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13
13
age
float64
10.1
98
gender
stringclasses
2 values
race
stringclasses
3 values
ethnicity
stringclasses
3 values
language
stringclasses
4 values
maritalstatus
stringclasses
6 values
glaucoma
stringclasses
2 values
use
stringclasses
3 values
data_0001.npz
43.31
male
asian
non-hispanic
english
single
no
training
data_0002.npz
18.02
female
white
non-hispanic
english
single
yes
training
data_0003.npz
66.42
male
black
non-hispanic
english
single
yes
training
data_0004.npz
70.64
male
white
non-hispanic
english
single
no
training
data_0005.npz
71.42
female
asian
non-hispanic
english
married or partnered
yes
training
data_0006.npz
75.19
female
white
non-hispanic
english
married or partnered
no
training
data_0007.npz
82.57
female
white
non-hispanic
english
widowed
yes
training
data_0008.npz
60.26
female
white
non-hispanic
english
married or partnered
no
training
data_0009.npz
61.85
male
white
non-hispanic
english
divorced
yes
training
data_0010.npz
66.88
female
white
non-hispanic
english
divorced
yes
training
data_0011.npz
22.95
male
white
non-hispanic
english
single
yes
training
data_0012.npz
47.93
female
white
non-hispanic
english
married or partnered
no
training
data_0013.npz
66
male
white
unknown
english
married or partnered
no
training
data_0014.npz
72.61
male
black
non-hispanic
english
married or partnered
yes
training
data_0015.npz
71.54
female
white
non-hispanic
english
married or partnered
no
training
data_0016.npz
59.18
female
white
non-hispanic
english
married or partnered
yes
training
data_0017.npz
54.75
female
white
non-hispanic
english
married or partnered
no
training
data_0018.npz
72.27
male
white
non-hispanic
english
married or partnered
no
training
data_0019.npz
48.76
female
white
non-hispanic
english
married or partnered
yes
training
data_0020.npz
28.9
female
white
non-hispanic
english
single
no
training
data_0021.npz
56.54
female
white
non-hispanic
english
married or partnered
no
training
data_0022.npz
56.51
female
white
non-hispanic
english
single
no
training
data_0023.npz
77.5
male
white
non-hispanic
unknown
married or partnered
yes
training
data_0024.npz
73.15
male
white
unknown
english
unknown
no
training
data_0025.npz
61.81
female
white
non-hispanic
english
married or partnered
yes
training
data_0026.npz
64.06
female
black
non-hispanic
english
widowed
yes
training
data_0027.npz
69.65
male
white
non-hispanic
english
married or partnered
yes
training
data_0028.npz
51.31
female
asian
non-hispanic
english
married or partnered
no
training
data_0029.npz
54.58
female
black
non-hispanic
english
single
yes
training
data_0030.npz
69.2
female
white
non-hispanic
english
married or partnered
no
training
data_0031.npz
63.68
female
white
non-hispanic
english
married or partnered
yes
training
data_0032.npz
27.95
male
white
hispanic
english
single
no
training
data_0033.npz
81.96
male
white
hispanic
spanish
married or partnered
yes
training
data_0034.npz
39.99
female
white
non-hispanic
english
married or partnered
no
training
data_0035.npz
67.45
female
white
non-hispanic
english
married or partnered
no
training
data_0036.npz
63.79
male
white
non-hispanic
english
married or partnered
no
training
data_0037.npz
56.47
female
white
non-hispanic
english
married or partnered
no
training
data_0038.npz
76.21
male
black
non-hispanic
english
single
yes
training
data_0039.npz
74.34
male
white
non-hispanic
english
divorced
yes
training
data_0040.npz
74.44
female
white
non-hispanic
english
widowed
no
training
data_0041.npz
42.23
female
black
non-hispanic
english
married or partnered
yes
training
data_0042.npz
25.78
male
white
non-hispanic
english
single
no
training
data_0043.npz
19.07
male
black
non-hispanic
english
single
no
training
data_0044.npz
72.03
male
white
non-hispanic
english
married or partnered
no
training
data_0045.npz
64.88
male
white
non-hispanic
english
married or partnered
no
training
data_0046.npz
66.6
female
white
non-hispanic
english
widowed
yes
training
data_0047.npz
75.03
female
black
non-hispanic
english
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yes
training
data_0048.npz
44.59
female
white
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english
married or partnered
no
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data_0049.npz
55.18
female
black
non-hispanic
english
single
yes
training
data_0050.npz
60.69
female
white
non-hispanic
english
married or partnered
no
training
data_0051.npz
30.13
female
white
non-hispanic
english
single
no
training
data_0052.npz
27.09
female
white
non-hispanic
english
single
no
training
data_0053.npz
