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FedViz: A Visual Interface for SPARQL
Queries Formulation and Execution
Syeda Sana e Zainab, Muhammad Saleem, Qaiser
Mehmood, Durre Zehra, Stefan Decker, and Ali Hasnain
Outline
•Introduction
 Motivation and Challenges
 Related Work
•Methods
 FedViz System Architecture
 Datasets Connectivity
•Results
 Visual Query Formulation and Execution through FedViz
•Evaluation
 System Usability Scale Survey
 Custom Survey
2
Motivation
•Drug-Drug Interaction for Medication of Certain Disease
Example: For disease Hypothyroidism how Levothyroxine drug interacts with
Acenocoumarol drug as both are for its curing.
•Drug-Disease Interaction
Example: Drugs having molecular weight less than 500 for curing disease
Anemia.
•Drug-Side Effect Interaction
Examples: Side Effect of drug “Retinol”, List of drugs having side effect
“Insomnia”.
3
Challenges
•To draw any biological correlation or to answer a biological questions
involve querying multiple data source, provided by different providers, sometimes
available in different format with different accessing mechanism.
•Assembling a federated SPARQL query is time-consuming and technical
process since it requires the knowledge of underlying datasets schema and the
connectivity between the datasets.
•Due to less SPARQL knowledge the ultimate end-users and the domain experts
either biologists or clinical researchers, remain unable to assemble complex
queries in order to access such data.
4
FedViz System Architecture
6
FedViz is an online application that
provides Biologist a flexible visual
interface to formulate and execute both
federated and non-federated,
SPARQL queries.
It translates the visually assembled
queries into SPARQL equivalent and
execute using query engine (FedX).
http://srvgal86.deri.ie/FedViz/index.html
Datasets Connectivity
7
Current version of FedViz supports 6 Life Sciences domain
datasets namely:
1. Drugbank
2. Kegg Kyoto Encyclopedia of Genes and Genomes (KEGG)
Genomes (KEGG)
3. Sider
4. Medicare
5. Diseasome
6. Dailymed
Scenario
“Drug-Disease and Drug-Compound interaction”
Drugs with their compound mass for curing disease Anemia.
Datasets Involves: Drugbank, Diseasome and Kegg.
8
Drug
(Drugbank)
Disease
(Diseasome)
Compound
(Kegg)
Result
FedViz Visual Query Building(Step by Step Approach)
9
1. Dataset Selection
Drugbank Concept and Properties Selection
10
Diseasome Concept and Properties Selection
11
Kegg Concept and Properties Selection
12
5. Selected Concepts
SPARQL Query Editor
13
Formulated Query
14
Results
15
Instance Data Exploration
16
Evaluation- System Usability Scale
System Usability Scale Survey
The SUS is a simple, low-cost, reliable 10 item scale that can be used for global
assessments of systems usability.
In this survey, 15 users including researchers and engineers in Semantic Web
were participated.
FedViz achieved a mean usability score of 74.16% indicating a high level of
usability according to the SUS score.
17
Evaluation- Custom Survey
Customised Survey
This survey was particularly designed to measure the usability and usefulness
of the different functionalists provided by FedViz.
In particular, we asked users to formulate both federated and non-federated
SPARQL queries and share their experience.
Researchers including Computer Scientist and Bioinformaticians were
participated in survey.
The average scores for simple query(i.e., 4.2 ¹ 0.91) and federated query(i.e.,
3.9 Âą 0.73) questions show that most of the user feel confident in formulating
simple and federated queries, respectively.
18
Conclusion and Future Work
•FedViz is an online interface for SPARQL query formulation and execution.
•FedViz has evaluated using the standard system usability scale (SUS) as well as
through domain experts.
•Preliminary analysis and evaluation revels the overall usability score of 74.16%,
concluding FedViz an interface, easy to learn and help users formulating complex
SPARQL queries intuitively.
•In future FedViz will be improved with Faceted browsing and visualization at
entity level e.g, Genes and Molecules where user can see the Gene sequences
and 3D structure for Molecules.
