Database Open Access

MIMIC-IV-ECG: Diagnostic Electrocardiogram Matched Subset

Brian Gow Tom Pollard Larry A Nathanson Alistair Johnson Benjamin Moody Chrystinne Fernandes Nathaniel Greenbaum Jonathan W Waks Parastou Eslami Tanner Carbonati Ashish Chaudhari Elizabeth Herbst Dana Moukheiber Seth Berkowitz Roger Mark Steven Horng

Published: Sept. 15, 2023. Version: 1.0


When using this resource, please cite: (show more options)
Gow, B., Pollard, T., Nathanson, L. A., Johnson, A., Moody, B., Fernandes, C., Greenbaum, N., Waks, J. W., Eslami, P., Carbonati, T., Chaudhari, A., Herbst, E., Moukheiber, D., Berkowitz, S., Mark, R., & Horng, S. (2023). MIMIC-IV-ECG: Diagnostic Electrocardiogram Matched Subset (version 1.0). PhysioNet. https://doi.org/10.13026/4nqg-sb35.

Please include the standard citation for PhysioNet: (show more options)
Goldberger, A., Amaral, L., Glass, L., Hausdorff, J., Ivanov, P. C., Mark, R., ... & Stanley, H. E. (2000). PhysioBank, PhysioToolkit, and PhysioNet: Components of a new research resource for complex physiologic signals. Circulation [Online]. 101 (23), pp. e215–e220.

Abstract

The MIMIC-IV-ECG module contains approximately 800,000 diagnostic electrocardiograms across nearly 160,000 unique patients. These diagnostic ECGs use 12 leads and are 10 seconds in length. They are sampled at 500 Hz. This subset contains all of the ECGs for patients who appear in the MIMIC-IV Clinical Database. When a cardiologist report is available for a given ECG, we provide the needed information to link the waveform to the report. The patients in MIMIC-IV-ECG have been matched against the MIMIC-IV Clinical Database, making it possible to link to information across the MIMIC-IV modules.


Background

An Electrocardiogram or ECG / EKG measures the electrical activity associated with the heart [1]. Diagnostic ECGs are a standard part of a patients care [2]. The standard ECG leads are denoted as lead I, II, III, aVF, aVR, aVL, V1, V2, V3, V4, V5, V6. They are routinely obtained when admitted to the Emergency Department or to a hospital floor. ECGs will typically be repeated for patients who exhibit cardiac symptoms such as chest pain or abnormal rhythms. Daily ECGs may be obtained following acute cardiovascular events such as myocardial infarction. Patients in the Intensive Care Unit (ICU) are continuously monitored to detect rhythm abnormalities, but full ECGs are needed to evaluate evidence of cardiac ischemia or infarction. However, diagnostic ECGs typically only comprise a small part of understanding the overall condition of a subject at the hospital. To fully understand how to best treat a given patient, a broader set of data is collected which may include: patient demographics, diagnosis, medications, lab tests, and additional information. This broader set of clinical information is shared as part of the MIMIC-IV Clinical Database [3]. The MIMIC-IV-ECG Matched Subset contains the vast majority of diagnostic ECGs collected between 2008 - 2019 for subjects in MIMIC-IV.


Methods

As part of routine care, diagnostic ECGs are collected across Beth Israel Deaconess Medical Center (BIDMC). Three types of information associated with an ECG are presented here. The electrocardiogram waveforms themselves, the machine measurements (ex: average RR interval as calculated by the machine), and the cardiologist reports. Identifiers connected to the ECGs allow this information to be connected back to the patients overall electronic health record. All of the information is de-identified to satisfy the US Health Insurance Portability and Accountability Act of 1996 (HIPAA) Safe Harbor requirements.

Electronic Health Record

Patients from the MIMIC-IV Clinical Database who had ECGs collected between 2008 - 2019 are included as part of MIMIC-IV-ECG. The diagnostic ECGs are collected on machines from various manufacturers including Burdick/Spacelabs, Philips, and General Electric. When the ECG is collected, the machine is populated with the patient's demographics and their medical record number (MRN).

