Edge artifcial intelligence wireless video capsule endoscopy

Research output: Contribution to journalJournal articleResearchpeer-review

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Edge artifcial intelligence wireless video capsule endoscopy. / Sahafi, A; Rasmussen, C. L. M. ; Bollen, Peter; Baatrup, Gunnar; Blanes-Vidal, Victoria; Herp, J.; S. Nadimi, Esmaeil.

In: Scientific Reports, Vol. 12, 13723, 2022.

Research output: Contribution to journalJournal articleResearchpeer-review

Harvard

Sahafi, A, Rasmussen, CLM, Bollen, P, Baatrup, G, Blanes-Vidal, V, Herp, J & S. Nadimi, E 2022, 'Edge artifcial intelligence wireless video capsule endoscopy', Scientific Reports, vol. 12, 13723. https://doi.org/10.1038/s41598-022-17502-7

APA

Sahafi, A., Rasmussen, C. L. M., Bollen, P., Baatrup, G., Blanes-Vidal, V., Herp, J., & S. Nadimi, E. (2022). Edge artifcial intelligence wireless video capsule endoscopy. Scientific Reports, 12, [13723]. https://doi.org/10.1038/s41598-022-17502-7

Vancouver

Sahafi A, Rasmussen CLM, Bollen P, Baatrup G, Blanes-Vidal V, Herp J et al. Edge artifcial intelligence wireless video capsule endoscopy. Scientific Reports. 2022;12. 13723. https://doi.org/10.1038/s41598-022-17502-7

Author

Sahafi, A ; Rasmussen, C. L. M. ; Bollen, Peter ; Baatrup, Gunnar ; Blanes-Vidal, Victoria ; Herp, J. ; S. Nadimi, Esmaeil. / Edge artifcial intelligence wireless video capsule endoscopy. In: Scientific Reports. 2022 ; Vol. 12.

Bibtex

@article{2499d5e4bbfb43809b352014ad1c8260,
title = "Edge artifcial intelligence wireless video capsule endoscopy",
abstract = "Gastrointestinal (GI) tract diseases are responsible for substantial morbidity and mortality worldwide, including colorectal cancer, which has shown a rising incidence among adults younger than 50. Although this could be alleviated by regular screening, only a small percentage of those at risk are screened comprehensively, due to shortcomings in accuracy and patient acceptance. To address these challenges, we designed an artificial intelligence (AI)-empowered wireless video endoscopic capsule that surpasses the performance of the existing solutions by featuring, among others: (1) real-time image processing using onboard deep neural networks (DNN), (2) enhanced visualization of the mucous layer by deploying both white-light and narrow-band imaging, (3) on-the-go task modification and DNN update using over-the-air-programming and (4) bi-directional communication with patient{\textquoteright}s personal electronic devices to report important findings. We tested our solution in an in vivo setting, by administrating our endoscopic capsule to a pig under general anesthesia. All novel features, successfully implemented on a single platform, were validated. Our study lays the groundwork for clinically implementing a new generation of endoscopic capsules, which will significantly improve early diagnosis of upper and lower GI tract diseases.",
author = "A Sahafi and Rasmussen, {C. L. M.} and Peter Bollen and Gunnar Baatrup and Victoria Blanes-Vidal and J. Herp and {S. Nadimi}, Esmaeil",
year = "2022",
doi = "10.1038/s41598-022-17502-7",
language = "English",
volume = "12",
journal = "Scientific Reports",
issn = "2045-2322",
publisher = "nature publishing group",

}

RIS

TY - JOUR

T1 - Edge artifcial intelligence wireless video capsule endoscopy

AU - Sahafi, A

AU - Rasmussen, C. L. M.

AU - Bollen, Peter

AU - Baatrup, Gunnar

AU - Blanes-Vidal, Victoria

AU - Herp, J.

AU - S. Nadimi, Esmaeil

PY - 2022

Y1 - 2022

N2 - Gastrointestinal (GI) tract diseases are responsible for substantial morbidity and mortality worldwide, including colorectal cancer, which has shown a rising incidence among adults younger than 50. Although this could be alleviated by regular screening, only a small percentage of those at risk are screened comprehensively, due to shortcomings in accuracy and patient acceptance. To address these challenges, we designed an artificial intelligence (AI)-empowered wireless video endoscopic capsule that surpasses the performance of the existing solutions by featuring, among others: (1) real-time image processing using onboard deep neural networks (DNN), (2) enhanced visualization of the mucous layer by deploying both white-light and narrow-band imaging, (3) on-the-go task modification and DNN update using over-the-air-programming and (4) bi-directional communication with patient’s personal electronic devices to report important findings. We tested our solution in an in vivo setting, by administrating our endoscopic capsule to a pig under general anesthesia. All novel features, successfully implemented on a single platform, were validated. Our study lays the groundwork for clinically implementing a new generation of endoscopic capsules, which will significantly improve early diagnosis of upper and lower GI tract diseases.

AB - Gastrointestinal (GI) tract diseases are responsible for substantial morbidity and mortality worldwide, including colorectal cancer, which has shown a rising incidence among adults younger than 50. Although this could be alleviated by regular screening, only a small percentage of those at risk are screened comprehensively, due to shortcomings in accuracy and patient acceptance. To address these challenges, we designed an artificial intelligence (AI)-empowered wireless video endoscopic capsule that surpasses the performance of the existing solutions by featuring, among others: (1) real-time image processing using onboard deep neural networks (DNN), (2) enhanced visualization of the mucous layer by deploying both white-light and narrow-band imaging, (3) on-the-go task modification and DNN update using over-the-air-programming and (4) bi-directional communication with patient’s personal electronic devices to report important findings. We tested our solution in an in vivo setting, by administrating our endoscopic capsule to a pig under general anesthesia. All novel features, successfully implemented on a single platform, were validated. Our study lays the groundwork for clinically implementing a new generation of endoscopic capsules, which will significantly improve early diagnosis of upper and lower GI tract diseases.

U2 - 10.1038/s41598-022-17502-7

DO - 10.1038/s41598-022-17502-7

M3 - Journal article

C2 - 35962014

VL - 12

JO - Scientific Reports

JF - Scientific Reports

SN - 2045-2322

M1 - 13723

ER -

ID: 318706728