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Dataset Card for "MIMICause"
Dataset Summary
MIMICause Dataset is a dataset for representation and automatic extraction of causal relation types from clinical notes. The MIMICause dataset requires manual download of the mimicause.zip file from the Community Annotations Downloads section of the n2c2 dataset on the Harvard's DBMI Data Portal after signing their agreement forms, which is a quick and easy procedure.
The dataset has 2714 samples having both explicit and implicit causality in which entities are in the same sentence or different sentences. The nine semantic causal relations (with directionality) between entitities E1 and E2 in a text snippets are -- (1) Cause(E1,E2) (2) Cause(E2,E1) (3) Enable(E1,E2) (4) Enable(E2,E1) (5) Prevent(E1,E2) (6) Prevent(E2,E1) (7) Hinder(E1,E2) (8) Hinder(E2,E1) (9) Other.
Supported Tasks
Causal relation extraction between entities expressed implicitly or explicitly, in single or across multiple sentences.
Dataset Structure
Data Instances
An example of a data sample looks as follows:
{
"E1": "Florinef",
"E2": "fluid retention",
"Text": "Treated with <e1>Florinef</e1> in the past, was d/c'd due to <e2>fluid retention</e2>.",
"Label": 0
}
Data Fields
The data fields are the same among all the splits.
E1
: astring
value.E2
: astring
value.Text
: alarge_string
value.Label
: aClassLabel
categorical value.
Data Splits
The original dataset that gets downloaded from the Harvard's DBMI Data Portal have all the data in a single split. The dataset loading provided here through huggingface datasets splits the data into the following train, validation and test splits for convenience.
name | train | validation | test |
---|---|---|---|
mimicause | 1953 | 489 | 272 |
Additional Information
Citation Information
@inproceedings{khetan-etal-2022-mimicause,
title={MIMICause: Representation and automatic extraction of causal relation types from clinical notes},
author={Vivek Khetan and Md Imbesat Hassan Rizvi and Jessica Huber and Paige Bartusiak and Bogdan Sacaleanu and Andrew Fano},
booktitle ={Findings of the Association for Computational Linguistics: ACL 2022},
month={may},
year={2022},
publisher={Association for Computational Linguistics},
address={Dublin, The Republic of Ireland},
url={},
doi={},
pages={},
}
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