As part of de-identification the raw identifiers are shifted. The patient's MRN was used to match a given 12-lead ECG record to the corresponding subject ID in the MIMIC-IV Clinical Database. As another part of the de-identification, the date-time information was shifted to obscure the actual date and time. Relative date-time information for a given subject is preserved though. The shifted date-times were matched against date-times in the subject's MIMIC-IV Clinical Database records. A unique study_id was generated for each record.

Electrocardiogram Waveforms

If a patient appears in the MIMIC-IV Clinical Database, all of their available ECG waveforms were pulled. This includes ECGs from the BIDMC emergency department, hospital (including the ICU), and outpatient care centers. We converted the ECGs from the manufacturers format to the open WFDB format 16 [4] with each WFDB record comprised of a header (.hea) file and a signal (.dat) file. The files were then transferred from BIDMC to MIT for additional processing.

We scrubbed the WFDB header files for PHI such that only the signal information, subject ID, and shifted date-time are provided. Timestamps for events in the MIMIC-IV Clinical Database, such as drug administration, are aligned with the timestamps in MIMIC-IV-ECG. However, some of the diagnostic ECGs provided here were collected outside of ED or ICU visits at the hospital. Since the MIMIC-IV Clinical Database is comprised solely of ED and ICU data, the ECG timestamp can occur before or after a visit from the clinical database.

Machine Measurements

The ECG machine generates summary reports and summary measures (ex: RR interval, QRS onset and end, etc.) for each diagnostic ECG. We collectively refer to these as machine measurements. The machine output is parsed and any PHI is removed. In particular, the MRN is shifted to subject_id, the de-identified study_id is assigned in a manner consistent with the ECG waveform files, and the raw Cart ID is randomly shifted to create a de-identified cart_id. There was no PHI in the report lines. 

The global machine measures are provided in this release. These global measures are calculated across all 12 leads. Machine measurements for individual leads may be released in a future version of this project. 

Cardiologist Reports

Most ECG waveforms get read by a cardiologist and an associated report is generated from the reading. We provide information for linking a waveform with its associated report where available. 

The de-identified free-text notes from these ECG reports will be made available as part of the MIMIC-IV-Note module [5] at a later time. These ECG reports are de-identified using a rule-based approach [6, 7, 8], similar to that used for other MIMIC reports.


Data Description

Electrocardiogram Waveforms

Approximately 800,000 ten-second-long 12 lead diagnostic ECGs across nearly 160,000 unique subjects are provided in the MIMIC-IV-ECG module. Around 5% of the available diagnostic ECGs were withheld from this release so they can be used as a hidden test set in workshops and challenges. The ECGs are sampled at 500 Hz. The patients in this module have been matched with the MIMIC-IV Clinical Database. Many of the provided diagnostic ECGs overlap with a MIMIC-IV hospital or emergency department stay but a number of them do not overlap. Approximately 55% of the ECGs overlap with a hospital admission and 25% overlap with an emergency department visit.

The ECGs are grouped into subdirectories based on subject_id. Each DICOM record path follows the pattern: files/pNNNN/pXXXXXXXX/sZZZZZZZZ/ZZZZZZZZ, where:

  • NNNN is the first four characters of the subject_id,
  • XXXXXXXX is the subject_id,
  • ZZZZZZZZ is the study_id

An example of the file structure is as follows:

files
├── p1000
|   └── p10001725
|       └── s41420867
|           ├── 41420867.dat
|           └── 41420867.hea
└── p1002
    └── p10023771
        ├── s42745010
        │   ├── 42745010.dat
        │   └── 42745010.hea
        ├── s46989724
        │   ├── 46989724.dat
        │   └── 46989724.hea
        └── s42460255
            ├── 42460255.dat
            └── 42460255.hea

Above we find two subjects p10001725 (under the p1000 group level directory) and p10023771 (under the p1002 group level directory). For subject p10001725 we find one study: s41420867. For p10023771 we find three studies: s42745010, s46989724, s42460255. The study identifiers are completely random, and their order has no implications for the chronological order of the actual studies. Each study has a like named .hea and .dat file, comprising the WFDB record. 

