Discriminating between Papilledema and Optic Disc Drusen Using 3D Structural Analysis of the Optic Nerve Head

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Standard

Discriminating between Papilledema and Optic Disc Drusen Using 3D Structural Analysis of the Optic Nerve Head. / Girard, Michaël J.A.; Panda, Satish; Tun, Tin Aung; Wibroe, Elisabeth A.; Najjar, Raymond P.; Aung, Tin; Thiéry, Alexandre H.; Hamann, Steffen; Fraser, Clare; Milea, Dan.

I: Neurology, Bind 100, Nr. 2, 2023, s. E192-E202.

Publikation: Bidrag til tidsskriftTidsskriftartikelForskningfagfællebedømt

Harvard

Girard, MJA, Panda, S, Tun, TA, Wibroe, EA, Najjar, RP, Aung, T, Thiéry, AH, Hamann, S, Fraser, C & Milea, D 2023, 'Discriminating between Papilledema and Optic Disc Drusen Using 3D Structural Analysis of the Optic Nerve Head', Neurology, bind 100, nr. 2, s. E192-E202. https://doi.org/10.1212/WNL.0000000000201350

APA

Girard, M. J. A., Panda, S., Tun, T. A., Wibroe, E. A., Najjar, R. P., Aung, T., Thiéry, A. H., Hamann, S., Fraser, C., & Milea, D. (2023). Discriminating between Papilledema and Optic Disc Drusen Using 3D Structural Analysis of the Optic Nerve Head. Neurology, 100(2), E192-E202. https://doi.org/10.1212/WNL.0000000000201350

Vancouver

Girard MJA, Panda S, Tun TA, Wibroe EA, Najjar RP, Aung T o.a. Discriminating between Papilledema and Optic Disc Drusen Using 3D Structural Analysis of the Optic Nerve Head. Neurology. 2023;100(2):E192-E202. https://doi.org/10.1212/WNL.0000000000201350

Author

Girard, Michaël J.A. ; Panda, Satish ; Tun, Tin Aung ; Wibroe, Elisabeth A. ; Najjar, Raymond P. ; Aung, Tin ; Thiéry, Alexandre H. ; Hamann, Steffen ; Fraser, Clare ; Milea, Dan. / Discriminating between Papilledema and Optic Disc Drusen Using 3D Structural Analysis of the Optic Nerve Head. I: Neurology. 2023 ; Bind 100, Nr. 2. s. E192-E202.

Bibtex

@article{cb60623b594b4d5e9b0feec58c80f1cc,
title = "Discriminating between Papilledema and Optic Disc Drusen Using 3D Structural Analysis of the Optic Nerve Head",
abstract = "Background and ObjectivesThe distinction of papilledema from other optic nerve head (ONH) lesions mimicking papilledema, such as optic disc drusen (ODD), can be difficult in clinical practice. We aimed the following: (1) to develop a deep learning algorithm to automatically identify major structures of the ONH in 3-dimensional (3D) optical coherence tomography (OCT) scans and (2) to exploit such information to robustly differentiate among ODD, papilledema, and healthy ONHs.MethodsThis was a cross-sectional comparative study of patients from 3 sites (Singapore, Denmark, and Australia) with confirmed ODD, those with papilledema due to raised intracranial pressure, and healthy controls. Raster scans of the ONH were acquired using OCT imaging and then processed to improve deep-tissue visibility. First, a deep learning algorithm was developed to identify major ONH tissues and ODD regions. The performance of our algorithm was assessed using the Dice coefficient. Second, a classification algorithm (random forest) was designed to perform 3-class classifications (1: ODD, 2: papilledema, and 3: healthy ONHs) strictly from their drusen and prelamina swelling scores (calculated from the segmentations). To assess performance, we reported the area under the receiver operating characteristic curve for each class.ResultsA total of 241 patients (256 imaged ONHs, including 105 ODD, 51 papilledema, and 100 healthy ONHs) were retrospectively included in this study. Using OCT images of the ONH, our segmentation algorithm was able to isolate neural and connective tissues and ODD regions/conglomerates whenever present. This was confirmed by an averaged Dice coefficient of 0.93 ± 0.03 on the test set, corresponding to good segmentation performance. Classification was achieved with high AUCs, that is, 0.99 ± 0.001 for the detection of ODD, 0.99 ± 0.005 for the detection of papilledema, and 0.98 ± 0.01 for the detection of healthy ONHs.DiscussionOur artificial intelligence approach can discriminate ODD from papilledema, strictly using a single OCT scan of the ONH. Our classification performance was very good in the studied population, with the caveat that validation in a much larger population is warranted. Our approach may have the potential to establish OCT imaging as one of the mainstays of diagnostic imaging for ONH disorders in neuro-ophthalmology, in addition to fundus photography. ",
author = "Girard, {Micha{\"e}l J.A.} and Satish Panda and Tun, {Tin Aung} and Wibroe, {Elisabeth A.} and Najjar, {Raymond P.} and Tin Aung and Thi{\'e}ry, {Alexandre H.} and Steffen Hamann and Clare Fraser and Dan Milea",
note = "Publisher Copyright: {\textcopyright} American Academy of Neurology.",
year = "2023",
doi = "10.1212/WNL.0000000000201350",
language = "English",
volume = "100",
pages = "E192--E202",
journal = "Neurology",
issn = "0028-3878",
publisher = "Lippincott Williams & Wilkins",
number = "2",

}

RIS

TY - JOUR

T1 - Discriminating between Papilledema and Optic Disc Drusen Using 3D Structural Analysis of the Optic Nerve Head

AU - Girard, Michaël J.A.

