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The feasibility to use artificial intelligence to aid detecting focal liver lesions in real-time ultrasound: a preliminary study based on videos
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Metadata
Document Title
The feasibility to use artificial intelligence to aid detecting focal liver lesions in real-time ultrasound: a preliminary study based on videos
Author
Tiyarattanachai T, Apiparakoon T, Marukatat S, Sukcharoen S, Yimsawad S, Chaichuen O, Bhumiwat S, Tanpowpong N, Pinjaroen N, Rerknimitr R, Chaiteerakij R
Name from Authors Collection
Affiliations
Chulalongkorn University; Chulalongkorn University; National Science & Technology Development Agency - Thailand; National Electronics & Computer Technology Center (NECTEC); Chulalongkorn University; Thai Red Cross Society; Chulalongkorn University; Chulalongkorn University; Chulalongkorn University
Type
Article
Source Title
SCIENTIFIC REPORTS
ISSN
2045-2322
Year
2022
Volume
12
Issue
1
Page
-
Open Access
gold, Green Published
Publisher
NATURE PORTFOLIO
DOI
10.1038/s41598-022-11506-z
Format
Abstract
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.
Industrial Classification
Knowledge Taxonomy Level 1
Knowledge Taxonomy Level 2
Funding Sponsor
Second Century Fund (C2F), Chulalongkorn University; Ratchadapisek Sompoch Endowment Fund (2021), Chulalongkorn University [764002-HE06]; Digital Economy and Society Development Fund, Office of the National Digital Economy and Society Commission, Ministry of Digital Economy and Society, Thailand; University Technology Center, Chulalongkorn University; National Research Council of Thailand (NRCT) [N42A640330]
License
CC BY
Rights
Authors
Publication Source
WOS