Cancers (Apr 2023)

Deep Learning Model Based on Contrast-Enhanced Computed Tomography Imaging to Predict Postoperative Early Recurrence after the Curative Resection of a Solitary Hepatocellular Carcinoma

  • Masahiko Kinoshita,
  • Daiju Ueda,
  • Toshimasa Matsumoto,
  • Hiroji Shinkawa,
  • Akira Yamamoto,
  • Masatsugu Shiba,
  • Takuma Okada,
  • Naoki Tani,
  • Shogo Tanaka,
  • Kenjiro Kimura,
  • Go Ohira,
  • Kohei Nishio,
  • Jun Tauchi,
  • Shoji Kubo,
  • Takeaki Ishizawa

DOI
https://doi.org/10.3390/cancers15072140
Journal volume & issue
Vol. 15, no. 7
p. 2140

Abstract

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We aimed to develop the deep learning (DL) predictive model for postoperative early recurrence (within 2 years) of hepatocellular carcinoma (HCC) based on contrast-enhanced computed tomography (CECT) imaging. This study included 543 patients who underwent initial hepatectomy for HCC and were randomly classified into training, validation, and test datasets at a ratio of 8:1:1. Several clinical variables and arterial CECT images were used to create predictive models for early recurrence. Artificial intelligence models were implemented using convolutional neural networks and multilayer perceptron as a classifier. Furthermore, the Youden index was used to discriminate between high- and low-risk groups. The importance values of each explanatory variable for early recurrence were calculated using permutation importance. The DL predictive model for postoperative early recurrence was developed with the area under the curve values of 0.71 (test datasets) and 0.73 (validation datasets). Postoperative early recurrence incidences in the high- and low-risk groups were 73% and 30%, respectively (p = 0.0057). Permutation importance demonstrated that among the explanatory variables, the variable with the highest importance value was CECT imaging analysis. We developed a DL model to predict postoperative early HCC recurrence. DL-based analysis is effective for determining the treatment strategies in patients with HCC.

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