Medical Image Analysis -- An Important Application in the Field of Image Analysis

本文探讨了医学影像分析的背景、理论及其在临床诊断中的应用。从图像配准到信息融合,从可视化到序列图像的功能分析,再到基于内容的医学图像检索,详细介绍了医学影像分析领域的关键技术和发展趋势。

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Medical Image Analysis -- An Important Application in the Field of Image Analysis

Author: Zhikang Zhang

目录

1.Background

2.Theory

Image registration and information fusion

Visualization

Functional analysis of sequential images 

3.Functional development and application


1.Background

In the freshman seminar of last semester, professor Zeng Bing explained and popularized the principle and application of image analysis and video processing in detail, which aroused my keen interest in medical image analysis in image processing.

Medical image analysis attempts to transform medical simulation image into digital image, and carries out preliminary research on computer aided diagnosis (CAD), which is intended to assist doctors in medical image interpretation to a certain extent, and to eliminate human subjective factors, so as to improve diagnostic accuracy and efficiency. The interdisciplinary fields of medical image analysis, comprehensive medical image, mathematical modeling, digital image processing and analysis, artificial intelligence and numerical algorithm, etc.

2.Theory

 

     Image registration and information fusion

       The purpose of early medical image registration is to display medical images showing different information of human body (structural information and functional information) in a unified coordinate system. With the development of morphological analysis of brain structure, image data registration of patients with different periods and the same disease and standard atlas to specific image data sets have emerged. In order to eliminate the influence of object motion in the imaging process, image registration is also the first step of sequential image analysis. It is the basic task of medical image registration to find the relationship between the corresponding pixels in different images. By looking for appropriate spatial transformation, the image data can be located and registered in spatial position, and then the image fusion can be carried out. Image registration methods can be divided into two categories: external feature based and internal feature based. Registration is achieved by manually setting markers with external features, such as three-dimensional frame positioning, skin labeling, etc. Based on the internal feature method, registration is achieved by finding the feature points on the internal anatomical structure of the image or the corresponding relations between the external contour and the surface. Mutual information is a measure of statistical correlation of random variables and has been widely used in medical image registration. Since the maximum mutual information method does not need to assume the correlation of image grayscale under different imaging modes, nor does it need to segment and preprocess images, it is very suitable for 3d multi-mode medical image registration and has the characteristics of high precision and strong robustness. At present, medical image registration technology and segmentation technology, there are many mature methods and software, is one of the basic technology of medical image analysis.

     Visualization

         Visualization plays an important role in medical image analysis. Medical image visualization technology is the use of obtained from the experiment, scanner measured, calculating model of synthetic data of medical images, three-dimensional image reconstruction model, qualitative and quantitative analysis, to provide users with realistic 3 d medical image, make people more clear understanding of the complex structure of implication in vivo data, observation and analysis, the doctor multi-angle multi-level to doctors and able to participate effectively in the process of data processing and analysis. Medical image visualization technology, according to the different methods of data description in the rendering process, is usually divided into two categories: one-side rendering and volume rendering. Surface rendering technology refers to the reconstruction of the volume surface, that is, extracting the equivalent surface from the three-dimensional data field provided by slicing data, and then using traditional graphics technology to achieve surface rendering. Surface rendering can effectively draw the surface of an object, but it lacks the expression of the internal information of the object. Volume rendering takes voxel as the basic unit to generate 3d object images directly from slicing data to represent the internal information of the object. However, it requires a lot of calculation. In addition, the reconstruction algorithms that combine the characteristics of these two technologies are classified into the third category -- mixed rendering technology.

         Volume rendering technology does not need to construct intermediate objects, but directly reconstruct objects from 3d data itself. Each data in 3d data is regarded as a basic unit of entity representation -- voxel. Each voxel has corresponding properties such as color, opacity, gradient and so on. The basic principle of volume rendering is to simulate the cumulative change of energy when light passes through the translucent material, that is, the theory of light transmission. Specifically, each voxel is first assigned an opacity and color value (R, G, B); Then the illumination intensity of voxel was calculated according to the gradient of each voxel and the illumination model. Then, according to the light model, the opacity and color value of each voxel projected to the same pixel point in the image plane are combined to generate the final image. Typical algorithms of volume rendering technology include ray projection method, footprint method, cross-cutting deformation method, hardware-based 3d texture mapping, frequency-domain volume rendering method, wavelet-based volume rendering method, etc.