The record_list.csv file contains the file name and path for each WFDB record. It also provides the corresponding subject ID and study ID. The subject ID can be used to link a subject from MIMIC-IV-ECG to the other modules in the MIMIC-IV Clinical Database. 

Machine Measurements

Machine measurements for each ECG waveform are provided in the machine_measurements.csv file. A data dictionary provides a description for each of the columns in machine_measurements_data_dictionary.csv. The machine measurements table provides the machine generated reports in columns report_0..report_17. The report lines are provided as generated by the machine. In some cases there will be a column with no text in between columns with text (ex: report_0: <text_a>, report_1: empty, report_2: <text_b>). In addition to the summary measurements (rr_interval, qrs_onset, qrs_end, etc.) columns for the machine's bandwidth and filter settings (filtering) are provided. A cart_id is provided which can be used to track which machine was used for a given ECG. Finally, the subject_id, study_id, and ecg_time are provided, consistent with the ECG waveform files themselves. 

Cardiologist Reports 

A little more than 600,000 cardiologist reports are available for the ~800,000 diagnostic ECGs. Not all diagnostic ECGs get read by a cardiologist. This is the primary reason that there are fewer reports than waveforms.

The waveform_note_links.csv table provides a note_id for the associated ECG waveform. This note_id can be used to link between a waveform and the free-text note in the MIMIC-IV-Note module. Each note_id is composed of the subject ID, the abbreviation for the domain (EK) that the report comes from, and a sequential integer. The sequential integer is also listed in its own column, note_seq, and can be used to decipher the order in which ECGs were collected for a given subject across all of their visits. This table also contains the subject ID, study ID, and waveform path.

BigQuery

The information from the record_list.csv, machine_measurements.csv, and waveform_note_links.csv tables are available on BigQuery [9].


Usage Notes

This module provides MIMIC-IV users an additional, potentially important piece of information for their research using MIMIC. 

There are some limitations with this dataset. The date and time for each ECG were recorded by the machine's internal clock, which in most cases was not synchronized with any external time source. As a result, the ECG time stamps could be significantly out of sync with the corresponding time stamps in the MIMIC-IV Clinical Database, MIMIC-IV Waveform Database, or other modules in MIMIC-IV. An additional limitation, as noted above, is that some of the ECGs provided here were collected outside of the ED and ICU. This means that the timestamps for those ECGs won't overlap with data from the MIMIC-IV Clinical Database.

The signals can be viewed in Lightwave by clicking the Visualize waveforms links in the Files section below. Additionally, the signals can be read by using the WFDB toolboxes provided on PhysioNet: WFDB (in C) [10], WFDB-Matlab [11], and WFDB-Python [12]. Here is a basic script for reading a downloaded record from this project and plotting it by using the WFDB-Python toolbox:


import wfdb 
rec_path = '/files/p1000/p10001725/s41420867/41420867' 
rd_record = wfdb.rdrecord(rec_path) 
wfdb.plot_wfdb(record=rd_record, figsize=(24,18), title='Study 41420867 example', ecg_grids='all')

where rec_path is the path to the name of the .hea and .dat files for the record you'd like to plot.

Here we provide an example of how subject p10023771 from MIMIC-IV-ECG can be linked to their admission information in the MIMIC-IV Clinical Database.  Executing this from BigQuery:

SELECT * FROM `physionet-data.mimiciv_hosp.admissions` WHERE subject_id=10023771

we see that the patient only has one admission to the hospital with an admittime = 2113-08-25T07:15:00 and a dischtime = 2113-08-30T14:15:00. We also need to check to see if they were seen in the emergency department and not admitted to the hospital:

SELECT * FROM `physionet-data.mimiciv_ed.edstays` WHERE subject_id = 10023771

We observe that they did not have a stay in the emergency department.

