Abstract:Abstract:Autosegmentation of the knee joint in magnetic resonance (MR) images is significant for clinical requirements. However, it is challenging due to that the segmentation targets have dramatically different sizes. In this study, an endtoend DRD UNet is proposed, which is based on the deep learningframework. Theresidualmodule isused asthebasic modulein theUNetmodel, whichincreasestheabilityof reusingfeature maps. Theparalleldilated convolution modulesareusedtoachieve differentreceptivefields,which can overcomethe limitations of single receptive field in the UNet model and effectively improve the segmentation capability with targets of different sizes. The multioutput fusion deep supervision module is designed to directly utilize the feature maps of different levels. In this way, the information complementarity is obtained, the consistency and accuracy of the segmented regions are improved. The proposed algorithm is evaluated by using the public OAIZIB data set. The average segmented surface distance is 02 mm, the root mean square surface distance is 043 mm, the Hausdorff distance is 522 mm, the average dice similarity coefficient (DSC) is 9305%, and the volume overlap error is 386%. Compared with the conventional UNet and other currently available models, the proposed DRD UNet has better segmentation accuracy.