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Text-to-ECG: 12-Lead Electrocardiogram Synthesis conditioned on Clinical Text Reports

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arxiv 2303.09395 v1 pith:NQEVGQAK submitted 2023-03-09 cs.CL cs.LGeess.SP

Text-to-ECG: 12-Lead Electrocardiogram Synthesis conditioned on Clinical Text Reports

classification cs.CL cs.LGeess.SP
keywords leadmodelsclinicaldiagnosisecgsmodeltextclasses
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Electrocardiogram (ECG) synthesis is the area of research focused on generating realistic synthetic ECG signals for medical use without concerns over annotation costs or clinical data privacy restrictions. Traditional ECG generation models consider a single ECG lead and utilize GAN-based generative models. These models can only generate single lead samples and require separate training for each diagnosis class. The diagnosis classes of ECGs are insufficient to capture the intricate differences between ECGs depending on various features (e.g. patient demographic details, co-existing diagnosis classes, etc.). To alleviate these challenges, we present a text-to-ECG task, in which textual inputs are used to produce ECG outputs. Then we propose Auto-TTE, an autoregressive generative model conditioned on clinical text reports to synthesize 12-lead ECGs, for the first time to our knowledge. We compare the performance of our model with other representative models in text-to-speech and text-to-image. Experimental results show the superiority of our model in various quantitative evaluations and qualitative analysis. Finally, we conduct a user study with three board-certified cardiologists to confirm the fidelity and semantic alignment of generated samples. our code will be available at https://github.com/TClife/text_to_ecg

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