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Development and validation of artificial intelligence to detect and diagnose liver lesions from ultrasound images
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Development and validation of artificial intelligence to detect and diagnose liver lesions from ultrasound imagesDownload
Metadata
Document Title
Development and validation of artificial intelligence to detect and diagnose liver lesions from ultrasound images
Author
Tiyarattanachai T, Apiparakoon T, Marukatat S, Sukcharoen S, Geratikornsupuk N, Anukulkarnkusol N, Mekaroonkamol P, Tanpowpong N, Sarakul P, 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
PLOS ONE
Year
2021
Volume
16
Issue
6
Open Access
gold, Green Published
Publisher
PUBLIC LIBRARY SCIENCE
DOI
10.1371/journal.pone.0252882
Format
Abstract
Artificial intelligence (AI) using a convolutional neural network (CNN) has demonstrated promising performance in radiological analysis. We aimed to develop and validate a CNN for the detection and diagnosis of focal liver lesions (FLLs) from ultrasonography (USG) still images. The CNN was developed with a supervised training method using 40,397 retrospectively collected images from 3,487 patients, including 20,432 FLLs (hepatocellular carcinomas (HCCs), cysts, hemangiomas, focal fatty sparing, and focal fatty infiltration). AI performance was evaluated using an internal test set of 6,191 images with 845 FLLs, then externally validated using 18,922 images with 1,195 FLLs from two additional hospitals. The internal evaluation yielded an overall detection rate, diagnostic sensitivity and specificity of 87.0% (95%CI: 84.3-89.6), 83.9% (95%CI: 80.3-87.4), and 97.1% (95%CI: 96.5-97.7), respectively. The CNN also performed consistently well on external validation cohorts, with a detection rate, diagnostic sensitivity and specificity of 75.0% (95%CI: 71.7-78.3), 84.9% (95%CI: 81.6-88.2), and 97.1% (95%CI: 96.5-97.6), respectively. For diagnosis of HCC, the CNN yielded sensitivity, specificity, and negative predictive value (NPV) of 73.6% (95%CI: 64.3-82.8), 97.8% (95%CI: 96.7-98.9), and 96.5% (95%CI: 95.0-97.9) on the internal test set; and 81.5% (95%CI: 74.2-88.8), 94.4% (95%CI: 92.8-96.0), and 97.4% (95%CI: 96.2-98.5) on the external validation set, respectively. CNN detected and diagnosed common FLLs in USG images with excellent specificity and NPV for HCC. Further development of an AI system for real-time detection and characterization of FLLs in USG is warranted.
Industrial Classification
Knowledge Taxonomy Level 1
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Knowledge Taxonomy Level 3
Funding Sponsor
Second Century Fund (C2F), Chulalongkorn University; Ratchadapisek Sompoch Endowment Fund (2019) under Telehealth Cluster, Chulalongkorn University; Grant for International Research Integration: Chula Research Scholar, Ratchadaphiseksomphot Endowment Fund, Chulalongkorn University
License
CC-BY
Rights
Authors
Publication Source
WOS