ECGProcess
ECGProcess is a Python library for reading, processing, and exporting electrocardiogram (ECG) data. It provides a unified interface for extracting waveform signals and clinical metadata from heterogeneous ECG file formats, including XML and DICOM, and mapping them to formats suitable for downstream quality control, statistical analysis, or machine learning pipelines.
Data extraction is driven by user-supplied tab-delimited configuration
files that define which signals and metadata fields to retrieve, without
requiring changes to library code. The processing pipeline can be readily
augmented with user supplied engineering functions, to for example allow
for signal resampling or derivation of augmented leads. Processed data
can be exported as pandas DataFrames, NumPy arrays, or TensorFlow
tf.data.Dataset objects, supporting both in-memory and chunked on-disk
workflows.
Additionally, the module provides a flexible plotting API built on top of matplotlib. This can be used for research illustrations as well as to mimic clinical ECG prints. These can be written to disk as illustrations or as numpy arrays (e.g. relevant for imaging based machine learning).
Installation
To install the package from PyPI, run:
pip install ecgprocess
or instead using conda:
conda install afschmidt::ecgprocess
Documentation
Examples
Additional documentation
Project admin