PhysioNet/CinC Challenge 2014: Test Sets

This database holds the records used in the Physio\ Net/CinC Challenge 2014. See the page for more details.

Please cite the standard citation for PhysioNet when referencing this material:

Goldberger AL, Amaral LAN, Glass L, Hausdorff JM, Ivanov PCh, Mark RG, Mietus JE, Moody GB, Peng C-K, Stanley HE. PhysioBank, PhysioToolkit, and PhysioNet: Components of a New Research Resource for Complex Physiologic Signals. Circulation 101(23):e215-e220 [Circulation Electronic Pages;]; 2000 (June 13).

Data used for the 2014 Challenge are 10-minute (or occasionally shorter) excerpts ("records") of longer multiparameter recordings of human adults, including patients with a wide range of problems as well as healthy volunteers. Each record contains four to eight signals; the first is an ECG signal in each case, but the others are a variety of simultaneously recorded physiologic signals that may be useful for robust beat detection. Signals have been digitized at rates between 120 and 1000 samples per second; in any given record, however, all signals are sampled at the same, fixed frequency.

A training data set for this challenge is available for study. It is a set of 100 records, named 100, 101, ..., 199, and it is provided in the set-p directory. You may wish to explore these records visually using LightWAVE. This data set is also available for download as a zip archive and as a tarball.

A new augmented training set, consisting of 100 records from the original \ test set is available as annotations were not generated from any specific channel and there was no fixed fiducial point, since some of the annotations were placed manually. The annotations include only beat labels and do not differentiate between beat types (all annotated beats were arbitrarily set to normal, 'N' beats).

The training set includes many records that can be processed without errors by the sample entry using the ECG only, but others will pose serious difficulty unless your entry makes good use of available information in the other signals; a few of the difficult records are 112, 133, 169, and 188.

A set of reference beat annotations for the training set is also available: set-p-atr.tar.gz. In this Challenge, reference beat annotations represent the preponderance of expert opinions about the locations of the observed (or imputed) QRS complexes in the ECG signal.

A separate hidden test data set was assembled for evaluating Challenge entries. Performance of the challenge entries on this hidden test set determined their rankings and thus the winners of the Challenge. The test set is not available here.

Important differences between the training set and the test set: The training set was intended to give participants an opportunity to see some of the problems their entries would face in the challenge, and to give us a way to verify that submitted entries are working as their authors intended. The performance of challenge entries on the training set did not contribute in any way to their scores and ranks in the Challenge.

The test set contains a wider variety of signals than in the training set. A successful entry needed to be able to discover their relationships and exploit features that can predict beat locations. Unlike the training set (sampled at a uniform 250 samples per second per signal), signals in the test set were sampled at rates between 120 and 1000 samples per second.

Icon  Name                            Last modified      Size  Description
[DIR] Parent Directory - [   ] DOI 21-Sep-2015 13:00 19 [   ] set-p-atr.tar.gz 07-Jan-2014 19:07 75K [   ] set-p.tar.gz 03-Dec-2013 12:25 111M [   ] 03-Dec-2013 12:26 111M [DIR] set-p/ 07-Jan-2014 19:18 - [DIR] set-p2/ 03-Mar-2015 17:29 - [   ] 16-Jan-2015 14:59 113M

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Updated Friday, 28 October 2016 at 16:58 EDT

PhysioNet is supported by the National Institute of General Medical Sciences (NIGMS) and the National Institute of Biomedical Imaging and Bioengineering (NIBIB) under NIH grant number 2R01GM104987-09.