Department of Computer Science, Bacha Khan University, Charsadda (BKUC), Charsadda 24420, Pakistan.
Department of Computer Science, Institute of Space Technology, Islamabad 44000, Pakistan.
Sensors (Basel). 2023 Jan 28;23(3):1471. doi: 10.3390/s23031471.
The Internet of Medical Things (IoMT) has revolutionized Ambient Assisted Living (AAL) by interconnecting smart medical devices. These devices generate a large amount of data without human intervention. Learning-based sophisticated models are required to extract meaningful information from this massive surge of data. In this context, Deep Neural Network (DNN) has been proven to be a powerful tool for disease detection. Pulmonary Embolism (PE) is considered the leading cause of death disease, with a death toll of 180,000 per year in the US alone. It appears due to a blood clot in pulmonary arteries, which blocks the blood supply to the lungs or a part of the lung. An early diagnosis and treatment of PE could reduce the mortality rate. Doctors and radiologists prefer Computed Tomography (CT) scans as a first-hand tool, which contain 200 to 300 images of a single study for diagnosis. Most of the time, it becomes difficult for a doctor and radiologist to maintain concentration going through all the scans and giving the correct diagnosis, resulting in a misdiagnosis or false diagnosis. Given this, there is a need for an automatic Computer-Aided Diagnosis (CAD) system to assist doctors and radiologists in decision-making. To develop such a system, in this paper, we proposed a deep learning framework based on DenseNet201 to classify PE into nine classes in CT scans. We utilized DenseNet201 as a feature extractor and customized fully connected decision-making layers. The model was trained on the Radiological Society of North America (RSNA)-Pulmonary Embolism Detection Challenge (2020) Kaggle dataset and achieved promising results of 88%, 88%, 89%, and 90% in terms of the accuracy, sensitivity, specificity, and Area Under the Curve (AUC), respectively.
物联网 (IoMT) 通过互联智能医疗设备彻底改变了安闲辅助生活 (AAL)。这些设备在无人干预的情况下生成大量数据。需要基于学习的复杂模型从这一大规模数据激增中提取有意义的信息。在这种情况下,深度神经网络 (DNN) 已被证明是疾病检测的强大工具。肺栓塞 (PE) 被认为是导致死亡的主要原因,仅在美国每年就有 18 万人因此死亡。它是由于肺动脉中的血栓形成,从而阻断了肺部或肺部的一部分的血液供应。早期诊断和治疗 PE 可以降低死亡率。医生和放射科医生更喜欢将计算机断层扫描 (CT) 作为首选工具,每次检查包含 200 到 300 张图像用于诊断。大多数时候,医生和放射科医生很难集中精力查看所有扫描并给出正确的诊断,从而导致误诊或假诊断。鉴于此,需要有一种自动计算机辅助诊断 (CAD) 系统来帮助医生和放射科医生做出决策。为了开发这样的系统,在本文中,我们提出了一种基于 DenseNet201 的深度学习框架,用于在 CT 扫描中将 PE 分类为九类。我们将 DenseNet201 用作特征提取器,并定制了全连接决策层。该模型在北美放射学会 (RSNA)-肺栓塞检测挑战赛 (2020) Kaggle 数据集上进行了训练,在准确性、敏感性、特异性和曲线下面积 (AUC) 方面分别达到了 88%、88%、89%和 90%的有希望的结果。