Exploring AI Applications in Low-Dose CT Machines to Generate Better Lung Cancer Spatiotemporal Statistics: San Diego County Case Study

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Bibliografiset tiedot
Julkaisussa:ProQuest Dissertations and Theses (2025)
Päätekijä: Raoof, Mohammed Mohammed
Julkaistu:
ProQuest Dissertations & Theses
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100 1 |a Raoof, Mohammed Mohammed 
245 1 |a Exploring AI Applications in Low-Dose CT Machines to Generate Better Lung Cancer Spatiotemporal Statistics: San Diego County Case Study 
260 |b ProQuest Dissertations & Theses  |c 2025 
513 |a Dissertation/Thesis 
520 3 |a Cancer diseases, such as lung cancer, are known as being among the scariest of diseases and are considered the deadliest form of cancer. It is a growing global health threat. However, effective lung cancer control is possible with the contributions of various information systems and technology and healthcare disciplines, including the Artificial Intelligence (AI) discipline in radiological settings. Spatiotemporal data is an integral part of Geographic Information Systems (GIS). The International Agency for Research on Cancer (IARC) and the Center for Disease Control and Prevention show that the current lung cancer spatiotemporal data statistics for new incidence cases are outdated. With the outdated spatiotemporal statistics data problem for global and local lung cancer incidence cases, it is less likely that researchers will be able to control lung cancer more effectively. While information systems and technology hold immense promise and significant impact on healthcare in various ways, this study discusses potential opportunities for AI applications and medical machines to generate better spatiotemporal statistics, which can help researchers control lung cancer and eventually improve the well-being of our society.According to the literature, low-dose computed tomography (LDCT) machines are recommended among the other methods for diagnosing and detecting lung cancer. However, this exploratory study investigates the possibility of quickly updating outdated spatiotemporal data statistics. Substantially, this study aims to assess the possibility of generating better statistics based on LDCT machines by relying on AI technology. This study examines the LDCT machines in San Diego County as a case study. Due to the complexity of the topic, semi-structured interviews have been conducted with technologists and radiologists who are experts in LDCT machines. These experts are affiliated with all LDCT lung cancer screening centers in San Diego County, such as imaging centers and hospitals’ radiology departments in San Diego County. In addition, multiple secondary data are used (e.g., websites and blogs). These data are publicly available with no restrictions on security and privacy issues; the data includes thousands of pages of documents from the United States' official cancer and healthcare agencies, imaging centers, hospitals, and health plans in San Diego County. The researcher used coding, memos, and Computer-Assisted Qualitative Data Analysis Software (CAQDAS) such as the ATLAS.ti tool to analyze the collected data. As a result, this study has various possible contributions to the medical industry that can help lower the risk of dying from lung cancer by getting better spatiotemporal statistics data. Other contributions include the delivery of a better quality of care, significantly reduced costs, shorter time, and less effort for all involved parties in the procedure of getting the LDCT lung cancer screening. These involved parties include patients, LDCT ordering doctors’ offices, hospitals, LDCT scan providers, and health insurances. In addition, it contributes to supporting all organizations’ missions that control lung cancer (e.g., National Institutes of Health (NIH), American Cancer Society). Moreover, it contributes to improving the future medical stations of smart cities. This study suggests the need to design and develop a new generation of LDCT machines based on the Internet of Things (IoT) and AI, which can help automatically generate better, updated spatiotemporal statistics data for lung cancer. 
653 |a Information technology 
653 |a Oncology 
653 |a Pathology 
653 |a Artificial intelligence 
653 |a Bioinformatics 
773 0 |t ProQuest Dissertations and Theses  |g (2025) 
786 0 |d ProQuest  |t ProQuest Dissertations & Theses Global 
856 4 1 |3 Citation/Abstract  |u https://www.proquest.com/docview/3242840634/abstract/embedded/ZKJTFFSVAI7CB62C?source=fedsrch