生物医学图像分析中的张量方法。

IF 1.3 Q4 ENGINEERING, BIOMEDICAL Journal of Medical Signals & Sensors Pub Date : 2024-07-10 eCollection Date: 2024-01-01 DOI:10.4103/jmss.jmss_55_23
Farnaz Sedighin
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引用次数: 0

摘要

在过去十年中,张量在信号和图像处理领域的不同方面变得越来越有吸引力。其主要原因是矩阵在表示和分析多模态和多维数据集时效率低下。矩阵无法保留高阶数据集中元素的多维相关性,这大大降低了基于矩阵的方法分析多维数据集的效率。除此之外,基于张量的方法也表现出了良好的性能。这些因素共同促使研究人员从矩阵转向张量。在各种信号和图像处理应用中,分析生物医学信号和图像尤为重要。这是因为需要从直接影响患者健康的生物医学数据集中提取准确的信息。此外,在很多情况下,一个病人会同时记录多个数据集。一个常见的例子是记录一名精神分裂症患者的脑电图(EEG)和功能磁共振成像(fMRI)。在这种情况下,张量似乎是同时利用两个(或多个)数据集的最有效方法之一。因此,人们开发了多种基于张量的方法来分析生物医学数据集。考虑到这一现实情况,本文旨在对生物医学图像分析中基于张量的方法进行全面评述。本文所介绍的研究以及不同方法和应用之间的分类可以显示张量在生物医学图像增强中的重要性,并为未来的研究开辟新的途径。
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Tensor Methods in Biomedical Image Analysis.

In the past decade, tensors have become increasingly attractive in different aspects of signal and image processing areas. The main reason is the inefficiency of matrices in representing and analyzing multimodal and multidimensional datasets. Matrices cannot preserve the multidimensional correlation of elements in higher-order datasets and this highly reduces the effectiveness of matrix-based approaches in analyzing multidimensional datasets. Besides this, tensor-based approaches have demonstrated promising performances. These together, encouraged researchers to move from matrices to tensors. Among different signal and image processing applications, analyzing biomedical signals and images is of particular importance. This is due to the need for extracting accurate information from biomedical datasets which directly affects patient's health. In addition, in many cases, several datasets have been recorded simultaneously from a patient. A common example is recording electroencephalography (EEG) and functional magnetic resonance imaging (fMRI) of a patient with schizophrenia. In such a situation, tensors seem to be among the most effective methods for the simultaneous exploitation of two (or more) datasets. Therefore, several tensor-based methods have been developed for analyzing biomedical datasets. Considering this reality, in this paper, we aim to have a comprehensive review on tensor-based methods in biomedical image analysis. The presented study and classification between different methods and applications can show the importance of tensors in biomedical image enhancement and open new ways for future studies.

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来源期刊
Journal of Medical Signals & Sensors
Journal of Medical Signals & Sensors ENGINEERING, BIOMEDICAL-
CiteScore
2.30
自引率
0.00%
发文量
53
审稿时长
33 weeks
期刊介绍: JMSS is an interdisciplinary journal that incorporates all aspects of the biomedical engineering including bioelectrics, bioinformatics, medical physics, health technology assessment, etc. Subject areas covered by the journal include: - Bioelectric: Bioinstruments Biosensors Modeling Biomedical signal processing Medical image analysis and processing Medical imaging devices Control of biological systems Neuromuscular systems Cognitive sciences Telemedicine Robotic Medical ultrasonography Bioelectromagnetics Electrophysiology Cell tracking - Bioinformatics and medical informatics: Analysis of biological data Data mining Stochastic modeling Computational genomics Artificial intelligence & fuzzy Applications Medical softwares Bioalgorithms Electronic health - Biophysics and medical physics: Computed tomography Radiation therapy Laser therapy - Education in biomedical engineering - Health technology assessment - Standard in biomedical engineering.
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