AI Article Synopsis

  • - The study aimed to evaluate how image features and radiomics combined with machine learning can assess liver function in cirrhotic patients using Gd-EOB-DTPA-enhanced MRI.
  • - A total of 123 cirrhotic patients underwent MRI, and various imaging metrics were analyzed to develop a machine learning model (using support vector machine) to classify liver function.
  • - The findings showed that the radiomics-based model outperformed traditional imaging metrics, achieving high accuracy (89.19%) and sensitivity (95.45%) in distinguishing different levels of liver function based on the Child-Pugh classification.

Article Abstract

Objective: To investigate the feasibility of image characteristics and radiomics combined with machine learning based on Gd-EOB-DTPA-enhanced MRI for functional liver reserve assessment in cirrhotic patients.

Materials And Methods: 123 patients with cirrhosis were retrospectively analyzed; all our patients underwent pre-contrast MRI, triphasic (arterial phase, venous phase, equilibrium phase) Gd-EOB-DTPA dynamic enhancement and hepatobiliary phase (20 minutes delayed). The relative enhancement (RE) of the patient's liver, the liver-spleen signal ratio in the hepatobiliary phase (SI liver/ spleen), the liver-vertical muscle signal ratio in the hepatobiliary phase (SI liver/ muscle), the bile duct signal intensity contrast ratio (SIR), and the radiomics features were evaluated. The support vector machine (SVM) was used as the core of machine learning to construct the liver function classification model using image and radiomics characteristics, respectively.

Results: The area under the curve was the largest in SIR to identify Child-Pugh group A versus Child-Pugh group B+C in the image characteristics, AUC = 0.740, and Perc. 10% to identify Child-Pugh group A versus Child-Pugh group B+C in the radiomics characteristics, AUC = 0.9337. The efficacy of the SVM model constructed using radiomics characteristics was better, with an area under the curve of 0.918, a sensitivity of 95.45%, a specificity of 80.00%, and an accuracy of 89.19%.

Conclusion: The image and radiomics characteristics based on Gd-EOB-DTPA-enhanced MRI can reflect liver function, and the model constructed based on radiomics characteristics combined with machine learning methods can better assess functional liver reserve.

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Source
http://dx.doi.org/10.2174/0115734056281405240104155500DOI Listing

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