The clinical symptoms of pulmonary embolism (PE) are very diverse and non-specific, which makes it difficult to diagnose. In addition, pulmonary embolism has multiple triggers and is one of the major causes of vascular death. Therefore, if it can be detected and treated quickly, it can significantly reduce the risk of death in hospitalized patients. In the detection process, the cost of computed tomography pulmonary angiography (CTPA) is high, and angiography requires the injection of contrast agents, which increase the risk of damage to the patient. Therefore, this study will use a deep learning approach to detect pulmonary embolism in all patients who take a CT image of the chest using a convolutional neural network. With the proposed pulmonary embolism detection system, we can detect the possibility of pulmonary embolism at the same time as the patient's first CT image, and schedule the CTPA test immediately, saving more than a week of CT image screening time and providing timely diagnosis and treatment to the patient.
翻译:肺栓塞(PE)的临床症状多种多样,而且并不特殊,因此难以诊断。此外,肺栓塞有多种触发因素,是血管死亡的主要原因之一。因此,如果能够迅速检测和治疗,就可以大大降低住院病人的死亡风险。在检测过程中,计算出脉搏动脉动成像的成本很高,动脉造影需要注射对比剂,这增加了病人受到伤害的风险。因此,这项研究将采用深层学习方法,用脉动神经网络检测所有取取胸部CT的病人的肺栓塞。通过拟议的肺动脉动动脉动检测系统,我们可以发现肺动脉动成像的可能性与病人的第一张CT图像同时,并立即安排CTPA测试时间,节省超过一周的CT图像筛查时间,并为病人提供及时诊断和治疗。