Optimizing Data Management: A Cornerstone for Artificial Intelligence.
Esraa Ahmed Eid; Mohammad Nabawy Tawfik; Amr Essam Elramah; Sahar Mohamed Sameer; Walaa Mohamed Hamed;
Abstract
Aim: This study aimed to explore the challenges faced by postgraduate researchers at Ain Shams University in accessing and managing patient data from the Oral and Maxillofacial Radiology (OMFR) department, and to assess the potential impact of implementing a specialized data management software. This can be generalized to all OMFR workers in different locations.
Materials and Methods: A descriptive survey was conducted among 235 postgraduate researchers using Google Forms from August 5 to August 28, 2024. The survey comprised four sections addressing participants' specialties, experiences with OMFR data, and challenges in data collection. Descriptive statistics, including frequencies and percentages, were used to analyze the data.
Results: The majority of participants (83.3%) used CBCT imaging in their research, yet over 65% reported moderate-to-high difficulty in collecting data, with key challenges including tracking patient history (44.4%) and incomplete patient information (33.3%). Concerns over data availability and accessibility deterred 41.3% of respondents from conducting retrospective studies.
Conclusions: The findings highlighted the need for a dedicated data management system to streamline research processes. Respondents valued easy access to patient data and comprehensive datasets, including clinical and radiographic records, which are essential for AI applications in dental diagnostics. Implementing such a system would improve data standardization, enhance research efficiency, and support the effective use of AI models in OMFR.
Materials and Methods: A descriptive survey was conducted among 235 postgraduate researchers using Google Forms from August 5 to August 28, 2024. The survey comprised four sections addressing participants' specialties, experiences with OMFR data, and challenges in data collection. Descriptive statistics, including frequencies and percentages, were used to analyze the data.
Results: The majority of participants (83.3%) used CBCT imaging in their research, yet over 65% reported moderate-to-high difficulty in collecting data, with key challenges including tracking patient history (44.4%) and incomplete patient information (33.3%). Concerns over data availability and accessibility deterred 41.3% of respondents from conducting retrospective studies.
Conclusions: The findings highlighted the need for a dedicated data management system to streamline research processes. Respondents valued easy access to patient data and comprehensive datasets, including clinical and radiographic records, which are essential for AI applications in dental diagnostics. Implementing such a system would improve data standardization, enhance research efficiency, and support the effective use of AI models in OMFR.
Other data
| Title | Optimizing Data Management: A Cornerstone for Artificial Intelligence. | Authors | Esraa Ahmed Eid ; Mohammad Nabawy Tawfik; Amr Essam Elramah; Sahar Mohamed Sameer; Walaa Mohamed Hamed | Keywords | Data Management Information Storage and Retrieval Artificial Intelligence Surveys and Questionnaires Medical Records | Issue Date | Mar-2025 | Publisher | Faculty of Dentistry, Ain Shams University | Journal | Ain Shams Dental Journal | Volume | 37 | Issue | 1 | Start page | 1 | End page | 7 | DOI | https://doi.org/10.21608/asdj.2025.336854.1645 |
Attached Files
| File | Description | Size | Format | Existing users please Login |
|---|---|---|---|---|
| Optimizing Data Management. A Cornerstone for Artificial Intelligence..pdf | Journal Survey Article | 1.18 MB | Adobe PDF | Request a copy |
Similar Items from Core Recommender Database
Items in Ain Shams Scholar are protected by copyright, with all rights reserved, unless otherwise indicated.