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Erschienen in: Molecular Imaging and Biology 5/2021

24.03.2021 | Research Article

Application of a Machine Learning Approach for the Analysis of Clinical and Radiomic Features of Pretreatment [18F]-FDG PET/CT to Predict Prognosis of Patients with Endometrial Cancer

verfasst von: Masatoyo Nakajo, Megumi Jinguji, Atsushi Tani, Hidehiko Kikuno, Daisuke Hirahara, Shinichi Togami, Hiroaki Kobayashi, Takashi Yoshiura

Erschienen in: Molecular Imaging and Biology | Ausgabe 5/2021

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Abstract

Purpose

To examine the prognostic significance of pretreatment 2-deoxy-2-[18F]fluoro-d-glucose ([18F]-FDG) positron emission tomography (PET)-based radiomic features using a machine learning approach in patients with endometrial cancers.

Procedures

Included in this retrospective study were 53 patients with endometrial cancers who underwent [18F]-FDG PET/X-ray computed tomography (CT) before treatment. Since two different PET scanners were used, post-reconstruction harmonization was performed for all PET parameters using the ComBat harmonization method. Four clinical (age, histological type, stage, and treatment method) and 40 [18F]-FDG PET-based radiomic features were ranked, and a subset of useful features was selected based on the decrease in the Gini impurity in terms of associations with disease progression. The machine learning algorithms (random forest, neural network, k-nearest neighbors (kNN), naive Bayes, logistic regression, and support vector machine) were compared using the areas under the receiver operating characteristic curve (AUC) and validated by the random sampling method. Progression-free survival (PFS) and overall survival (OS) were assessed by the Cox regression analysis.

Results

The five best predictors of disease progression were coarseness, gray-level run length nonuniformity, stage, treatment method, and gray-level zone length nonuniformity. The kNN model obtained the best performance classifier for predicting the disease progression (AUC =0.890, accuracy =0.849, F1 score =0.848, precision =0.857, and recall =0.849). Coarseness which was the first ranked radiomic feature was selected for survival analyses, and only coarseness remained as a significant and independent factor for both PFS (hazard ratios (HR), 0.65; 95 % confidence interval [CI], 0.49–0.86; p=0.003) and OS (HR, 0.52; 95 % CI, 0.36–0.76; p<0.001) at multivariate Cox regression analysis.

Conclusions

[18F]-FDG PET-based radiomic analysis using a machine learning approach may be useful for predicting tumor progression and prognosis in patients with endometrial cancers.
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Metadaten
Titel
Application of a Machine Learning Approach for the Analysis of Clinical and Radiomic Features of Pretreatment [18F]-FDG PET/CT to Predict Prognosis of Patients with Endometrial Cancer
verfasst von
Masatoyo Nakajo
Megumi Jinguji
Atsushi Tani
Hidehiko Kikuno
Daisuke Hirahara
Shinichi Togami
Hiroaki Kobayashi
Takashi Yoshiura
Publikationsdatum
24.03.2021
Verlag
Springer International Publishing
Erschienen in
Molecular Imaging and Biology / Ausgabe 5/2021
Print ISSN: 1536-1632
Elektronische ISSN: 1860-2002
DOI
https://doi.org/10.1007/s11307-021-01599-9

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