Datasets:
metadata
configs:
- config_name: virtassist
default: true
data_files:
- split: train
path: virtassist/train.parquet
- split: valid
path: virtassist/valid.parquet
- split: test1
path: virtassist/test1.parquet
- split: test2
path: virtassist/test2.parquet
- split: test3
path: virtassist/test3.parquet
- config_name: aci
data_files:
- split: train
path: aci/train.parquet
- split: valid
path: aci/valid.parquet
- split: test1
path: aci/test1.parquet
- split: test2
path: aci/test2.parquet
- split: test3
path: aci/test3.parquet
- config_name: virtscribe
data_files:
- split: train
path: virtscribe/train.parquet
- split: valid
path: virtscribe/valid.parquet
- split: test1
path: virtscribe/test1.parquet
- split: test2
path: virtscribe/test2.parquet
- split: test3
path: virtscribe/test3.parquet
license: cc-by-4.0
task_categories:
- text-generation
tags:
- medical
- clinical
- dialogue
pretty_name: ACI-Bench
ACI-Bench
HuggingFace upload of ACI-Bench, which evaluates a model's ability to convert clinical dialogue into structured clinical notes. This repo contains only the core benchmarking data. The full dataset is available on HuggingFace here. If used, please cite the original authors using the citation below.
Dataset Details
| train | valid | test1 | test2 | test3 | |
|---|---|---|---|---|---|
| aci | 35 | 11 | 22 | 22 | 22 |
| virtassist | 20 | 5 | 10 | 10 | 10 |
| virtscribe | 12 | 4 | 8 | 8 | 8 |
| total | 67 | 20 | 40 | 40 | 40 |
Dataset Description
The dataset consists of different subsets capturing different clinical workflows
- ambient clinical intelligence (
aci): doctor-patient dialogue - virtual assistant (
virtassist): doctor-patient dialogue with queues to trigger Dragon Copilot, e.g., "hey, dragon. show me the chest x-ray" - virtual scribe (
virtscribe): doctor-patient dialogue with a short dictation from the doctor about the patient at the very beginning
Dataset Sources
Direct Use
from datasets import load_dataset
SUBSETS = ["virtassist", "virtscribe", "aci"]
SPLITS = ["train", "valid", "test1", "test2", "test3"]
if __name__ == "__main__":
# ---------------------------------------------------------------------
# 1) Load ONE subset (config) with ALL splits
# ---------------------------------------------------------------------
virtassist_all = load_dataset("mkieffer/ACI-Bench", name="virtassist")
# ---------------------------------------------------------------------
# 2) Load ONE subset (config) with ONE split
# ---------------------------------------------------------------------
virtassist_train = load_dataset("mkieffer/ACI-Bench", name="virtassist", split="train")
# ---------------------------------------------------------------------
# 3) Load TWO subsets (configs), all splits for each
# ---------------------------------------------------------------------
two_subsets = {
"virtassist": load_dataset("mkieffer/ACI-Bench", name="virtassist"),
"aci": load_dataset("mkieffer/ACI-Bench", name="aci"),
}
# ---------------------------------------------------------------------
# 4) Load ALL subsets (virtassist, virtscribe, aci), all splits each
# ---------------------------------------------------------------------
all_subsets = {subset: load_dataset("mkieffer/ACI-Bench", name=subset) for subset in SUBSETS}
aci_all = all_subsets["aci"] # DatasetDict
aci_train = aci_all["train"] # Dataset
aci_valid = aci_all["valid"]
# ---------------------------------------------------------------------
# 5) Load multiple splits at once
# ---------------------------------------------------------------------
# load each split, concatenated
aci_all_test_concat = load_dataset("mkieffer/ACI-Bench", name="aci", split=["train", "test1+test2+test3"])
# load each split separately
aci_all_test_separate = load_dataset("mkieffer/ACI-Bench", name="aci", split=["train", "test1", "test2", "test3"])
Citation
@article{aci-bench,
author = {Wen{-}wai Yim and
Yujuan Fu and
Asma {Ben Abacha} and
Neal Snider and Thomas Lin and Meliha Yetisgen},
title = {ACI-BENCH: a Novel Ambient Clinical Intelligence Dataset for Benchmarking Automatic Visit Note Generation},
journal = {Nature Scientific Data},
year = {2023}
}