Published October 7, 2021 | Version v2
Dataset Open

Assessment of Non-Invasive Blood Pressure Prediction from PPG and rPPG Signals Using Deep Learning

  • 1. Laboratory for Biosignal Processing, Leipzig University of Applied Sciences
  • 2. Department of Orthopaedics, Trauma and Plastic Surgery, University of Leipzig Medical Center

Description

This dataset is a subset of the MIMIC-III dataset used for non-invasive blood pressure prediction. PPG and ABP data were divided into windows of  7s length (875 data points). Systolic and diastolic blood pressure values were derived from the ABP windows. Each sample of the dataset consists of a PPG signal and blood pressure values as well as a unique subject identifier.  The file consists of three datasets:

  • PPG: PPG data of size 905,400 x 875
  • label: BP data of size 905,400 x 2
  • subject_idx: subject affiliation of each sample (size 905,400 x 1)

Furthermore, this submission contains the following models:

  • AlexNet
  • ResNet50
  • LSTM
  • Architecture published by Slapnicar et al. 2019

The architectures were trained using a non-mixed dataset derived from the MIMIC-III waveform database. Samples were divided between training, validation and test set based on their subject affiliation preventing contamination of validation and test sets with samples from subjects used for training.

Files

Files (32.8 GB)

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md5:8d2d8fad06df2eabffc645aef449b8c4
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md5:189bc9c1e6b946a0b91f936a07848801
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Additional details

Related works

Cites
Journal article: 10.3390/s19153420 (DOI)
Is derived from
Journal article: 10.1038/sdata.2016.35 (DOI)
Is documented by
Journal article: 10.3390/s21186022 (DOI)