Literature DB >> 36260613

The application of artificial intelligence to support biliary atresia screening by ultrasound images: A study based on deep learning models.

Fang-Rong Hsu1, Sheng-Tong Dai1,2, Chia-Man Chou3,4,5, Sheng-Yang Huang3,4,5.   

Abstract

PURPOSE: Early confirmation or ruling out biliary atresia (BA) is essential for infants with delayed onset of jaundice. In the current practice, percutaneous liver biopsy and intraoperative cholangiography (IOC) remain the golden standards for diagnosis. In Taiwan, the diagnostic methods are invasive and can only be performed in selective medical centers. However, referrals from primary physicians and local pediatricians are often delayed because of lacking clinical suspicions. Ultrasounds (US) are common screening tools in local hospitals and clinics, but the pediatric hepatobiliary US particularly requires well-trained imaging personnel. The meaningful comprehension of US is highly dependent on individual experience. For screening BA through human observation on US images, the reported sensitivity and specificity were achieved by pediatric radiologists, pediatric hepatobiliary experts, or pediatric surgeons. Therefore, this research developed a tool based on deep learning models for screening BA to assist pediatric US image reading by general physicians and pediatricians.
METHODS: De-identified hepatobiliary US images of 180 patients from Taichung Veterans General Hospital were retrospectively collected under the approval of the Institutional Review Board. Herein, the top network models of ImageNet Large Scale Visual Recognition Competition and other network models commonly used for US image recognition were included for further study to classify US images as BA or non-BA. The performance of different network models was expressed by the confusion matrix and receiver operating characteristic curve. There were two methods proposed to solve disagreement by US image classification of a single patient. The first and second methods were the positive-dominance law and threshold law. During the study, the US images of three successive patients suspected to have BA were classified by the trained models.
RESULTS: Among all included patients contributing US images, 41 patients were diagnosed with BA by surgical intervention and 139 patients were either healthy controls or had non-BA diagnoses. In this study, a total of 1,976 original US images were enrolled. Among them, 417 and 1,559 raw images were from patients with BA and without BA, respectively. Meanwhile, ShuffleNet achieved the highest accuracy of 90.56% using the same training parameters as compared with other network models. The sensitivity and specificity were 67.83% and 96.76%, respectively. In addition, the undesired false-negative prediction was prevented by applying positive-dominance law to interpret different images of a single patient with an acceptable false-positive rate, which was 13.64%. For the three consecutive patients with delayed obstructive jaundice with IOC confirmed diagnoses, ShuffleNet achieved accurate diagnoses in two patients.
CONCLUSION: The current study provides a screening tool for identifying possible BA by hepatobiliary US images. The method was not designed to replace liver biopsy or IOC, but to decrease human error for interpretations of US. By applying the positive-dominance law to ShuffleNet, the false-negative rate and the specificities were 0 and 86.36%, respectively. The trained deep learning models could aid physicians other than pediatric surgeons, pediatric gastroenterologists, or pediatric radiologists, to prevent misreading pediatric hepatobiliary US images. The current artificial intelligence (AI) tool is helpful for screening BA in the real world.

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Mesh:

Year:  2022        PMID: 36260613      PMCID: PMC9581370          DOI: 10.1371/journal.pone.0276278

Source DB:  PubMed          Journal:  PLoS One        ISSN: 1932-6203            Impact factor:   3.752


  14 in total

Review 1.  Screening for biliary atresia.

Authors:  Akira Matsui
Journal:  Pediatr Surg Int       Date:  2017-10-05       Impact factor: 1.827

2.  A quantitative image analysis using MRI for diagnosis of biliary atresia.

Authors:  Dao Chen Lin; Kun Yu Wu; Fang Ju Sun; Chun Chao Huang; Tung Hsin Wu; Shin Lin Shih; Pei Shan Tsai
Journal:  Clin Imaging       Date:  2018-10-12       Impact factor: 1.605

Review 3.  A Survey of Deep-Learning Applications in Ultrasound: Artificial Intelligence-Powered Ultrasound for Improving Clinical Workflow.

Authors:  Zeynettin Akkus; Jason Cai; Arunnit Boonrod; Atefeh Zeinoddini; Alexander D Weston; Kenneth A Philbrick; Bradley J Erickson
Journal:  J Am Coll Radiol       Date:  2019-09       Impact factor: 5.532

Review 4.  Understanding artificial intelligence based radiology studies: What is overfitting?

Authors:  Simukayi Mutasa; Shawn Sun; Richard Ha
Journal:  Clin Imaging       Date:  2020-04-23       Impact factor: 1.605

5.  Objective criteria of triangular cord sign in biliary atresia on US scans.

Authors:  Hee-Jung Lee; Sung-Moon Lee; Woo-Hyun Park; Soon-Ok Choi
Journal:  Radiology       Date:  2003-11       Impact factor: 11.105

Review 6.  Current management of biliary atresia.

Authors:  Deirdre A Kelly; Mark Davenport
Journal:  Arch Dis Child       Date:  2007-09-18       Impact factor: 3.791

7.  The accuracy of transcutaneous bilirubinometer measurements to identify the hyperbilirubinemia in outpatient newborn population.

Authors:  Şerif Ercan; Günay Özgün
Journal:  Clin Biochem       Date:  2018-03-27       Impact factor: 3.281

Review 8.  Accuracy of hepatobiliary scintigraphy for differentiation of neonatal hepatitis from biliary atresia: systematic review and meta-analysis of the literature.

Authors:  Hamid Reza Kianifar; Shahrzad Tehranian; Pardis Shojaei; Zohreh Adinehpoor; Ramin Sadeghi; Vahid Reza Dabbagh Kakhki; Alireza S Keshtgar
Journal:  Pediatr Radiol       Date:  2013-03-22

9.  Automation of the kidney function prediction and classification through ultrasound-based kidney imaging using deep learning.

Authors:  Chin-Chi Kuo; Chun-Min Chang; Kuan-Ting Liu; Wei-Kai Lin; Hsiu-Yin Chiang; Chih-Wei Chung; Meng-Ru Ho; Pei-Ran Sun; Rong-Lin Yang; Kuan-Ta Chen
Journal:  NPJ Digit Med       Date:  2019-04-26

Review 10.  Jaundice revisited: recent advances in the diagnosis and treatment of inherited cholestatic liver diseases.

Authors:  Huey-Ling Chen; Shang-Hsin Wu; Shu-Hao Hsu; Bang-Yu Liou; Hui-Ling Chen; Mei-Hwei Chang
Journal:  J Biomed Sci       Date:  2018-10-26       Impact factor: 8.410

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