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Machine-learning guided Venom Induced Dermonecrosis Analysis tooL : VIDAL

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Machine-learning guided Venom Induced Dermonecrosis Analysis tooL : VIDAL. / Laprade, William; Bartlett, Keirah E.; Christensen, Charlotte R. et al.
In: Scientific Reports, Vol. 13, No. 1, 21662, 08.12.2023.

Research output: Contribution to Journal/MagazineJournal articlepeer-review

Harvard

Laprade, W, Bartlett, KE, Christensen, CR, Kazandjian, TD, Patel, RN, Crittenden, E, Dawson, CA, Mansourvar, M, Wolff, DS, Fryer, T, Laustsen, AH, Casewell, NR, Gutiérrez, JM, Hall, SR & Jenkins, TP 2023, 'Machine-learning guided Venom Induced Dermonecrosis Analysis tooL : VIDAL', Scientific Reports, vol. 13, no. 1, 21662. https://doi.org/10.1038/s41598-023-49011-6

APA

Laprade, W., Bartlett, K. E., Christensen, C. R., Kazandjian, T. D., Patel, R. N., Crittenden, E., Dawson, C. A., Mansourvar, M., Wolff, D. S., Fryer, T., Laustsen, A. H., Casewell, N. R., Gutiérrez, J. M., Hall, S. R., & Jenkins, T. P. (2023). Machine-learning guided Venom Induced Dermonecrosis Analysis tooL : VIDAL. Scientific Reports, 13(1), Article 21662. https://doi.org/10.1038/s41598-023-49011-6

Vancouver

Laprade W, Bartlett KE, Christensen CR, Kazandjian TD, Patel RN, Crittenden E et al. Machine-learning guided Venom Induced Dermonecrosis Analysis tooL : VIDAL. Scientific Reports. 2023 Dec 8;13(1):21662. doi: 10.1038/s41598-023-49011-6

Author

Laprade, William ; Bartlett, Keirah E. ; Christensen, Charlotte R. et al. / Machine-learning guided Venom Induced Dermonecrosis Analysis tooL : VIDAL. In: Scientific Reports. 2023 ; Vol. 13, No. 1.

Bibtex

@article{48db1ffecd734b8e9cc47378830437fc,
title = "Machine-learning guided Venom Induced Dermonecrosis Analysis tooL : VIDAL",
abstract = "Snakebite envenoming is a global public health issue that causes significant morbidity and mortality, particularly in low-income regions of the world. The clinical manifestations of envenomings vary depending on the snake's venom, with paralysis, haemorrhage, and necrosis being the most common and medically relevant effects. To assess the efficacy of antivenoms against dermonecrosis, a preclinical testing approach involves in vivo mouse models that mimic local tissue effects of cytotoxic snakebites in humans. However, current methods for assessing necrosis severity are time-consuming and susceptible to human error. To address this, we present the Venom Induced Dermonecrosis Analysis tooL (VIDAL), a machine-learning-guided image-based solution that can automatically identify dermonecrotic lesions in mice, adjust for lighting biases, scale the image, extract lesion area and discolouration, and calculate the severity of dermonecrosis. We also introduce a new unit, the dermonecrotic unit (DnU), to better capture the complexity of dermonecrosis severity. Our tool is comparable to the performance of state-of-the-art histopathological analysis, making it an accessible, accurate, and reproducible method for assessing dermonecrosis in mice. Given the urgent need to address the neglected tropical disease that is snakebite, high-throughput technologies such as VIDAL are crucial in developing and validating new and existing therapeutics for this debilitating disease.",
author = "William Laprade and Bartlett, {Keirah E.} and Christensen, {Charlotte R.} and Kazandjian, {Taline D.} and Patel, {Rohit N.} and Edouard Crittenden and Dawson, {Charlotte A.} and Marjan Mansourvar and Wolff, {Darian S.} and Thomas Fryer and Laustsen, {Andreas H.} and Casewell, {Nicholas R.} and Guti{\'e}rrez, {Jos{\'e} Mar{\'i}a} and Hall, {Steven R.} and Jenkins, {Timothy P.}",
year = "2023",
month = dec,
day = "8",
doi = "10.1038/s41598-023-49011-6",
language = "English",
volume = "13",
journal = "Scientific Reports",
issn = "2045-2322",
publisher = "Nature Publishing Group",
number = "1",

