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06-04-2024 | Fatty Liver | Original Article

Radiomics-based prediction of nonalcoholic fatty liver disease following pancreatoduodenectomy

Authors: Takehiro Fujii, Yusuke Iizawa, Takumi Kobayashi, Aoi Hayasaki, Takahiro Ito, Yasuhiro Murata, Akihiro Tanemura, Yasutaka Ichikawa, Naohisa Kuriyama, Masashi Kishiwada, Hajime Sakuma, Shugo Mizuno

Published in: Surgery Today

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Abstract

Purpose

Predicting nonalcoholic fatty liver disease (NAFLD) following pancreaticoduodenectomy (PD) is challenging, which delays therapeutic intervention and makes its prevention difficult. We conducted this study to assess the potential application of preoperative computed tomography (CT) radiomics for predicting NAFLD.

Methods

The subjects of this retrospective study were 186 patients with PD from a single institution. We extracted the predictors of NAFLD after PD statistically from conventional clinical and radiomic features of the estimated remnant pancreas and whole liver region on preoperative nonenhanced CT images. Based on these predictors, we developed a machine-learning predictive model, which integrated clinical and radiomic features. A comparative model used only clinical features as predictors.

Results

The incidence of NAFLD after PD was 43.5%. The variables of the clinicoradiomic model included one shape feature of the pancreas, two texture features of the liver, and sex; the variables of the clinical model were age, sex, and chemoradiotherapy. The accuracy%, precision%, recall%, F1 score, and area under the curve of the two models were 75.0, 72.7, 66.7, 69.6, and 0.80; and 69.6, 68.4, 54.2, 60.5, and 0.69, respectively.

Conclusions

Preoperative CT-derived radiomic features from the pancreatic and liver regions are promising for the prediction of NAFLD post-PD. Using these features enhances the predictive model, enabling earlier intervention for high-risk patients.
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Metadata
Title
Radiomics-based prediction of nonalcoholic fatty liver disease following pancreatoduodenectomy
Authors
Takehiro Fujii
Yusuke Iizawa
Takumi Kobayashi
Aoi Hayasaki
Takahiro Ito
Yasuhiro Murata
Akihiro Tanemura
Yasutaka Ichikawa
Naohisa Kuriyama
Masashi Kishiwada
Hajime Sakuma
Shugo Mizuno
Publication date
06-04-2024
Publisher
Springer Nature Singapore
Published in
Surgery Today
Print ISSN: 0941-1291
Electronic ISSN: 1436-2813
DOI
https://doi.org/10.1007/s00595-024-02822-0