Cargando…

A real-time anatomy ıdentification via tool based on artificial ıntelligence for ultrasound-guided peripheral nerve block procedures: an accuracy study

We aimed to assess the accuracy of an artificial intelligence (AI)-based real-time anatomy identification software specifically developed to ease image interpretation intended for ultrasound-guided peripheral nerve block (UGPNB). Forty healthy participants (20 women, 20 men) were enrolled to perform...

Descripción completa

Detalles Bibliográficos
Autores principales: Gungor, Irfan, Gunaydin, Berrin, Oktar, Suna O., M.Buyukgebiz, Beyza, Bagcaz, Selin, Ozdemir, Miray Gozde, Inan, Gozde
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Springer Singapore 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8131172/
https://www.ncbi.nlm.nih.gov/pubmed/34008072
http://dx.doi.org/10.1007/s00540-021-02947-3
_version_ 1783694662910869504
author Gungor, Irfan
Gunaydin, Berrin
Oktar, Suna O.
M.Buyukgebiz, Beyza
Bagcaz, Selin
Ozdemir, Miray Gozde
Inan, Gozde
author_facet Gungor, Irfan
Gunaydin, Berrin
Oktar, Suna O.
M.Buyukgebiz, Beyza
Bagcaz, Selin
Ozdemir, Miray Gozde
Inan, Gozde
author_sort Gungor, Irfan
collection PubMed
description We aimed to assess the accuracy of an artificial intelligence (AI)-based real-time anatomy identification software specifically developed to ease image interpretation intended for ultrasound-guided peripheral nerve block (UGPNB). Forty healthy participants (20 women, 20 men) were enrolled to perform interscalene, supraclavicular, infraclavicular, and transversus abdominis plane (TAP) blocks under ultrasound guidance using AI software by anesthesiology trainees. During block practice by a trainee, once the software indicates 100% scan success of each block associated anatomic landmarks, both raw and labeled ultrasound images were saved, assessed, and validated using a 5-point scale by expert validators. When trainees reached 100% scan success, accuracy scores of the validators were noted. Correlation analysis was used whether the relationship (r) according to demographics (gender, age, and body mass index: BMI) and block type exist. The BMI (kg/m(2)) and age (year) of participants were 22.2 ± 3 and 32.2 ± 5.25, respectively. Assessment scores of validators for all blocks were similar in male and female individuals. Mean assessment scores of validators were not significantly different according to age and BMI except for TAP block, which was inversely correlated with age and BMI (p = 0.01). AI technology can successfully interpret anatomical structures in real-time sonography while assisting young anesthesiologists during UGPNB practice.
format Online
Article
Text
id pubmed-8131172
institution National Center for Biotechnology Information
language English
publishDate 2021
publisher Springer Singapore
record_format MEDLINE/PubMed
spelling pubmed-81311722021-05-19 A real-time anatomy ıdentification via tool based on artificial ıntelligence for ultrasound-guided peripheral nerve block procedures: an accuracy study Gungor, Irfan Gunaydin, Berrin Oktar, Suna O. M.Buyukgebiz, Beyza Bagcaz, Selin Ozdemir, Miray Gozde Inan, Gozde J Anesth Short Communication We aimed to assess the accuracy of an artificial intelligence (AI)-based real-time anatomy identification software specifically developed to ease image interpretation intended for ultrasound-guided peripheral nerve block (UGPNB). Forty healthy participants (20 women, 20 men) were enrolled to perform interscalene, supraclavicular, infraclavicular, and transversus abdominis plane (TAP) blocks under ultrasound guidance using AI software by anesthesiology trainees. During block practice by a trainee, once the software indicates 100% scan success of each block associated anatomic landmarks, both raw and labeled ultrasound images were saved, assessed, and validated using a 5-point scale by expert validators. When trainees reached 100% scan success, accuracy scores of the validators were noted. Correlation analysis was used whether the relationship (r) according to demographics (gender, age, and body mass index: BMI) and block type exist. The BMI (kg/m(2)) and age (year) of participants were 22.2 ± 3 and 32.2 ± 5.25, respectively. Assessment scores of validators for all blocks were similar in male and female individuals. Mean assessment scores