AU - Panda, Satish

AU - Tun, Tin Aung

AU - Wibroe, Elisabeth A.

AU - Najjar, Raymond P.

AU - Aung, Tin

AU - Thiéry, Alexandre H.

AU - Hamann, Steffen

AU - Fraser, Clare

AU - Milea, Dan

N1 - Publisher Copyright: © American Academy of Neurology.

PY - 2023

Y1 - 2023

N2 - Background and ObjectivesThe distinction of papilledema from other optic nerve head (ONH) lesions mimicking papilledema, such as optic disc drusen (ODD), can be difficult in clinical practice. We aimed the following: (1) to develop a deep learning algorithm to automatically identify major structures of the ONH in 3-dimensional (3D) optical coherence tomography (OCT) scans and (2) to exploit such information to robustly differentiate among ODD, papilledema, and healthy ONHs.MethodsThis was a cross-sectional comparative study of patients from 3 sites (Singapore, Denmark, and Australia) with confirmed ODD, those with papilledema due to raised intracranial pressure, and healthy controls. Raster scans of the ONH were acquired using OCT imaging and then processed to improve deep-tissue visibility. First, a deep learning algorithm was developed to identify major ONH tissues and ODD regions. The performance of our algorithm was assessed using the Dice coefficient. Second, a classification algorithm (random forest) was designed to perform 3-class classifications (1: ODD, 2: papilledema, and 3: healthy ONHs) strictly from their drusen and prelamina swelling scores (calculated from the segmentations). To assess performance, we reported the area under the receiver operating characteristic curve for each class.ResultsA total of 241 patients (256 imaged ONHs, including 105 ODD, 51 papilledema, and 100 healthy ONHs) were retrospectively included in this study. Using OCT images of the ONH, our segmentation algorithm was able to isolate neural and connective tissues and ODD regions/conglomerates whenever present. This was confirmed by an averaged Dice coefficient of 0.93 ± 0.03 on the test set, corresponding to good segmentation performance. Classification was achieved with high AUCs, that is, 0.99 ± 0.001 for the detection of ODD, 0.99 ± 0.005 for the detection of papilledema, and 0.98 ± 0.01 for the detection of healthy ONHs.DiscussionOur artificial intelligence approach can discriminate ODD from papilledema, strictly using a single OCT scan of the ONH. Our classification performance was very good in the studied population, with the caveat that validation in a much larger population is warranted. Our approach may have the potential to establish OCT imaging as one of the mainstays of diagnostic imaging for ONH disorders in neuro-ophthalmology, in addition to fundus photography.

AB - Background and ObjectivesThe distinction of papilledema from other optic nerve head (ONH) lesions mimicking papilledema, such as optic disc drusen (ODD), can be difficult in clinical practice. We aimed the following: (1) to develop a deep learning algorithm to automatically identify major structures of the ONH in 3-dimensional (3D) optical coherence tomography (OCT) scans and (2) to exploit such information to robustly differentiate among ODD, papilledema, and healthy ONHs.MethodsThis was a cross-sectional comparative study of patients from 3 sites (Singapore, Denmark, and Australia) with confirmed ODD, those with papilledema due to raised intracranial pressure, and healthy controls. Raster scans of the ONH were acquired using OCT imaging and then processed to improve deep-tissue visibility. First, a deep learning algorithm was developed to identify major ONH tissues and ODD regions. The performance of our algorithm was assessed using the Dice coefficient. Second, a classification algorithm (random forest) was designed to perform 3-class classifications (1: ODD, 2: papilledema, and 3: healthy ONHs) strictly from their drusen and prelamina swelling scores (calculated from the segmentations). To assess performance, we reported the area under the receiver operating characteristic curve for each class.ResultsA total of 241 patients (256 imaged ONHs, including 105 ODD, 51 papilledema, and 100 healthy ONHs) were retrospectively included in this study. Using OCT images of the ONH, our segmentation algorithm was able to isolate neural and connective tissues and ODD regions/conglomerates whenever present. This was confirmed by an averaged Dice coefficient of 0.93 ± 0.03 on the test set, corresponding to good segmentation performance. Classification was achieved with high AUCs, that is, 0.99 ± 0.001 for the detection of ODD, 0.99 ± 0.005 for the detection of papilledema, and 0.98 ± 0.01 for the detection of healthy ONHs.DiscussionOur artificial intelligence approach can discriminate ODD from papilledema, strictly using a single OCT scan of the ONH. Our classification performance was very good in the studied population, with the caveat that validation in a much larger population is warranted. Our approach may have the potential to establish OCT imaging as one of the mainstays of diagnostic imaging for ONH disorders in neuro-ophthalmology, in addition to fundus photography.

U2 - 10.1212/WNL.0000000000201350

DO - 10.1212/WNL.0000000000201350

M3 - Journal article

C2 - 36175153

AN - SCOPUS:85145966737

VL - 100

SP - E192-E202

JO - Neurology

JF - Neurology

SN - 0028-3878

IS - 2

ER -

ID: 396366361