1 MedAT: Medical Resources Annotation Tool Monika Žáková *, Olga Štěpánková *, Taťána Maříková * Department of Cybernetics, CTU Prague Institute of Biology.

Slides:



Advertisements
Similar presentations
Schema Matching and Query Rewriting in Ontology-based Data Integration Zdeňka Linková ICS AS CR Advisor: Július Štuller.
Advertisements

1 Relational Data Mining Applied to Virtual Engineering of Product Designs Monika Žáková 1, Filip Železný 1, Javier A. Garcia-Sedano 2, Cyril Masia Tissot.
Prof. Carolina Ruiz Computer Science Department Bioinformatics and Computational Biology Program WPI WELCOME TO BCB4003/CS4803 BCB503/CS583 BIOLOGICAL.
SEVENPRO – STREP KEG seminar, Prague, 8/November/2007 © SEVENPRO Consortium SEVENPRO – Semantic Virtual Engineering Environment for Product.
GOAT: The Gene Ontology Annotation Tool Dr. Mike Bada Department of Computer Science University of Manchester
Ontology Notes are from:
Semantic Web and Web Mining: Networking with Industry and Academia İsmail Hakkı Toroslu IST EVENT 2006.
A Robust System Architecture For Mining Semi-structured Data By Aby M Mathew CSE
Supervised by Prof. LYU, Rung Tsong Michael Department of Computer Science & Engineering The Chinese University of Hong Kong Prepared by: Chan Pik Wah,
DARPA Agent Markup Language Ashish Jain University of Colorado at Boulder.
Advanced Topics COMP163: Database Management Systems University of the Pacific December 9, 2008.
COMP 6703 eScience Project Semantic Web for Museums Student : Lei Junran Client/Technical Supervisor : Tom Worthington Academic Supervisor : Peter Strazdins.
1 CIS607, Fall 2006 Semantic Information Integration Instructor: Dejing Dou Week 10 (Nov. 29)
SCORE – System for Courseware Reuse1/21 S C O R E System for Courseware Reuse Prof. Dr. P.C. Lockemann Dipl.-Inform. Khaldoun Ateyeh Dr. Birgitta König-Ries.
1 CIS607, Fall 2004 Semantic Information Integration Attendees: Vikash Agarwal, Julian M Catchen Kevin A Huck, Kushal M Koolwal, Paea J Le Pendu Xiangkui.
Marakas: Decision Support Systems, 2nd Edition © 2003, Prentice-Hall Chapter Chapter 1: Introduction to Decision Support Systems Decision Support.
ReQuest (Validating Semantic Searches) Norman Piedade de Noronha 16 th July, 2004.
Making Courseware Reusable Institute for Program Structures and Data Organization Universität Karlsruhe Germany Khaldoun Ateyeh, Jutta Mülle
Semantic Representation of Temporal Metadata in a Virtual Observatory Han Wang 1 Eric Rozell 1
ANSWERING CONTROLLED NATURAL LANGUAGE QUERIES USING ANSWER SET PROGRAMMING Syeed Ibn Faiz.
Artificial Intelligence Research Centre Program Systems Institute Russian Academy of Science Pereslavl-Zalessky Russia.
Carlos Lamsfus. ISWDS 2005 Galway, November 7th 2005 CENTRO DE TECNOLOGÍAS DE INTERACCIÓN VISUAL Y COMUNICACIONES VISUAL INTERACTION AND COMMUNICATIONS.
Ihr Logo Data Explorer - A data profiling tool. Your Logo Agenda  Introduction  Existing System  Limitations of Existing System  Proposed Solution.
Formalizing and Querying Heterogeneous Documents with Tables Krishnaprasad Thirunarayan and Trivikram Immaneni Department of Computer Science and Engineering.
Ihr Logo Chapter 5 Business Intelligence: Data Warehousing, Data Acquisition, Data Mining, Business Analytics, and Visualization Turban, Aronson, and Liang.
EXCS Sept Knowledge Engineering Meets Software Engineering Hele-Mai Haav Institute of Cybernetics at TUT Software department.
Workshop – 10, December 2014, Berlin ICCS / NTUA Greece Efthymios Chondrogiannis An Intelligent Ontology Alignment Tool Dealing with Complicated Mismatches.
SAWA: An Assistant for Higher-Level Fusion and Situation Awareness Christopher J. Matheus, Mieczyslaw M. Kokar, Kenneth Baclawski, Jerzy A. Letkowski,
1 Distributed Agents for User-Friendly Access of Digital Libraries DAFFODIL Effective Support for Using Digital Libraries Norbert Fuhr University of Duisburg-Essen,
WebODE and its Ontology Management APIs. April 8th © Ontology Engineering Group WebODE and its Ontology Management APIs Ontology Engineering Group.
SWETO: Large-Scale Semantic Web Test-bed Ontology In Action Workshop (Banff Alberta, Canada June 21 st 2004) Boanerges Aleman-MezaBoanerges Aleman-Meza,
Nancy Lawler U.S. Department of Defense ISO/IEC Part 2: Classification Schemes Metadata Registries — Part 2: Classification Schemes The revision.
