» Articles » PMID: 31217445

Hepatic Tumor Classification Using Texture and Topology Analysis of Non-contrast-enhanced Three-dimensional T1-weighted MR Images with a Radiomics Approach

Overview
Journal Sci Rep
Specialty Science
Date 2019 Jun 21
PMID 31217445
Citations 33
Authors
Affiliations
Soon will be listed here.
Abstract

The purpose of this study is to evaluate the accuracy for classification of hepatic tumors by characterization of T1-weighted magnetic resonance (MR) images using two radiomics approaches with machine learning models: texture analysis and topological data analysis using persistent homology. This study assessed non-contrast-enhanced fat-suppressed three-dimensional (3D) T1-weighted images of 150 hepatic tumors. The lesions included 50 hepatocellular carcinomas (HCCs), 50 metastatic tumors (MTs), and 50 hepatic hemangiomas (HHs) found respectively in 37, 23, and 33 patients. For classification, texture features were calculated, and also persistence images of three types (degree 0, degree 1 and degree 2) were obtained for each lesion from the 3D MR imaging data. We used three classification models. In the classification of HCC and MT (resp. HCC and HH, HH and MT), we obtained accuracy of 92% (resp. 90%, 73%) by texture analysis, and the highest accuracy of 85% (resp. 84%, 74%) when degree 1 (resp. degree 1, degree 2) persistence images were used. Our methods using texture analysis or topological data analysis allow for classification of the three hepatic tumors with considerable accuracy, and thus might be useful when applied for computer-aided diagnosis with MR images.

Citing Articles

Application of artificial intelligence in the diagnosis of hepatocellular carcinoma.

Koh B, Danpanichkul P, Wang M, Tan D, Ng C eGastroenterology. 2025; 1(2):e100002.

PMID: 39944000 PMC: 11770452. DOI: 10.1136/egastro-2023-100002.


The role of artificial intelligence and image processing in the diagnosis, treatment, and prognosis of liver cancer: a narrative-review.

Dimopoulos P, Mulita A, Antzoulas A, Bodard S, Leivaditis V, Akrida I Prz Gastroenterol. 2025; 19(3):221-230.

PMID: 39802971 PMC: 11718495. DOI: 10.5114/pg.2024.143147.


Systematic review and meta-analysis on the classification metrics of machine learning algorithm based radiomics in hepatocellular carcinoma diagnosis.

Mohd Haniff N, Ng K, Kamal I, Mohd Zain N, Abdul Karim M Heliyon. 2024; 10(16):e36313.

PMID: 39253167 PMC: 11382069. DOI: 10.1016/j.heliyon.2024.e36313.


Disease modifiers and novel markers in hepatitis B virus-related hepatocellular carcinoma.

Mak L J Liver Cancer. 2024; 24(2):145-154.

PMID: 39099070 PMC: 11449577. DOI: 10.17998/jlc.2024.08.03.


MRI Radiomics in Imaging of Focal Hepatic Lesions: A Narrative Review.

Baishya N, Baishya K, Baishya K, Sarma R, Ray S Cureus. 2024; 16(6):e62570.

PMID: 39027765 PMC: 11255417. DOI: 10.7759/cureus.62570.


References
1.
Marrero J, Ahn J, Reddy K . ACG clinical guideline: the diagnosis and management of focal liver lesions. Am J Gastroenterol. 2014; 109(9):1328-47. DOI: 10.1038/ajg.2014.213. View

2.
Gillies R, Kinahan P, Hricak H . Radiomics: Images Are More than Pictures, They Are Data. Radiology. 2015; 278(2):563-77. PMC: 4734157. DOI: 10.1148/radiol.2015151169. View

3.
Kanematsu M, Kondo H, Goshima S, Kato H, Tsuge U, Hirose Y . Imaging liver metastases: review and update. Eur J Radiol. 2006; 58(2):217-28. DOI: 10.1016/j.ejrad.2005.11.041. View

4.
Faria S, Ganesan K, Mwangi I, Shiehmorteza M, Viamonte B, Mazhar S . MR imaging of liver fibrosis: current state of the art. Radiographics. 2009; 29(6):1615-35. PMC: 6939850. DOI: 10.1148/rg.296095512. View

5.
Hiraoka Y, Nakamura T, Hirata A, Escolar E, Matsue K, Nishiura Y . Hierarchical structures of amorphous solids characterized by persistent homology. Proc Natl Acad Sci U S A. 2016; 113(26):7035-40. PMC: 4932931. DOI: 10.1073/pnas.1520877113. View