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Combining Hough Transform and Deep Learning Approaches to Reconstruct ECG Signals From Printouts

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arxiv 2410.14185 v1 pith:TNOMJRC7 submitted 2024-10-18 cs.LG eess.IV

Combining Hough Transform and Deep Learning Approaches to Reconstruct ECG Signals From Printouts

classification cs.LG eess.IV
keywords signalschallengemodelsreconstructapproachapproachesdatadigitisation
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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This work presents our team's (SignalSavants) winning contribution to the 2024 George B. Moody PhysioNet Challenge. The Challenge had two goals: reconstruct ECG signals from printouts and classify them for cardiac diseases. Our focus was the first task. Despite many ECGs being digitally recorded today, paper ECGs remain common throughout the world. Digitising them could help build more diverse datasets and enable automated analyses. However, the presence of varying recording standards and poor image quality requires a data-centric approach for developing robust models that can generalise effectively. Our approach combines the creation of a diverse training set, Hough transform to rotate images, a U-Net based segmentation model to identify individual signals, and mask vectorisation to reconstruct the signals. We assessed the performance of our models using the 10-fold stratified cross-validation (CV) split of 21,799 recordings proposed by the PTB-XL dataset. On the digitisation task, our model achieved an average CV signal-to-noise ratio of 17.02 and an official Challenge score of 12.15 on the hidden set, securing first place in the competition. Our study shows the challenges of building robust, generalisable, digitisation approaches. Such models require large amounts of resources (data, time, and computational power) but have great potential in diversifying the data available.

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Cited by 2 Pith papers

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    PatchECG applies masked patch training and disordered attention to handle asynchronous and partially missing ECG signals from varied layouts, reaching average AUROC 0.835 on simulated conditions and 0.778 on real hosp...

  2. ECGLight: Compute-Light Framework For Paper ECG Digitization and Myocardial Infarction Screening

    cs.LG 2026-07 conditional novelty 4.0

    An end-to-end YOLOv11-based pipeline digitizes paper ECG images into calibrated 12-lead signals on CPU-only hardware in under 30 seconds and classifies myocardial infarction with up to 95.5% accuracy on PTB-XL and 88....