Deep learning-based volumetry of the future liver remnants and prediction of candidates for major hepatectomy

基于深度学习的未来肝脏残余体积测量及大范围肝切除术候选者预测

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Abstract

BACKGROUND: To develop and validate a deep learning-based future liver remnant (FLR) volumetry system (DL-FLRVS) by secondary utilization of existing preoperative CT images, and to compare the differences between the currently used method and DL-FLRVS in volumetry of FLR and the application in candidate categorization before major hepatectomy. METHODS: DL-FLRVS, which consists of five 3D U-Net models for the automated segmentation of liver anatomy on contrast-enhanced CT, was developed (n = 307, 170, 170, 170, and 492, respectively) and validated (n = 178) in external validation cohorts. The FLR and FLR% of patients were measured using DL-FLRVS and the hepatic VCAR (i.e., a semi-automated segmentation program on a dedicated workstation) for different types of major hepatectomy. Manual measurements were used as a reference. The differences in FLR assessment and candidate categorization between the two methods were compared using Spearman analysis and McNemar’s test, respectively. RESULTS: The mean FLR and FLR% values were (493.51 ± 284.77) cm(3) and (38.53 ± 19.38) %, respectively, when DL-FLRVS was used, (489.23 ± 286.29) cm(3) and (37.77 ± 19.12) %, when the hepatic VCAR was used. No significant differences in the categorization of candidates for major hepatectomy were found between the DL-FLRVS and human doctors (P > 0.99 and P > 0.99, respectively) or between the hepatic VCAR and human doctors (P > 0.99 and P = 0.07, respectively). CONCLUSION: DL-FLRVS represents a potential alternative to the currently used method in volumetry of FLR and FLR-based candidate categorization in major hepatectomy in clinical practice. SUPPLEMENTARY INFORMATION: The online version contains supplementary material available at 10.1186/s12880-025-02106-0.

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