66.58
male
white
non-hispanic
english
married or partnered
no
training
data_0054.npz
66.71
female
white
non-hispanic
english
married or partnered
no
training
data_0055.npz
74.34
female
asian
non-hispanic
english
married or partnered
yes
training
data_0056.npz
44.51
female
black
non-hispanic
other languages
married or partnered
no
training
data_0057.npz
71.39
female
black
non-hispanic
english
married or partnered
no
training
data_0058.npz
62.8
male
white
non-hispanic
english
married or partnered
no
training
data_0059.npz
48.05
female
white
non-hispanic
english
married or partnered
yes
training
data_0060.npz
70.37
female
white
non-hispanic
english
married or partnered
no
training
data_0061.npz
46.27
female
white
non-hispanic
english
married or partnered
no
training
data_0062.npz
50.89
female
white
non-hispanic
english
married or partnered
no
training
data_0063.npz
35.45
female
white
hispanic
english
single
no
training
data_0064.npz
44.11
male
black
non-hispanic
other languages
married or partnered
no
training
data_0065.npz
54.24
male
black
non-hispanic
english
married or partnered
no
training
data_0066.npz
62.15
male
black
non-hispanic
english
married or partnered
no
training
data_0067.npz
72.87
male
white
non-hispanic
english
married or partnered
no
training
data_0068.npz
64.48
female
white
non-hispanic
english
single
no
training
data_0069.npz
54.53
female
asian
non-hispanic
unknown
married or partnered
no
training
data_0070.npz
78.83
female
white
non-hispanic
english
married or partnered
yes
training
data_0071.npz
82.58
male
white
non-hispanic
english
married or partnered
yes
training
data_0072.npz
41.21
female
white
non-hispanic
english
married or partnered
yes
training
data_0073.npz
74.63
female
white
non-hispanic
english
married or partnered
yes
training
data_0074.npz
58.75
female
white
non-hispanic
english
married or partnered
no
training
data_0075.npz
73.8
male
white
non-hispanic
english
married or partnered
yes
training
data_0076.npz
46.95
female
white
non-hispanic
english
married or partnered
no
training
data_0077.npz
56.51
female
white
non-hispanic
english
married or partnered
no
training
data_0078.npz
43.93
female
black
non-hispanic
english
single
no
training
data_0079.npz
76.86
female
white
non-hispanic
english
divorced
no
training
data_0080.npz
14.78
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data_0081.npz
65.41
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data_0082.npz
26.93
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white
non-hispanic
english
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data_0083.npz
51.66
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white
non-hispanic
english
married or partnered
yes
training
data_0084.npz
82.03
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english
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yes
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data_0085.npz
62.01
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82.35
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data_0087.npz
58.48
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white
non-hispanic
english
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training
data_0088.npz
53.26
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white
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english
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training
data_0089.npz
77.19
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white
non-hispanic
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yes
training
data_0090.npz
29.54
female
black
non-hispanic
english
single
no
training
data_0091.npz
90.66
female
white
non-hispanic
english
widowed
yes
training
data_0092.npz
78.57
female
white
non-hispanic
english
married or partnered
yes
training
data_0093.npz
70.63
female
white
non-hispanic
english
married or partnered
no
training
data_0094.npz
21.76
female
white
non-hispanic
english
single
no
training
data_0095.npz
85.82
male
white
unknown
english
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yes
training
data_0096.npz
74.3
female
white
unknown
english
married or partnered
yes
training
data_0097.npz
84.2
female
black
non-hispanic
english
widowed
yes
training
data_0098.npz
62.14
female
white
non-hispanic
english
married or partnered
yes
training
data_0099.npz
71.73
male
white
non-hispanic
english
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yes
training
data_0100.npz
67.85
male
white
non-hispanic
english
married or partnered
no
training
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Dataset Card: Harvard-GF

