3D convolutional neural network model from contrast-enhanced CT to predict spread through air spaces in non-small cell lung cancer

•CT-based convolutional neural network (CNN) model can predict spread through air space in non-small cell lung cancer with high accuracy.•CNN model is superior to other four models (clinicopathological/CT model, conventional radiomics model, computer vision model, and combined model) to predict spre...

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Veröffentlicht in:Diagnostic and interventional imaging 2022-11, Vol.103 (11), p.535-544
Hauptverfasser: Tao, Junli, Liang, Changyu, Yin, Ke, Fang, Jiayang, Chen, Bohui, Wang, Zhenyu, Lan, Xiaosong, Zhang, Jiuquan
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container_end_page 544
container_issue 11
container_start_page 535
container_title Diagnostic and interventional imaging
container_volume 103
creator Tao, Junli
Liang, Changyu
Yin, Ke
Fang, Jiayang
Chen, Bohui
Wang, Zhenyu
Lan, Xiaosong
Zhang, Jiuquan
description •CT-based convolutional neural network (CNN) model can predict spread through air space in non-small cell lung cancer with high accuracy.•CNN model is superior to other four models (clinicopathological/CT model, conventional radiomics model, computer vision model, and combined model) to predict spread through air space in non-small cell lung cancer.•The CNN model yields an AUC of 0.93 (95% CI: 0.70–0.82) for predicting spread through air space in non-small cell lung cancer. The purpose of this study was to compare the efficacy of five non-invasive models, including three-dimensional (3D) convolutional neural network (CNN) model, to predict the spread through air spaces (STAS) status of non-small cell lung cancer (NSCLC), and to obtain the best prediction model to provide a basis for clinical surgery planning. A total of 203 patients (112 men, 91 women; mean age, 60 years; age range 22–80 years) with NSCLC were retrospectively included. Of these, 153 were used for training cohort and 50 for validation cohort. According to the image biomarker standardization initiative reference manual, the image processing and feature extraction were standardized using PyRadiomics. The logistic regression classifier was used to build the model. Five models (clinicopathological/CT model, conventional radiomics model, computer vision (CV) model, 3D CNN model and combined model) were constructed to predict STAS by NSCLC. Area under the receiver operating characteristic curves (AUC) were used to validate the capability of the five models to predict STAS. For predicting STAS, the 3D CNN model was superior to the clinicopathological/CT model, conventional radiomics model, CV model and combined model and achieved satisfactory discrimination performance, with an AUC of 0.93 (95% CI: 0.70–0.82) in the training cohort and 0.80 (95% CI: 0.65–0.86) in the validation cohort. Decision curve analysis indicated that, when the probability of the threshold was over 10%, the 3D CNN model was beneficial for predicting STAS status compared to either treating all or treating none of the patients within certain ranges of risk threshold The 3D CNN model can be used for the preoperative prediction of STAS in patients with NSCLC, and was superior to the other four models in predicting patients' risk of developing STAS.
doi_str_mv 10.1016/j.diii.2022.06.002
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The purpose of this study was to compare the efficacy of five non-invasive models, including three-dimensional (3D) convolutional neural network (CNN) model, to predict the spread through air spaces (STAS) status of non-small cell lung cancer (NSCLC), and to obtain the best prediction model to provide a basis for clinical surgery planning. A total of 203 patients (112 men, 91 women; mean age, 60 years; age range 22–80 years) with NSCLC were retrospectively included. Of these, 153 were used for training cohort and 50 for validation cohort. According to the image biomarker standardization initiative reference manual, the image processing and feature extraction were standardized using PyRadiomics. The logistic regression classifier was used to build the model. Five models (clinicopathological/CT model, conventional radiomics model, computer vision (CV) model, 3D CNN model and combined model) were constructed to predict STAS by NSCLC. Area under the receiver operating characteristic curves (AUC) were used to validate the capability of the five models to predict STAS. For predicting STAS, the 3D CNN model was superior to the clinicopathological/CT model, conventional radiomics model, CV model and combined model and achieved satisfactory discrimination performance, with an AUC of 0.93 (95% CI: 0.70–0.82) in the training cohort and 0.80 (95% CI: 0.65–0.86) in the validation cohort. 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Area under the receiver operating characteristic curves (AUC) were used to validate the capability of the five models to predict STAS. For predicting STAS, the 3D CNN model was superior to the clinicopathological/CT model, conventional radiomics model, CV model and combined model and achieved satisfactory discrimination performance, with an AUC of 0.93 (95% CI: 0.70–0.82) in the training cohort and 0.80 (95% CI: 0.65–0.86) in the validation cohort. 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Area under the receiver operating characteristic curves (AUC) were used to validate the capability of the five models to predict STAS. For predicting STAS, the 3D CNN model was superior to the clinicopathological/CT model, conventional radiomics model, CV model and combined model and achieved satisfactory discrimination performance, with an AUC of 0.93 (95% CI: 0.70–0.82) in the training cohort and 0.80 (95% CI: 0.65–0.86) in the validation cohort. Decision curve analysis indicated that, when the probability of the threshold was over 10%, the 3D CNN model was beneficial for predicting STAS status compared to either treating all or treating none of the patients within certain ranges of risk threshold The 3D CNN model can be used for the preoperative prediction of STAS in patients with NSCLC, and was superior to the other four models in predicting patients' risk of developing STAS.</abstract><pub>Elsevier Masson SAS</pub><doi>10.1016/j.diii.2022.06.002</doi><tpages>10</tpages><orcidid>https://orcid.org/0000-0003-0239-6988</orcidid><oa>free_for_read</oa></addata></record>
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subjects Computer vision
Conventional radiomics
Deep learning
Non-small cell lung cancer
Spread through air spaces
title 3D convolutional neural network model from contrast-enhanced CT to predict spread through air spaces in non-small cell lung cancer
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