Next, we get the timestamps from the diagnostic ECGs by checking the base_date and base_time variables. These are the variables used in the WFDB format for storing date and time. They correspond with the timestamps for the diagnostic ECGs that are provided in the summary tables. We then save the result to a csv file:


from pathlib import Path
import pandas as pd

import wfdb

# get the path to all the study .hea files for p10023771
paths = list(Path("p10023771/.").rglob("*.hea"))

# get date and time for each study
date_times = {'study':[],'date':[],'time':[]} # use a dictionary to store the date and time for each study
for file in paths:
    study = file.stem
    metadata = wfdb.rdheader(f'{file.parent}/{file.stem}')
    date_times['study'].append(study)
    date_times['date'].append(metadata.base_date)
    date_times['time'].append(metadata.base_time)

df_date_times = pd.DataFrame(data=date_times)
df_date_times.to_csv('p10023771_date_times.csv', index=False)

We observe the following for the 3 diagnostic ECGs for p10023771

study datetime
42745010 2110-07-23T08:43
46989724 2113-08-19T07:18
42460255 2113-08-25T13:58

where the date is given before the T as YYYY-MM-DD and the time is given after the T as HH:MM. Comparing this to the subjects admission in the MIMIC-IV Clinical Database:

admittime dischtime
2113-08-25T07:15 2113-08-30T14:15

we observe that s42745010 and s46989724 occurred prior to their only hospital admission while s42460255 occurred during their hospital admission. 

We can also check the available cardiologist reports for this subject by running this command in BigQuery:


SELECT * FROM `lcp-consortium.mimic_ecg.reports` WHERE subject_id = 10023771

We find that there are cardiologist reports available for s46989724 and s42460255 but not s42745010. Please note that only members who are part of our consortium can access the cardiologist reports / notes from lcp-consortium on BigQuery.


Release Notes

MIMIC-IV-ECG v1.0

This release removes the sensitive information (i.e. free-text note) from the cardiologist reports. We now simply provide information for linking between the waveforms in this module and their associated free-text note in MIMIC-IV-Note module. Since that sensitive information has been removed, the project access has been changed to open instead of requiring credentialling. 


Ethics

The project was approved by the Institutional Review Boards of Beth Israel Deaconess Medical Center (Boston, MA) and the Massachusetts Institute of Technology (Cambridge, MA). Requirement for individual patient consent was waived because the project did not impact clinical care and all protected health information was deidentified.


Acknowledgements

SH, RM, BG, DM, and TP are funded by the Massachusetts Life Sciences Center, Nov. 30, 2020. NG is supported by National Institutes of Health National Library of Medicine Biomedical Informatics and Data Science Research Training Program under grant number T15LM007092-30. BG, TP, AJ, BM, CF, DM, and RM are supported by the National Institute of Biomedical Imaging and Bioengineering (NIBIB) under NIH grant number R01EB030362.


Conflicts of Interest

The author(s) have no conflicts of interest to declare.


