BIMCV COVID-19+: a large annotated dataset of RX and CT images from
COVID-19 patients
- URL: http://arxiv.org/abs/2006.01174v3
- Date: Fri, 5 Jun 2020 12:53:43 GMT
- Title: BIMCV COVID-19+: a large annotated dataset of RX and CT images from
COVID-19 patients
- Authors: Maria de la Iglesia Vay\'a, Jose Manuel Saborit, Joaquim Angel
Montell, Antonio Pertusa, Aurelia Bustos, Miguel Cazorla, Joaquin Galant,
Xavier Barber, Domingo Orozco-Beltr\'an, Francisco Garc\'ia-Garc\'ia, Marisa
Caparr\'os, Germ\'an Gonz\'alez and Jose Mar\'ia Salinas
- Abstract summary: This first iteration of the database includes 1,380 CX, 885 DX and 163 CT studies from 1,311 COVID-19+ patients.
This is, to the best of our knowledge, the largest COVID-19+ dataset of images available in an open format.
- Score: 2.927469685126833
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: This paper describes BIMCV COVID-19+, a large dataset from the Valencian
Region Medical ImageBank (BIMCV) containing chest X-ray images CXR (CR, DX) and
computed tomography (CT) imaging of COVID-19+ patients along with their
radiological findings and locations, pathologies, radiological reports (in
Spanish), DICOM metadata, Polymerase chain reaction (PCR), Immunoglobulin G
(IgG) and Immunoglobulin M (IgM) diagnostic antibody tests. The findings have
been mapped onto standard Unified Medical Language System (UMLS) terminology
and cover a wide spectrum of thoracic entities, unlike the considerably more
reduced number of entities annotated in previous datasets. Images are stored in
high resolution and entities are localized with anatomical labels and stored in
a Medical Imaging Data Structure (MIDS) format. In addition, 10 images were
annotated by a team of radiologists to include semantic segmentation of
radiological findings. This first iteration of the database includes 1,380 CX,
885 DX and 163 CT studies from 1,311 COVID-19+ patients. This is, to the best
of our knowledge, the largest COVID-19+ dataset of images available in an open
format. The dataset can be downloaded from
http://bimcv.cipf.es/bimcv-projects/bimcv-covid19.
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