Domain adaptation based on rough adjoint inconsistency and optimal transport for identifying autistic patients

Comput Methods Programs Biomed. 2022 Mar:215:106615. doi: 10.1016/j.cmpb.2021.106615. Epub 2022 Jan 2.

Abstract

Background and objective: Computer aided diagnosis technology has been widely used to diagnose autism spectrum disorder (ASD) from neural images. The performance of the model usually depends largely on a sufficient number of training samples that reflect the real sample distribution. Due to the lack of labelled neural images data, multisite data are often pooled together to expand the sample size. However, the heterogeneity among sites will inevitably lead to a decline in the generalization of models. To solve this problem, we propose a multisource unsupervised domain adaptation method using rough adjoint inconsistency and optimal transport.

Methods: First, we define the concept of rough adjoint inconsistency and propose a double quantization method based on rough adjoint inconsistency and Dempster-Shafer (D-S) evidence theory to estimate the weight coefficient of each source domain to accurately describe the importance of each source domain to the target domain. Second, using optimal transport theory, we weaken the data distribution differences between domains and solve the problem of class imbalance by adjusting the sampling weights among classes.

Results: The ASD recognition accuracy of the proposed method is improved on all eight tasks, which are 70.67%, 64.86%, 62.50%, 70.80%, 73.08%, 71.19%, 75.41% and 75.76%, respectively. Our proposed model achieves superior performance compared to traditional machine learning methods and other recently proposed deep learning model.

Conclusions: Our method demonstrates that the fusion of rough adjoint inconsistency and optimal transport can be a powerful tool for identifying ASD and quantifying the correlations between domains.

Keywords: Autism spectrum disorder; Domain adaptation; Optimal transport; Rough adjoint inconsistency.

MeSH terms

  • Autism Spectrum Disorder* / diagnosis
  • Autistic Disorder* / diagnosis
  • Diagnosis, Computer-Assisted
  • Humans
  • Machine Learning