ResfEANet:利用胸部 X 光图像诊断结核病的 ResNet 融合外部注意力网络

Chukwuebuka Joseph Ejiyi , Zhen Qin , Ann O Nnani , Fuhu Deng , Thomas Ugochukwu Ejiyi , Makuachukwu Bennedith Ejiyi , Victor Kwaku Agbesi , Olusola Bamisile
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引用次数: 0

摘要

肺结核(TB)是结核病中最常见的一种,它仍然是全球公共卫生领域的一个重大问题,每年导致一百多万人死亡。准确及时地诊断这种疾病对有效控制和治疗至关重要。胸部 X 光(CXR)图像因其成本效益高且无创,已成为筛查肺部疾病(包括结核病)的重要工具。尽管技术不断进步,但与解读 CXR 图像相关的挑战依然存在,这主要是由于缺乏训练有素的放射科医生。因此,我们迫切需要一种能够诊断肺结核、协助医疗从业人员区分肺结核阳性和阴性 CXR 扫描图像的自动化、经济高效的计算机辅助系统。为了满足这一需求,我们引入了一种创新方法,称为 "ResNet-fused External Attention Network"(ResfEANet)。该网络能从 CXR 图像中准确地对结核病进行分类,准确性和灵敏度都达到了很高的水平。ResfEANet 建立在 ResNet 的基础上,并结合了外部注意机制,但与 ResNet-50 相比,ResfEANet 的残余网络块更少,因此网络层次相对较浅。事实证明,这种方法在特征提取方面非常有效,并在肺结核分类方面取得了有竞争力的结果。我们采用这种方法训练的模型在二元分类任务中的准确率达到了令人印象深刻的 97.59%,灵敏度达到了显著的 100%,而且计算成本最优。这些结果表明,我们提出的方法有可能成为临床决策的重要辅助工具,为放射科医生和医疗保健专业人员提供重要帮助。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ResfEANet: ResNet-fused External Attention Network for Tuberculosis Diagnosis using Chest X-ray Images

Pulmonary tuberculosis (TB), the most prevalent form of TB, remains a major global public health concern, contributing to more than a million deaths each year. The accurate and timely diagnosis of this disease is of paramount importance for effective control and treatment. Chest X-ray (CXR) images have emerged as a valuable tool for screening lung diseases, including TB, owing to their cost-effectiveness and non-invasiveness. Despite advancements in technology, the challenges associated with interpreting CXR images persist, primarily due to the scarcity of trained radiologists. This underscores the pressing need for an automated and cost-effective computer-aided system capable of diagnosing TB, assisting medical practitioners in distinguishing between TB-positive and negative CXR scans. In response to this need, we introduce an innovative approach called ResNet-fused External Attention Network (ResfEANet). This network excels in accurately classifying TB from CXR images, achieving remarkable levels of accuracy and sensitivity. ResfEANet is built upon ResNet and incorporates an External Attention mechanism, albeit with fewer residual network blocks than ResNet-50 resulting in a relatively shallow network with fewer layers. This approach proves highly effective in feature extraction and yields competitive results in the classification of TB. Our method was employed to train a model that demonstrated an impressive accuracy rate of 97.59% and a remarkable sensitivity of 100% in binary classification tasks with optimal computational cost. These outcomes suggest that our proposed approach has the potential to serve as a valuable secondary tool in clinical decision-making, providing crucial assistance to radiologists and healthcare professionals.

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CiteScore
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