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Exploring the Frontiers of Machine Learning in Radiology: A Comprehensive Review of Applications, Advancements, and the Challenges that Lie Ahead
0
Zitationen
6
Autoren
2025
Jahr
Abstract
ABSTRACT: By increasing production, effectiveness, and precise diagnosis, machine learning (ML) is revolutionizing the radiation therapy industry. In order to identify anomalies in different types of imaging including CT, MRI, and X-rays, this paper examines developments in machine learning (ML) approaches, especially convolutional neural networks (CNNs) and deep learning. These advancements have a great deal of promise for automation picture processing, lowering human error, and offering prompt, dependable diagnostic assistance. The requirement for sizable, exceptional datasets, the difficulties of technique validation, including ethical worries about privacy of patient information are some of the obstacles to the integration of machine learning (ML) in radiology. For ML to be widely adopted and its transformational promise in radiological imaging to be realized, these obstacles must be overcome.
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