Magnetic resonance imaging-based radiomics model for preoperative assessment of risk stratification in endometrial cancer.

IF 1 4区 医学 Q3 MEDICINE, GENERAL & INTERNAL World Journal of Clinical Cases Pub Date : 2024-09-16 DOI:10.12998/wjcc.v12.i26.5908
Zhi-Yao Wei,Zhe Zhang,Dong-Li Zhao,Wen-Ming Zhao,Yuan-Guang Meng
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Abstract

BACKGROUND Preoperative risk stratification is significant for the management of endometrial cancer (EC) patients. Radiomics based on magnetic resonance imaging (MRI) in combination with clinical features may be useful to predict the risk grade of EC. AIM To construct machine learning models to predict preoperative risk stratification of patients with EC based on radiomics features extracted from MRI. METHODS The study comprised 112 EC patients. The participants were randomly separated into training and validation groups with a 7:3 ratio. Logistic regression analysis was applied to uncover independent clinical predictors. These predictors were then used to create a clinical nomogram. Extracted radiomics features from the T2-weighted imaging and diffusion weighted imaging sequences of MRI images, the Mann-Whitney U test, Pearson test, and least absolute shrinkage and selection operator analysis were employed to evaluate the relevant radiomic features, which were subsequently utilized to generate a radiomic signature. Seven machine learning strategies were used to construct radiomic models that relied on the screening features. The logistic regression method was used to construct a composite nomogram that incorporated both the radiomic signature and clinical independent risk indicators. RESULTS Having an accuracy of 0.82 along with an area under the curve (AUC) of 0.915 [95% confidence interval (CI): 0.806-0.986], the random forest method trained on radiomics characteristics performed better than expected. The predictive accuracy of radiomics prediction models surpassed that of both the clinical nomogram (AUC: 0.75, 95%CI: 0.611-0.899) and the combined nomogram (AUC: 0.869, 95%CI: 0.702-0.986) that integrated clinical parameters and radiomic signature. CONCLUSION The MRI-based radiomics model may be an effective tool for preoperative risk grade prediction in EC patients.
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基于磁共振成像的放射组学模型,用于子宫内膜癌术前风险分层评估。
背景术前风险分层对子宫内膜癌(EC)患者的治疗意义重大。目的根据从核磁共振成像(MRI)中提取的放射组学特征,构建机器学习模型来预测子宫内膜癌患者的术前风险分层。参与者按 7:3 的比例随机分为训练组和验证组。应用逻辑回归分析找出独立的临床预测因素。然后利用这些预测因素创建临床提名图。从核磁共振成像的 T2 加权成像和弥散加权成像序列中提取放射组学特征,采用 Mann-Whitney U 检验、Pearson 检验、最小绝对收缩和选择算子分析来评估相关的放射组学特征,然后利用这些特征生成放射组学特征。七种机器学习策略被用来构建依赖于筛选特征的放射学模型。结果根据放射组学特征训练的随机森林方法的准确率为 0.82,曲线下面积 (AUC) 为 0.915 [95% 置信区间 (CI):0.806-0.986],表现优于预期。放射组学预测模型的预测准确性超过了临床提名图(AUC:0.75,95%CI:0.611-0.899)和综合临床参数和放射组学特征的组合提名图(AUC:0.869,95%CI:0.702-0.986)。
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World Journal of Clinical Cases
World Journal of Clinical Cases Medicine-General Medicine
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期刊介绍: The World Journal of Clinical Cases (WJCC) is a high-quality, peer reviewed, open-access journal. The primary task of WJCC is to rapidly publish high-quality original articles, reviews, editorials, and case reports in the field of clinical cases. In order to promote productive academic communication, the peer review process for the WJCC is transparent; to this end, all published manuscripts are accompanied by the anonymized reviewers’ comments as well as the authors’ responses. The primary aims of the WJCC are to improve diagnostic, therapeutic and preventive modalities and the skills of clinicians and to guide clinical practice in clinical cases.
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