AI-Driven Hybrid CNN-Transformer Model for Detecting Cardiotoxicity in Cancer Chemotherapy Patients
Keywords:
Chemotherapy-Induced Cardiotoxicity, Temporal Dynamic Imaging, Vision Transformer, Swin Transformer, Deep Learning, Cardiac Motion AnalysisAbstract
irreversible cardiac dysfunction, making early and accurate detection crucial for
effective patient management. This work presents an AI-driven hybrid CNN
Transformer framework for automated CIC detection from echocardiography
data, formulated as a binary classification task between cardiotoxicity and non
cardiotoxicity cases. The model integrates convolutional neural networks for
discriminative spatial feature extraction with Transformer layers to capture
global and temporal cardiac motion patterns, enabling robust representation
learning without reliance on handcrafted features. Experimental evaluation
demonstrates an overall detection accuracy of 92.2%, achieving competitive
performance against recent deep learning approaches, including CoreEcho and
R3D Transformer models. The proposed framework also exhibits improved
generalization and computational efficiency, supporting scalability across
diverse clinical settings. Furthermore, the model’s automated design reduces
observer dependency and enhances diagnostic consistency. These results
highlight the potential of hybrid CNN–Transformer architectures for non
invasive, reliable, and early cardiotoxicity screening in real-world oncology
practice.
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