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Published in: Insights into Imaging 1/2023

Open Access 01-12-2023 | Computed Tomography | Original Article

Classification of nasal polyps and inverted papillomas using CT-based radiomics

Authors: Mengqi Guo, Xuefeng Zang, Wenting Fu, Haoyi Yan, Xiangyuan Bao, Tong Li, Jianping Qiao

Published in: Insights into Imaging | Issue 1/2023

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Abstract

Objectives

Nasal polyp (NP) and inverted papilloma (IP) are two common types of nasal masses. And their differentiation is essential for determining optimal surgical strategies and predicting outcomes. Thus, we aimed to develop several radiomic models to differentiate them based on computed tomography (CT)-extracted radiomic features.

Methods

A total of 296 patients with nasal polyps or papillomas were enrolled in our study. Radiomics features were extracted from non-contrast CT images. For feature selection, three methods including Boruta, random forest, and correlation coefficient were used. We choose three models, namely SVM, naive Bayes, and XGBoost, to perform binary classification on the selected features. And the data was validated with tenfold cross-validation. Then, the performance was assessed by receiver operator characteristic (ROC) curve and related parameters.

Results

In this study, the performance ability of the models was in the following order: XGBoost > SVM > Naive Bayes. And the XGBoost model showed excellent AUC performance at 0.922, 0.9078, 0.9184, and 0.9141 under four conditions (no feature selection, Boruta, random forest, and correlation coefficient).

Conclusions

We demonstrated that CT-based radiomics plays a crucial role in distinguishing IP from NP. It can provide added diagnostic value by distinguishing benign nasal lesions and reducing the need for invasive diagnostic procedures and may play a vital role in guiding personalized treatment strategies and developing optimal therapies.

Critical relevance statement

Based on the extraction of radiomic features of tumor regions from non-contrast CT, optimized by radiomics to achieve non-invasive classification of IP and NP which provide support for respective therapy of IP and NP.

Key points

• CT images are commonly used to diagnose IP and NP.
• Radiomics excels in feature extraction and analysis.
• CT-based radiomics can be applied to distinguish IP from NP.
• Use multiple feature selection methods and classifier models.
• Derived from real clinical cases with abundant data.

Graphical Abstract

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Metadata
Title
Classification of nasal polyps and inverted papillomas using CT-based radiomics
Authors
Mengqi Guo
Xuefeng Zang
Wenting Fu
Haoyi Yan
Xiangyuan Bao
Tong Li
Jianping Qiao
Publication date
01-12-2023
Publisher
Springer Vienna
Published in
Insights into Imaging / Issue 1/2023
Electronic ISSN: 1869-4101
DOI
https://doi.org/10.1186/s13244-023-01536-0

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