Preoperative discrimination of absence or presence of myometrial invasion in endometrial cancer with an MRI-based multimodal deep learning radiomics model.

IF 2.3 3区 医学 Q2 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Yuan Chen, Xiaohong Ruan, Ximiao Wang, Peijun Li, Yehang Chen, Bao Feng, Xianyan Wen, Junqi Sun, Changye Zheng, Yujian Zou, Bo Liang, Mingwei Li, Wansheng Long, Yuan Shen
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引用次数: 0

Abstract

Objective: Accurate preoperative evaluation of myometrial invasion (MI) is essential for treatment decisions in endometrial cancer (EC). However, the diagnostic accuracy of commonly utilized magnetic resonance imaging (MRI) techniques for this assessment exhibits considerable variability. This study aims to enhance preoperative discrimination of absence or presence of MI by developing and validating a multimodal deep learning radiomics (MDLR) model based on MRI.

Methods: During March 2010 and February 2023, 1139 EC patients (age 54.771 ± 8.465 years; range 24-89 years) from five independent centers were enrolled retrospectively. We utilized ResNet18 to extract multi-scale deep learning features from T2-weighted imaging followed by feature selection via Mann-Whitney U test. Subsequently, a Deep Learning Signature (DLS) was formulated using Integrated Sparse Bayesian Extreme Learning Machine. Furthermore, we developed Clinical Model (CM) based on clinical characteristics and MDLR model by integrating clinical characteristics with DLS. The area under the curve (AUC) was used for evaluating diagnostic performance of the models. Decision curve analysis (DCA) and integrated discrimination index (IDI) were used to assess the clinical benefit and compare the predictive performance of models.

Results: The MDLR model comprised of age, histopathologic grade, subjective MR findings (TMD and Reading for MI status) and DLS demonstrated the best predictive performance. The AUC values for MDLR in training set, internal validation set, external validation set 1, and external validation set 2 were 0.899 (95% CI, 0.866-0.926), 0.874 (95% CI, 0.829-0.912), 0.862 (95% CI, 0.817-0.899) and 0.867 (95% CI, 0.806-0.914) respectively. The IDI and DCA showed higher diagnostic performance and clinical net benefits for the MDLR than for CM or DLS, which revealed MDLR may enhance decision-making support.

Conclusions: The MDLR which incorporated clinical characteristics and DLS could improve preoperative accuracy in discriminating absence or presence of MI. This improvement may facilitate individualized treatment decision-making for EC.

基于mri的多模态深度学习放射组学模型在子宫内膜癌患者术前是否存在子宫肌层浸润的鉴别
目的:准确的术前评估子宫内膜侵犯(MI)对子宫内膜癌(EC)的治疗决策至关重要。然而,通常使用的磁共振成像(MRI)技术的诊断准确性表现出相当大的可变性。本研究旨在通过开发和验证基于MRI的多模态深度学习放射组学(MDLR)模型,增强术前对心肌梗死存在与否的区分。方法:2010年3月至2023年2月,1139例EC患者(年龄54.771±8.465岁;范围24-89岁,来自5个独立研究中心。我们利用ResNet18从t2加权图像中提取多尺度深度学习特征,然后通过Mann-Whitney U检验进行特征选择。随后,使用集成稀疏贝叶斯极限学习机制定了深度学习签名(DLS)。在此基础上,我们将临床特征与DLS相结合,建立了基于临床特征的临床模型(CM)和MDLR模型。曲线下面积(AUC)用于评价模型的诊断性能。采用决策曲线分析(Decision curve analysis, DCA)和综合判别指数(integrated discrimination index, IDI)评估临床获益并比较模型的预测性能。结果:MDLR模型由年龄、组织病理分级、主观MR表现(TMD和Reading判断MI状态)和DLS组成,表现出最佳的预测性能。训练集、内部验证集、外部验证集1和外部验证集2的MDLR AUC值分别为0.899 (95% CI, 0.866-0.926)、0.874 (95% CI, 0.829-0.912)、0.862 (95% CI, 0.817-0.899)和0.867 (95% CI, 0.806-0.914)。与CM或DLS相比,IDI和DCA显示MDLR的诊断性能和临床净收益更高,这表明MDLR可能增强决策支持。结论:结合临床特征和DLS的MDLR可提高术前鉴别心肌梗死存在与否的准确性,有助于对EC进行个体化治疗决策。
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来源期刊
Abdominal Radiology
Abdominal Radiology Medicine-Radiology, Nuclear Medicine and Imaging
CiteScore
5.20
自引率
8.30%
发文量
334
期刊介绍: Abdominal Radiology seeks to meet the professional needs of the abdominal radiologist by publishing clinically pertinent original, review and practice related articles on the gastrointestinal and genitourinary tracts and abdominal interventional and radiologic procedures. Case reports are generally not accepted unless they are the first report of a new disease or condition, or part of a special solicited section. Reasons to Publish Your Article in Abdominal Radiology: · Official journal of the Society of Abdominal Radiology (SAR) · Published in Cooperation with: European Society of Gastrointestinal and Abdominal Radiology (ESGAR) European Society of Urogenital Radiology (ESUR) Asian Society of Abdominal Radiology (ASAR) · Efficient handling and Expeditious review · Author feedback is provided in a mentoring style · Global readership · Readers can earn CME credits
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