ontology can be accessed through Mappings for some standard ontologies in Healthcare domain (available at: https://zenodo.org/record/4081387#.YEoaymgzaHs )
  • 61. Acknowledgements This work was carried out under the FROCKG project: Fact Checking For Large Enterprise Knowledge Graphs https://www.ontotext.com This work was carried out under the ExaMode project: EXtreme-scale Analytics via Multimodal Ontology Discovery & Enhancement https://frockg.eu/
  • 62. Thank you! See Ontotext demos Patient Insights: http://patient.ontotext.com/ Linked Life Data: https://www.ontotext.com/knowledgehub/de moservices/linked-life-data/ ExaMode: http://examode.ontotext.com/