of validators were not significantly different according to age and BMI except for TAP block, which was inversely correlated with age and BMI (p = 0.01). AI technology can successfully interpret anatomical structures in real-time sonography while assisting young anesthesiologists during UGPNB practice. Springer Singapore 2021-05-19 2021 /pmc/articles/PMC8131172/ /pubmed/34008072 http://dx.doi.org/10.1007/s00540-021-02947-3 Text en © Japanese Society of Anesthesiologists 2021 This article is made available via the PMC Open Access Subset for unrestricted research re-use and secondary analysis in any form or by any means with acknowledgement of the original source. These permissions are granted for the duration of the World Health Organization (WHO) declaration of COVID-19 as a global pandemic.
spellingShingle Short Communication
Gungor, Irfan
Gunaydin, Berrin
Oktar, Suna O.
M.Buyukgebiz, Beyza
Bagcaz, Selin
Ozdemir, Miray Gozde
Inan, Gozde
A real-time anatomy ıdentification via tool based on artificial ıntelligence for ultrasound-guided peripheral nerve block procedures: an accuracy study
title A real-time anatomy ıdentification via tool based on artificial ıntelligence for ultrasound-guided peripheral nerve block procedures: an accuracy study
title_full A real-time anatomy ıdentification via tool based on artificial ıntelligence for ultrasound-guided peripheral nerve block procedures: an accuracy study
title_fullStr A real-time anatomy ıdentification via tool based on artificial ıntelligence for ultrasound-guided peripheral nerve block procedures: an accuracy study
title_full_unstemmed A real-time anatomy ıdentification via tool based on artificial ıntelligence for ultrasound-guided peripheral nerve block procedures: an accuracy study
title_short A real-time anatomy ıdentification via tool based on artificial ıntelligence for ultrasound-guided peripheral nerve block procedures: an accuracy study
title_sort real-time anatomy ıdentification via tool based on artificial ıntelligence for ultrasound-guided peripheral nerve block procedures: an accuracy study
topic Short Communication
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8131172/
https://www.ncbi.nlm.nih.gov/pubmed/34008072
http://dx.doi.org/10.1007/s00540-021-02947-3
work_keys_str_mv AT gungorirfan arealtimeanatomyıdentificationviatoolbasedonartificialıntelligenceforultrasoundguidedperipheralnerveblockproceduresanaccuracystudy
AT gunaydinberrin arealtimeanatomyıdentificationviatoolbasedonartificialıntelligenceforultrasoundguidedperipheralnerveblockproceduresanaccuracystudy
AT oktarsunao arealtimeanatomyıdentificationviatoolbasedonartificialıntelligenceforultrasoundguidedperipheralnerveblockproceduresanaccuracystudy
AT mbuyukgebizbeyza arealtimeanatomyıdentificationviatoolbasedonartificialıntelligenceforultrasoundguidedperipheralnerveblockproceduresanaccuracystudy
AT bagcazselin arealtimeanatomyıdentificationviatoolbasedonartificialıntelligenceforultrasoundguidedperipheralnerveblockproceduresanaccuracystudy
AT ozdemirmiraygozde arealtimeanatomyıdentificationviatoolbasedonartificialıntelligenceforultrasoundguidedperipheralnerveblockproceduresanaccuracystudy
AT inangozde arealtimeanatomyıdentificationviatoolbasedonartificialıntelligenceforultrasoundguidedperipheralnerveblockproceduresanaccuracystudy
AT gungorirfan realtimeanatomyıdentificationviatoolbasedonartificialıntelligenceforultrasoundguidedperipheralnerveblockproceduresanaccuracystudy
AT gunaydinberrin realtimeanatomyıdentificationviatoolbasedonartificialıntelligenceforultrasoundguidedperipheralnerveblockproceduresanaccuracystudy
AT oktarsunao realtimeanatomyıdentificationviatoolbasedonartificialıntelligenceforultrasoundguidedperipheralnerveblockproceduresanaccuracystudy
AT mbuyukgebizbeyza realtimeanatomyıdentificationviatoolbasedonartificialıntelligenceforultrasoundguidedperipheralnerveblockproceduresanaccuracystudy
AT bagcazselin realtimeanatomyıdentificationviatoolbasedonartificialıntelligenceforultrasoundguidedperipheralnerveblockproceduresanaccuracystudy
AT ozdemirmiraygozde realtimeanatomyıdentificationviatoolbasedonartificialıntelligenceforultrasoundguidedperipheralnerveblockproceduresanaccuracystudy
AT inangozde realtimeanatomyıdentificationviatoolbasedonartificialıntelligenceforultrasoundguidedperipheralnerveblockproceduresanaccuracystudy