School of Biomedical Engineering, Tsinghua University, Beijing 100084, China.
Department of Ultrasound, Beijing Ditan Hospital, Capital Medical University, Beijing 100015, China.
Ultrasonics. 2024 Sep;143:107409. doi: 10.1016/j.ultras.2024.107409. Epub 2024 Jul 20.
COVID-19 pneumonia severity assessment is of great clinical importance, and lung ultrasound (LUS) plays a crucial role in aiding the severity assessment of COVID-19 pneumonia due to its safety and portability. However, its reliance on qualitative and subjective observations by clinicians is a limitation. Moreover, LUS images often exhibit significant heterogeneity, emphasizing the need for more quantitative assessment methods. In this paper, we propose a knowledge fused latent representation framework tailored for COVID-19 pneumonia severity assessment using LUS examinations. The framework transforms the LUS examination into latent representation and extracts knowledge from regions labeled by clinicians to improve accuracy. To fuse the knowledge into the latent representation, we employ a knowledge fusion with latent representation (KFLR) model. This model significantly reduces errors compared to approaches that lack prior knowledge integration. Experimental results demonstrate the effectiveness of our method, achieving high accuracy of 96.4 % and 87.4 % for binary-level and four-level COVID-19 pneumonia severity assessments, respectively. It is worth noting that only a limited number of studies have reported accuracy for clinically valuable exam level assessments, and our method surpass existing methods in this context. These findings highlight the potential of the proposed framework for monitoring disease progression and patient stratification in COVID-19 pneumonia cases.
COVID-19 肺炎严重程度评估具有重要的临床意义,由于其安全性和便携性,肺部超声(LUS)在辅助 COVID-19 肺炎严重程度评估方面发挥着至关重要的作用。然而,其对临床医生的定性和主观观察的依赖是一个局限性。此外,LUS 图像通常表现出显著的异质性,这强调了需要更定量的评估方法。在本文中,我们提出了一种针对 COVID-19 肺炎严重程度评估的知识融合潜在表示框架,该框架使用 LUS 检查将 LUS 检查转换为潜在表示,并从临床医生标记的区域中提取知识以提高准确性。为了将知识融合到潜在表示中,我们采用了知识融合与潜在表示(KFLR)模型。与缺乏先验知识整合的方法相比,该模型显著降低了错误率。实验结果表明了我们方法的有效性,分别实现了二进制级和四级 COVID-19 肺炎严重程度评估的高准确率 96.4%和 87.4%。值得注意的是,只有少数研究报告了对临床有价值的检查水平评估的准确性,而我们的方法在这方面超过了现有方法。这些发现突出了所提出的框架在 COVID-19 肺炎病例中监测疾病进展和患者分层的潜力。