Corporate Research and Development Center, Toshiba Corporation, Kanagawa, Japan.
Phys Med Biol. 2020 Apr 23;65(8):085014. doi: 10.1088/1361-6560/ab79c5.
To improve respiratory-gated radiotherapy accuracy, we developed a machine learning approach for markerless tumor tracking and evaluated it using lung cancer patient data. Digitally reconstructed radiography (DRR) datasets were generated using planning 4DCT data. Tumor positions were selected on respective DRR images to place the GTV center of gravity in the center of each DRR. DRR subimages around the tumor regions were cropped so that the subimage size was defined by tumor size. Training data were then classified into two groups: positive (including tumor) and negative (not including tumor) samples. Machine learning parameters were optimized by the extremely randomized tree method. For the tracking stage, a machine learning algorithm was generated to provide a tumor likelihood map using fluoroscopic images. Prior probability tumor positions were also calculated using the previous two frames. Tumor position was then estimated by calculating maximum probability on the tumor likelihood map and prior probability tumor positions. We acquired treatment planning 4DCT images in eight patients. Digital fluoroscopic imaging systems on either side of the vertical irradiation port allowed fluoroscopic image acquisition during treatment delivery. Each fluoroscopic dataset was acquired at 15 frames per second. We evaluated the tracking accuracy and computation times. Tracking positional accuracy averaged over all patients was 1.03 ± 0.34 mm (mean ± standard deviation, Euclidean distance) and 1.76 ± 0.71 mm ([Formula: see text] percentile). Computation time was 28.66 ± 1.89 ms/frame averaged over all frames. Our markerless algorithm successfully estimated tumor position in real time.
为了提高呼吸门控放疗的准确性,我们开发了一种无标记肿瘤跟踪的机器学习方法,并使用肺癌患者数据对其进行了评估。通过规划 4DCT 数据生成数字重建射线照片 (DRR) 数据集。在各自的 DRR 图像上选择肿瘤位置,以使 GTV 重心位于每个 DRR 的中心。裁剪肿瘤区域周围的 DRR 子图像,使得子图像的大小由肿瘤的大小定义。然后将训练数据分为两组:阳性(包括肿瘤)和阴性(不包括肿瘤)样本。通过极端随机树方法优化机器学习参数。在跟踪阶段,生成了一种机器学习算法,使用荧光透视图像提供肿瘤可能性图。还使用前两帧计算先验概率肿瘤位置。然后通过在肿瘤可能性图和先验概率肿瘤位置上计算最大概率来估计肿瘤位置。我们在八名患者中获得了治疗计划 4DCT 图像。垂直照射端口两侧的数字荧光透视成像系统允许在治疗过程中采集荧光透视图像。每个荧光透视数据集以每秒 15 帧的速度采集。我们评估了跟踪准确性和计算时间。所有患者的跟踪位置精度平均值为 1.03 ± 0.34 毫米(平均值 ± 标准差,欧几里得距离)和 1.76 ± 0.71 毫米([Formula: see text] 百分位)。所有帧的平均计算时间为 28.66 ± 1.89 毫秒/帧。我们的无标记算法成功地实时估计了肿瘤位置。