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Towards an AI-driven real time verification of radiotherapy treatments

机译:迈向AI驱动的放射疗法实时验证

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Monolithic Active Pixel Sensor (MAPS) devices are an effective tool for upstream verification of Intensity Modulated Radio Therapy treatments. It is crucial to measure with high precision the positions of the Multi Leaf Collimators (MLC) used to shape the beam, in order to enhance the quality and safety of treatments. This work describes a two-step procedure applied to the problems of leaf detection and position reconstruction. This procedure represents the building block towards the definition of a real-time verification device capable of detecting and reconstructing the position of the MLC used in the everyday radiotherapy treatments. A Fully Convolutional Neural Network model is used to analyse the high-resolution images produced by Lassena MAPS devices in order to automatically detect the leaves. A Random Forest regression model is then applied to estimate the positions of the detected leaves. The dataset used in the experiments contains 1200 single-leaf images, referring to four leaf positions in the range 1÷25 mm, split in training and test sets with the 80% and 20% of the total samples, respectively. Performance have been evaluated using the Dice loss coefficient for leaf detection, and mean squared error (MSE) as for leaf position estimation. The proposed approach obtained an average dice loss coefficient of 0.85±0.03 on the images in the test set; the MLC positions are estimated with a MSE of 0.04, and a resolution of 68±2µm on the same images.
机译:整体式有源像素传感器(MAPS)设备是用于进行强度调制放射疗法治疗的上游验证的有效工具。至关重要的是,高精度测量用于成形光束的多叶片准直器(MLC)的位置,以提高治疗的质量和安全性。这项工作描述了适用于叶子检测和位置重建问题的两步过程。该过程代表了实时验证设备定义的基础,该设备能够检测和重建日常放射治疗中使用的MLC的位置。完全卷积神经网络模型用于分析由Lassena MAPS设备产生的高分辨率图像,以便自动检测叶子。然后应用随机森林回归模型来估计检测到的叶子的位置。实验中使用的数据集包含1200张单叶图像,涉及1÷25 mm范围内的四个叶位置,分为训练集和测试集,分别占总样本的80%和20%。使用用于叶片检测的骰子损耗系数和用于叶片位置估计的均方误差(MSE)对性能进行了评估。所提出的方法在测试集中的图像上获得的平均骰子损耗系数为0.85±0.03;在同一张图片上,估计的MLC位置的MSE为0.04,分辨率为68±2µm。

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