Development in the Ferda project December 2006 Martin Ralbovský.
Košice, 10 February Experience Management based on Text Notes The EMBET System Michal Laclavik.
Ontologies and Lexical Semantic Networks, Their Editing and Browsing Pavel Smrž and Martin Povolný Faculty of Informatics,
10/18/20151 Business Process Management and Semantic Technologies B. Ramamurthy.
HYGIA: Design and Application of New Techniques of Artificial Intelligence for the Acquisition and Use of Represented Medical Knowledge as Care Pathways.
Dimitrios Skoutas Alkis Simitsis
Microsoft Access Database Software.
Ihr Logo Chapter 5 Business Intelligence: Data Warehousing, Data Acquisition, Data Mining, Business Analytics, and Visualization Turban, Aronson, and Liang.
Department of computer science and engineering Two Layer Mapping from Database to RDF Martin Švihla Research Group Webing Department.
STASIS Technical Innovations - Simplifying e-Business Collaboration by providing a Semantic Mapping Platform - Dr. Sven Abels - TIE -
2004/12/13 National Tsing Hua University, Taiwan1 USING KNOWLEDGE-BASED INTELLIGENT REASONING TO SUPPORT DYNAMIC COLLABORATIVE DESIGN Allen T.A. Chiang*,
6.1 © 2010 by Prentice Hall 6 Chapter Foundations of Business Intelligence: Databases and Information Management.
A Learning System for Decision Support in Telecommunications Filip Železný, Olga Štěpánková (Czech Technical University in Prague) Jiří Zídek (Atlantis.
Oracle Database 11g Semantics Overview Xavier Lopez, Ph.D., Dir. Of Product Mgt., Spatial & Semantic Technologies Souripriya Das, Ph.D., Consultant Member.
Using Several Ontologies for Describing Audio-Visual Documents: A Case Study in the Medical Domain Sunday 29 th of May, 2005 Antoine Isaac 1 & Raphaël.
SupervisorStudent Prof. Atilla ElciHussam Hussein ABUAZAB June 2007 Using ORACLE XML Parser to Access Ontology CMPE 588 Engineering Semantic for.
BioRAT: Extracting Biological Information from Full-length Papers David P.A. Corney, Bernard F. Buxton, William B. Langdon and David T. Jones Bioinformatics.
Artificial Intelligence Research Center Pereslavl-Zalessky, Russia Program Systems Institute, RAS.
Christoph F. Eick University of Houston Organization 1. What are Ontologies? 2. What are they good for? 3. Ontologies and.
Using Domain Ontologies to Improve Information Retrieval in Scientific Publications Engineering Informatics Lab at Stanford.
Metadata Common Vocabulary a journey from a glossary to an ontology of statistical metadata, and back Sérgio Bacelar
12/7/2015Page 1 Service-enabling Biomedical Research Enterprise Chapter 5 B. Ramamurthy.
Dictionary based interchanges for iSURF -An Interoperability Service Utility for Collaborative Supply Chain Planning across Multiple Domains David Webber.
The International RuleML Symposium on Rule Interchange and Applications Orlando, Florida: October 30-31, 2008 Orlando, Florida A RuleML Study on Integrating.
A Portrait of the Semantic Web in Action Jeff Heflin and James Hendler IEEE Intelligent Systems December 6, 2010 Hyewon Lim.
Semantic Data Extraction for B2B Integration Syntactic-to-Semantic Middleware Bruno Silva 1, Jorge Cardoso 2 1 2
WonderWeb. Ontology Infrastructure for the Semantic Web. IST Project Review Meeting, 11 th March, WP2: Tools Raphael Volz Universität.
Knowledge Support for Modeling and Simulation Michal Ševčenko Czech Technical University in Prague.
1 The T4SQL Temporal Query Language Presented by 黃泰豐 2007/12/26.
Semantics in Web Service Composition for Risk Management Michael Lutz European Commission – DG Joint Research Centre Ispra, Italy EcoTerm IV, Vienna,
WonderWeb. Ontology Infrastructure for the Semantic Web. IST WP4: Ontology Engineering Heiner Stuckenschmidt, Michel Klein Vrije Universiteit.
Versatile Information Systems, Inc International Semantic Web Conference An Application of Semantic Web Technologies to Situation.
Mechanisms for Requirements Driven Component Selection and Design Automation 최경석.
Semantic Technologies for Advanced
RichAnnotator: Annotating rich (XML-like) documents
Sharing of Eurostat predefined tables
Sharing of Eurostat predefined tables
Business Process Management and Semantic Technologies
Presentation transcript:

