MRI放射组学诊断小BI-RADS 4乳腺病变:一个可解释的模型。

IF 2.9 2区 医学 Q2 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
Quantitative Imaging in Medicine and Surgery Pub Date : 2025-06-06 Epub Date: 2025-05-23 DOI:10.21037/qims-24-1893
Chaokang Han, Jiayue Chen, Minping Hong, Shuqi Chen, Yujie Ying, Jiahuan Liu, Fan Yang, Hua Qian, Xuewei Ding, Ruixin Zhang, Jinghan Wu, Louting Hu, Chengchen Xu, Xuejing Liu, Wangwei Lin, Changyu Zhou, Maosheng Xu, Zhen Fang
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引用次数: 0

摘要

背景:乳腺癌的早期发现至关重要。磁共振成像(MRI)在诊断病变方面具有显著的优势。我们旨在开发并验证一种可解释的基于mri的放射组学模型,以识别乳腺成像报告和数据系统(BI-RADS)的4类小病变,以帮助放射科医生做出决策。方法:连续入选浙江中医药大学第一附属医院和浙江大学医学院附属杭州第一人民医院两个中心的561例患者(BI-RADS 4类小病灶580例),提取瘤内和瘤周(3mm)区域的放射组学特征。经过一系列特征选择后,利用极限梯度增强(XGBoost)构建放射组学模型,并计算放射组学评分(radscore)。进行单因素和多因素logistic回归分析,以确定病理恶性肿瘤相关的临床放射学因素。最后,使用logistic算法构建了一个结合radscore和临床放射学因素的模型。随后,我们的人工智能(AI)辅助策略在外部组(n=163)中得到验证,并通过测量AI支持下BI-RADS分类准确性的改善来评估其临床效用。结果:联合模型具有较强的预测能力,训练组、内部验证组和外部验证组的曲线下面积(AUC)分别为0.897[95%置信区间(CI) 0.862 ~ 0.931]、0.871 (95% CI: 0.803 ~ 0.934)和0.869 (95% CI: 0.807 ~ 0.920)。此外,使用SHapley加性解释(SHAP)算法(一种解释机器学习模型的方法)说明了每个特征对放射组学和组合模型的贡献。此外,人工智能辅助策略显著提高了两名放射科医生在两种模式(4b+和4c)下的AUC值。结论:建立了一种基于MRI的可解释的联合模型来区分BI-RADS4小病变的良恶性,以帮助放射科医生做出更准确的诊断决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MRI radiomics for diagnosing small BI-RADS 4 breast lesions: an interpretable model.

Background: The early detection of breast cancer is crucial. Magnetic resonance imaging (MRI) offers significant advantages in the diagnosis of lesions. We aimed to develop and validate an interpretable MRI-based radiomics model to identify small Breast Imaging Reporting and Data System (BI-RADS) category 4 lesions to help radiologists with decision making.

Methods: In total, 561 patients (with 580 small BI-RADS category 4 lesions) from two centers (The First Affiliated Hospital of Zhejiang Chinese Medical University and The Affiliated Hangzhou First People's Hospital, Zhejiang University School of Medicine) were consecutively enrolled in this study, and the radiomics features of the intratumoral and peritumoral (3 mm) regions were extracted. After a series of feature selections, extreme gradient boosting (XGBoost) was used to construct the radiomics model, and the radiomics score (radscore) was calculated. Univariate and multivariate logistic regression analyses were performed to determine the pathological malignant-related clinico-radiological factors. Finally, a model was constructed that combined the radscore and clinico-radiological factors using logistic algorithms. Subsequently, our artificial intelligence (AI)-assisted strategy was validated in an external group (n=163), and its clinical utility was evaluated by measuring improvements in BI-RADS classification accuracy with AI support.

Results: The combined model demonstrated a robust predictive capability, and had area under the curve (AUC) values of 0.897 [95% confidence interval (CI): 0.862-0.931], 0.871 (95% CI: 0.803-0.934), and 0.869 (95% CI: 0.807-0.920) in the training, internal validation, and external validation groups, respectively. Additionally, the contribution of each feature to the radiomics and combined models was illustrated using the SHapley Additive exPlanations (SHAP) algorithm, a method for interpreting machine-learning models. Further, the AI-assisted strategy improved the two radiologists' AUC values in the two modes (the 4b+ and 4c) significantly.

Conclusions: An interpretable combined model based on MRI was developed to distinguish between benign and malignant small BI-RADS4 lesions to assist radiologists to make more accurate diagnostic decisions.

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来源期刊
Quantitative Imaging in Medicine and Surgery
Quantitative Imaging in Medicine and Surgery Medicine-Radiology, Nuclear Medicine and Imaging
CiteScore
4.20
自引率
17.90%
发文量
252
期刊介绍: Information not localized
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