Department of Computer Applications, National Institute of Technology Raipur, Chhattisgarh, 492010, India.
Department of Biomedical Engineering, National Institute of Technology Raipur, Raipur, Chhattisgarh, India.
Med Biol Eng Comput. 2022 Sep;60(9):2549-2565. doi: 10.1007/s11517-022-02611-2. Epub 2022 Jul 2.
Automatic computer-aided diagnosis (CAD) system has been widely used as an assisting tool for mass screening and risk assessment of infectious pulmonary diseases (PDs). However, such a system still lacks clinical acceptability and trust due to the integration gap between the patient's metadata, radiologist feedback, and the CAD system. This paper proposed three integration frameworks, namely-direct integration (DI), rule-based integration (RBI), and weight-based integration (WBI). The proposed framework helps clinicians diagnose lung inflammation and provide an end-to-end robust diagnostic system. Initially, the feasibility of integrating patients' symptoms, clinical pathologies, and radiologist feedback with CAD system to improve the classification performance is investigated. Subsequently, the patient's metadata and radiologist feedback are integrated with the CAD system using the proposed integration frameworks. The proposed method's performance is evaluated using a private dataset consisting of 70 chest X-ray (CXR) images (31 COVID-19, 14 other diseases, and 25 normal). The obtained results reveal that the proposed WBI achieved the highest classification performance (accuracy = 98.18%, F score = 97.73%, and Matthew's correlation coefficient = 0.969) compared to DI and RI. The generalization capability of the proposed framework is also verified from an external validation set. Furthermore, the Friedman average ranking and Shaffer and Holm post hoc statistical methods reveal the obtained results' statistical significance. Methodological diagram of proposed integration frameworks.
自动计算机辅助诊断 (CAD) 系统已广泛用作传染病性肺病 (PD) 大规模筛查和风险评估的辅助工具。然而,由于患者元数据、放射科医生反馈和 CAD 系统之间的集成差距,此类系统仍然缺乏临床可接受性和信任。本文提出了三种集成框架,即直接集成 (DI)、基于规则的集成 (RBI) 和基于权重的集成 (WBI)。所提出的框架有助于临床医生诊断肺部炎症,并提供端到端的强大诊断系统。最初,研究了将患者症状、临床病理学和放射科医生反馈与 CAD 系统集成以提高分类性能的可行性。随后,使用所提出的集成框架将患者的元数据和放射科医生的反馈与 CAD 系统集成。使用包含 70 张胸部 X 光 (CXR) 图像的私有数据集 (31 例 COVID-19、14 例其他疾病和 25 例正常) 评估所提出方法的性能。结果表明,与 DI 和 RI 相比,所提出的 WBI 实现了最高的分类性能 (准确率 = 98.18%、F 分数 = 97.73%和马修相关系数 = 0.969)。还从外部验证集验证了所提出框架的泛化能力。此外,弗里德曼平均秩和谢弗和霍尔姆事后统计方法揭示了所得结果的统计学意义。所提出的集成框架的方法学示意图。