Exploring Strategies to Integrate Disparate Bioinformatics Datasets

Distinct bioinformatics datasets make it challenging for bioinformatics specialists to locate the required datasets and unify their format for result extraction. The purpose of this single case study was to explore strategies to integrate distinct bioinformatics datasets. The technology acceptance m...

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Main Author: Fakhry, Charbel Bader
Format: Others
Language:en
Published: ScholarWorks 2019
Subjects:
Online Access:https://scholarworks.waldenu.edu/dissertations/7472
https://scholarworks.waldenu.edu/cgi/viewcontent.cgi?article=8744&context=dissertations
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spelling ndltd-waldenu.edu-oai-scholarworks.waldenu.edu-dissertations-87442019-10-30T01:29:39Z Exploring Strategies to Integrate Disparate Bioinformatics Datasets Fakhry, Charbel Bader Distinct bioinformatics datasets make it challenging for bioinformatics specialists to locate the required datasets and unify their format for result extraction. The purpose of this single case study was to explore strategies to integrate distinct bioinformatics datasets. The technology acceptance model was used as the conceptual framework to understand the perceived usefulness and ease of use of integrating bioinformatics datasets. The population of this study included bioinformatics specialists of a research institution in Lebanon that has strategies to integrate distinct bioinformatics datasets. The data collection process included interviews with 6 bioinformatics specialists and reviewing 27 organizational documents relating to integrating bioinformatics datasets. Thematic analysis was used to identify codes and themes related to integrating distinct bioinformatics datasets. Key themes resulting from data analysis included a focus on integrating bioinformatics datasets, adding metadata with the submitted bioinformatics datasets, centralized bioinformatics database, resources, and bioinformatics tools. I showed throughout analyzing the findings of this study that specialists who promote standardizing techniques, adding metadata, and centralization may increase efficiency in integrating distinct bioinformatics datasets. Bioinformaticians, bioinformatics providers, the health care field, and society might benefit from this research. Improvement in bioinformatics affects poistevely the health-care field which has a positive social change. The results of this study might also lead to positive social change in research institutions, such as reduced workload, less frustration, reduction in costs, and increased efficiency while integrating distinct bioinformatics datasets. 2019-01-01T08:00:00Z text application/pdf https://scholarworks.waldenu.edu/dissertations/7472 https://scholarworks.waldenu.edu/cgi/viewcontent.cgi?article=8744&context=dissertations Walden Dissertations and Doctoral Studies en ScholarWorks Bioinformatics data integration disparate Information technology Bioinformatics Databases and Information Systems
collection NDLTD
language en
format Others
sources NDLTD
topic Bioinformatics
data integration
disparate
Information technology
Bioinformatics
Databases and Information Systems
spellingShingle Bioinformatics
data integration
disparate
Information technology
Bioinformatics
Databases and Information Systems
Fakhry, Charbel Bader
Exploring Strategies to Integrate Disparate Bioinformatics Datasets
description Distinct bioinformatics datasets make it challenging for bioinformatics specialists to locate the required datasets and unify their format for result extraction. The purpose of this single case study was to explore strategies to integrate distinct bioinformatics datasets. The technology acceptance model was used as the conceptual framework to understand the perceived usefulness and ease of use of integrating bioinformatics datasets. The population of this study included bioinformatics specialists of a research institution in Lebanon that has strategies to integrate distinct bioinformatics datasets. The data collection process included interviews with 6 bioinformatics specialists and reviewing 27 organizational documents relating to integrating bioinformatics datasets. Thematic analysis was used to identify codes and themes related to integrating distinct bioinformatics datasets. Key themes resulting from data analysis included a focus on integrating bioinformatics datasets, adding metadata with the submitted bioinformatics datasets, centralized bioinformatics database, resources, and bioinformatics tools. I showed throughout analyzing the findings of this study that specialists who promote standardizing techniques, adding metadata, and centralization may increase efficiency in integrating distinct bioinformatics datasets. Bioinformaticians, bioinformatics providers, the health care field, and society might benefit from this research. Improvement in bioinformatics affects poistevely the health-care field which has a positive social change. The results of this study might also lead to positive social change in research institutions, such as reduced workload, less frustration, reduction in costs, and increased efficiency while integrating distinct bioinformatics datasets.
author Fakhry, Charbel Bader
author_facet Fakhry, Charbel Bader
author_sort Fakhry, Charbel Bader
title Exploring Strategies to Integrate Disparate Bioinformatics Datasets
title_short Exploring Strategies to Integrate Disparate Bioinformatics Datasets
title_full Exploring Strategies to Integrate Disparate Bioinformatics Datasets
title_fullStr Exploring Strategies to Integrate Disparate Bioinformatics Datasets
title_full_unstemmed Exploring Strategies to Integrate Disparate Bioinformatics Datasets
title_sort exploring strategies to integrate disparate bioinformatics datasets
publisher ScholarWorks
publishDate 2019
url https://scholarworks.waldenu.edu/dissertations/7472
https://scholarworks.waldenu.edu/cgi/viewcontent.cgi?article=8744&context=dissertations
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