自适应磁共振多参数融合提高肝脏肿瘤图像对比度,合成新型组织对比度。

Q4 Medicine Precision Radiation Oncology Pub Date : 2022-09-01 DOI:10.1002/pro6.1167
Lei Zhang, Fang-Fang Yin, Ke Lu, Brittany Moore, Silu Han, Jing Cai
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引用次数: 0

摘要

目的:多参数MRI包含丰富且互补的解剖学和功能信息,这些信息通常是单独使用的。本研究旨在提出一种自适应多参数MRI (mpMRI)融合方法,并研究其在肝癌患者肿瘤对比改善和新组织对比合成方面的能力。方法:采用图像预处理、融合算法、数据库、自适应规则和融合MRI五个部分组成自适应mpMRI融合方法。采用线性加权和算法进行融合。重量驱动和功能驱动的调整是为不同的应用而设计的。在Matlab中开发了一个临床友好的图形用户界面(GUI),并用于mpMRI融合。12名肝癌患者和一个数字人体幻影被纳入研究。结合病例对新型图像对比度的合成、图像信号增强和对比度增强进行了探讨。比较mpMRI融合前后肿瘤的信噪比(CNR)和肝脏的信噪比(SNR)。结果:融合平台适用于XCAT假体和患者。实现了新的图像对比度,包括软组织边界、椎体、肿瘤的增强,以及在单个图像中组成多个图像特征。T1-w的肿瘤CNR从-1.70±2.57提高到4.88±2.28 (p < 0.0001), T2-w的肿瘤CNR从3.39±1.89提高到7.87±3.47 (p < 0.01), T2/T1-w的肿瘤CNR从1.42±1.66提高到7.69±3.54 (p < 0.001)。DWI组肝脏信噪比由2.92±2.39提高至9.96±8.60 (p < 0.05)。T1-w、T2-w和T2/T1-w MRI的肿瘤CNR变异系数(CV)分别从1.57、0.56、1.17降至0.47、0.44、0.46。结论:提出了一种多参数MRI融合方法,并开发了原型。该方法有可能改善临床相关特征,如肿瘤对比和肝脏信号。实现了将多个图像特征合成为单个图像集的新型图像对比度合成。
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Improving liver tumor image contrast and synthesizing novel tissue contrasts by adaptive multiparametric MRI fusion.

Purpose: Multiparametric MRI contains rich and complementary anatomical and functional information, which is often utilized separately. This study aims to propose an adaptive multiparametric MRI (mpMRI) fusion method and examine its capability in improving tumor contrast and synthesizing novel tissue contrasts among liver cancer patients.

Methods: An adaptive mpMRI fusion method was developed with five components: image pre-processing, fusion algorithm, database, adaptation rules, and fused MRI. Linear-weighted summation algorithm was used for fusion. Weight-driven and feature-driven adaptations were designed for different applications. A clinical-friendly graphic-user-interface (GUI) was developed in Matlab and used for mpMRI fusion. Twelve liver cancer patients and a digital human phantom were included in the study. Synthesis of novel image contrast and enhancement of image signal and contrast were examined in patient cases. Tumor contrast-to-noise ratio (CNR) and liver signal-to-noise ratio (SNR) were evaluated and compared before and after mpMRI fusion.

Results: The fusion platform was applicable in both XCAT phantom and patient cases. Novel image contrasts, including enhancement of soft-tissue boundary, vertebral body, tumor, and composition of multiple image features in a single image were achieved. Tumor CNR improved from -1.70 ± 2.57 to 4.88 ± 2.28 (p < 0.0001) for T1-w, from 3.39 ± 1.89 to 7.87 ± 3.47 (p < 0.01) for T2-w, and from 1.42 ± 1.66 to 7.69 ± 3.54 (p < 0.001) for T2/T1-w MRI. Liver SNR improved from 2.92 ± 2.39 to 9.96 ± 8.60 (p < 0.05) for DWI. The coefficient of variation (CV) of tumor CNR lowered from 1.57, 0.56, and 1.17 to 0.47, 0.44, and 0.46 for T1-w, T2-w and T2/T1-w MRI, respectively.

Conclusion: A multiparametric MRI fusion method was proposed and a prototype was developed. The method showed potential in improving clinically relevant features such as tumor contrast and liver signal. Synthesis of novel image contrasts including the composition of multiple image features into single image set was achieved.

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来源期刊
Precision Radiation Oncology
Precision Radiation Oncology Medicine-Oncology
CiteScore
1.20
自引率
0.00%
发文量
32
审稿时长
13 weeks
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