| Literature DB >> 35183463 |
Jiong Ye1, Chen Lei1, Zhenni Wei1, Yuqi Wang2, Houbing Zheng1, Meishui Wang3, Biao Wang4.
Abstract
The difficulty in determining which structures are crucial to ensure a natural-looking ear has been plaguing surgeons for many years. This preliminary study explores the feasibility of training convolutional neural network (CNN) models to evaluate a reconstructed auricle as accurate as a human would. By visualizing the attention of trained models, the criteria for the design of a natural-looking auricle can be established. A total of 400 pictures were evaluated by 20 volunteers, and 20 labeled datasets were generated, which were then used to train ResNet models that had been pre-trained on ImageNet. The saliency maps and occlusion maps of each trained model were calculated to capture the attention of models. The average accuracy of the 20 models was 0.8245 ± 0.0356 (>0.80), and the evaluation results of the trained model and the medical student showed a significant correlation (P < 0.05). For the attention visualization of auricles labeled as normal, distribution of the highlighted portions corresponded to a linear contour of the helix, the inferior crura of the antihelix, and the contour of the concha. A CNN can provide an evaluation of a reconstructed auricle in a manner similar to that of a medical student. Saliency maps generated by the CNN demonstrate the subjective view, which was consistent with professional opinion.Entities:
Keywords: Artificial intelligence; Convolutional neural; Microtia; Network; Reconstructed auricle; Saliency map
Mesh:
Year: 2022 PMID: 35183463 DOI: 10.1016/j.bjps.2022.01.037
Source DB: PubMed Journal: J Plast Reconstr Aesthet Surg ISSN: 1748-6815 Impact factor: 3.022