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评估表观扩散系数、脑血容量和放射组学磁共振特征在胶质母细胞瘤患者中区分假性进展与真性肿瘤进展的附加价值。

Assessing the added value of apparent diffusion coefficient, cerebral blood volume, and radiomic magnetic resonance features for differentiation of pseudoprogression versus true tumor progression in patients with glioblastoma.

作者信息

Leone Riccardo, Meredig Hagen, Foltyn-Dumitru Martha, Sahm Felix, Hamelmann Stefan, Kurz Felix, Kessler Tobias, Bonekamp David, Schlemmer Heinz-Peter, Bo Hansen Mikkel, Wick Wolfgang, Bendszus Martin, Vollmuth Philipp, Brugnara Gianluca

机构信息

Department of Neurology, University of Bonn, Bonn, Germany.

Department of Neuroradiology, Heidelberg University Hospital, Heidelberg, Germany.

出版信息

Neurooncol Adv. 2023 Feb 21;5(1):vdad016. doi: 10.1093/noajnl/vdad016. eCollection 2023 Jan-Dec.

Abstract

BACKGROUND

Pseudoprogression (PsPD) is a major diagnostic challenge in the follow-up of patients with glioblastoma (GB) after chemoradiotherapy (CRT). Conventional imaging signs and parameters derived from diffusion and perfusion-MRI have yet to prove their reliability in clinical practice for an accurate differential diagnosis. Here, we tested these parameters and combined them with radiomic features (RFs), clinical data, and MGMT promoter methylation status using machine- and deep-learning (DL) models to distinguish PsPD from Progressive disease.

METHODS

In a single-center analysis, 105 patients with GB who developed a suspected imaging PsPD in the first 7 months after standard CRT were identified retrospectively. Imaging data included standard MRI anatomical sequences, apparent diffusion coefficient (ADC), and normalized relative cerebral blood volume (nrCBV) maps. Median values (ADC, nrCBV) and RFs (all sequences) were calculated from DL-based tumor segmentations. Generalized linear models with LASSO feature-selection and DL models were built integrating clinical data, MGMT methylation status, median ADC and nrCBV values and RFs.

RESULTS

A model based on clinical data and MGMT methylation status yielded an areas under the receiver operating characteristic curve (AUC) = 0.69 (95% CI 0.55-0.83) for detecting PsPD, and the addition of median ADC and nrCBV values resulted in a nonsignificant increase in performance (AUC = 0.71, 95% CI 0.57-0.85, = .416). Combining clinical/MGMT information with RFs derived from ADC, nrCBV, and from all available sequences both resulted in significantly (both < .005) lower model performances, with AUC = 0.52 (0.38-0.66) and AUC = 0.54 (0.40-0.68), respectively. DL imaging models resulted in AUCs ≤ 0.56.

CONCLUSION

Currently available imaging biomarkers could not reliably differentiate PsPD from true tumor progression in patients with glioblastoma; larger collaborative efforts are needed to build more reliable models.

摘要

背景

假性进展(PsPD)是胶质母细胞瘤(GB)患者放化疗(CRT)后随访中的一项主要诊断挑战。传统的影像学征象以及扩散加权成像和灌注加权成像衍生的参数在临床实践中尚未证明其在准确鉴别诊断方面的可靠性。在此,我们使用机器学习和深度学习(DL)模型对这些参数进行测试,并将其与放射组学特征(RFs)、临床数据以及MGMT启动子甲基化状态相结合,以区分PsPD与疾病进展。

方法

在一项单中心分析中,回顾性纳入了105例在标准CRT后前7个月出现疑似影像学PsPD的GB患者。影像数据包括标准MRI解剖序列、表观扩散系数(ADC)和标准化相对脑血容量(nrCBV)图。基于DL的肿瘤分割计算中位数(ADC、nrCBV)和RFs(所有序列)。构建整合临床数据、MGMT甲基化状态、ADC和nrCBV中位数以及RFs的带有LASSO特征选择的广义线性模型和DL模型。

结果

基于临床数据和MGMT甲基化状态的模型检测PsPD的受试者操作特征曲线下面积(AUC)=0.69(95%CI 0.55 - 0.83),加入ADC和nrCBV中位数后性能无显著提高(AUC = 0.71,95%CI 0.57 - 0.85,P = 0.416)。将临床/MGMT信息与从ADC、nrCBV以及所有可用序列中提取的RFs相结合,均导致模型性能显著降低(均P < 0.005)——AUC分别为0.52(0.38 - 0.66)和0.54(0.40 - 0.68)。DL影像模型的AUC≤0.56。

结论

目前可用的影像学生物标志物无法可靠地区分胶质母细胞瘤患者的PsPD与真正的肿瘤进展;需要更大规模的合作努力来构建更可靠的模型。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d88b/10034916/5e7a871e4a20/vdad016_fig1.jpg

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