Dataset Summary

Harvard-GF (Harvard Glaucoma Fairness) is a retinal nerve disease dataset for fairness learning in glaucoma detection, featuring both 2D and 3D OCT imaging data with balanced racial groups. It contains 3,300 samples from 3,300 patients with equal representation across Asian, Black, and White racial groups — a unique design addressing the doubled glaucoma prevalence observed in Black patients compared to other races.

This dataset was introduced in IEEE Transactions on Medical Imaging 2024: Harvard Glaucoma Fairness: A Retinal Nerve Disease Dataset for Fairness Learning and Fair Identity Normalization.

Dataset Details

Dataset Description

Field Value
Institution Department of Ophthalmology, Harvard Medical School
Task Glaucoma detection
Modality OCT RNFLT maps (2D), OCT B-scans (3D), visual field (MD, TDs)
Scale 3,300 patients, 3,300 OCT RNFLT maps
Image size 200 × 200 (RNFLT map), 200 × 200 × 200 (B-scans)
Splits 2,100 train / 300 validation / 900 test
License CC BY-NC-ND 4.0

Data Fields

Each subject is stored as a .npz file containing:

Field Description
rnflt OCT retinal nerve fiber layer thickness (RNFLT) map, size 200 × 200
oct_bscans 3D OCT B-scans image, size 200 × 200 × 200
glaucoma Glaucomatous status: 0 = non-glaucoma, 1 = glaucoma
md Mean deviation value of visual field
tds 52 total deviation values of visual field
age Patient age
male Gender: 0 = Female, 1 = Male
race 0 = Asian, 1 = Black or African American, 2 = White or Caucasian
ethnicity 0 = Non-Hispanic, 1 = Hispanic, -1 = Unknown
language 0 = English, 1 = Spanish, 2 = Other, -1 = Unknown
maritalstatus 0 = Married/Civil Union/Life Partner, 1 = Single, 2 = Divorced, 3 = Widowed, 4 = Legally Separated, -1 = Unknown

Demographics

A key feature of Harvard-GF is its balanced racial composition: equal numbers of Asian, Black, and White patients are included across splits, enabling rigorous racial fairness evaluation without class imbalance.

Uses

Direct Use

  • Fairness benchmarking for glaucoma detection models using 2D and 3D OCT imaging
  • Racial and gender fairness analysis in ophthalmic AI
  • Development and evaluation of fairness learning methods (e.g., fair identity normalization)
  • Equity-scaled performance measurement across demographic subgroups

Out-of-Scope Use

Clinical decisions, patient care, or any commercial application. This dataset shall not be used for clinical decisions at any time.

Access

The "Harvard" designation indicates the dataset originates from the Department of Ophthalmology at Harvard Medical School. It does not imply endorsement, sponsorship, or legal responsibility by Harvard University or Harvard Medical School.

Citation

BibTeX:

@article{10472539,
  author={Luo, Yan and Tian, Yu and Shi, Min and Pasquale, Louis R. and Shen, Lucy Q. and Zebardast, Nazlee and Elze, Tobias and Wang, Mengyu},
  journal={IEEE Transactions on Medical Imaging},
  title={Harvard Glaucoma Fairness: A Retinal Nerve Disease Dataset for Fairness Learning and Fair Identity Normalization},
  year={2024},
  volume={43},
  number={7},
  pages={2623-2633},
  doi={10.1109/TMI.2024.3377552}
}

APA:

Luo, Y., Tian, Y., Shi, M., Pasquale, L. R., Shen, L. Q., Zebardast, N., Elze, T., & Wang, M. (2024). Harvard Glaucoma Fairness: A Retinal Nerve Disease Dataset for Fairness Learning and Fair Identity Normalization. IEEE Transactions on Medical Imaging, 43(7), 2623–2633. https://doi.org/10.1109/TMI.2024.3377552

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