Automated Medical Report Generation for ECG Data: Bridging Medical Text and Signal Processing with Deep Learning
- URL: http://arxiv.org/abs/2412.04067v1
- Date: Thu, 05 Dec 2024 11:05:12 GMT
- Title: Automated Medical Report Generation for ECG Data: Bridging Medical Text and Signal Processing with Deep Learning
- Authors: Amnon Bleich, Antje Linnemann, Bjoern H. Diem, Tim OF Conrad,
- Abstract summary: We introduce an encoder-decoder-based method that uses free-text reports to train models to generate detailed descriptions of ECG episodes.
This represents a significant advancement in ECG analysis automation, with potential applications in zero-shot classification and automated clinical decision support.
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- Abstract: Recent advances in deep learning and natural language generation have significantly improved image captioning, enabling automated, human-like descriptions for visual content. In this work, we apply these captioning techniques to generate clinician-like interpretations of ECG data. This study leverages existing ECG datasets accompanied by free-text reports authored by healthcare professionals (HCPs) as training data. These reports, while often inconsistent, provide a valuable foundation for automated learning. We introduce an encoder-decoder-based method that uses these reports to train models to generate detailed descriptions of ECG episodes. This represents a significant advancement in ECG analysis automation, with potential applications in zero-shot classification and automated clinical decision support. The model is tested on various datasets, including both 1- and 12-lead ECGs. It significantly outperforms the state-of-the-art reference model by Qiu et al., achieving a METEOR score of 55.53% compared to 24.51% achieved by the reference model. Furthermore, several key design choices are discussed, providing a comprehensive overview of current challenges and innovations in this domain. The source codes for this research are publicly available in our Git repository https://git.zib.de/ableich/ecg-comment-generation-public
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