Intracranial hemorrhage poses a serious health problem requiring rapid and often intensive medical treatment. For diagnosis, a Cranial Computed Tomography (CCT) scan is usually performed. However, the increased health risk caused by radiation is a concern. The most important strategy to reduce this potential risk is to keep the radiation dose as low as possible and consistent with the diagnostic task. Sparse-view CT can be an effective strategy to reduce dose by reducing the total number of views acquired, albeit at the expense of image quality. In this work, we use a U-Net architecture to reduce artifacts from sparse-view CCTs, predicting fully sampled reconstructions from sparse-view ones. We evaluate the hemorrhage detectability in the predicted CCTs with a hemorrhage classification convolutional neural network, trained on fully sampled CCTs to detect and classify different sub-types of hemorrhages. Our results suggest that the automated classification and detection accuracy of hemorrhages in sparse-view CCTs can be improved substantially by the U-Net. This demonstrates the feasibility of rapid automated hemorrhage detection on low-dose CT data to assist radiologists in routine clinical practice.
翻译:颅内出血是一种严重的健康问题,需要快速和常常是密集的医疗治疗。通常会进行头颅CT扫描进行诊断,但由于辐射导致的增加健康风险是一个问题。降低辐射剂量是减少潜在风险的最重要策略之一。稀疏视图CT可以通过减少采集的总视角数来降低剂量,但这要牺牲图像质量。
在这项工作中,我们使用U-Net结构来减少稀疏视图CT中的伪影,从稀疏视图中预测完全采样的重建。我们使用一个卷积神经网络对完全采样的CT进行训练,以检测和分类不同类型的出血,并评估预测CT中出血检测性能。我们的结果表明,U-Net可以显著提高稀疏视图CT中出血检测的自动化分类和检测准确率,这证明了快速自动化出血检测的可行性。