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Example Citation/citation-example-research-doi (Narrative)

Clinical Decision Support Work GroupMaturity Level: N/AStandards Status: InformativeCompartments: No defined compartments

This is the narrative for the resource. See also the XML, JSON or Turtle format. This example conforms to the profile Citation.


Generated Narrative: Citation citation-example-research-doi

StructureDefinition Work Group: cds

identifier: FEvIR Object Identifier/60

name: NInFEACitation

title: NInFEA Citation

status: active

date: 2021-09-24T10:41:01.74Z

publisher: HL7 International / Clinical Decision Support

contact: http://www.hl7.org/Special/committees/dss

description:

A citation of a dataset

copyright:

https://creativecommons.org/licenses/by-nc-sa/4.0/

summary

style: as reported on PhysioNet

text:

Pani, D., Sulas, E., Urru, M., Sameni, R., Raffo, L., & Tumbarello, R. (2020). NInFEA: Non-Invasive Multimodal Foetal ECG-Doppler Dataset for Antenatal Cardiology Research (version 1.0.0). PhysioNet. https://doi.org/10.13026/c4n5-3b04.

summary

style: Computable Publishing

text:

NInFEA: Non-Invasive Multimodal Foetal ECG-Doppler Dataset for Antenatal Cardiology Research [Dataset], version 1.0.0. Contributors: Danilo Pani, Eleonora Sulas, Monica Urru, Reza Sameni, Luigi Raffo, Roberto Tumbarello. In: PhysioNet, DOI 10.13026/c4n5-3b04. Published November 12, 2020. Accessed March 17, 2021. Available at: https://physionet.org/content/ninfea/1.0.0/.

citedArtifact

identifier: https://doi.org/10.13026/c4n5-3b04

relatedIdentifier: https://doi.org/10.1038/s41597-021-00811-3

dateAccessed: 2021-03-17

Versions

-Value
* 1.0.0

Titles

-TypeLanguageText
* primary-human-use English

NInFEA: Non-Invasive Multimodal Foetal ECG-Doppler Dataset for Antenatal Cardiology Research

Abstracts

-TypeLanguageText
* Primary human use English

The development of algorithms for the extraction of the foetal ECG (fECG) from non-invasive recordings is hampered by the lack of publicly-available reference datasets, which could be used to benchmark different algorithms while providing a ground truth on the foetal heart activity when an invasive scalp lead is unavailable. By enriching the electrophysiological recordings with simultaneous multimodal signals, these datasets could also help the investigation of the foetal cardiac physiology, providing ground truth for the analysis in early pregnancy, when the fECG is not directly accessible. The Non-Invasive Multimodal Foetal ECG-Doppler Dataset for Antenatal Cardiology Research (NInFEA) is the first open-access dataset featuring simultaneous non-invasive electrophysiological recordings, fetal pulsed-wave Doppler (PWD) and maternal respiration signals. The dataset includes 60 entries from 39 voluntary pregnant women, between the 21st and the 27th week of gestation. Every entry is composed of 27 electrophysiological channels (2048 Hz, 22 bits, acquired by means of the TMSi Porti7 system), maternal respiration signal (through a resistive thoracic belt), synchronised foetal trans-abdominal PWD and clinical annotations provided by expert clinicians at the time of the signal collection.

relatesTo

type: derived-from

classifier: original publication

citation:

Sulas, E., Urru, M., Tumbarello, R., Raffo, L., Sameni, R., Pani, D., A non-invasive multimodal foetal ECG–Doppler dataset for antenatal cardiology research. Sci Data 8, 30 (2021). https://doi.org/10.1038/s41597-021-00811-3

Documents

-Url
* https://doi.org/10.1038/s41597-021-00811-3

relatesTo

type: depends-on

classifier: ontology

display: Experimental Factor Ontology

Documents

-Url
* http://data.bioontology.org/ontologies/EFO

publicationForm

PublishedIns

-TypeTitlePublisher
* Database PhysioNet MIT Laboratory for Computational Physiology

articleDate: 2020-11-12

language: English

copyright:

https://physionet.org/content/ninfea/view-license/1.0.0/ and https://physionet.org/content/ninfea/1.0.0/LICENSE.txt

webLocation

classifier: Webpage

url: https://physionet.org/content/ninfea/1.0.0/

webLocation

classifier: DOI Based

url: https://doi.org/10.13026/c4n5-3b04

webLocation

classifier: original publication

url: https://doi.org/10.1038/s41597-021-00811-3

webLocation

classifier: Compressed file

url: https://physionet.org/static/published-projects/ninfea/ninfea-non-invasive-multimodal-foetal-ecg-doppler-dataset-for-antenatal-cardiology-research-1.0.0.zip

webLocation

classifier: DOI-for-metadata

url: https://doi.org/10.6084/m9.figshare.13283492

classification

classifier: Knowledge Artifact Type, Dataset

classification

type: topic

classifier: ecg

classification

type: topic

classifier: foetus

classification

type: topic

classifier: pwd

classification

type: topic

classifier: doppler

classification

type: topic

classifier: foetal ecg

classification

type: topic

classifier: maternal ecg

classification

type: topic

classifier: pwd envelope

classification

type: topic

classifier: non-invasive

classification

type: topic

classifier: cardiology

classification

type: topic

classifier: early pregnancy

classification

type: topic

classifier: antenatal

classification

type: topic

classifier: fecg

classification

type: subject type

classifier: Homo sapiens

classification

type: use context

classifier: gestational age

classification

type: use context

classifier: electrocardiography

classification

type: use context

classifier: heart electrical impulse conduction trait

contributorship

summary

type: Author string

source: copied-from-article

value:

Danilo Pani, Eleonora Sulas, Monica Urru, Reza Sameni, Luigi Raffo, Roberto Tumbarello

summary

type: acknowledgements

source: copied-from-article

value:

The authors wish to thank the Pediatric Cardiology and Congenital Heart Disease Unit, Brotzu Hospital (Cagliari, Italy), where the dataset was collected, and all the voluntary pregnant women for their kindness in giving their signals for this research. The authors gratefully thank Alessandra Cadoni, Graziella Secchi, Luisa Aru, Elisa Farris, Chiara Fenu, Elisa Gusai, Giulia Baldazzi, Giulia Pili for their support in the recording of the signals included in this dataset. Part of this research was supported by the Italian Government—Progetti di InteresseNazionale (PRIN) under the grant agreement 2017RR5EW3 - ICT4MOMs project. Eleonora Sulas is grateful to Sardinia Regional Government for supporting her PhD scholarship (P.O.R.F.S.E., European Social Fund 2014-2020). Reza Sameni acknowledges the funding from the European Research Council Advanced Grant Number 320684, on Challenges in the Extraction and Separation of Sources (CHESS) for his contribution in this research, provided during his appointment at GIPSA-lab, Grenoble Alpes University, Grenoble, France.


 

 

Usage note: every effort has been made to ensure that the examples are correct and useful, but they are not a normative part of the specification.