}

RIS

TY - JOUR

T1 - Machine-learning guided Venom Induced Dermonecrosis Analysis tooL : VIDAL

AU - Laprade, William

AU - Bartlett, Keirah E.

AU - Christensen, Charlotte R.

AU - Kazandjian, Taline D.

AU - Patel, Rohit N.

AU - Crittenden, Edouard

AU - Dawson, Charlotte A.

AU - Mansourvar, Marjan

AU - Wolff, Darian S.

AU - Fryer, Thomas

AU - Laustsen, Andreas H.

AU - Casewell, Nicholas R.

AU - Gutiérrez, José María

AU - Hall, Steven R.

AU - Jenkins, Timothy P.

PY - 2023/12/8

Y1 - 2023/12/8

N2 - Snakebite envenoming is a global public health issue that causes significant morbidity and mortality, particularly in low-income regions of the world. The clinical manifestations of envenomings vary depending on the snake's venom, with paralysis, haemorrhage, and necrosis being the most common and medically relevant effects. To assess the efficacy of antivenoms against dermonecrosis, a preclinical testing approach involves in vivo mouse models that mimic local tissue effects of cytotoxic snakebites in humans. However, current methods for assessing necrosis severity are time-consuming and susceptible to human error. To address this, we present the Venom Induced Dermonecrosis Analysis tooL (VIDAL), a machine-learning-guided image-based solution that can automatically identify dermonecrotic lesions in mice, adjust for lighting biases, scale the image, extract lesion area and discolouration, and calculate the severity of dermonecrosis. We also introduce a new unit, the dermonecrotic unit (DnU), to better capture the complexity of dermonecrosis severity. Our tool is comparable to the performance of state-of-the-art histopathological analysis, making it an accessible, accurate, and reproducible method for assessing dermonecrosis in mice. Given the urgent need to address the neglected tropical disease that is snakebite, high-throughput technologies such as VIDAL are crucial in developing and validating new and existing therapeutics for this debilitating disease.

AB - Snakebite envenoming is a global public health issue that causes significant morbidity and mortality, particularly in low-income regions of the world. The clinical manifestations of envenomings vary depending on the snake's venom, with paralysis, haemorrhage, and necrosis being the most common and medically relevant effects. To assess the efficacy of antivenoms against dermonecrosis, a preclinical testing approach involves in vivo mouse models that mimic local tissue effects of cytotoxic snakebites in humans. However, current methods for assessing necrosis severity are time-consuming and susceptible to human error. To address this, we present the Venom Induced Dermonecrosis Analysis tooL (VIDAL), a machine-learning-guided image-based solution that can automatically identify dermonecrotic lesions in mice, adjust for lighting biases, scale the image, extract lesion area and discolouration, and calculate the severity of dermonecrosis. We also introduce a new unit, the dermonecrotic unit (DnU), to better capture the complexity of dermonecrosis severity. Our tool is comparable to the performance of state-of-the-art histopathological analysis, making it an accessible, accurate, and reproducible method for assessing dermonecrosis in mice. Given the urgent need to address the neglected tropical disease that is snakebite, high-throughput technologies such as VIDAL are crucial in developing and validating new and existing therapeutics for this debilitating disease.

U2 - 10.1038/s41598-023-49011-6

DO - 10.1038/s41598-023-49011-6

M3 - Journal article

VL - 13

JO - Scientific Reports

JF - Scientific Reports

SN - 2045-2322

IS - 1

M1 - 21662

ER -