基于超声图像自动分割的腮腺良恶性肿瘤深度学习辅助诊断:一项多中心回顾性研究

Wei Wei, Jingya Xu, Fei Xia, Jun Liu, Zekai Zhang, Jing Wu, Tianjun Wei, Huijun Feng, Qiang Ma, Feng Jiang, Xiangming Zhu, Xia Zhang
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引用次数: 0

摘要

在超声图像自动分割的基础上构建深度学习辅助诊断模型,以帮助放射科医生区分腮腺肿瘤的良恶性......回顾性地从4个中心招募了582名经组织病理学诊断为腮腺肿瘤的患者,并收集他们的数据进行分析。根据最佳自动分割模型(Deeplabv3、UNet++ 和 UNet)下获得的超声图像,分析了六个深度学习模型(ResNet18、Inception_v3 等)的放射组学特征。比较了三位医生在使用和不使用最佳模型时的表现。使用净重新分类指数(NRI)和综合判别改进指数(IDI)来评估最佳模型的临床效益。ResNet18深度学习模型的预测性能最佳,在内部测试集和外部测试集1和2中的接收者工作特征曲线下面积分别为0.808(0.694-0.923)、0.809(0.712-0.906)和0.812(0.680-0.944)。同时,三位放射科医生中有两位的最佳模型辅助临床和整体效益明显增强(在内部验证集中,NRI:分别为 0.259 和 0.213 [p = 0.002 和 0.017],IDI:分别为 0.284 和 0.201 [p = 0.005 和 0.043];在外部测试集 1 中,NRI:分别为 0.183 和 0.161 [p = 0.019 和 0.008],IDI:分别为 0.205和0.184[p=0.031和0.045];外部测试集2中,NRI:0.297和0.297[p=0.038和0.047],IDI:0.332和0.294[p=0.031和0.041])。构建的超声图像自动分割深度学习模型可以提高放射科医生对PGT的诊断性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep learning-assisted diagnosis of benign and malignant parotid gland tumors based on automatic segmentation of ultrasound images: a multicenter retrospective study
To construct deep learning-assisted diagnosis models based on automatic segmentation of ultrasound images to facilitate radiologists in differentiating benign and malignant parotid tumors.A total of 582 patients histopathologically diagnosed with PGTs were retrospectively recruited from 4 centers, and their data were collected for analysis. The radiomics features of six deep learning models (ResNet18, Inception_v3 etc) were analyzed based on the ultrasound images that were obtained under the best automatic segmentation model (Deeplabv3, UNet++, and UNet). The performance of three physicians was compared when the optimal model was used and not. The Net Reclassification Index (NRI) and Integrated Discrimination Improvement (IDI) were utilized to evaluate the clinical benefit of the optimal model.The Deeplabv3 model performed optimally in terms of automatic segmentation. The ResNet18 deep learning model had the best prediction performance, with an area under the receiver-operating characteristic curve of 0.808 (0.694−0.923), 0.809 (0.712−0.906), and 0.812 (0.680−0.944) in the internal test set and external test sets 1 and 2, respectively. Meanwhile, the optimal model-assisted clinical and overall benefits were markedly enhanced for two out of three radiologists (in internal validation set, NRI: 0.259 and 0.213 [p = 0.002 and 0.017], IDI: 0.284 and 0.201 [p = 0.005 and 0.043], respectively; in external test set 1, NRI: 0.183 and 0.161 [p = 0.019 and 0.008], IDI: 0.205 and 0.184 [p = 0.031 and 0.045], respectively; in external test set 2, NRI: 0.297 and 0.297 [p = 0.038 and 0.047], IDI: 0.332 and 0.294 [p = 0.031 and 0.041], respectively).The deep learning model constructed for automatic segmentation of ultrasound images can improve the diagnostic performance of radiologists for PGTs.
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