The CirCor DigiScope Dataset: From Murmur Detection to Murmur
Classification
- URL: http://arxiv.org/abs/2108.00813v1
- Date: Mon, 2 Aug 2021 12:30:40 GMT
- Title: The CirCor DigiScope Dataset: From Murmur Detection to Murmur
Classification
- Authors: Jorge Oliveira, Francesco Renna, Paulo Dias Costa, Marcelo Nogueira,
Cristina Oliveira, Carlos Ferreira, Alipio Jorge, Sandra Mattos, Thamine
Hatem, Thiago Tavares, Andoni Elola, Ali Bahrami Rad, Reza Sameni, Gari D
Clifford, Miguel T. Coimbra
- Abstract summary: A total of 5282 recordings have been collected from the four main auscultation locations of 1568 patients.
For the first time, each cardiac murmur has been manually annotated by an expert annotator according to its timing, shape, pitch, grading and quality.
- Score: 5.879085008496386
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Cardiac auscultation is one of the most cost-effective techniques used to
detect and identify many heart conditions. Computer-assisted decision systems
based on auscultation can support physicians in their decisions. Unfortunately,
the application of such systems in clinical trials is still minimal since most
of them only aim to detect the presence of extra or abnormal waves in the
phonocardiogram signal. This is mainly due to the lack of large publicly
available datasets, where a more detailed description of such abnormal waves
(e.g., cardiac murmurs) exists. As a result, current machine learning
algorithms are unable to classify such waves.
To pave the way to more effective research on healthcare recommendation
systems based on auscultation, our team has prepared the currently largest
pediatric heart sound dataset. A total of 5282 recordings have been collected
from the four main auscultation locations of 1568 patients, in the process
215780 heart sounds have been manually annotated. Furthermore, and for the
first time, each cardiac murmur has been manually annotated by an expert
annotator according to its timing, shape, pitch, grading and quality. In
addition, the auscultation locations where the murmur is present were
identified as well as the auscultation location where the murmur is detected
more intensively.
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