Mmfc: Multi-Modal Fusion Cascade Framework For Covid-19 Disease Course Classification
Han Yang, Mengke Zhang, Lu Shen, Qiuli Wang, Wanqiu Cheng, Chen Liu, Minjian Hong
-
SPS
IEEE Members: $11.00
Non-members: $15.00Length: 00:04:18
Many deep learning methods have been proposed for the diagnosis of COVID-19 since the global pandemic. However, few studies have focused on the disease course classiªcation of COVID-19, which is crucial for radiologists to determine treatment plans. This paper proposes a Multi-Modal Fusion Cascade (MMFC) framework for this task, which can make the most of multi-modal information, including CT image and bio-information (laboratory examination, clinical characterization, etc.). The proposed framework consists of two parts: Bio-Visual Feature Learning Module (BFL) and Joint Decision Module (JD). Firstly, BFL learns the discriminative visual features from the mediastinal window with the assistance of bio-information. According to the ofªcial Treatment Protocol of China, the bio-information is chosen and helps the BFL better extract the images?? bio-visual features and then obtained a disease course classiªcation result based on CT images. Secondly, JD uses bio-information again and fuses the conªdence of BFL??s result to make the joint decision. Experimental results show that our framework signiªcantly improves accuracy and sensitivity compared to the baseline.