Cargando…

The feasibility to use artificial intelligence to aid detecting focal liver lesions in real-time ultrasound: a preliminary study based on videos

Despite the wide availability of ultrasound machines for hepatocellular carcinoma surveillance, an inadequate number of expert radiologists performing ultrasounds in remote areas remains a primary barrier for surveillance. We demonstrated feasibility of artificial intelligence (AI) to aid in the det...

Descripción completa

Detalles Bibliográficos
Autores principales: Tiyarattanachai, Thodsawit, Apiparakoon, Terapap, Marukatat, Sanparith, Sukcharoen, Sasima, Yimsawad, Sirinda, Chaichuen, Oracha, Bhumiwat, Siwat, Tanpowpong, Natthaporn, Pinjaroen, Nutcha, Rerknimitr, Rungsun, Chaiteerakij, Roongruedee
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Nature Publishing Group UK 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9095624/
https://www.ncbi.nlm.nih.gov/pubmed/35545628
http://dx.doi.org/10.1038/s41598-022-11506-z
_version_ 1784705796798414848
author Tiyarattanachai, Thodsawit
Apiparakoon, Terapap
Marukatat, Sanparith
Sukcharoen, Sasima
Yimsawad, Sirinda
Chaichuen, Oracha
Bhumiwat, Siwat
Tanpowpong, Natthaporn
Pinjaroen, Nutcha
Rerknimitr, Rungsun
Chaiteerakij, Roongruedee
author_facet Tiyarattanachai, Thodsawit
Apiparakoon, Terapap
Marukatat, Sanparith
Sukcharoen, Sasima
Yimsawad, Sirinda
Chaichuen, Oracha
Bhumiwat, Siwat
Tanpowpong, Natthaporn
Pinjaroen, Nutcha
Rerknimitr, Rungsun
Chaiteerakij, Roongruedee
author_sort Tiyarattanachai, Thodsawit
collection PubMed
description Despite the wide availability of ultrasound machines for hepatocellular carcinoma surveillance, an inadequate number of expert radiologists performing ultrasounds in remote areas remains a primary barrier for surveillance. We demonstrated feasibility of artificial intelligence (AI) to aid in the detection of focal liver lesions (FLLs) during ultrasound. An AI system for FLL detection in ultrasound videos was developed. Data in this study were prospectively collected at a university hospital. We applied a two-step training strategy for developing the AI system by using a large collection of ultrasound snapshot images and frames from full-length ultrasound videos. Detection performance of the AI system was evaluated and then compared to detection performance by 25 physicians including 16 non-radiologist physicians and 9 radiologists. Our dataset contained 446 videos (273 videos with 387 FLLs and 173 videos without FLLs) from 334 patients. The videos yielded 172,035 frames with FLLs and 1,427,595 frames without FLLs for training on the AI system. The AI system achieved an overall detection rate of 89.8% (95%CI: 84.5–95.0) which was significantly higher than that achieved by non-radiologist physicians (29.1%, 95%CI: 21.2–37.0, p < 0.001) and radiologists (70.9%, 95%CI: 63.0–78.8, p < 0.001). Median false positive detection rate by the AI system was 0.7% (IQR: 1.3%). AI system operation speed reached 30–34 frames per second, showing real-time feasibility. A further study to demonstrate whether the AI system can assist operators during ultrasound examinations is warranted.
format Online
Article
Text
id pubmed-9095624
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher Nature Publishing Group UK
record_format MEDLINE/PubMed
spelling pubmed-90956242022-05-13 The feasibility to use artificial intelligence to aid detecting focal liver lesions in real-time ultrasound: a preliminary study based on videos Tiyarattanachai, Thodsawit Apiparakoon, Terapap Marukatat, Sanparith Sukcharoen, Sasima Yimsawad, Sirinda Chaichuen, Oracha Bhumiwat, Siwat Tanpowpong, Natthaporn Pinjaroen, Nutcha Rerknimitr, Rungsun Chaiteerakij, Roongruedee Sci Rep Article Despite the wide availability of ultrasound machines for hepatocellular carcinoma surveillance, an inadequate number of expert radiologists performing ultrasounds in remote areas remains a primary barrier for surveillance. We demonstrated feasibility of artificial intelligence (AI) to aid in the detection of focal liver lesions (FLLs) during ultrasound. An AI system for FLL detection in ultrasound videos was developed. Data in this study were prospectively collected at a university hospital. We applied a two-step training strategy for developing the AI system by using a large collection of ultrasound snapshot images and frames from full-length ultrasound videos. Detection performance of the AI system was evaluated and then compared to detection performance by 25 physicians including 16 non-radiologist physicians and 9 radiologists. Our dataset contained 446 videos (273 videos with 387 FLLs and 173 videos without FLLs) from 334 patients. The videos yielded 172,035 frames with FLLs and 1,427,595 frames without FLLs for training on the AI system. The AI system achieved an overall detection rate of 89.8% (95%CI: 84.5–95.0) which was significantly higher than that achieved by non-radiologist physicians (29.1%, 95%CI: 21.2–37.0, p < 0.001) and radiologists (70.9%, 95%CI: 63.0–78.8, p < 0.001). Median false positive detection rate by the AI system was 0.7% (IQR: 1.3%). AI system operation speed reached 30–34 frames per second, showing real-time feasibility. A further study to demonstrate whether the AI system can assist operators during ultrasound examinations is warranted. Nature Publishing Group UK 2022-05-11 /pmc/articles/PMC9095624/ /pubmed/35545628 http://dx.doi.org/10.1038/s41598-022-11506-z Text en © The Author(s) 2022 https://creativecommons.org/licenses/by/4.0/Open Access This article is licensed under a Creative Commons Attribution 4.0 International License, which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons licence, and indicate if changes were made. The images or other third party material in this article are included in the article's Creative Commons licence, unless indicated otherwise in a credit line to the material. If material is not included in the article's Creative Commons licence and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission directly from the copyright holder. To view a copy of this licence, visit http://creativecommons.org/licenses/by/4.0/ (https://creativecommons.org/licenses/by/4.0/) .
