With more than 60,000 deaths annually in the United States, Pulmonary Embolism (PE) is among the most fatal cardiovascular diseases. It is caused by an artery blockage in the lung; confirming its presence is time-consuming and is prone to over-diagnosis. The utilization of automated PE detection systems is critical for diagnostic accuracy and efficiency. In this study we propose a two-stage attention-based CNN-LSTM network for predicting PE, its associated type (chronic, acute) and corresponding location (leftsided, rightsided or central) on computed tomography (CT) examinations. We trained our model on the largest available public Computed Tomography Pulmonary Angiogram PE dataset (RSNA-STR Pulmonary Embolism CT (RSPECT) Dataset, N=7279 CT studies) and tested it on an in-house curated dataset of N=106 studies. Our framework mirrors the radiologic diagnostic process via a multi-slice approach so that the accuracy and pathologic sequela of true pulmonary emboli may be meticulously assessed, enabling physicians to better appraise the morbidity of a PE when present. Our proposed method outperformed a baseline CNN classifier and a single-stage CNN-LSTM network, achieving an AUC of 0.95 on the test set for detecting the presence of PE in the study.
翻译:在美国,每年有60,000多人死亡,肺新陈代谢(PE)是致命性心血管疾病中最致命的疾病之一,其原因是肺动脉阻塞;证实其存在耗时费时,容易诊断过度;使用自动PE检测系统对于诊断准确性和效率至关重要;在这项研究中,我们提议建立一个基于两阶段关注的CNN-LSTM网络,以预测PE、其相关类型(慢性、急性)和相应的地点(左侧、右侧或中央)的计算断层检查(CT),我们用现有最大的公开读写断断断脉动脉动动脉动脉动脉动PE数据集(RSNA-STS PUCT)数据集(RSNA-STER Pulmoncolism CT),N=7279CT研究)进行测试,并用内部整理的N=106研究数据集进行测试。我们的框架反映了通过多切片方法进行的放射诊断过程,这样,就可以对真正的SICAN-SAR 5号常规调查网络的准确性和病理学后诊断能力进行精确评估,从而能够对目前测试性地评估,从而确定一种单一的癌症测试网络的发病率。