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Pseudo-T2 Mapping for Normalization of T2-weighted Prostate MRI

Magnetic Resonance Materials in Physics Biology and Medicine(2022)

Cited 4|Views14
Abstract
Objective Signal intensity normalization is necessary to reduce heterogeneity in T2-weighted (T2W) magnetic resonance imaging (MRI) for quantitative analysis of multicenter data. AutoRef is an automated dual-reference tissue normalization method that normalizes transversal prostate T2W MRI by creating a pseudo-T2 map. The aim of this study was to evaluate the accuracy of pseudo-T2s and multicenter standardization performance for AutoRef with three pairs of reference tissues: fat/muscle (AutoRef F ), femoral head/muscle (AutoRef FH ) and pelvic bone/muscle (AutoRef PB ). Materials and methods T2s measured by multi-echo spin echo (MESE) were compared to AutoRef pseudo-T2s in the whole prostate (WP) and zones (PZ and TZ/CZ/AFS) for seven asymptomatic volunteers with a paired Wilcoxon signed-rank test. AutoRef normalization was assessed on T2W images from a multicenter evaluation set of 1186 prostate cancer patients. Performance was measured by inter-patient histogram intersections of voxel intensities in the WP before and after normalization in a selected subset of 80 cases. Results AutoRef FH pseudo-T2s best approached MESE T2s in the volunteer study, with no significant difference shown (WP: p = 0.30, TZ/CZ/AFS: p = 0.22, PZ: p = 0.69). All three AutoRef versions increased inter-patient histogram intersections in the multicenter dataset, with median histogram intersections of 0.505 (original data), 0.738 (AutoRef FH ), 0.739 (AutoRef F ) and 0.726 (AutoRef PB ). Discussion All AutoRef versions reduced variation in the multicenter data. AutoRef FH pseudo-T2s were closest to experimentally measured T2s.
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Key words
Prostate,Prostatic neoplasms,Medical image processing,Magnetic resonance imaging,Multicenter study
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要点】:本研究评估了一种自动化双参考组织归一化方法AutoRef的准确性,该方法通过创建伪T2图来标准化横向前列腺T2加权MRI,减少了多中心数据异质性,提高了信号强度归一化的效果。

方法】:研究使用了自动化的AutoRef方法,通过比较多回波自旋回波(MESE)测量的T2值和AutoRef生成的伪T2值,评估归一化效果。

实验】:在七名无症状志愿者身上进行了配对Wilcoxon符号秩检验,比较了整个前列腺(WP)及不同区域(PZ和TZ/CZ/AFS)的T2值。此外,在来自多中心的1186名前列腺癌患者的T2加权图像上评估了AutoRef归一化效果,使用80个案例的选定子集,通过患者间像素强度直方图的交点测量性能。结果显示,AutoRef FH伪T2值与MESE T2值最接近,且在多中心数据集上,所有三种AutoRef版本均增加了患者间直方图的交点,其中AutoRef FH的交点最高。