Li Ying, Huang Wen-Cong, Song Pei-Hua
Guangxi Key Laboratory of Human-machine Interaction and Intelligent Decision, School of Logistics Management and Engineering, Nanning Normal University, Nanning, China.
Department of Sports and Health, Guangxi College for Preschool Education, Nanning, China.
Front Psychol. 2023 Aug 31;14:1226470. doi: 10.3389/fpsyg.2023.1226470. eCollection 2023.
Autism spectrum disorder (ASD) is a neurodevelopmental disorder, which seriously affects children's normal life. Screening potential autistic children before professional diagnose is helpful to early detection and early intervention. Autistic children have some different facial features from non-autistic children, so the potential autistic children can be screened by taking children's facial images and analyzing them with a mobile phone. The area under curve (AUC) is a more robust metrics than accuracy in evaluating the performance of a model used to carry out the two-category classification, and the AUC of the deep learning model suitable for the mobile terminal in the existing research can be further improved. Moreover, the size of an input image is large, which is not fit for a mobile phone. A deep transfer learning method is proposed in this research, which can use images with smaller size and improve the AUC of existing studies. The proposed transfer method uses the two-phase transfer learning mode and the multi-classifier integration mode. For MobileNetV2 and MobileNetV3-Large that are suitable for a mobile phone, the two-phase transfer learning mode is used to improve their classification performance, and then the multi-classifier integration mode is used to integrate them to further improve the classification performance. A multi-classifier integrating calculation method is also proposed to calculate the final classification results according to the classifying results of the participating models. The experimental results show that compared with the one-phase transfer learning, the two-phase transfer learning can significantly improve the classification performance of MobileNetV2 and MobileNetV3-Large, and the classification performance of the integrated classifier is better than that of any participating classifiers. The accuracy of the integrated classifier in this research is 90.5%, and the AUC is 96.32%, which is 3.51% greater than the AUC (92.81%) of the previous studies.
自闭症谱系障碍(ASD)是一种神经发育障碍,严重影响儿童的正常生活。在专业诊断之前对潜在自闭症儿童进行筛查有助于早期发现和早期干预。自闭症儿童与非自闭症儿童在面部特征上存在一些差异,因此可以通过拍摄儿童面部图像并使用手机进行分析来筛查潜在自闭症儿童。曲线下面积(AUC)在评估用于进行二类分类的模型性能时是比准确率更稳健的指标,现有研究中适用于移动终端的深度学习模型的AUC还有进一步提升的空间。此外,输入图像尺寸较大,不适合手机使用。本研究提出一种深度迁移学习方法,该方法可以使用尺寸较小的图像并提高现有研究的AUC。所提出的迁移方法采用两阶段迁移学习模式和多分类器集成模式。对于适用于手机的MobileNetV2和MobileNetV3-Large,使用两阶段迁移学习模式来提高它们的分类性能,然后使用多分类器集成模式将它们集成以进一步提高分类性能。还提出一种多分类器集成计算方法,根据参与模型的分类结果计算最终分类结果。实验结果表明,与一阶段迁移学习相比,两阶段迁移学习可以显著提高MobileNetV2和MobileNetV3-Large的分类性能,并且集成分类器的分类性能优于任何参与的分类器。本研究中集成分类器的准确率为90.5%,AUC为96.32%,比之前研究的AUC(92.81%)高出3.51%。