spellingShingle Article
Tiyarattanachai, Thodsawit
Apiparakoon, Terapap
Marukatat, Sanparith
Sukcharoen, Sasima
Yimsawad, Sirinda
Chaichuen, Oracha
Bhumiwat, Siwat
Tanpowpong, Natthaporn
Pinjaroen, Nutcha
Rerknimitr, Rungsun
Chaiteerakij, Roongruedee
The feasibility to use artificial intelligence to aid detecting focal liver lesions in real-time ultrasound: a preliminary study based on videos
title The feasibility to use artificial intelligence to aid detecting focal liver lesions in real-time ultrasound: a preliminary study based on videos
title_full The feasibility to use artificial intelligence to aid detecting focal liver lesions in real-time ultrasound: a preliminary study based on videos
title_fullStr The feasibility to use artificial intelligence to aid detecting focal liver lesions in real-time ultrasound: a preliminary study based on videos
title_full_unstemmed The feasibility to use artificial intelligence to aid detecting focal liver lesions in real-time ultrasound: a preliminary study based on videos
title_short The feasibility to use artificial intelligence to aid detecting focal liver lesions in real-time ultrasound: a preliminary study based on videos
title_sort feasibility to use artificial intelligence to aid detecting focal liver lesions in real-time ultrasound: a preliminary study based on videos
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9095624/
https://www.ncbi.nlm.nih.gov/pubmed/35545628
http://dx.doi.org/10.1038/s41598-022-11506-z
work_keys_str_mv AT tiyarattanachaithodsawit thefeasibilitytouseartificialintelligencetoaiddetectingfocalliverlesionsinrealtimeultrasoundapreliminarystudybasedonvideos
AT apiparakoonterapap thefeasibilitytouseartificialintelligencetoaiddetectingfocalliverlesionsinrealtimeultrasoundapreliminarystudybasedonvideos
AT marukatatsanparith thefeasibilitytouseartificialintelligencetoaiddetectingfocalliverlesionsinrealtimeultrasoundapreliminarystudybasedonvideos
AT sukcharoensasima thefeasibilitytouseartificialintelligencetoaiddetectingfocalliverlesionsinrealtimeultrasoundapreliminarystudybasedonvideos
AT yimsawadsirinda thefeasibilitytouseartificialintelligencetoaiddetectingfocalliverlesionsinrealtimeultrasoundapreliminarystudybasedonvideos
AT chaichuenoracha thefeasibilitytouseartificialintelligencetoaiddetectingfocalliverlesionsinrealtimeultrasoundapreliminarystudybasedonvideos
AT bhumiwatsiwat thefeasibilitytouseartificialintelligencetoaiddetectingfocalliverlesionsinrealtimeultrasoundapreliminarystudybasedonvideos
AT tanpowpongnatthaporn thefeasibilitytouseartificialintelligencetoaiddetectingfocalliverlesionsinrealtimeultrasoundapreliminarystudybasedonvideos
AT pinjaroennutcha thefeasibilitytouseartificialintelligencetoaiddetectingfocalliverlesionsinrealtimeultrasoundapreliminarystudybasedonvideos
AT rerknimitrrungsun thefeasibilitytouseartificialintelligencetoaiddetectingfocalliverlesionsinrealtimeultrasoundapreliminarystudybasedonvideos
AT chaiteerakijroongruedee thefeasibilitytouseartificialintelligencetoaiddetectingfocalliverlesionsinrealtimeultrasoundapreliminarystudybasedonvideos
AT tiyarattanachaithodsawit feasibilitytouseartificialintelligencetoaiddetectingfocalliverlesionsinrealtimeultrasoundapreliminarystudybasedonvideos
AT apiparakoonterapap feasibilitytouseartificialintelligencetoaiddetectingfocalliverlesionsinrealtimeultrasoundapreliminarystudybasedonvideos
AT marukatatsanparith feasibilitytouseartificialintelligencetoaiddetectingfocalliverlesionsinrealtimeultrasoundapreliminarystudybasedonvideos
AT sukcharoensasima feasibilitytouseartificialintelligencetoaiddetectingfocalliverlesionsinrealtimeultrasoundapreliminarystudybasedonvideos
AT yimsawadsirinda feasibilitytouseartificialintelligencetoaiddetectingfocalliverlesionsinrealtimeultrasoundapreliminarystudybasedonvideos
AT chaichuenoracha feasibilitytouseartificialintelligencetoaiddetectingfocalliverlesionsinrealtimeultrasoundapreliminarystudybasedonvideos
AT bhumiwatsiwat feasibilitytouseartificialintelligencetoaiddetectingfocalliverlesionsinrealtimeultrasoundapreliminarystudybasedonvideos
AT tanpowpongnatthaporn feasibilitytouseartificialintelligencetoaiddetectingfocalliverlesionsinrealtimeultrasoundapreliminarystudybasedonvideos
AT pinjaroennutcha feasibilitytouseartificialintelligencetoaiddetectingfocalliverlesionsinrealtimeultrasoundapreliminarystudybasedonvideos
AT rerknimitrrungsun feasibilitytouseartificialintelligencetoaiddetectingfocalliverlesionsinrealtimeultrasoundapreliminarystudybasedonvideos
AT chaiteerakijroongruedee feasibilitytouseartificialintelligencetoaiddetectingfocalliverlesionsinrealtimeultrasoundapreliminarystudybasedonvideos