19
Thank you
20

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FedViz: A Visual Interface for SPARQL Queries Formulation and Execution

  • 1. FedViz: A Visual Interface for SPARQL Queries Formulation and Execution Syeda Sana e Zainab, Muhammad Saleem, Qaiser Mehmood, Durre Zehra, Stefan Decker, and Ali Hasnain
  • 2. Outline •Introduction  Motivation and Challenges  Related Work •Methods  FedViz System Architecture  Datasets Connectivity •Results  Visual Query Formulation and Execution through FedViz •Evaluation  System Usability Scale Survey  Custom Survey 2
  • 3. Motivation •Drug-Drug Interaction for Medication of Certain Disease Example: For disease Hypothyroidism how Levothyroxine drug interacts with Acenocoumarol drug as both are for its curing. •Drug-Disease Interaction Example: Drugs having molecular weight less than 500 for curing disease Anemia. •Drug-Side Effect Interaction Examples: Side Effect of drug “Retinol”, List of drugs having side effect “Insomnia”. 3
  • 4. Challenges •To draw any biological correlation or to answer a biological questions involve querying multiple data source, provided by different providers, sometimes available in different format with different accessing mechanism. •Assembling a federated SPARQL query is time-consuming and technical process since it requires the knowledge of underlying datasets schema and the connectivity between the datasets. •Due to less SPARQL knowledge the ultimate end-users and the domain experts either biologists or clinical researchers, remain unable to assemble complex queries in order to access such data. 4
  • 5. FedViz System Architecture 6 FedViz is an online application that provides Biologist a flexible visual interface to formulate and execute both federated and non-federated, SPARQL queries. It translates the visually assembled queries into SPARQL equivalent and execute using query engine (FedX). http://srvgal86.deri.ie/FedViz/index.html
  • 6. Datasets Connectivity 7 Current version of FedViz supports 6 Life Sciences domain datasets namely: 1. Drugbank 2. Kegg Kyoto Encyclopedia of Genes and Genomes (KEGG) Genomes (KEGG) 3. Sider 4. Medicare 5. Diseasome 6. Dailymed
  • 7. Scenario “Drug-Disease and Drug-Compound interaction” Drugs with their compound mass for curing disease Anemia. Datasets Involves: Drugbank, Diseasome and Kegg. 8 Drug (Drugbank) Disease (Diseasome) Compound (Kegg) Result
  • 8. FedViz Visual Query Building(Step by Step Approach) 9 1. Dataset Selection
  • 9. Drugbank Concept and Properties Selection 10
  • 10. Diseasome Concept and Properties Selection 11
  • 11. Kegg Concept and Properties Selection 12 5. Selected Concepts
  • 16. Evaluation- System Usability Scale System Usability Scale Survey The SUS is a simple, low-cost, reliable 10 item scale that can be used for global assessments of systems usability. In this survey, 15 users including researchers and engineers in Semantic Web were participated. FedViz achieved a mean usability score of 74.16% indicating a high level of usability according to the SUS score. 17
  • 17. Evaluation- Custom Survey Customised Survey This survey was particularly designed to measure the usability and usefulness of the different functionalists provided by FedViz. In particular, we asked users to formulate both federated and non-federated SPARQL queries and share their experience. Researchers including Computer Scientist and Bioinformaticians were participated in survey. The average scores for simple query(i.e., 4.2 Âą 0.91) and federated query(i.e., 3.9 Âą 0.73) questions show that most of the user feel confident in formulating simple and federated queries, respectively. 18
  • 18. Conclusion and Future Work •FedViz is an online interface for SPARQL query formulation and execution. •FedViz has evaluated using the standard system usability scale (SUS) as well as through domain experts. •Preliminary analysis and evaluation revels the overall usability score of 74.16%, concluding FedViz an interface, easy to learn and help users formulating complex SPARQL queries intuitively. •In future FedViz will be improved with Faceted browsing and visualization at entity level e.g, Genes and Molecules where user can see the Gene sequences and 3D structure for Molecules. 19