基于多序列磁共振成像的肝脏病灶自动分类

Mingfang Hu, Shuxin Wang, Mingjie Wu, Ting Zhuang, Xiaoqing Liu, Yuqin Zhang
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引用次数: 0

摘要

准确、自动地诊断肝脏病灶对于有效的放射学实践和患者治疗计划至关重要。本研究提出了一种深度学习模型,专门用于对八种不同核磁共振成像序列中的肝脏病灶进行分类,并将其分为七个不同的类别。该模型包括一个提取病灶多层次表征的特征提取模块、一个整合不同序列上下文信息的特征融合注意力模块,以及一个丰富训练数据集的注意力引导数据增强模块。该模型的患者分类准确率为 0.9302,病灶分类准确率为 0.8592,F1 分数为 0.8395,召回率为 0.8296,精确度为 0.8551。这些研究结果证明了多序列磁共振成像与先进的深度学习方法相结合的有效性,为放射科医生在临床环境中准确分类肝脏病变提供了强有力的工具支持。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Classification of Focal Liver Lesions Based on Multi-Sequence MRI.

Accurate and automated diagnosis of focal liver lesions is critical for effective radiological practice and patient treatment planning. This study presents a deep learning model specifically developed for classifying focal liver lesions across eight different MRI sequences, categorizing them into seven distinct classes. The model includes a feature extraction module that derives multi-level representations of the lesions, a feature fusion attention module to integrate contextual information from the various sequences, and an attention-guided data augmentation module to enrich the training dataset. The proposed model achieved a patient-wise classification accuracy of 0.9302 and a lesion-wise accuracy of 0.8592, along with an F1-score of 0.8395, a recall of 0.8296, and a precision of 0.8551. These findings demonstrate the effectiveness of combining multi-sequence MRI with advanced deep learning methodologies, providing a robust tool to support radiologists in accurately classifying liver lesions in clinical settings.

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