In this paper, through the study on the transformation of lung sound signal into image feature signal processing, we further mastered the processing process of lung sound signal, and used the new neural network model to identify and diagnose the image features of lung sound, effectively improving the effect of clinical AI-assisted diagnosis. To solve the problem that the traditional neural network model cannot obtain the temporal and spatial characteristics of lung sound signals at the same time, we propose a DCCLSTM (Dual-Channel Convolutional neural network for Long- and Short-Time Memory) to obtain spatial information and temporal information features of lung sound simultaneously. New features are generated by weighted fusion, which can effectively make up for the problem that the resolution of the feature map extracted by the traditional neural network model is reduced. This report presents the results of studies conducted on the lung sound dataset, and the accuracy rate of Dalal_CNN with the best effect was 89.56%. The DCCLSTM proposed in this study has a recognition accuracy of 97.40%. Experiments show that the DCCLSTM method is more accurate than the Dalal_CNN method.