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Interpretable and Reliable Oral Cancer Classifier with Attention Mechanism and Expert Knowledge Embedding via Attention Map.

Bofan SongChicheng ZhangSumsum SunnyDharma Raj KcShaobai LiKeerthi GurushanthPramila MendoncaNirza MukhiaSanjana PatrickShubha GurudathSubhashini RaghavanImchen TsusennaroShirley T LeivonTrupti KolurVivek ShettyVidya BushanRohan RameshVijay PillaiPetra Wilder-SmithAmritha SureshMoni Abraham KuriakosePraveen Birur NRongguang Liang
Published in: Cancers (2023)
Convolutional neural networks have demonstrated excellent performance in oral cancer detection and classification. However, the end-to-end learning strategy makes CNNs hard to interpret, and it can be challenging to fully understand the decision-making procedure. Additionally, reliability is also a significant challenge for CNN based approaches. In this study, we proposed a neural network called the attention branch network (ABN), which combines the visual explanation and attention mechanisms to improve the recognition performance and interpret the decision-making simultaneously. We also embedded expert knowledge into the network by having human experts manually edit the attention maps for the attention mechanism. Our experiments have shown that ABN performs better than the original baseline network. By introducing the Squeeze-and-Excitation (SE) blocks to the network, the cross-validation accuracy increased further. Furthermore, we observed that some previously misclassified cases were correctly recognized after updating by manually editing the attention maps. The cross-validation accuracy increased from 0.846 to 0.875 with the ABN (Resnet18 as baseline), 0.877 with SE-ABN, and 0.903 after embedding expert knowledge. The proposed method provides an accurate, interpretable, and reliable oral cancer computer-aided diagnosis system through visual explanation, attention mechanisms, and expert knowledge embedding.
Keyphrases
  • working memory
  • healthcare
  • decision making
  • convolutional neural network
  • deep learning
  • neural network
  • crispr cas
  • endothelial cells
  • high resolution
  • mass spectrometry
  • minimally invasive