A quantitatively interpretable model for Alzheimer's disease prediction using deep counterfactuals.

Journal: NeuroImage
PMID:

Abstract

Deep learning (DL) for predicting Alzheimer's disease (AD) has provided timely intervention in disease progression yet still demands attentive interpretability to explain how their DL models make definitive decisions. Counterfactual reasoning has recently gained increasing attention in medical research because of its ability to provide a refined visual explanatory map. However, such visual explanatory maps based on visual inspection alone are insufficient unless we intuitively demonstrate their medical or neuroscientific validity via quantitative features. In this study, we synthesize the counterfactual-labeled structural MRIs using our proposed framework and transform it into a gray matter density map to measure its volumetric changes over the parcellated region of interest (ROI). We also devised a lightweight linear classifier to boost the effectiveness of constructed ROIs, promoted quantitative interpretation, and achieved comparable predictive performance to DL methods. Throughout this, our framework produces an "AD-relatedness index" for each ROI. It offers an intuitive understanding of brain status for an individual patient and across patient groups concerning AD progression.

Authors

  • Kwanseok Oh
    Department of Artificial Intelligence, Korea University, Seoul 02841, Republic of Korea.
  • Da-Woon Heo
    Department of Artificial Intelligence, Korea University, Seoul, Korea.
  • Ahmad Wisnu Mulyadi
  • Wonsik Jung
    Department of Brain and Cognitive Engineering, Korea University, Seoul 02841, Republic of Korea.
  • Eunsong Kang
    Department of Brain and Cognitive Engineering, Korea University, Republic of Korea.
  • Kun Ho Lee
    National Research Center for Dementia, Chosun University, Gwangju, Republic of Korea.
  • Heung-Il Suk
    Biomedical Research Imaging Center (BRIC) and Department of Radiology, University of North Carolina, Chapel Hill, NC, 27599, USA, hsuk@med.unc.edu.