Nomogram Based on Super-Resolution Ultrasound Images Outperforms in Predicting Benign and Malignant Breast Lesions

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Liu Yang, Zhe Ma
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Abstract

Objective To establish a good predictive model using a deep-learning (DL)-based three-dimensional (3D) super-resolution ultrasound images for the diagnosis of benign and malignant breast lesions. Methods This retrospective study included 333 patients with histopathologically confirmed breast lesions, randomly split into training (N=266) and testing (N=67) datasets. Eight models, including four deep learning models (ORResNet101, ORMobileNet_v2, SRResNet101, SRMobileNet_v2) and four machine learning models (OR_LR, OR_SVM, SR_LR, SR_SVM), were developed based on original and super-resolution images. The best performing model was SRMobileNet_v2, which was used to construct a nomogram integrating clinical factors. The performance of nomogram was evaluated using receiver operating characteristic (ROC) analysis, decision curve analysis (DCA), and calibration curves. Results SRMobileNet_v2, MobileNet_V2 based on super-resolution ultrasound images, had the best predictive performance in four traditional machine learning models and four deep learning models, with AUC improvements of 0.089 and 0.031 in the training and testing sets, relative to the ORMobileNet_v2 model based on original ultrasound images. The deep-learning nomogram was constructed using the SRMobileNet_v2 model score, tumor size, and patient age, resulting in superior predictive efficacy compared to the nomogram without the SRMobileNet_v2 model score. Furthermore, it demonstrated favorable calibration, discrimination, and clinical utility in both cohorts. Conclusion The diagnostic prediction model utilizing super-resolution reconstructed ultrasound images outperforms the model based on original images in distinguishing between benign and malignant breast lesions. The nomogram based on super-resolution ultrasound images has the potential to serve as a reliable auxiliary diagnostic tool for clinicians, exhibiting superior predictive performance in distinguishing between benign and malignant breast lesions.
基于超分辨率超声图像的提名图在预测良性和恶性乳腺病变方面表现出色
目的利用基于深度学习(DL)的三维超分辨率超声图像建立良好的预测模型,用于乳腺良恶性病变的诊断。方法回顾性研究333例经组织病理学证实的乳腺病变患者,随机分为训练组(N=266)和试验组(N=67)。基于原始和超分辨率图像,构建了8个模型,包括4个深度学习模型(ORResNet101、ORMobileNet_v2、SRResNet101、SRMobileNet_v2)和4个机器学习模型(OR_LR、OR_SVM、SR_LR、SR_SVM)。表现最好的模型是SRMobileNet_v2,该模型用于构建综合临床因素的nomogram。采用受试者工作特征(ROC)分析、决策曲线分析(DCA)和校准曲线对nomogram进行评价。结果基于超分辨率超声图像的SRMobileNet_v2和基于超分辨率超声图像的SRMobileNet_v2在4种传统机器学习模型和4种深度学习模型中的预测性能最好,在训练集和测试集的AUC分别比基于原始超声图像的ORMobileNet_v2模型提高了0.089和0.031。使用SRMobileNet_v2模型评分、肿瘤大小和患者年龄构建深度学习nomogram,与没有SRMobileNet_v2模型评分的nomogram相比,预测效果更好。此外,它在两个队列中显示出良好的校准、区分和临床实用性。结论基于超分辨率重建超声图像的诊断预测模型在区分乳腺良恶性病变方面优于基于原始图像的模型。基于超分辨率超声图像的nomogram超分辨率超声图像有潜力作为临床医生可靠的辅助诊断工具,在区分乳腺良恶性病变方面表现出优越的预测性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
7.20
自引率
4.30%
发文量
567
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