Department of Oncology, University of Alberta, Edmonton, AB.
Curr Oncol. 2010 Feb;17(1):41-7. doi: 10.3747/co.v17i1.394.
We applied a learning methodology framework to assist in the threshold-based segmentation of non-small-cell lung cancer (NSCLC) tumours in positron-emission tomography-computed tomography (PET-CT) imaging for use in radiotherapy planning. Gated and standard free-breathing studies of two patients were independently analysed (four studies in total). Each study had a pet-ct and a treatment-planning ct image. The reference gross tumour volume (GTV) was identified by two experienced radiation oncologists who also determined reference standardized uptake value (SUV) thresholds that most closely approximated the GTV contour on each slice. A set of uptake distribution-related attributes was calculated for each PET slice. A machine learning algorithm was trained on a subset of the PET slices to cope with slice-to-slice variation in the optimal suv threshold: that is, to predict the most appropriate suv threshold from the calculated attributes for each slice. The algorithm's performance was evaluated using the remainder of the pet slices. A high degree of geometric similarity was achieved between the areas outlined by the predicted and the reference SUV thresholds (Jaccard index exceeding 0.82). No significant difference was found between the gated and the free-breathing results in the same patient. In this preliminary work, we demonstrated the potential applicability of a machine learning methodology as an auxiliary tool for radiation treatment planning in NSCLC.
我们应用了一种学习方法框架,以协助基于阈值的非小细胞肺癌(NSCLC)肿瘤在正电子发射断层扫描-计算机断层扫描(PET-CT)成像中的分割,用于放射治疗计划。对两名患者的门控和标准自由呼吸研究进行了独立分析(共四项研究)。每项研究都有 pet-ct 和治疗计划 ct 图像。参考大体肿瘤体积(GTV)由两名经验丰富的放射肿瘤学家确定,他们还确定了参考标准化摄取值(SUV)阈值,这些阈值最接近每个切片上的 GTV 轮廓。为每个 PET 切片计算了一组与摄取分布相关的属性。在 PET 切片的子集上训练了一种机器学习算法,以应对最佳 SUV 阈值的切片间变化:也就是说,根据每个切片的计算属性预测最合适的 SUV 阈值。使用其余的 pet 切片评估算法的性能。预测和参考 SUV 阈值所勾勒区域之间达到了高度的几何相似性(Jaccard 指数超过 0.82)。在同一名患者中,门控和自由呼吸结果之间没有发现显著差异。在这项初步工作中,我们证明了机器学习方法作为 NSCLC 放射治疗计划辅助工具的潜在适用性。