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CO-19 PDB 2.0: A Comprehensive COVID-19 Database with Global Auto-Alerts, Statistical Analysis, and Cancer Correlations
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Abstract
Biological databases serve as critical basics for modern research, and amid the dynamic landscape of biology, the COVID-19 database has emerged as an indispensable resource. The global outbreak of Covid-19, commencing in December 2019, necessitates comprehensive databases to unravel the intricate connections between this novel virus and cancer. Despite existing databases, a crucial need persists for a centralized and accessible method to acquire precise information within the research community. The main aim of the work is to develop a database which has all the COVID-19-related data available in just one click with auto global notifications. This gap is addressed by the meticulously designed COVID-19 Pandemic Database (CO-19 PDB 2.0), positioned as a comprehensive resource for researchers navigating the complexities of COVID-19 and cancer. Between December 2019 and June 2024, the CO-19 PDB 2.0 systematically collected and organized 120 datasets into six distinct categories, each catering to specific functionalities. These categories encompass a chemical structure database, a digital image database, a visualization tool database, a genomic database, a social science database, and a literature database. Functionalities range from image analysis and gene sequence information to data visualization and updates on environmental events. CO-19 PDB 2.0 has the option to choose either the search page for the database or the autonotification page, providing a seamless retrieval of information. The dedicated page introduces six predefined charts, providing insights into crucial criteria such as the number of cases and deaths’, country-wise distribution, ‘new cases and recovery’, and rates of death and recovery. The global impact of COVID-19 on cancer patients has led to extensive collaboration among research institutions, producing numerous articles and computational studies published in international journals. A key feature of this initiative is auto daily notifications for standardized information updates. Users can easily navigate based on different categories or use a direct search option. The study offers up-to-date COVID-19 datasets and global statistics on COVID-19 and cancer, highlighting the top 10 cancers diagnosed in the USA in 2022. Breast and prostate cancers are the most common, representing 30% and 26% of new cases, respectively. The initiative also ensures the removal or replacement of dead links, providing a valuable resource for researchers, healthcare professionals, and individuals. The database has been implemented in PHP, HTML, CSS and MySQL and is available freely at https://www.co-19pdb.habdsk.org/.
Database URL: https://www.co-19pdb.habdsk.org/
Oxford University Press (OUP)
Title: CO-19 PDB 2.0: A Comprehensive COVID-19 Database with Global Auto-Alerts, Statistical Analysis, and Cancer Correlations
Description:
Abstract
Biological databases serve as critical basics for modern research, and amid the dynamic landscape of biology, the COVID-19 database has emerged as an indispensable resource.
The global outbreak of Covid-19, commencing in December 2019, necessitates comprehensive databases to unravel the intricate connections between this novel virus and cancer.
Despite existing databases, a crucial need persists for a centralized and accessible method to acquire precise information within the research community.
The main aim of the work is to develop a database which has all the COVID-19-related data available in just one click with auto global notifications.
This gap is addressed by the meticulously designed COVID-19 Pandemic Database (CO-19 PDB 2.
0), positioned as a comprehensive resource for researchers navigating the complexities of COVID-19 and cancer.
Between December 2019 and June 2024, the CO-19 PDB 2.
0 systematically collected and organized 120 datasets into six distinct categories, each catering to specific functionalities.
These categories encompass a chemical structure database, a digital image database, a visualization tool database, a genomic database, a social science database, and a literature database.
Functionalities range from image analysis and gene sequence information to data visualization and updates on environmental events.
CO-19 PDB 2.
0 has the option to choose either the search page for the database or the autonotification page, providing a seamless retrieval of information.
The dedicated page introduces six predefined charts, providing insights into crucial criteria such as the number of cases and deaths’, country-wise distribution, ‘new cases and recovery’, and rates of death and recovery.
The global impact of COVID-19 on cancer patients has led to extensive collaboration among research institutions, producing numerous articles and computational studies published in international journals.
A key feature of this initiative is auto daily notifications for standardized information updates.
Users can easily navigate based on different categories or use a direct search option.
The study offers up-to-date COVID-19 datasets and global statistics on COVID-19 and cancer, highlighting the top 10 cancers diagnosed in the USA in 2022.
Breast and prostate cancers are the most common, representing 30% and 26% of new cases, respectively.
The initiative also ensures the removal or replacement of dead links, providing a valuable resource for researchers, healthcare professionals, and individuals.
The database has been implemented in PHP, HTML, CSS and MySQL and is available freely at https://www.
co-19pdb.
habdsk.
org/.
Database URL: https://www.
co-19pdb.
habdsk.
org/.
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