Zhichao Wang, Chuchu He, Zhen Liu, Haifeng Luo, Jingjing Li, Jinyuan Xie, Chao Li, Xiandong Wu, Yan Hu, Jun Cai
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引用次数: 0
摘要
探索深度学习技术预测子宫内膜癌(EC)的各种生物学特征具有重要意义。本研究的目的是开发一种优化的放射组学方案,结合多参数磁共振成像(MRI)、深度学习和机器学习来预测包括肌层浸润(MI)、淋巴血管间隙浸润(LVSI)、组织学分级(HG)和雌激素受体(ER)在内的生物学特征。本回顾性研究纳入201例EC患者,根据具体任务分为四组。提出的放射组学方案从多参数MRI中提取定量成像特征和多维深度学习特征。使用了几种分类器来预测生物特征。使用传统的分类指标、梯度加权类激活映射(Grad-CAM)和SHapley加性解释(SHAP)技术评估模型的性能和可解释性。在深度MI (DMI)预测任务中,该方案在测试队列中的曲线下面积(AUC)值为0.960 (95% CI 0.9005-1.0000)。在LVSI预测任务中,该方案在测试队列中的AUC为0.924 (95% CI 0.7760-1.0000)。在HG预测任务中,该方案在测试队列中的AUC值为0.937 (95% CI 0.8561-1.0000)。在ER预测任务中,该方案在测试队列中的AUC值为0.929 (95% CI 0.7991 ~ 1.0000)。所提出的放射组学方案优于对比方案,有效提取了与EC生物学特征表达相关的影像学特征,为准确诊断和治疗决策提供了潜在的临床意义。
Biological characteristics prediction of endometrial cancer based on deep convolutional neural network and multiparametric MRI radiomics.
The exploration of deep learning techniques for predicting various biological characteristics of endometrial cancer (EC) is of significant importance. The objective of this study was to develop an optimized radiomics scheme combining multiparametric magnetic resonance imaging (MRI), deep learning, and machine learning to predict biological features including myometrial invasion (MI), lymph-vascular space invasion (LVSI), histologic grade (HG), and estrogen receptor (ER). This retrospective study involved 201 EC patients, who were divided into four groups according to the specific tasks. The proposed radiomics scheme extracted quantitative imaging features and multidimensional deep learning features from multiparametric MRI. Several classifiers were employed to predict biological features. Model performance and interpretability were assessed using traditional classification metrics, Gradient-weighted Class Activation Mapping (Grad-CAM), and SHapley Additive exPlanation (SHAP) techniques. In the deep MI (DMI) prediction task, the proposed protocol achieved an area under the curve (AUC) value of 0.960 (95% CI 0.9005-1.0000) in the test cohort. In the LVSI prediction task, the AUC of the proposed scheme in the test cohort was 0.924 (95% CI 0.7760-1.0000). In the HG prediction task, the AUC value of the proposed scheme in the test cohort was 0.937 (95% CI 0.8561-1.0000). In the ER prediction task, the AUC value of the proposed scheme in the test cohort was 0.929 (95% CI 0.7991-1.0000). The proposed radiomics scheme outperformed the comparative scheme and effectively extracted imaging features related to the expression of EC biological characteristics, providing potential clinical significance for accurate diagnosis and treatment decision-making.
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.
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