John D Mayfield, Dana Ataya, Mahmoud Abdalah, Olya Stringfield, Marilyn M Bui, Natarajan Raghunand, Bethany Niell, Issam El Naqa
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Abstract
Purpose To determine whether time-dependent deep learning models can outperform single time point models in predicting preoperative upgrade of ductal carcinoma in situ (DCIS) to invasive malignancy at dynamic contrast-enhanced (DCE) breast MRI without a lesion segmentation prerequisite. Materials and Methods In this exploratory study, 154 cases of biopsy-proven DCIS (25 upgraded at surgery and 129 not upgraded) were selected consecutively from a retrospective cohort of preoperative DCE MRI in women with a mean age of 59 years at time of diagnosis from 2012 to 2022. Binary classification was implemented with convolutional neural network (CNN)-long short-term memory (LSTM) architectures benchmarked against traditional CNNs without manual segmentation of the lesions. Combinatorial performance analysis of ResNet50 versus VGG16-based models was performed with each contrast phase. Binary classification area under the receiver operating characteristic curve (AUC) was reported. Results VGG16-based models consistently provided better holdout test AUCs than did ResNet50 in CNN and CNN-LSTM studies (multiphase test AUC, 0.67 vs 0.59, respectively, for CNN models [P = .04] and 0.73 vs 0.62 for CNN-LSTM models [P = .008]). The time-dependent model (CNN-LSTM) provided a better multiphase test AUC over single time point (CNN) models (0.73 vs 0.67; P = .04). Conclusion Compared with single time point architectures, sequential deep learning algorithms using preoperative DCE MRI improved prediction of DCIS lesions upgraded to invasive malignancy without the need for lesion segmentation. Keywords: MRI, Dynamic Contrast-enhanced, Breast, Convolutional Neural Network (CNN) Supplemental material is available for this article. © RSNA, 2024.
利用时间依赖性深度学习模型和 DCE MRI 对 DCIS 升级为浸润性导管癌进行手术前预测。
"刚刚接受 "的论文经过同行评审,已被接受在《放射学》上发表:人工智能》上发表。这篇文章在以最终版本发表之前,还将经过校对、排版和校对审核。请注意,在制作最终校对稿的过程中,可能会发现一些可能影响内容的错误。目的 确定在动态对比增强(DCE)乳腺 MRI 上预测乳腺导管原位癌(DCIS)术前升级为浸润性恶性肿瘤时,时间依赖性深度学习模型是否优于单一时间点模型,而无需病灶分割前提条件。材料与方法 在这项探索性研究中,我们从 2012 年至 2022 年期间平均年龄 58.6 岁的女性术前 DCE MRI 回顾性队列中连续选取了 154 例经活检证实的 DCIS(25 例在手术时升级,129 例未升级)。使用卷积神经网络-长短期记忆(CNN-LSTM)架构实施二元分类,并以传统 CNN 为基准,无需人工分割病灶。在每个对比阶段对 ResNet50 与基于 VGG16 的模型进行了组合性能分析。报告了接收器工作特征曲线下的二元分类面积 (AUC)。结果 在 CNN 和 CNNLSTM 研究中,基于 VGG16 的模型始终比 ResNet50 提供更好的保持测试 AUC(多相测试 AUC:0.67 对 0.59,多相测试 AUC:0.67 对 0.59,多相测试 AUC:0.67 对 0.59):CNN 模型的 AUC 分别为 0.67 对 0.59;P = .04;CNN-LSTM 模型的 AUC 分别为 0.73 对 0.62;P = .008)。与单时间点模型(CNN)相比,时间依赖性模型(CNN-LSTM)提供了更好的多阶段测试 AUC(0.73 对 0.67,P = .04)。结论 与单时间点架构相比,使用术前 DCE MRI 的连续深度学习算法提高了对 DCIS 病变升级为浸润性恶性肿瘤的预测能力,而无需进行病变分割。©RSNA,2024。
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