KTH Royal Institute of Technology, Department of Biomedical Engineering and Health Systems, Hälsovägen 11C, SE-14157 Huddinge, Sweden; Politecnico di Milano, CartCasLab, Department of Electronics Information and Bioengineering, piazza Leonardo Da Vinci 42, Milan 20133, Italy.
Karolinska Institute, Medical Radiation Physics, Department of Oncology-Pathology, Karolinska Universitetssjukhuset, Solna 17176, Sweden.
Phys Med. 2018 Oct;54:21-29. doi: 10.1016/j.ejmp.2018.09.003. Epub 2018 Sep 22.
A new set of quantitative features that capture intensity changes in PET/CT images over time and space is proposed for assessing the tumor response early during chemoradiotherapy. The hypothesis whether the new features, combined with machine learning, improve outcome prediction is tested.
The proposed method is based on dividing the tumor volume into successive zones depending on the distance to the tumor border. Mean intensity changes are computed within each zone, for CT and PET scans separately, and used as image features for tumor response assessment. Doing so, tumors are described by accounting for temporal and spatial changes at the same time. Using linear support vector machines, the new features were tested on 30 non-small cell lung cancer patients who underwent sequential or concurrent chemoradiotherapy. Prediction of 2-years overall survival was based on two PET-CT scans, acquired before the start and during the first 3 weeks of treatment. The predictive power of the newly proposed longitudinal pattern features was compared to that of previously proposed radiomics features and radiobiological parameters.
The highest areas under the receiver operating characteristic curves were 0.98 and 0.93 for patients treated with sequential and concurrent chemoradiotherapy, respectively. Results showed an overall comparable performance with respect to radiomics features and radiobiological parameters.
A novel set of quantitative image features, based on underlying tumor physiology, was computed from PET/CT scans and successfully employed to distinguish between early responders and non-responders to chemoradiotherapy.
提出了一组新的定量特征,用于捕获 PET/CT 图像在时间和空间上的强度变化,以评估放化疗期间肿瘤的早期反应。测试了新特征与机器学习相结合是否能提高预测结果的假设。
该方法基于根据肿瘤边界的距离将肿瘤体积划分为连续区域。分别计算每个区域内 CT 和 PET 扫描的平均强度变化,并将其用作肿瘤反应评估的图像特征。这样,通过同时考虑时间和空间的变化来描述肿瘤。使用线性支持向量机,对 30 名接受序贯或同期放化疗的非小细胞肺癌患者进行了新特征的测试。基于治疗开始前和治疗的前 3 周内获得的两次 PET-CT 扫描,预测 2 年总生存率。将新提出的纵向模式特征的预测能力与之前提出的放射组学特征和放射生物学参数进行了比较。
分别对接受序贯和同期放化疗的患者,曲线下面积最高值为 0.98 和 0.93。结果表明,与放射组学特征和放射生物学参数相比,其性能总体相当。
从 PET/CT 扫描中计算出了一组基于肿瘤潜在生理学的新的定量图像特征,成功地区分了放化疗的早期反应者和非反应者。