Emerging Applications of Picture Archiving and Communication Systems and Their Impact on Research and Education: A Literature Review
Albert P Varghese, Shreya Naik, Syed Asrar Ul Haq Andrabi, Anurag Luharia, Suhas Tivaskar, Jubin John, Gaurav V Mishra, Ashish Uke, Sweta G Pisulkar, Mayur Wanjari

TL;DR
This paper reviews how picture archiving and communication systems (PACS) are being used beyond radiology to improve medical research, education, and patient care through advanced imaging and AI integration.
Contribution
The paper provides a comprehensive overview of PACS's expanding role in healthcare and education, emphasizing its integration with AI and its transformative potential.
Findings
PACS with AI improves image processing, diagnostic accuracy, and early disease detection.
PACS supports medical education by providing access to extensive image collections and case studies.
Integration of PACS with clinical data enhances research and interdisciplinary collaboration.
Abstract
In recent times, technological advancements have remarkably improved picture archiving and communication system (PACS) capabilities beyond their conventional use in radiology departments. Researchers and instructors have started employing PACS functionalities to improve medical research processes, promote interdisciplinary collaborations, and facilitate learning. To illustrate this point further, the PACS enables researchers to handle and analyze huge amounts of imaging data with superior precision and speed, supporting innovative studies in areas like disease progression, treatment outcomes, and imaging modalities. Moreover, a PACS integrated with artificial intelligence (AI) algorithms leads to significant improvements in image processing, diagnostic accuracy, and personalized treatment, thus marking a new approach to medical imaging. The PACS supported by AI is mostly transformative…
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Taxonomy
TopicsDigital Radiography and Breast Imaging · Radiomics and Machine Learning in Medical Imaging · Dental Radiography and Imaging