Visualization

     Functional analysis of sequential images 

        The purpose of medical image analysis is to obtain quantitative information of physiological process and provide more sufficient basis for clinical diagnosis and treatment. In the past, medical imaging mainly focused on anatomical structure imaging and morphological analysis. In recent years, rapid advances in imaging speed of medical devices have made it possible to observe the dynamics of physiological processes. For example, Functional MRI has been widely used in the field of brain Functional imaging. PET(positron emission tomography) and SPECT(single photon emission computer tomography) have been extensively applied in dynamic imaging of brain and heart functions. In terms of MR heart function imaging, Tagging MR technology and phase contrast MR imaging technology provide a basis for quantitatively analyzing the heart function of the image in physics. In addition, the advent of three-dimensional ultrasound provides a means to observe ventricular and valvular motion in real time. All the above devices can generate two-dimensional or three-dimensional medical images of time series, reflecting the dynamic functional information of physiological processes. The corresponding medical image analysis also develops from image segmentation and registration technology in the category of image processing to the accurate and quantitative analysis of organ functions and physiological processes with medical images as the media.

Sequential Images

 

3.Functional development and application

        Content-based image retrieval has made some progress in natural image retrieval and video retrieval. By extracting the features of the input image, a fast retrieval method for the retrieval of adjacent similar images in the feature space in the image database has been proposed. With the increasing trend of medical data quantization, the research and application of content-based medical image retrieval have become a hot topic in recent years. Image retrieval system can help doctors quickly find medical images with similar pathological features and have been diagnosed in massive databases, and improve the accuracy of disease diagnosis. Medical image retrieval has the following difficulties: first, the content and characteristics of medical images obtained by different imaging devices vary greatly, so it is difficult to use unified algorithm to automatically analyze and extract features; Secondly, the classification of medical images involves professional knowledge. For example, to distinguish different types of brain tumor images, specialized imaging knowledge must be combined in some form. Thirdly, modern medical images are mostly three-dimensional or higher dimensional, which also poses new challenges to feature extraction and retrieval algorithms. The difficulties mentioned above make the current image retrieval research focus on medical images targeted at specific imaging devices and specific anatomical locations, or disease types. At present, most studies are limited to theoretical studies, and only a few image retrieval systems have reported the clinical evaluation performance and practical application.

### 关于《Medical Image Analysis》期刊的评价 《Medical Image Analysis》是一份专注于医学图像处理、计算机视觉及其在医疗领域应用的研究成果的重要学术期刊。它由Elsevier出版,其影响因子通常位于高水平范围内,在生物医学工程和图像处理领域具有较高的声誉[^3]。 #### 影响力与排名 该期刊的影响因子近年来一直保持较高水平,这表明其发表的文章在全球范围内的引用率很高。根据Journal Citation Reports (JCR),《Medical Image Analysis》在其所属类别中通常处于Q1区,即前25%的顶级期刊之一。这一排名反映了其高质量的内容以及对学科发展的贡献。 #### 学术社区的认可度 由于其严格的审稿流程,《Medical Image Analysis》吸引了大量来自顶尖研究机构的投稿。尤其是在深度学习技术逐渐应用于医学影像分析之后,该期刊成为许多开创性工作的首选发布平台。例如,自2015年起,随着深度学习方法在医学图像领域的广泛应用,该期刊见证了显著的增长趋势,并且成为了讨论最新算法和技术进展的核心场所[^2]。 #### 技术支持与作者指南 为了帮助研究人员更好地准备稿件并遵循统一的标准,《Medical Image Analysis》提供了详细的LaTeX模板供下载。这些资源不仅简化了提交过程,还确保了文章格式的一致性和专业性。对于参考文献管理,推荐使用`\citep{}`命令来实现括号内引用形式,而当引用作为句子主语时,则应采用`\citet{}`命令[^4]。 综上所述,《Medical Image Analysis》凭借其卓越的内容质量、广泛的读者基础以及强大的编辑团队,在国际科研界享有盛誉。它是任何希望将自己的研究成果推向更广泛受众的学者的理想选择。 ```python import scholarly search_query = next(scholarly.search_pubs('Medical Image Analysis')) print(f"Title: {search_query.bib['title']}") print(f"Citations: {search_query.citedby}") ``` 上述Python脚本展示了如何利用`scholarly`库查询特定论文的信息,包括标题和被引次数等数据点。通过这种方式可以进一步验证某篇具体文献的实际影响力。
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