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通过深度学习引导的病变分割、特征表征和评分推断,实现肝脏影像报告和数据系统(LI-RADS)在磁共振成像(MRI)上的完全自动化。

Fully automating LI-RADS on MRI with deep learning-guided lesion segmentation, feature characterization, and score inference.

作者信息

Wang Ke, Liu Yuehua, Chen Hongxin, Yu Wenjin, Zhou Jiayin, Wang Xiaoying

机构信息

First Hospital, Peking University, Beijing, China.

Department of Precision Diagnosis & Image Guided Therapy, Philips Research, Shanghai, China.

出版信息

Front Oncol. 2023 May 18;13:1153241. doi: 10.3389/fonc.2023.1153241. eCollection 2023.

Abstract

INTRODUCTION

Leveraging deep learning in the radiology community has great potential and practical significance. To explore the potential of fitting deep learning methods into the current Liver Imaging Reporting and Data System (LI-RADS) system, this paper provides a complete and fully automatic deep learning solution for the LI-RADS system and investigates its model performance in liver lesion segmentation and classification.

METHODS

To achieve this, a deep learning study design process is formulated, including clinical problem formulation, corresponding deep learning task identification, data acquisition, data preprocessing, and algorithm validation. On top of segmentation, a UNet++-based segmentation approach with supervised learning was performed by using 33,078 raw images obtained from 111 patients, which are collected from 2010 to 2017. The key innovation is that the proposed framework introduces one more step called feature characterization before LI-RADS score classification in comparison to prior work. In this step, a feature characterization network with multi-task learning and joint training strategy was proposed, followed by an inference module to generate the final LI-RADS score.

RESULTS

Both liver segmentation and feature characterization models were evaluated, and comprehensive statistical analysis was conducted with detailed discussions. Median DICE of liver lesion segmentation was able to achieve 0.879. Based on different thresholds, recall changes within a range of 0.7 to 0.9, and precision always stays high greater than 0.9. Segmentation model performance was also evaluated on the patient level and lesion level, and the evaluation results of (precision, recall) on the patient level were much better at approximately (1, 0.9). Lesion classification was evaluated to have an overall accuracy of 76%, and most mis-classification cases happen in the neighboring categories, which is reasonable since it is naturally difficult to distinguish LI-RADS 4 from LI-RADS 5.

DISCUSSION

In addition to investigating the performance of the proposed model itself, extensive comparison experiment was also conducted. This study shows that our proposed framework with feature characterization greatly improves the diagnostic performance which also validates the effectiveness of the added feature characterization step. Since this step could output the feature characterization results instead of simply generating a final score, it is able to unbox the black-box for the proposed algorithm thus improves the explainability.

摘要

引言

在放射学界利用深度学习具有巨大潜力和实际意义。为了探索将深度学习方法应用于当前肝脏影像报告和数据系统(LI-RADS)的潜力,本文为LI-RADS系统提供了一个完整且全自动的深度学习解决方案,并研究了其在肝脏病变分割和分类方面的模型性能。

方法

为此,制定了一个深度学习研究设计流程,包括临床问题制定、相应的深度学习任务识别、数据采集、数据预处理和算法验证。在分割之上,通过使用从111名患者获取的33078张原始图像(这些图像于2010年至2017年收集),采用基于监督学习的基于UNet++的分割方法。关键创新点在于,与先前工作相比,所提出的框架在LI-RADS评分分类之前引入了一个名为特征表征的步骤。在这一步骤中,提出了一个具有多任务学习和联合训练策略的特征表征网络,随后是一个推理模块以生成最终的LI-RADS评分。

结果

对肝脏分割模型和特征表征模型都进行了评估,并进行了全面的统计分析及详细讨论。肝脏病变分割的中位数DICE能够达到0.879。基于不同阈值,召回率在0.7至0.9的范围内变化,而精确率始终保持在大于0.9的较高水平。还在患者层面和病变层面评估了分割模型性能,患者层面的(精确率,召回率)评估结果在大约(1, 0.9)时要好得多。病变分类的总体准确率评估为76%,大多数错误分类情况发生在相邻类别中,这是合理的,因为自然难以区分LI-RADS 4和LI-RADS 5。

讨论

除了研究所提出模型本身的性能外,还进行了广泛的对比实验。本研究表明,我们提出的具有特征表征的框架极大地提高了诊断性能,这也验证了添加的特征表征步骤的有效性。由于这一步骤能够输出特征表征结果而不是简单地生成最终分数,它能够打开所提出算法的黑箱,从而提高了可解释性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a65b/10233056/c8e81d1c1d66/fonc-13-1153241-g001.jpg

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