1 MedAT: Medical Resources Annotation Tool Monika Žáková *, Olga Štěpánková *, Taťána Maříková * Department of Cybernetics, CTU Prague Institute of Biology and Medical Genetics, Prague

KEG seminar / 20 Outline 1. Motivation 2. System Description 3. Creating Annotation 4. Additional Functionalities 5. Knowledge Representation 6. Ontologies  Task Ontologies  Domain Ontologies 7. Results and Conclusion

KEG seminar / 20 Motivation Patients’ records represent a valuable source of information Records stored in semi-structured text files For sharing and data mining format such as ontology or relational database needed Currently known methods for text mining not applicable, since  Records heterogeneous – type of examination, personality of doctor  Abbreviations used (some non-standard)  Gazetteers not available in Czech

KEG seminar / 20 Motivation II Grant “Relational ML for analysis of biomedical data” of the Czech national research program Information Society in cooperation with the Institute of Biology and Medical Genetics, 2nd Medical Faculty of Charles University Relational data mining using subgroup discovery methodology Need to transform data from text files into a form suitable for relational data mining i.e. relational database and rules

KEG seminar / 20 System overview Ontologies Medical record Forms generator Knowledge baseRelational database

KEG seminar / 20 System description Creating semantic annotations of medical records Based on Dynamic Narrative Authoring Tool Modular architecture Export to knowledge base in OCML, OWL Export to relational database Visualization – genealogical tree

KEG seminar / 20 MedAT GUI

KEG seminar / 20 Creating Annotations Dynamically generated forms A form  one major class in ontology  master table in the database  E.g. Patient, Examination Adding abbreviations and aliases to the ontology Filling of forms  Automatically by parsing  Drag and drop from records in text format  Manually in case OCR not effective

KEG seminar / 20 Creating Annotations II

KEG seminar / 20 Additional functionalities Exploration of data stored in the relational database  Pre-defined SQL queries – knowledge of SQL not required  Writing queries directly in SQL Visualization  Genealogy tree

KEG seminar / 20 Knowledge representation Core formalism – Apollet Apollet Frame-based formalism based on OCML Formalism used by Apollo ontology editor => possibility to use I/O modules of Apollo Export to lisp available Inference engine available Disadvantage: rules very often just lisp functions

KEG seminar / 20 Relational database Tables of the relational database generated automatically from the ontology Semantic description of the database given by an ontology Export done in a batch for a particular version of ontology and knowledge base Export intended for a data mining experiment Currently PostgreSQL database used

KEG seminar / 20 Ontologies MedAT relies on ontologies on 2 levels: Task ontologies  Describe structure of different medical records Domain ontologies  Formalize knowledge about a specific domain e.g. diseases, family relations, time points

KEG seminar / 20 Task Ontologies Developed on basis of procedures and structure of medical records in cooperation with medical doctors Hierarchy induced by part-whole relationship  OCML – slots with facets  OWL – hasPart, partOf (W3C Working Draft) Serve as basis for generating of forms and tables in relational database

KEG seminar / 20 Task Ontologies - Example Classes - elements of medical records e.g. object of examination, therapy Slots – description of composition of medical records e.g. class examination has slots date, doctor, has_therapy

KEG seminar / 20 Domain ontologies Use of third party ontologies e.g. GALEN, Gene Ontology Ontology of family relations  Need for rules e.g. hasHalfBrother(x,y)  OWL – no standardized rule language (ORL)  OCML – lisp functions

KEG seminar / 20 Time ontology Developed originally for historical narratives Based on Allen’s algebra Uncertain time points and intervals  Uncertain temporal position  Uncertain granularity Extended to cover time events specific for medical domain  E.g. before surgery, during infancy Available in OCML

KEG seminar / 20 Results Easily transfer information from medical reports to dynamically generated forms Data from forms saved to a knowledge base and relational database Iterative extending of ontologies, adding aliases and abbreviations Tool currently being tested at the Institute of Biology and Medical Genetics for patients with neurofibromatosis type 1

KEG seminar / 20 Future work Text mining methods for semi-automatic annotation Tool for semantic search and retrieval of a relevant subset of data and visualization of retrieved data Use of annotated data along with information about genotype for data mining using subgroup discovery methodology

KEG seminar / 20 Questions Thank you for your attention Questions???