References

  1. Geselowitz DB. On the theory of the electrocardiogram. Proceedings of the IEEE. 1989 Jun;77(6):857-76.
  2. Harris PR. The Normal electrocardiogram: resting 12-Lead and electrocardiogram monitoring in the hospital. Critical Care Nursing Clinics. 2016 Sep 1;28(3):281-96.
  3. Johnson, A., Bulgarelli, L., Pollard, T., Horng, S., Celi, L. A., & Mark, R. (2021). MIMIC-IV (version 1.0). PhysioNet. https://doi.org/10.13026/s6n6-xd98.
  4. Documentation for the Waveform Database (WFDB) file format. https://wfdb.io/ [Accessed 21 June 2022]
  5. Johnson, A., Pollard, T., Horng, S., Celi, L. A., & Mark, R. (2023). MIMIC-IV-Note: Deidentified free-text clinical notes (version 2.2). PhysioNet. https://doi.org/10.13026/1n74-ne17.
  6. Margaret Douglass, Computer-assisted de-identification of free-text nursing notes. Master's Thesis, 2005. MIT.
  7. Neamatullah, I., Douglass, M.M., Lehman, L.H., Reisner, A., Villarroel, M., Long, W.J., Szolovits, P., Moody, G.B., Mark, R.G., Clifford, G.D. (2007). De-Identification Software Package (version 1.1). PhysioNet. doi:10.13026/C20M3F
  8. Neamatullah I, Douglass MM, Lehman LH, Reisner A, Villarroel M, Long WJ, Szolovits P, Moody GB, Mark RG, Clifford GD. Automated de-identification of free-text medical records. BMC medical informatics and decision making. 2008 Dec;8(1):1-7. doi:10.1186/1472-6947-8-32
  9. Documentation about using the Medical Information Mart for Intensive Care (MIMIC) Database with Google BigQuery. https://mimic.mit.edu/docs/gettingstarted/cloud/ [Accessed 21 June 2022]
  10. Documentation for the Waveform Database (WFDB) toolbox in C. https://physionet.org/content/wfdb/10.7.0/ [Accessed 21 June 2022]
  11. Documentation for the Waveform Database (WFDB) toolbox for Matlab. https://physionet.org/content/wfdb-matlab/0.10.0/ [Accessed 21 June 2022]
  12. Documentation for the Waveform Database (WFDB) toolbox for Python. https://physionet.org/content/wfdb-python/3.4.1/ [Accessed 21 June 2022]

Parent Projects
MIMIC-IV-ECG: Diagnostic Electrocardiogram Matched Subset was derived from: Please cite them when using this project.
Share
Access

Access Policy:
Anyone can access the files, as long as they conform to the terms of the specified license.

License (for files):
Open Data Commons Open Database License v1.0

Discovery
Corresponding Author
You must be logged in to view the contact information.
Versions
  • 0.1 - Dec. 23, 2022
  • 0.2 - Feb. 8, 2023
  • 0.3 - July 21, 2023
  • 1.0 - Sept. 15, 2023

Files

Total uncompressed size: 90.4 GB.

Access the files

Visualize waveforms

Folder Navigation: <base>/files/p1714
Name Size Modified
Parent Directory
p17140033
p17140035
p17140082
p17140226
p17140300
p17140424
p17140440
p17140468
p17140483
p17140584
p17140638
p17140859
p17140940
p17140947
p17141034
p17141176
p17141347
p17141395
p17141412
p17141575
p17141595
p17141628
p17141671
p17141791
p17141849
p17142078
p17142154
p17142218
p17142246
p17142269
p17142330
p17142403
p17142657
p17142694
p17142713
p17142761
p17142794
p17143033
p17143141
p17143188
p17143191
p17143325
p17143462
p17143480
p17143485
p17143518
p17143839
p17143905
p17143986
p17143991
p17144015
p17144048
p17144096
p17144098
p17144100
p17144151
p17144199
p17144210
p17144372
p17144489
p17144595
p17144691
p17144699
p17144802
p17144824
p17144845
p17144872
p17144897
p17145022
p17145056
p17145082
p17145096
p17145362
p17145400
p17145418
p17145422
p17145454
p17145467
p17145502
p17145519
p17145539
p17145543
p17145617
p17145683
p17145765
p17145830
p17145854
p17145895
p17145985
p17146084
p17146290
p17146365
p17146388
p17146417
p17146444
p17146734
p17146782
p17146833
p17146836
p17147036
p17147039
p17147107
p17147123
p17147147
p17147196
p17147209
p17147211
p17147257
p17147304
p17147355
p17147399
p17147475
p17147727
p17147776
p17147801
p17147859
p17147872
p17147885
p17148119
p17148120
p17148127
p17148159
p17148283
p17148302
p17148323
p17148407
p17148408
p17148472
p17148506
p17148608
p17148665
p17148881
p17148940
p17149055
p17149199
p17149214
p17149271
p17149469
p17149495
p17149858
RECORDS (download) 19.8 KB 2023-08-27