Destito Michela, Marzullo Aldo, Leone Riccardo, Zaffino Paolo, Steffanoni Sara, Erbella Federico, Calimeri Francesco, Anzalone Nicoletta, De Momi Elena, Ferreri Andrés J M, Calimeri Teresa, Spadea Maria Francesca
Department of Experimental and Clinical Medicine, University of Catanzaro, 88100 Catanzaro, Italy.
Department of Mathematics and Computer Science, University of Calabria, 87036 Rende, Italy.
Bioengineering (Basel). 2023 Feb 22;10(3):285. doi: 10.3390/bioengineering10030285.
Primary Central Nervous System Lymphoma (PCNSL) is an aggressive neoplasm with a poor prognosis. Although therapeutic progresses have significantly improved Overall Survival (OS), a number of patients do not respond to HD-MTX-based chemotherapy (15-25%) or experience relapse (25-50%) after an initial response. The reasons underlying this poor response to therapy are unknown. Thus, there is an urgent need to develop improved predictive models for PCNSL. In this study, we investigated whether radiomics features can improve outcome prediction in patients with PCNSL. A total of 80 patients diagnosed with PCNSL were enrolled. A patient sub-group, with complete Magnetic Resonance Imaging (MRI) series, were selected for the stratification analysis. Following radiomics feature extraction and selection, different Machine Learning (ML) models were tested for OS and Progression-free Survival (PFS) prediction. To assess the stability of the selected features, images from 23 patients scanned at three different time points were used to compute the Interclass Correlation Coefficient (ICC) and to evaluate the reproducibility of each feature for both original and normalized images. Features extracted from Z-score normalized images were significantly more stable than those extracted from non-normalized images with an improvement of about 38% on average (-value < 10-12). The area under the ROC curve (AUC) showed that radiomics-based prediction overcame prediction based on current clinical prognostic factors with an improvement of 23% for OS and 50% for PFS, respectively. These results indicate that radiomics features extracted from normalized MR images can improve prognosis stratification of PCNSL patients and pave the way for further study on its potential role to drive treatment choice.
原发性中枢神经系统淋巴瘤(PCNSL)是一种侵袭性肿瘤,预后较差。尽管治疗进展显著提高了总生存期(OS),但仍有一些患者对基于大剂量甲氨蝶呤的化疗无反应(15%-25%)或在初始缓解后复发(25%-50%)。对治疗反应不佳的潜在原因尚不清楚。因此,迫切需要开发改进的PCNSL预测模型。在本研究中,我们调查了影像组学特征是否能改善PCNSL患者的预后预测。共纳入80例诊断为PCNSL的患者。选择一组具有完整磁共振成像(MRI)序列的患者亚组进行分层分析。在进行影像组学特征提取和选择后,测试了不同的机器学习(ML)模型用于OS和无进展生存期(PFS)预测。为了评估所选特征的稳定性,使用23例患者在三个不同时间点扫描的图像来计算组内相关系数(ICC),并评估每个特征在原始图像和归一化图像上的可重复性。从Z分数归一化图像中提取的特征比从非归一化图像中提取的特征明显更稳定,平均提高约38%(-值<10-12)。ROC曲线下面积(AUC)表明,基于影像组学的预测分别克服了基于当前临床预后因素的预测,OS提高了23%,PFS提高了50%。这些结果表明,从归一化MR图像中提取的影像组学特征可以改善PCNSL患者的预后分层,并为进一步研究其在指导治疗选择中的潜在作用铺平道路。