Early autism diagnosis based on path signature and Siamese unsupervised feature compressor.

Journal: Cerebral cortex (New York, N.Y. : 1991)
Published Date:

Abstract

Autism spectrum disorder has been emerging as a growing public health threat. Early diagnosis of autism spectrum disorder is crucial for timely, effective intervention and treatment. However, conventional diagnosis methods based on communications and behavioral patterns are unreliable for children younger than 2 years of age. Given evidences of neurodevelopmental abnormalities in autism spectrum disorder infants, we resort to a novel deep learning-based method to extract key features from the inherently scarce, class-imbalanced, and heterogeneous structural MR images for early autism diagnosis. Specifically, we propose a Siamese verification framework to extend the scarce data, and an unsupervised compressor to alleviate data imbalance by extracting key features. We also proposed weight constraints to cope with sample heterogeneity by giving different samples different voting weights during validation, and used Path Signature to unravel meaningful developmental features from the two-time point data longitudinally. We further extracted machine learning focused brain regions for autism diagnosis. Extensive experiments have shown that our method performed well under practical scenarios, transcending existing machine learning methods and providing anatomical insights for autism early diagnosis.

Authors

  • Zhuowen Yin
    School of Electronics and Information Engineering, South China University of Technology, 510641 Guangzhou, Guangdong Province, China.
  • Xinyao Ding
    School of Electronics and Information Engineering, South China University of Technology, 510641 Guangzhou, Guangdong Province, China.
  • Xin Zhang
    First Department of Infectious Diseases, The First Affiliated Hospital of China Medical University, Shenyang, China.
  • Zhengwang Wu
    Department of Radiology and BRIC, University of North Carolina at Chapel Hill, Chapel Hill, NC, 27599, USA.
  • Li Wang
    College of Marine Electrical Engineering, Dalian Maritime University, Dalian, China.
  • Xiangmin Xu
  • Gang Li
    The Centre for Cyber Resilience and Trust, Deakin University, Australia.