Abstract
Purpose
Recurrence is the leading cause of death in hepatocellular carcinoma (HCC) patients with curative resection. In this study, we aimed to develop a preoperative predictive model based on high-throughput radiomics features and clinical factors for prediction of long- and short-term recurrence for these patients.Methods
A total of 270 patients with HCC who were followed up for at least 5 years after curative hepatectomy between June 2014 and December 2017 were enrolled in this retrospective study. Regions of interest were manually delineated in preoperative T2-weighted images using ITK-SNAP software on each HCC tumor slice. A total of 1197 radiomics features were extracted, and the recursive feature elimination method based on logistic regression was used for radiomics signature building. Tenfold cross-validation was applied for model development. Nomograms were constructed and assessed by calibration plot, which compares nomogram-predicated probability with observed outcome. Receiver-operating characteristic was then generated to evaluate the predictive performance of the model in the development and test cohorts.Results
The 10 most recurrence-free survival-related radiomics features were selected for the radiomics signatures. A multiparametric clinical-radiomics model combining albumin and radiomics score for recurrence prediction was further established. The integrated model demonstrated good calibration and satisfactory discrimination, with the area under the curve (AUC) of 0.864, 95% CI 0.842-0.903, sensitivity of 0.889, and specificity of 0.644 in the test set. Calibration curve showed good agreement concerning 5-year recurrence risk predicted by the nomogram. In addition, the AUC of 1-, 2-, 3-, and 4-year recurrence was 0.935 (95% CI 0.836-1.000), 0.861 (95% CI 0.723-0.999), 0.878 (95% CI 0.762-0.994), and 0.878 (95% CI 0.762-0.994) in the test set, respectively.Conclusions
The clinical-radiomics model integrating radiomics features and clinical factors can improve recurrence predictions beyond predictions made using clinical factors or radiomics features alone. Our clinical-radiomics model is a valid method to predict recurrence that should improve preoperative prognostic performance and allow more individualized treatment decisions.Citations & impact
Impact metrics
Citations of article over time
Alternative metrics
Discover the attention surrounding your research
https://www.altmetric.com/details/137556342
Article citations
Predicting disease recurrence in breast cancer patients using machine learning models with clinical and radiomic characteristics: a retrospective study.
J Egypt Natl Canc Inst, 36(1):20, 10 Jun 2024
Cited by: 0 articles | PMID: 38853190
Preoperative prediction power of radiomics and non-radiomics methods based on MRI for early recurrence in hepatocellular carcinoma: a systemic review and meta-analysis.
Abdom Radiol (NY), 49(10):3397-3411, 05 May 2024
Cited by: 1 article | PMID: 38704783
Review
Preoperative prediction for early recurrence of hepatocellular carcinoma using machine learning-based radiomics.
Front Oncol, 14:1346124, 15 Mar 2024
Cited by: 0 articles | PMID: 38559563 | PMCID: PMC10978579
Current status of magnetic resonance imaging radiomics in hepatocellular carcinoma: A quantitative review with Radiomics Quality Score.
World J Gastroenterol, 30(4):381-417, 01 Jan 2024
Cited by: 1 article | PMID: 38313230 | PMCID: PMC10835534
Review Free full text in Europe PMC
Radiomics for preoperative prediction of early recurrence in hepatocellular carcinoma: a meta-analysis.
Front Oncol, 13:1114983, 07 Jun 2023
Cited by: 5 articles | PMID: 37350952 | PMCID: PMC10282764
Review Free full text in Europe PMC
Similar Articles
To arrive at the top five similar articles we use a word-weighted algorithm to compare words from the Title and Abstract of each citation.
A radiomics nomogram for the prediction of overall survival in patients with hepatocellular carcinoma after hepatectomy.
Cancer Imaging, 20(1):82, 16 Nov 2020
Cited by: 27 articles | PMID: 33198809 | PMCID: PMC7667801
Radiomics model based on preoperative gadoxetic acid-enhanced MRI for predicting liver failure.
World J Gastroenterol, 26(11):1208-1220, 01 Mar 2020
Cited by: 14 articles | PMID: 32231424 | PMCID: PMC7093309
Prediction of early recurrence of hepatocellular carcinoma after liver transplantation based on computed tomography radiomics nomogram.
Hepatobiliary Pancreat Dis Int, 21(6):543-550, 01 Jun 2022
Cited by: 7 articles | PMID: 35705443
Radiomics-based Machine Learning to Predict the Recurrence of Hepatocellular Carcinoma: A Systematic Review and Meta-analysis.
Acad Radiol, 31(2):467-479, 20 Oct 2023
Cited by: 6 articles | PMID: 37867018
Review