Sackler School of Medicine, Faculty of Medicine, Tel Aviv University, Ramat Aviv, Israel.
Br J Radiol. 2012 Dec;85(1020):e1204-11. doi: 10.1259/bjr/13908936.
Despite the established role of MRI in the diagnosis of brain tumours, histopathological assessment remains the clinically used technique, especially for the glioma group. Relative cerebral blood volume (rCBV) is a dynamic susceptibility-weighted contrast-enhanced perfusion MRI parameter that has been shown to correlate to tumour grade, but assessment requires a specialist and is time consuming. We developed analysis software to determine glioma gradings from perfusion rCBV scans in a manner that is quick, easy and does not require a specialist operator.
MRI perfusion data from 47 patients with different histopathological grades of glioma were analysed with custom-designed software. Semi-automated analysis was performed with a specialist and non-specialist operator separately determining the maximum rCBV value corresponding to the tumour. Automated histogram analysis was performed by calculating the mean, standard deviation, median, mode, skewness and kurtosis of rCBV values. All values were compared with the histopathologically assessed tumour grade.
A strong correlation between specialist and non-specialist observer measurements was found. Significantly different values were obtained between tumour grades using both semi-automated and automated techniques, consistent with previous results. The raw (unnormalised) data single-pixel maximum rCBV semi-automated analysis value had the strongest correlation with glioma grade. Standard deviation of the raw data had the strongest correlation of the automated analysis.
Semi-automated calculation of raw maximum rCBV value was the best indicator of tumour grade and does not require a specialist operator.
Both semi-automated and automated MRI perfusion techniques provide viable non-invasive alternatives to biopsy for glioma tumour grading.
尽管 MRI 在脑肿瘤诊断中已得到广泛应用,但组织病理学评估仍然是临床中常用的技术,尤其是在胶质瘤组。相对脑血容量(rCBV)是一种动态磁敏感对比增强灌注 MRI 参数,已被证明与肿瘤分级相关,但评估需要专业人员且耗时。我们开发了一种分析软件,以便能够快速、简便且无需专业操作人员即可根据灌注 rCBV 扫描对胶质瘤进行分级。
对 47 例不同组织病理学分级的胶质瘤患者的 MRI 灌注数据进行分析,使用定制的软件。由一名专家和一名非专家操作人员分别对灌注数据进行半自动分析,以确定与肿瘤对应的最大 rCBV 值。通过计算 rCBV 值的平均值、标准差、中位数、众数、偏度和峰度,进行自动直方图分析。将所有值与组织病理学评估的肿瘤分级进行比较。
发现专家和非专家观察者的测量值之间存在很强的相关性。使用半自动和自动技术均能获得肿瘤分级之间存在显著差异的结果,与之前的结果一致。原始(未归一化)数据中单像素最大 rCBV 半自动分析值与胶质瘤分级的相关性最强。原始数据的标准差与自动分析的相关性最强。
原始最大 rCBV 值的半自动计算是肿瘤分级的最佳指标,且不需要专业操作人员。
半自动和自动 MRI 灌注技术均为胶质瘤肿瘤分级提供了可行的非侵入性替代活检方法。