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用于多参数磁共振成像中乳腺病变分割与特征分析的深度学习模型的开发与验证

Development and validation of a deep learning model for breast lesion segmentation and characterization in multiparametric MRI.

作者信息

Zhu Jingjin, Geng Jiahui, Shan Wei, Zhang Boya, Shen Huaqing, Dong Xiaohan, Liu Mei, Li Xiru, Cheng Liuquan

机构信息

School of Medicine, Nankai University, Tianjin, China.

Department of General Surgery, Chinese People's Liberation Army General Hospital, Beijing, China.

出版信息

Front Oncol. 2022 Aug 11;12:946580. doi: 10.3389/fonc.2022.946580. eCollection 2022.

Abstract

IMPORTANCE

The utilization of artificial intelligence for the differentiation of benign and malignant breast lesions in multiparametric MRI (mpMRI) assists radiologists to improve diagnostic performance.

OBJECTIVES

To develop an automated deep learning model for breast lesion segmentation and characterization and to evaluate the characterization performance of AI models and radiologists.

MATERIALS AND METHODS

For lesion segmentation, 2,823 patients were used for the training, validation, and testing of the VNet-based segmentation models, and the average Dice similarity coefficient (DSC) between the manual segmentation by radiologists and the mask generated by VNet was calculated. For lesion characterization, 3,303 female patients with 3,607 pathologically confirmed lesions (2,213 malignant and 1,394 benign lesions) were used for the three ResNet-based characterization models (two single-input and one multi-input models). Histopathology was used as the diagnostic criterion standard to assess the characterization performance of the AI models and the BI-RADS categorized by the radiologists, in terms of sensitivity, specificity, accuracy, and the area under the receiver operating characteristic curve (AUC). An additional 123 patients with 136 lesions (81 malignant and 55 benign lesions) from another institution were available for external testing.

RESULTS

Of the 5,811 patients included in the study, the mean age was 46.14 (range 11-89) years. In the segmentation task, a DSC of 0.860 was obtained between the VNet-generated mask and manual segmentation by radiologists. In the characterization task, the AUCs of the multi-input and the other two single-input models were 0.927, 0.821, and 0.795, respectively. Compared to the single-input DWI or DCE model, the multi-input DCE and DWI model obtained a significant increase in sensitivity, specificity, and accuracy (0.831 vs. 0.772/0.776, 0.874 vs. 0.630/0.709, 0.846 vs. 0.721/0.752). Furthermore, the specificity of the multi-input model was higher than that of the radiologists, whether using BI-RADS category 3 or 4 as a cutoff point (0.874 vs. 0.404/0.841), and the accuracy was intermediate between the two assessment methods (0.846 vs. 0.773/0.882). For the external testing, the performance of the three models remained robust with AUCs of 0.812, 0.831, and 0.885, respectively.

CONCLUSIONS

Combining DCE with DWI was superior to applying a single sequence for breast lesion characterization. The deep learning computer-aided diagnosis (CADx) model we developed significantly improved specificity and achieved comparable accuracy to the radiologists with promise for clinical application to provide preliminary diagnoses.

摘要

重要性

在多参数磁共振成像(mpMRI)中利用人工智能鉴别乳腺良恶性病变有助于放射科医生提高诊断性能。

目的

开发一种用于乳腺病变分割和特征分析的自动化深度学习模型,并评估人工智能模型和放射科医生的特征分析性能。

材料与方法

对于病变分割,2823例患者用于基于VNet的分割模型的训练、验证和测试,并计算放射科医生手动分割与VNet生成的掩码之间的平均骰子相似系数(DSC)。对于病变特征分析,3303例患有3607个经病理证实病变(2213个恶性病变和1394个良性病变)的女性患者用于三个基于ResNet的特征分析模型(两个单输入模型和一个多输入模型)。组织病理学用作诊断标准,以评估人工智能模型和放射科医生分类的BI-RADS在敏感性、特异性、准确性和受试者操作特征曲线下面积(AUC)方面的特征分析性能。另有来自另一家机构的123例患有136个病变(81个恶性病变和55个良性病变)的患者可用于外部测试。

结果

纳入研究的5811例患者中,平均年龄为46.14岁(范围11 - 89岁)。在分割任务中,VNet生成的掩码与放射科医生手动分割之间的DSC为0.860。在特征分析任务中,多输入模型和其他两个单输入模型的AUC分别为0.927、0.821和0.795。与单输入DWI或DCE模型相比,多输入DCE和DWI模型在敏感性、特异性和准确性方面有显著提高(0.831对0.772/0.776,0.874对0.630/0.709,0.846对0.721/0.752)。此外,无论将BI-RADS 3类还是4类作为截断点,多输入模型的特异性均高于放射科医生(0.874对0.404/0.841),准确性介于两种评估方法之间(0.846对0.773/0.882)。对于外部测试,三个模型的性能保持稳健,AUC分别为0.812、0.831和0.885。

结论

将DCE与DWI相结合在乳腺病变特征分析方面优于应用单一序列。我们开发的深度学习计算机辅助诊断(CADx)模型显著提高了特异性,并达到了与放射科医生相当的准确性,有望在临床应用中提供初步诊断。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d86f/9402900/8490d7cf0353/fonc-12-946580-g001.jpg

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