Abstract

Radiology imageries have been at the core of the diagnosis and management of diseases for a long period of time, availing the physician with precise visual information upon which informed decisions are made. The continuous advancement that is experienced in medical technology innovation has remarkably increased diagnostic accuracy, therefore improving patient outcomes: early disease diagnosis, personalized treatment planning, and patient monitoring have become a possibility. These changes have totally revolutionized health care. Most significantly, artificial intelligence and machine learning have become game-changing in radiological imaging. These algorithms of AI/ML process the medical images with incredible speed and precision, recognizing patterns invisible to the human eye and thus helping to diagnose conditions from cancer to neurological disorders. Furthermore, 3D imaging methodologies like 3D-CT and MRI deliver a much more differentiated visualization of very complex anatomical structures for higher accuracy in the field of treatment planning and surgical intervention. An excellent example could be oncology, where tumor mapping can be done more precisely with 3D imaging. The tumor can be more effectively targeted by radiation therapy while the surrounding healthy tissues are shielded. Moreover, hybrid imaging offers comprehensive insights that incorporate both structural and functional data by combining the advantages of several modalities. Improved patient outcomes, quicker diagnosis, less intrusive treatments, and patient-centered care have all been made possible by these technological developments. Many of these technologies are still in their infancy, but they have the potential to revolutionize radiology by enhancing patient care, clinical effectiveness, diagnostic capabilities, and health care delivery systems.

Details

Title
Radiological Imaging and Technological Advancements: A Pathway to Better Patient Outcomes
Author
Aiman Zaki Filfilan; Khalid Ali Alzahrani; Abdullah Mohammad Alsulimani; Khalid Saad Alotaibi; Salihah Saad Alahmari; Alawi, Malak Hasan; Khalid Nasser Alakhrash; Awad Hamed Alharthi; Filfilan, Ghadeer Jameel; Ghassan Mohammed Hadi Al Alaji; Ahmed Atiyyah Alshibli; Allihyani, Suha Musaed
Pages
1254-1265
Section
Articles
Publication year
2024
Publication date
2024
Publisher
Nicholson School of Communication and Media at the University of Central Florida
ISSN
25760025
Source type
Scholarly Journal
Language of publication
English
ProQuest document ID
3186338269
Copyright
© 2024. This work is published under https://creativecommons.org/licenses/by/4.0/ (the “License”). Notwithstanding the ProQuest Terms and Conditions, you may use this content in accordance with the terms of the License.