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多区域放射组学在基于多模态超声的人工智能乳腺癌诊断中的应用。

Multi-region radiomics for artificially intelligent diagnosis of breast cancer using multimodal ultrasound.

机构信息

The SMART (Smart Medicine and AI-based Radiology Technology) Lab, Shanghai Institute for Advanced Communication and Data Science, Shanghai University, Shanghai, China; School of Communication and Information Engineering, Shanghai University, Shanghai, China.

Department of Ultrasound Medicine, Tongren Hospital, Shanghai Jiao Tong University School of Medicine, Shanghai, China.

出版信息

Comput Biol Med. 2022 Oct;149:105920. doi: 10.1016/j.compbiomed.2022.105920. Epub 2022 Aug 6.

Abstract

PURPOSE

The ultrasound (US) diagnosis of breast cancer is usually based on a single-region of a whole breast tumor from a single ultrasonic modality, which limits the diagnostic performance. Multiple regions on multimodal US images of breast tumors may all have useful information for diagnosis. This study aimed to propose a multi-region radiomics approach with multimodal US for artificially intelligent diagnosis of malignant and benign breast tumors.

MATERIALS AND METHODS

Firstly, radiomics features were extracted from five regions of interest (ROIs) on B-mode US and contrast-enhanced ultrasound (CEUS) images, including intensity statistics, gray-level co-occurrence matrix texture features and binary texture features. The multiple ROIs included the whole tumor region, strongest perfusion region, marginal region and surrounding region. Secondly, a deep neural network, composed of the point-wise gated Boltzmann machine and the restricted Boltzmann machine, was adopted to comprehensively learn and select features. Thirdly, the support vector machine was used for classification between benign and malignant breast tumors. Finally, five single-region classification models were generated from five ROIs, and they were fused to form an integrated classification model.

RESULTS

Experimental evaluation was conducted on multimodal US images of breast from 187 patients with breast tumors (68 malignant and 119 benign). Under five-fold cross-validation, the classification accuracy, sensitivity, specificity, Youden's index and area under the receiver operating characteristic curve (AUC) with our model were 87.1% ± 3.3%, 77.4% ± 11.8%, 92.4% ± 7.2%, 69.8% ± 8.6% and 0.849 ± 0.043, respectively. Our model was significantly better than single-region single-modal methods in terms of the AUC and accuracy (p < 0.05).

CONCLUSION

In addition to the whole tumor region, the other regions including the strongest perfusion region, marginal region and surrounding region on US images can assist breast cancer diagnosis. The multi-region multimodal radiomics model achieved the best classification results. Our artificially intelligent model would be potentially useful for clinical diagnosis of breast cancer.

摘要

目的

乳腺癌的超声(US)诊断通常基于整个乳房肿瘤的单一区域的单一超声模态,这限制了诊断性能。乳房肿瘤的多模态 US 图像的多个区域可能都具有诊断的有用信息。本研究旨在提出一种基于多模态 US 的多区域放射组学方法,用于人工智能诊断恶性和良性乳腺肿瘤。

材料与方法

首先,从 B 模式 US 和对比增强超声(CEUS)图像的 5 个感兴趣区域(ROI)中提取放射组学特征,包括强度统计、灰度共生矩阵纹理特征和二值纹理特征。多个 ROI 包括整个肿瘤区域、最强灌注区域、边缘区域和周围区域。其次,采用由点门控玻尔兹曼机和受限玻尔兹曼机组成的深度神经网络综合学习和选择特征。然后,使用支持向量机对良性和恶性乳腺肿瘤进行分类。最后,从 5 个 ROI 生成 5 个单区域分类模型,并将其融合形成集成分类模型。

结果

对 187 例乳腺肿瘤患者的多模态 US 图像进行了实验评估(恶性 68 例,良性 119 例)。在五折交叉验证下,我们的模型的分类准确率、敏感度、特异度、约登指数和受试者工作特征曲线(ROC)下面积分别为 87.1%±3.3%、77.4%±11.8%、92.4%±7.2%、69.8%±8.6%和 0.849±0.043。与单区域单模态方法相比,我们的模型在 AUC 和准确率方面均有显著提高(p<0.05)。

结论

除整个肿瘤区域外,US 图像上的其他区域,包括最强灌注区域、边缘区域和周围区域,也可辅助乳腺癌诊断。多区域多模态放射组学模型取得了最佳的分类效果。我们的人工智能模型有望为乳腺癌的临床诊断提供帮助。

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