IVLGMar 27, 2019

Radiological images and machine learning: trends, perspectives, and prospects

arXiv:1903.11726v1189 citations
Originality Synthesis-oriented
AI Analysis

It addresses the need for more accurate and efficient disease prevention and diagnosis in clinical settings, but is incremental as it synthesizes existing trends rather than presenting new research.

This review explores the application of machine learning to radiological images, highlighting its potential to recognize complex patterns and achieve performance comparable to human decision-making in areas like medical image segmentation and disease diagnosis.

The application of machine learning to radiological images is an increasingly active research area that is expected to grow in the next five to ten years. Recent advances in machine learning have the potential to recognize and classify complex patterns from different radiological imaging modalities such as x-rays, computed tomography, magnetic resonance imaging and positron emission tomography imaging. In many applications, machine learning based systems have shown comparable performance to human decision-making. The applications of machine learning are the key ingredients of future clinical decision making and monitoring systems. This review covers the fundamental concepts behind various machine learning techniques and their applications in several radiological imaging areas, such as medical image segmentation, brain function studies and neurological disease diagnosis, as well as computer-aided systems, image registration, and content-based image retrieval systems. Synchronistically, we will briefly discuss current challenges and future directions regarding the application of machine learning in radiological imaging. By giving insight on how take advantage of machine learning powered applications, we expect that clinicians can prevent and diagnose diseases more accurately and efficiently.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes