Survey of Supervised Learning for Medical Image Processing

Medical image interpretation is an essential task for the correct diagnosis of many diseases. Pathologists, radiologists, physicians, and researchers rely heavily on medical images to perform diagnoses and develop new treatments. However, manual medical image analysis is tedious and time consuming,...

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Veröffentlicht in:SN computer science 2022-01, Vol.3 (4), p.292, Article 292
Hauptverfasser: Aljuaid, Abeer, Anwar, Mohd
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description Medical image interpretation is an essential task for the correct diagnosis of many diseases. Pathologists, radiologists, physicians, and researchers rely heavily on medical images to perform diagnoses and develop new treatments. However, manual medical image analysis is tedious and time consuming, making it necessary to identify accurate automated methods. Deep learning—especially supervised deep learning—shows impressive performance in the classification, detection, and segmentation of medical images and has proven comparable in ability to humans. This survey aims to help researchers and practitioners of medical image analysis understand the key concepts and algorithms of supervised learning techniques. Specifically, this survey explains the performance metrics of supervised learning methods; summarizes the available medical datasets; studies the state-of-the-art supervised learning architectures for medical imaging processing, including convolutional neural networks (CNNs) and their corresponding algorithms, region-based CNNs and their variants, fully convolutional networks (FCN) and U-Net architecture; and discusses the trends and challenges in the application of supervised learning methods to medical image analysis. Supervised learning requires large labeled datasets to learn and achieve good performance, and data augmentation, transfer learning, and dropout techniques have widely been employed in medical image processing to overcome the lack of such datasets.
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subjects Accuracy
Algorithms
Artificial intelligence
Artificial neural networks
Automation
Business metrics
Cancer
Classification
Computer Imaging
Computer Science
Computer Systems Organization and Communication Networks
Data augmentation
Data Structures and Information Theory
Datasets
Deep learning
Image analysis
Image processing
Image segmentation
Information Systems and Communication Service
Innovative AI in Medical Applications
Machine learning
Magnetic resonance imaging
Medical imaging
Pattern Recognition and Graphics
Performance measurement
Semantics
Software Engineering/Programming and Operating Systems
State-of-the-art reviews
Supervised learning
Survey
Survey Article
Vision
title Survey of Supervised Learning for Medical Image Processing
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