A Contrastive Embedding-based Domain Adaptation method for Lung Sound Recognition in Children Community-Acquired Pneumonia
Dongmin Huang (Southern University of Science and Technology); Lingwei Wang (Shenzhen People's Hospital); Hongzhou Lu (Department of Infectious Diseases, Shanghai Public Health Clinical Center, Fudan University, Shanghai, China); Wenjin Wang (Southern University of Science and Technology)
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Lung sound analysis has been used for assessing the lung conditions of children with community-acquired pneumonia (CAP). However, the inconsistent data distribution, caused by the variable CAP symptoms changed with the different ages of children, limits the generalization ability of most diagnostic models. And data scarcity will further exacerbate this problem. Therefore, we propose a contrastive embedding-based domain adaptation network (CEDANN) to eliminate individual differences and alleviate data scarcity for improving the generalization ability. To eliminate individual differences, CEDANN forces the embedding layer to learn the subject-independent but task-dependent features by the adversarial learning between the domain classifier and the task classifier. For data scarcity, multiple contrast input tuples are constructed by combining different samples from different classes to increase input. The proposed method is evaluated on a multi-center clinical dataset. The subject-independent experiments show that CEDANN improves the sensitivity from 45.93\% to 59.06\% and the specificity from 35.07\% to 59.55\% in identifying CAP-confirmed, symptomatic relief, and recovery children. It demonstrates the effectiveness of CEDANN in children CAP diagnosis and prognosis.