Fatih Bati’s research while affiliated with Samsun University and other places

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Publications (1)


Can deep learning effectively diagnose cardiac amyloidosis with 99mTc-PYP scintigraphy?
  • Article

November 2024

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43 Reads

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4 Citations

Journal of Radioanalytical and Nuclear Chemistry

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Fatih Bati

This study investigates the effectiveness of deep learning models in diagnosing cardiac amyloidosis using 99mTc-PYP scintigraphy. We evaluated more than 40 deep learning models, including both convolutional neural networks (CNNs) and Vision Transformer (ViT) models. The highest-performing model achieved 89.80% accuracy. The study highlights the potential of deep learning methods to improve diagnostic accuracy and reduce patient wait times. These results demonstrate the clinical value of deep learning models in early and accurate cardiac amyloidosis diagnosis, contributing to better patient outcomes and timely interventions.

Citations (1)


... However, classical CNN ignores the small and boundary region in several applications 29 . The ViT (Vision Transformer) and attention-based models that handle these challenges have been tested in medical domains and achieved satisfactory results [30][31][32] . In the proposed study, we design lightweight, explainable sequential CNN with label-guided attention (LWENet) for the mouth and oral cancer diagnosis. ...

Reference:

Explainable label guided lightweight network with axial transformer encoder for early detection of oral cancer
Can deep learning effectively diagnose cardiac amyloidosis with 99mTc-PYP scintigraphy?
  • Citing Article
  • November 2024

Journal of Radioanalytical and Nuclear Chemistry