Abstract

Background: This study aimed to evaluate whether hypertrophy after portal vein embolization (PVE) and maximum liver function capacity (LiMAx) are predictable by an artificial neural network (ANN) model based on computed tomography (CT) texture features. Methods: We report a retrospective analysis on 118 patients undergoing preoperative assessment by CT before and after PVE for subsequent extended liver resection due to a malignant tumor at RWTH Aachen University Hospital. The LiMAx test was carried out in a subgroup of 55 patients prior to PVE. Associations between CT texture features and hypertrophy as well as liver function were assessed by a multilayer perceptron ANN model. Results: Liver volumetry showed a median hypertrophy degree of 33.9% (16.5–60.4%) after PVE. Non-response, defined as a hypertrophy grade lower than 25%, was found in 36.5% (43/118) of the cases. The ANN prediction of the hypertrophy response showed a sensitivity of 95.8%, specificity of 44.4% and overall prediction accuracy of 74.6% (p < 0.001). The observed median LiMAx was 327 (248–433) μg/kg/h and was strongly correlated with the predicted LiMAx (R2 = 0.89). Conclusion: Our study shows that an ANN model based on CT texture features is able to predict the maximum liver function capacity and may be useful to assess potential hypertrophy after performing PVE.

Highlights

  • Surgical resection is an important pillar of curative therapy of malignant primary and secondary liver tumors

  • We investigated the predictability of hypertrophy after portal vein embolization (PVE) and LiMax by an artificial neural network (ANN) model of computed tomography (CT) texture features

  • We demonstrated that an ANN model predicting hypertrophy after PVE based on CT texture features classified the patients, with an accuracy of 74.6%, correctly as either responders or non-responders

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Summary

Introduction

Surgical resection is an important pillar of curative therapy of malignant primary and secondary liver tumors. Liver volumetry and function tests are routinely used to estimate the future liver remnant volume (FLRV), and volume thresholds exist for a prospectively safe hepatectomy [2]. Patients with insufficient FLRV and/or future liver remnant function (FLRF) must be considered for preoperative hypertrophy induction techniques such as portal vein embolization (PVE) or associating liver partition and portal vein ligation for staged hepatectomy (ALPPS) [3,4]. This study aimed to evaluate whether hypertrophy after portal vein embolization (PVE) and maximum liver function capacity (LiMAx) are predictable by an artificial neural network (ANN) model based on computed tomography (CT) texture features. PVE for subsequent extended liver resection due to a malignant tumor at RWTH Aachen University. Associations between CT texture features and hypertrophy as well as liver function were assessed by a multilayer perceptron ANN model. Non-response, defined as a hypertrophy grade lower than 25%, was found in

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