利用多模态磁共振图像预测成人型弥漫性胶质瘤放疗后的早期复发。

IF 3.2 2区 医学 Q1 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Medical physics Pub Date : 2024-09-02 DOI:10.1002/mp.17382
Elahheh Salari, Xuxin Chen, Jacob Frank Wynne, Richard L. J. Qiu, Justin Roper, Hui-Kuo Shu, Xiaofeng Yang
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引用次数: 0

摘要

背景:成人型弥漫性胶质瘤是中枢神经系统最具侵袭性的恶性原发肿瘤之一。尽管全身治疗取得了进展,放射肿瘤治疗技术也有所改进,但这些患者的生存率仍然很低。快速准确地评估肿瘤对肿瘤治疗的反应至关重要,因为这可以及早发现复发或难治性胶质瘤,从而及时采取延长生命的挽救疗法:目的:放射组学是一个不断发展的领域,在改善医学影像解读方面具有巨大潜力。本研究旨在应用基于放射组学的预测模型,对治疗后3个月内的放疗反应进行分类:方法:从Burdenko胶质母细胞瘤进展数据集中选取95名患者。对比增强 T1(CE T1W)和 T2 液体增强反转恢复(T2_FLAIR)磁共振成像(MRI)在轴向平面上划分肿瘤区域。使用 Python (3.10) 中的 PyRadiomics (3.7.6) 提取了手工绘制的放射学(HCR)特征,包括一阶和二阶特征。然后,使用随机森林(RF)分类器进行递归特征消除,以降低特征维度。利用所选特征建立 RF 和支持向量机 (SVM) 分类器来预测治疗结果。采用留空交叉验证来调整超参数和评估模型:对于每个分割的靶点,从磁共振成像序列中提取了 186 个 HCR 特征。利用从 CE T1W 和 T2_FLAIR 组合中提取的排名靠前的放射学特征,经过优化的分类器在使用 RF 分类器时获得了最高的平均曲线下面积(AUC),为 0.829 ± 0.075。CE T1W的HCR特征在所有模型中结果最差(RF和SVM分类器的结果分别为0.603 ± 0.024和0.615 ± 0.075):我们开发并评估了一种基于放射组学的放疗早期肿瘤反应预测模型,该模型表现优异,AUC 值很高。该模型利用了多模态磁共振成像的放射组学特征,与单模态磁共振成像方法相比,显示出更优越的预测性能。这些结果凸显了放射组学在这一疾病过程的临床决策支持方面的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prediction of early recurrence of adult-type diffuse gliomas following radiotherapy using multi-modal magnetic resonance images

Background

Adult-type diffuse gliomas are among the central nervous system's most aggressive malignant primary neoplasms. Despite advancements in systemic therapies and technological improvements in radiation oncology treatment delivery, the survival outcome for these patients remains poor. Fast and accurate assessment of tumor response to oncologic treatments is crucial, as it can enable the early detection of recurrent or refractory gliomas, thereby allowing timely intervention with life-prolonging salvage therapies.

Purpose

Radiomics is a developing field with great potential to improve medical image interpretation. This study aims to apply a radiomics-based predictive model for classifying response to radiotherapy within the first 3 months post-treatment.

Methods

Ninety-five patients were selected from the Burdenko Glioblastoma Progression Dataset. Tumor regions were delineated in the axial plane on contrast-enhanced T1(CE T1W) and T2 fluid-attenuated inversion recovery (T2_FLAIR) magnetic resonance imaging (MRI). Hand-crafted radiomic (HCR) features, including first- and second-order features, were extracted using PyRadiomics (3.7.6) in Python (3.10). Then, recursive feature elimination with a random forest (RF) classifier was applied for feature dimensionality reduction. RF and support vector machine (SVM) classifiers were built to predict treatment outcomes using the selected features. Leave-one-out cross-validation was employed to tune hyperparameters and evaluate the models.

Results

For each segmented target, 186 HCR features were extracted from the MRI sequence. Using the top-ranked radiomic features from a combination of CE T1W and T2_FLAIR, an optimized classifier achieved the highest averaged area under the curve (AUC) of 0.829 ± 0.075 using the RF classifier. The HCR features of CE T1W produced the worst outcomes among all models (0.603 ± 0.024 and 0.615 ± 0.075 for RF and SVM classifiers, respectively).

Conclusions

We developed and evaluated a radiomics-based predictive model for early tumor response to radiotherapy, demonstrating excellent performance supported by high AUC values. This model, harnessing radiomic features from multi-modal MRI, showed superior predictive performance compared to single-modal MRI approaches. These results underscore the potential of radiomics in clinical decision support for this disease process.

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来源期刊
Medical physics
Medical physics 医学-核医学
CiteScore
6.80
自引率
15.80%
发文量
660
审稿时长
1.7 months
期刊介绍: Medical Physics publishes original, high impact physics, imaging science, and engineering research that advances patient diagnosis and therapy through contributions in 1) Basic science developments with high potential for clinical translation 2) Clinical applications of cutting edge engineering and physics innovations 3) Broadly applicable and innovative clinical physics developments Medical Physics is a journal of global scope and reach. By publishing in Medical Physics your research will reach an international, multidisciplinary audience including practicing medical physicists as well as physics- and engineering based translational scientists. We work closely with authors of promising articles to improve their quality.
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