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AI (Artificial Intelligence) Transformation in Radiology: Image Diagnosis in Healthcare

88 Citations2022
Bakare Pamela Tinashe, Cong Wu, Ran Zhou
2022 Euro-Asia Conference on Frontiers of Computer Science and Information Technology (FCSIT)

This study explores machine learning prediction tools and methodologies that are extensively used in a variety of departments and offer alerting and risk management decision-support capabilities for better patient care.

Abstract

The explosive expansion of Artificial Intelligence over the past decade exhibits its potential as a technological podium for optimal decision-making infused by a superintelligence, where the human mind is restricted in its ability to process enormous amounts of data in a brief period. To accomplish predictive analysis or pattern recognition on a massive data set, machine learning is the way to go. It is the most rapidly expanding path in computer science, and considering health or clinical informatics is extremely obscure. The objective of ML is to expand algorithms that can master and progress timely. The healthcare enterprise has profited from machine learning prediction systems. Machine learning system approaches are extensively used in a variety of departments, but the healthcare sector has gained the most. It offers alerting and risk management decision-support capabilities for better patient care. The need to minimize healthcare expenses and the trend toward individualized healthcare present obstacles in areas such as electronic record administration, data integration, and computer-assisted diagnosis and illness prognosis. Machine learning provides a wide range of tools, methodologies, and systems. This study explores machine learning prediction tools and methodologies.