基于矩阵的混合多维前列腺磁共振成像数据分析方法简介。

IF 2 4区 医学 Q3 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Xiaobing Fan, Aritrick Chatterjee, Milica Medved, Tatjana Antic, Aytekin Oto, Gregory S Karczmar
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引用次数: 0

摘要

本研究介绍了一种分析前列腺混合多维磁共振成像(HM-MRI)数据的新方法。HM-MRI 数据是在几个回波时间(TE)和几个 b 值的组合下获得的。自然,每个图像像素都有一个与 HM-MRI 数据相关的矩阵。为了处理这些数据,我们首先对成像信号强度取自然对数,对 HM-MRI 数据进行线性化处理。然后,通过将每个像素的矩阵乘以其自身的转置,构建混合对称矩阵。然后就可以根据混合对称矩阵计算出每个像素的特征值。为了比较不同患者的特征值,使用了三个 b 值和三个 TE,因为这是所有患者中 b 值和 TE 数量最少的。特征值的结果以定性彩色图的形式显示,以便于可视化。在定量分析中,特征值(λ1、λ2、λ3)的比率(λr)被定义为 λr = (λ1/λ2)/λ3 以比较前列腺癌(PCa)和正常组织的感兴趣区(ROI)。结果显示,综合特征值图能清晰显示 PCa,这些图与同一前列腺的表观扩散系数(ADC)和 T2 图截然不同。与正常前列腺组织相比,PCa 的 λr 明显较大,ADC 较小,T2 值也较小(p<0.05)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Introduction to matrix-based method for analyzing hybrid multidimensional prostate MRI data.

A new approach to analysis of prostate hybrid multidimensional MRI (HM-MRI) data was introduced in this study. HM-MRI data were acquired for a combination of a few echo times (TEs) and a few b-values. Naturally, there is a matrix associated with HM-MRI data for each image pixel. To process the data, we first linearized HM-MRI data by taking the natural logarithm of the imaging signal intensity. Subsequently, a hybrid symmetric matrix was constructed by multiplying the matrix for each pixel by its own transpose. The eigenvalues for each pixel could then be calculated from the hybrid symmetric matrix. In order to compare eigenvalues between patients, three b-values and three TEs were used, because this was smallest number of b-values and TEs among all patients. The results of eigenvalues were displayed as qualitative color maps for easier visualization. For quantitative analysis, the ratio (λr) of eigenvalues (λ1, λ2, λ3) was defined as λr = (λ12)/λ3 to compare region of interest (ROI) between prostate cancer (PCa) and normal tissue. The results show that the combined eigenvalue maps show PCas clearly and these maps are quite different from apparent diffusion coefficient (ADC) and T2 maps of the same prostate. The PCa has significant larger λr, smaller ADC and smaller T2 values than normal prostate tissue (p < 0.001). This suggests that the matrix-based method for analyzing HM-MRI data provides new information that may be clinically useful. The method is easy to use and could be easily implemented in clinical practice. The eigenvalues are associated with combination of ADC and T2 values, and could aid in the identification and staging of PCa.

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来源期刊
CiteScore
3.60
自引率
19.00%
发文量
331
审稿时长
3 months
期刊介绍: Journal of Applied Clinical Medical Physics is an international Open Access publication dedicated to clinical medical physics. JACMP welcomes original contributions dealing with all aspects of medical physics from scientists working in the clinical medical physics around the world. JACMP accepts only online submission. JACMP will publish: -Original Contributions: Peer-reviewed, investigations that represent new and significant contributions to the field. Recommended word count: up to 7500. -Review Articles: Reviews of major areas or sub-areas in the field of clinical medical physics. These articles may be of any length and are peer reviewed. -Technical Notes: These should be no longer than 3000 words, including key references. -Letters to the Editor: Comments on papers published in JACMP or on any other matters of interest to clinical medical physics. These should not be more than 1250 (including the literature) and their publication is only based on the decision of the editor, who occasionally asks experts on the merit of the contents. -Book Reviews: The editorial office solicits Book Reviews. -Announcements of Forthcoming Meetings: The Editor may provide notice of forthcoming meetings, course offerings, and other events relevant to clinical medical physics. -Parallel Opposed Editorial: We welcome topics relevant to clinical practice and medical physics profession. The contents can be controversial debate or opposed aspects of an issue. One author argues for the position and the other against. Each side of the debate contains an opening statement up to 800 words, followed by a rebuttal up to 500 words. Readers interested in participating in this series should contact the moderator with a proposed title and a short description of the topic
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