IVCVNov 9, 2021

Bilinear pooling and metric learning network for early Alzheimer's disease identification with FDG-PET images

arXiv:2111.04985v12 citations
Originality Incremental advance
AI Analysis

This work addresses the challenge of distinguishing hard samples in early Alzheimer's disease diagnosis for medical imaging applications, representing an incremental improvement over existing methods.

The paper tackled the problem of identifying early and late mild cognitive impairment (EMCI and LMCI) from FDG-PET images, which is insufficiently studied, by proposing a bilinear pooling and metric learning network (BMNet) that improved specificity by 6.38% and negative predictive value by 3.45% in classification tasks.

FDG-PET reveals altered brain metabolism in individuals with mild cognitive impairment (MCI) and Alzheimer's disease (AD). Some biomarkers derived from FDG-PET by computer-aided-diagnosis (CAD) technologies have been proved that they can accurately diagnosis normal control (NC), MCI, and AD. However, the studies of identification of early MCI (EMCI) and late MCI (LMCI) with FDG-PET images are still insufficient. Compared with studies based on fMRI and DTI images, the researches of the inter-region representation features in FDG-PET images are insufficient. Moreover, considering the variability in different individuals, some hard samples which are very similar with both two classes limit the classification performance. To tackle these problems, in this paper, we propose a novel bilinear pooling and metric learning network (BMNet), which can extract the inter-region representation features and distinguish hard samples by constructing embedding space. To validate the proposed method, we collect 998 FDG-PET images from ADNI. Following the common preprocessing steps, 90 features are extracted from each FDG-PET image according to the automatic anatomical landmark (AAL) template and then sent into the proposed network. Extensive 5-fold cross-validation experiments are performed for multiple two-class classifications. Experiments show that most metrics are improved after adding the bilinear pooling module and metric losses to the Baseline model respectively. Specifically, in the classification task between EMCI and LMCI, the specificity improves 6.38% after adding the triple metric loss, and the negative predictive value (NPV) improves 3.45% after using the bilinear pooling module.

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