A large, curated, open-source stroke neuroimaging dataset to improve lesion segmentation algorithms.

dc.contributor.author

Liew, Sook-Lei

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Lo, Bethany P

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Donnelly, Miranda R

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Zavaliangos-Petropulu, Artemis

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Jeong, Jessica N

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Barisano, Giuseppe

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Hutton, Alexandre

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Simon, Julia P

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Juliano, Julia M

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Suri, Anisha

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Wang, Zhizhuo

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Abdullah, Aisha

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Kim, Jun

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Ard, Tyler

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Banaj, Nerisa

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Borich, Michael R

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Boyd, Lara A

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Brodtmann, Amy

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Buetefisch, Cathrin M

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Cao, Lei

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Cassidy, Jessica M

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Ciullo, Valentina

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Conforto, Adriana B

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Cramer, Steven C

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Dacosta-Aguayo, Rosalia

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de la Rosa, Ezequiel

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Domin, Martin

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Dula, Adrienne N

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Feng, Wuwei

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Franco, Alexandre R

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Geranmayeh, Fatemeh

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Gramfort, Alexandre

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Gregory, Chris M

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Hanlon, Colleen A

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Hordacre, Brenton G

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Kautz, Steven A

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Khlif, Mohamed Salah

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Kim, Hosung

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Kirschke, Jan S

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Liu, Jingchun

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Lotze, Martin

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MacIntosh, Bradley J

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Mataró, Maria

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Mohamed, Feroze B

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Nordvik, Jan E

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Park, Gilsoon

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Pienta, Amy

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Piras, Fabrizio

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Redman, Shane M

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Revill, Kate P

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Reyes, Mauricio

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Robertson, Andrew D

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Seo, Na Jin

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Soekadar, Surjo R

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Spalletta, Gianfranco

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Sweet, Alison

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Telenczuk, Maria

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Thielman, Gregory

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Westlye, Lars T

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Winstein, Carolee J

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Wittenberg, George F

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Wong, Kristin A

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Yu, Chunshui

dc.date.accessioned

2026-02-01T15:35:23Z

dc.date.available

2026-02-01T15:35:23Z

dc.date.issued

2022-06

dc.description.abstract

Accurate lesion segmentation is critical in stroke rehabilitation research for the quantification of lesion burden and accurate image processing. Current automated lesion segmentation methods for T1-weighted (T1w) MRIs, commonly used in stroke research, lack accuracy and reliability. Manual segmentation remains the gold standard, but it is time-consuming, subjective, and requires neuroanatomical expertise. We previously released an open-source dataset of stroke T1w MRIs and manually-segmented lesion masks (ATLAS v1.2, N = 304) to encourage the development of better algorithms. However, many methods developed with ATLAS v1.2 report low accuracy, are not publicly accessible or are improperly validated, limiting their utility to the field. Here we present ATLAS v2.0 (N = 1271), a larger dataset of T1w MRIs and manually segmented lesion masks that includes training (n = 655), test (hidden masks, n = 300), and generalizability (hidden MRIs and masks, n = 316) datasets. Algorithm development using this larger sample should lead to more robust solutions; the hidden datasets allow for unbiased performance evaluation via segmentation challenges. We anticipate that ATLAS v2.0 will lead to improved algorithms, facilitating large-scale stroke research.

dc.identifier

10.1038/s41597-022-01401-7

dc.identifier.issn

2052-4463

dc.identifier.issn

2052-4463

dc.identifier.uri

https://hdl.handle.net/10161/34016

dc.language

eng

dc.publisher

Springer Science and Business Media LLC

dc.relation.ispartof

Scientific data

dc.relation.isversionof

10.1038/s41597-022-01401-7

dc.rights.uri

https://creativecommons.org/licenses/by-nc/4.0

dc.subject

Brain

dc.subject

Humans

dc.subject

Magnetic Resonance Imaging

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Algorithms

dc.subject

Image Processing, Computer-Assisted

dc.subject

Stroke

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Neuroimaging

dc.title

A large, curated, open-source stroke neuroimaging dataset to improve lesion segmentation algorithms.

dc.type

Journal article

duke.contributor.orcid

Feng, Wuwei|0000-0001-6230-4905

pubs.begin-page

320

pubs.issue

1

pubs.organisational-group

Duke

pubs.organisational-group

Pratt School of Engineering

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School of Medicine

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Clinical Science Departments

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Biomedical Engineering

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University Institutes and Centers

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Duke Institute for Brain Sciences

pubs.organisational-group

Neurology

pubs.organisational-group

Neurology, Stroke and Vascular Neurology

pubs.publication-status

Published

pubs.volume

9

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