Frontiers in Oncology (Sep 2024)

Assessing microvascular invasion in HBV-related hepatocellular carcinoma: an online interactive nomogram integrating inflammatory markers, radiomics, and convolutional neural networks

  • Yun Zhong,
  • Yun Zhong,
  • Yun Zhong,
  • Yun Zhong,
  • Lingfeng Chen,
  • Lingfeng Chen,
  • Lingfeng Chen,
  • Lingfeng Chen,
  • Fadian Ding,
  • Fadian Ding,
  • Fadian Ding,
  • Fadian Ding,
  • Wenshi Ou,
  • Wenshi Ou,
  • Wenshi Ou,
  • Wenshi Ou,
  • Xiang Zhang,
  • Xiang Zhang,
  • Xiang Zhang,
  • Xiang Zhang,
  • Shangeng Weng,
  • Shangeng Weng,
  • Shangeng Weng,
  • Shangeng Weng

DOI
https://doi.org/10.3389/fonc.2024.1401095
Journal volume & issue
Vol. 14

Abstract

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ObjectiveThe early recurrence of hepatocellular carcinoma (HCC) correlates with decreased overall survival. Microvascular invasion (MVI) stands out as a prominent hazard influencing post-resection survival status and metastasis in patients with HBV-related HCC. The study focused on developing a web-based nomogram for preoperative prediction of MVI in HBV-HCC.Materials and methods173 HBV-HCC patients from 2017 to 2022 with complete preoperative clinical data and Gadopentetate dimeglumine-enhanced magnetic resonance images were randomly divided into two groups for the purpose of model training and validation, using a ratio of 7:3. MRI signatures were extracted by pyradiomics and the deep neural network, 3D ResNet. Clinical factors, blood-cell-inflammation markers, and MRI signatures selected by LASSO were incorporated into the predictive nomogram. The evaluation of the predictive accuracy involved assessing the area under the receiver operating characteristic (ROC) curve (AUC), the concordance index (C-index), along with analyses of calibration and decision curves.ResultsInflammation marker, neutrophil-to-lymphocyte ratio (NLR), was positively correlated with independent MRI radiomics risk factors for MVI. The performance of prediction model combined serum AFP, AST, NLR, 15 radiomics features and 7 deep features was better than clinical and radiomics models. The combined model achieved C-index values of 0.926 and 0.917, with AUCs of 0.911 and 0.907, respectively.ConclusionNLR showed a positive correlation with MRI radiomics and deep learning features. The nomogram, incorporating NLR and MRI features, accurately predicted individualized MVI risk preoperatively.

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