Result: Detection of colorectal adenomas using artificial intelligence models in patients with chronic hepatitis C.

Title:
Detection of colorectal adenomas using artificial intelligence models in patients with chronic hepatitis C.
Authors:
Singh Y; Department of Internal Medicine, Saint Vincent Hospital, Worcester, MA 01608, United States. yuvarajmle@gmail.com., Gogtay M; Hospice and Palliative Medicine, University of Texas Health-San Antonio, San Antonio, TX 78201, United States., Yekula A; Department of Internal Medicine, Saint Vincent Hospital, Worcester, MA 01608, United States., Soni A; Department of Internal Medicine, Saint Vincent Hospital, Worcester, MA 01608, United States., Mishra AK; Division of Cardiology, Saint Vincent Hospital, Worcester, MA 01608, United States., Tripathi K; Division of Gastroenterology and Hepatology, UMass Chan School-Baystate Medical Center, Springfield, MA 01199, United States., Abraham GM; Division of Infectious Disease, Chief of Medicine, Saint Vincent Hospital, Worcester, MA 01608, United States.
Source:
World journal of hepatology [World J Hepatol] 2023 Jan 27; Vol. 15 (1), pp. 107-115.
Publication Type:
Journal Article
Language:
English
Journal Info:
Publisher: Baishideng Publishing Group Country of Publication: United States NLM ID: 101532469 Publication Model: Print Cited Medium: Print ISSN: 1948-5182 (Print) NLM ISO Abbreviation: World J Hepatol Subsets: PubMed not MEDLINE
Imprint Name(s):
Publication: 2014- : Pleasanton, CA : Baishideng Publishing Group
Original Publication: Beijing, China : Baishideng
References:
N Engl J Med. 2001 Jul 5;345(1):41-52. (PMID: 11439948)
Clin Infect Dis. 2013 Jan;56(1):40-50. (PMID: 22990852)
J Gastroenterol Hepatol. 2021 Feb;36(2):267-272. (PMID: 33624890)
World J Gastroenterol. 2022 May 28;28(20):2152-2162. (PMID: 35721881)
Hepatology. 2012 Jun;55(6):1652-61. (PMID: 22213025)
Int J Colorectal Dis. 2014 Jan;29(1):75-80. (PMID: 23982424)
N Engl J Med. 2014 Jun 26;370(26):2541. (PMID: 24963577)
Nat Rev Gastroenterol Hepatol. 2018 May;15(5):283-290. (PMID: 29339810)
Hepatology. 2019 Mar;69(3):1020-1031. (PMID: 30398671)
Am J Gastroenterol. 2021 Mar 1;116(3):458-479. (PMID: 33657038)
Gastroenterology. 2019 Oct;157(4):1044-1054.e5. (PMID: 31251929)
Molecules. 2019 Jun 15;24(12):. (PMID: 31208050)
Genet Mol Res. 2015 Dec 21;14(4):17605-11. (PMID: 26782405)
Hepatol Int. 2016 May;10(3):415-23. (PMID: 26660706)
Clin Gastroenterol Hepatol. 2020 Jul;18(8):1874-1881.e2. (PMID: 31525512)
Curr Oncol. 2021 Apr 23;28(3):1581-1607. (PMID: 33922402)
J Community Hosp Intern Med Perspect. 2022 Jul 04;12(4):58-65. (PMID: 36348970)
CA Cancer J Clin. 2018 Nov;68(6):394-424. (PMID: 30207593)
Contributed Indexing:
Keywords: Artificial intelligence; Calculator; Hepatitis C; Machine learning; Screening
Entry Date(s):
Date Created: 20230206 Latest Revision: 20230207
Update Code:
20250114
PubMed Central ID:
PMC9896503
DOI:
10.4254/wjh.v15.i1.107
PMID:
36744168
Database:
MEDLINE

Further Information

Background: Hepatitis C virus is known for its oncogenic potential, especially in hepatocellular carcinoma and non-Hodgkin lymphoma. Several studies have shown that chronic hepatitis C (CHC) has an increased risk of the development of colorectal cancer (CRC).
Aim: To analyze this positive relationship and develop an artificial intelligence (AI)-based tool using machine learning (ML) algorithms to stratify these patient populations into risk groups for CRC/adenoma detection.
Methods: To develop the AI automated calculator, we applied ML to train models to predict the probability and the number of adenomas detected on colonoscopy. Data sets were split into 70:30 ratios for training and internal validation. The Scikit-learn standard scaler was used to scale values of continuous variables. Colonoscopy findings were used as the gold standard and deep learning architecture was used to train six ML models for prediction. A Flask (customizable Python framework) application programming interface (API) was used to deploy the trained ML model with the highest accuracy as a web application. Finally, Heroku was used for the deployment of the web-based API to https://adenomadetection.herokuapp.com.
Results: Of 415 patients, 206 had colonoscopy results. On internal validation, the Bernoulli naive Bayes model predicted the probability of adenoma detection with the highest accuracy of 56%, precision of 55%, recall of 55%, and F1 measure of 54%. Support vector regressor predicted the number of adenomas with the least mean absolute error of 0.905.
Conclusion: Our AI-based tool can help providers stratify patients with CHC for early referral for screening colonoscopy. Along with providing a numerical percentage, the calculator can also comment on the number of adenomatous polyps a gastroenterologist can expect, prompting a higher adenoma detection rate.
(©The Author(s) 2023. Published by Baishideng Publishing Group Inc. All rights reserved.)

Conflict-of-interest statement: All the authors report no relevant conflicts of interest for this article.