Objectives <p>To develop and validate machine learning (ML) models using clinical and contrast-enhanced CT (CECT) parameters to assess recurrence risk in hepatocellular carcinoma (HCC) after transarterial chemoembolization (TACE) achieving imaging complete response (CR).</p> Methods <p>122 HCC patients who underwent TACE and achieved imaging CR from two centers were divided into the development (<i>n</i> = 100) and external validation dataset (<i>n</i> = 22). Recurrence free survival (RFS) was tracked, and patients were categorized into early recurrence (ER) and non-ER groups based on a 1-year cutoff. Forty clinical and CECT parameters were collected and screened. Six ML models were constructed and compared using the area under the curve (AUC) and decision curve analysis (DCA). Key parameters were used to construct a Cox regression nomogram and stratify recurrence risk using log-rank test.</p> Results <p>The extreme gradient boosting (XGBoost) model demonstrated the best predictive performance based on 13 parameters, with AUCs of 0.913 and 0.812 for the internal and external validation datasets. SHapley Additive exPlanations (SHAP) analysis identified the top 10 parameters. The Cox regression nomogram was constructed with ECV, complete capsule, FIB-4 index, tumor size, platelet-to-neutrophil ratio, and delayed phase tumor CT value. Log-rank test demonstrated significant risk stratification in both datasets (both <i>p</i> &lt; 0.01).</p> Conclusion <p>The XGBoost-based ER prediction model identifies 1-year recurrence following TACE with imaging CR. The Cox regression nomogram enables risk stratification, dividing patients into three subgroups.</p>

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Early recurrence prediction and risk stratification of hepatocellular carcinoma after transarterial chemoembolization achieving imaging complete response based on contrast-enhanced CT machine learning

  • Luhao Liu,
  • Yiyang Liu,
  • Dongxi Lin,
  • Ke Meng,
  • Xiaoman Yang,
  • Jiliang Zhou,
  • Xinrui Ni,
  • Chunlai Yu,
  • Zhou Zhou

摘要

Objectives

To develop and validate machine learning (ML) models using clinical and contrast-enhanced CT (CECT) parameters to assess recurrence risk in hepatocellular carcinoma (HCC) after transarterial chemoembolization (TACE) achieving imaging complete response (CR).

Methods

122 HCC patients who underwent TACE and achieved imaging CR from two centers were divided into the development (n = 100) and external validation dataset (n = 22). Recurrence free survival (RFS) was tracked, and patients were categorized into early recurrence (ER) and non-ER groups based on a 1-year cutoff. Forty clinical and CECT parameters were collected and screened. Six ML models were constructed and compared using the area under the curve (AUC) and decision curve analysis (DCA). Key parameters were used to construct a Cox regression nomogram and stratify recurrence risk using log-rank test.

Results

The extreme gradient boosting (XGBoost) model demonstrated the best predictive performance based on 13 parameters, with AUCs of 0.913 and 0.812 for the internal and external validation datasets. SHapley Additive exPlanations (SHAP) analysis identified the top 10 parameters. The Cox regression nomogram was constructed with ECV, complete capsule, FIB-4 index, tumor size, platelet-to-neutrophil ratio, and delayed phase tumor CT value. Log-rank test demonstrated significant risk stratification in both datasets (both p < 0.01).

Conclusion

The XGBoost-based ER prediction model identifies 1-year recurrence following TACE with imaging CR. The Cox regression nomogram enables risk stratification, dividing patients into three subgroups.