预测脑膜瘤 Ki-67 增殖指数的基于磁共振成像的深度迁移学习放射组学提名图

IF 2.9 2区 工程技术 Q2 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Journal of Digital Imaging Pub Date : 2024-01-10 DOI:10.1007/s10278-023-00937-3
Chongfeng Duan, Dapeng Hao, Jiufa Cui, Gang Wang, Wenjian Xu, Nan Li, Xuejun Liu
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引用次数: 0

摘要

本研究旨在利用基于临床、放射组学和深度迁移学习(DTL)特征的提名图预测脑膜瘤的Ki-67增殖指数。研究共纳入了318个病例。研究人员选择了临床、放射组学和 DTL 特征来构建模型。利用选定的特征和相关系数完成放射组学和 DTL 评分的计算。通过选定的临床特征、放射组学评分和 DTL 评分,构建了深度迁移学习放射组学(DTLR)提名图。计算接受者操作特征曲线下面积(AUC)。通过 AUC 的 Delong 检验和决策曲线分析(DCA)对模型进行比较。选择性别、大小和瘤周水肿特征构建临床模型。选择了 7 个放射组学特征和 15 个 DTL 特征。临床、放射组学、DTL模型和DTLR提名图的AUC分别为0.746、0.75、0.717和0.779。在测试集中,DTLR提名图的AUC最高,为0.779(95% CI 0.6643-0.8943),准确率为0.734,灵敏度为0.719,特异性为0.75。在 Delong 检验中,四个模型的 AUC 没有明显差异。在所有阈值概率中,DTLR提名图的净效益均大于其他模型。DTLR提名图在Ki-67预测方面的表现令人满意,可以作为脑膜瘤的一种新的评估方法,有助于临床决策。
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An MRI-Based Deep Transfer Learning Radiomics Nomogram to Predict Ki-67 Proliferation Index of Meningioma

The objective of this study was to predict Ki-67 proliferation index of meningioma by using a nomogram based on clinical, radiomics, and deep transfer learning (DTL) features. A total of 318 cases were enrolled in the study. The clinical, radiomics, and DTL features were selected to construct models. The calculation of radiomics and DTL score was completed by using selected features and correlation coefficient. The deep transfer learning radiomics (DTLR) nomogram was constructed by selected clinical features, radiomics score, and DTL score. The area under the receiver operator characteristic curve (AUC) was calculated. The models were compared by Delong test of AUCs and decision curve analysis (DCA). The features of sex, size, and peritumoral edema were selected to construct clinical model. Seven radiomics features and 15 DTL features were selected. The AUCs of clinical, radiomics, DTL model, and DTLR nomogram were 0.746, 0.75, 0.717, and 0.779 respectively. DTLR nomogram had the highest AUC of 0.779 (95% CI 0.6643–0.8943) with an accuracy rate of 0.734, a sensitivity value of 0.719, and a specificity value of 0.75 in test set. There was no significant difference in AUCs among four models in Delong test. The DTLR nomogram had a larger net benefit than other models across all the threshold probability. The DTLR nomogram had a satisfactory performance in Ki-67 prediction and could be a new evaluation method of meningioma which would be useful in the clinical decision-making.

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来源期刊
Journal of Digital Imaging
Journal of Digital Imaging 医学-核医学
CiteScore
7.50
自引率
6.80%
发文量
192
审稿时长
6-12 weeks
期刊介绍: The Journal of Digital Imaging (JDI) is the official peer-reviewed journal of the Society for Imaging Informatics in Medicine (SIIM). JDI’s goal is to enhance the exchange of knowledge encompassed by the general topic of Imaging Informatics in Medicine such as research and practice in clinical, engineering, and information technologies and techniques in all medical imaging environments. JDI topics are of interest to researchers, developers, educators, physicians, and imaging informatics professionals. Suggested Topics PACS and component systems; imaging informatics for the enterprise; image-enabled electronic medical records; RIS and HIS; digital image acquisition; image processing; image data compression; 3D, visualization, and multimedia; speech recognition; computer-aided diagnosis; facilities design; imaging vocabularies and ontologies; Transforming the Radiological Interpretation Process (TRIP™); DICOM and other standards; workflow and process modeling and simulation; quality assurance; archive integrity and security; teleradiology; digital mammography; and radiological informatics education.
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