EchoCP_dataset

folder EchoCP_dataset (121 files)
file001_r_image.nii.gz 150.09MB
file001_r_label.nii.gz 441.44kB
file001_v_image.nii.gz 119.87MB
file001_v_label.nii.gz 348.35kB
file002_r_image.nii.gz 118.43MB
file002_r_label.nii.gz 370.93kB
file002_v_image.nii.gz 70.88MB
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file003_r_image.nii.gz 101.83MB
file003_r_label.nii.gz 317.24kB
file003_v_image.nii.gz 90.30MB
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file004_r_image.nii.gz 93.87MB
file004_r_label.nii.gz 278.71kB
file004_v_image.nii.gz 64.52MB
file004_v_label.nii.gz 213.66kB
file005_r_image.nii.gz 84.72MB
file005_r_label.nii.gz 265.66kB
file005_v_image.nii.gz 72.88MB
file005_v_label.nii.gz 229.34kB
file006_r_image.nii.gz 103.26MB
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file006_v_label.nii.gz 216.36kB
file007_r_image.nii.gz 96.56MB
file007_r_label.nii.gz 293.40kB
file007_v_image.nii.gz 58.57MB
file007_v_label.nii.gz 177.17kB
file008_r_image.nii.gz 117.43MB
file008_r_label.nii.gz 367.34kB
file008_v_image.nii.gz 89.31MB
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file010_r_image.nii.gz 85.18MB
file010_r_label.nii.gz 286.18kB
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file010_v_label.nii.gz 333.86kB
file011_r_image.nii.gz 124.01MB
file011_r_label.nii.gz 345.28kB
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file012_r_image.nii.gz 114.93MB
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file012_v_image.nii.gz 88.41MB
file012_v_label.nii.gz 263.54kB
file013_r_image.nii.gz 108.48MB
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Type: Dataset

Bibtex:
@article{,
title= {EchoCP_dataset},
keywords= {deep learning, ultrasound, Echocardiography, Heart Conditions, Image Segmentation},
author= {},
abstract= {A dataset of contrast transthoracic echocardiography, EchoCP, for patent foramen ovale diagnosis is published.

We present EchoCP, the first dataset for cTTE based PFO diagnosis. EchoCP contains both VM and rest echocardiography videos captured from 30 patients. Data annotation including diagnosis annotation and segmentation annotation are performed by four experienced cardiovascular sonographers. As there are more than a thousand images in each patient's video, sparse labeling (only select representative frames) of the segmentation is adopted.

EchoCP contains cTTE videos from 30 patients. For each patient, two videos corresponding to the rest and VM state of the patients are captured. Note that in the rest state, patients just relax and breathe normally. While in the VM, patients need to close their mouths, pinch their noses shut while expelling air out as if blowing up a balloon. The video is captured in the apical-4-chamber view and contains at least ten cardiac cycles. For the VM state, the action is performed three to five times during acquisition, and we selected the most representative one.

If you used our dataset, please consider to cite our paper in MICCAI 2021, Tianchen Wang, Zhihe Li, Shanshan Bi, Meiping Huang, Jiawei Zhang, Jian Zhuang, Yiyu Shi, Hongwen Fei, Xiaowei Xu, "ImageCHD: A 3D Computed Tomography Image Dataset for Classification of Congenital Heart Disease," in Proc. of Medical Image Computing and Computer Assisted Interventions (MICCAI), Online, 2021.
https://arxiv.org/abs/2101.10799

HIGHLIGHT 20231101: We have deployed the dataset on Kaggle!

Please send emails to me xiao.wei.xu@foxmail.com if you have any questions about the dataset and the benchmark.
},
terms= {},
license= {https://www.apache.org/licenses/LICENSE-2.0},
superseded= {},
url= {https://www.kaggle.com/datasets/xiaoweixumedicalai/echocp}
}

10 day statistics (1 downloads)
Average Time 1 hrs, 14 mins, 09 secs
Average Speed 1.25MB/s
Best Time 1 hrs, 14 mins, 09 secs
Best Speed 1.25MB/s
Worst Time 1 hrs, 14 mins, 09 secs
Worst Speed 1.25MB/s

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