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Deep learning modeling using normal mammograms for predicting breast cancer risk

机译:使用正常乳房X线图预测乳腺癌风险的深度学习建模

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Purpose To?investigate two deep learning‐based modeling schemes for predicting short‐term risk of developing breast cancer using prior normal screening digital mammograms in a case‐control setting. Methods We conducted a retrospective Institutional Review Board‐approved study on a case‐control cohort of 226 patients (including 113 women diagnosed with breast cancer and 113 controls) who underwent general population breast cancer screening. For each patient, a prior normal (i.e., with negative or benign findings) digital mammogram examination [including mediolateral oblique (MLO) view and craniocaudal (CC) view two images] was collected. Thus, a total of 452 normal images (226 MLO view images and 226 CC view images) of this case‐control cohort were analyzed to predict the outcome, i.e., developing breast cancer (cancer cases) or remaining breast cancer‐free (controls) within the follow‐up period. We implemented an end‐to‐end deep learning model and a GoogLeNet‐LDA model and compared their effects in several experimental settings using two mammographic view images and inputting two different subregions of the images to the models. The proposed models were also compared to logistic regression modeling of mammographic breast density. Area under the receiver operating characteristic curve (AUC) was used as the model performance metric. Results The highest AUC was 0.73 [95% Confidence Interval (CI): 0.68–0.78; GoogLeNet‐LDA model on CC view] when using the whole‐breast and was 0.72 (95% CI: 0.67–0.76; GoogLeNet‐LDA model on MLO?+?CC view) when using the dense tissue, respectively, as the model input. The GoogleNet‐LDA model significantly (all P ??0.05) outperformed the end‐to‐end GoogLeNet model in all experiments. CC view was consistently more predictive than MLO view in both deep learning models, regardless of the input subregions. Both models exhibited superior performance than the percent breast density (AUC?=?0.54; 95% CI: 0.49–0.59). Conclusions The proposed deep learning modeling approach can predict short‐term breast cancer risk using normal screening mammogram images. Larger studies are needed to further reveal the promise of deep learning in enhancing imaging‐based breast cancer risk assessment.
机译:目的是研究两个基于深度学习的建模方案,用于预测使用先前的正常筛选数字乳房X线图在壳体控制设置中使用先前的正常筛选数字乳房X线检查的短期风险。方法采用回顾性制度审查委员会批准的226名患者案例控制群组(其中113名患有乳腺癌和113个对照组)的审核研究,他接受了一般人群乳腺癌癌症筛查。对于每位患者,最终正常(即,带有负面或良性结果)数字乳房检查[包括Mediolateral斜(MLO)视图和Craniocaudal(CC)视图两种图像]。因此,分析了总共452个正常图像(226mLo视图图像和226cc视图图像),以预测结果,即乳腺癌(癌症病例)或剩余乳腺癌(对照)在后续期间。我们实现了端到端的深度学习模型和Googlenet-LDA模型,并使用两个乳房图视图图像和将图像的两个不同子区域输入到模型中的若干实验设置中的效果。还将拟议的模型与乳房X线乳房密度的逻辑回归建模进行了比较。接收器操作特性曲线(AUC)下的区域用作模型性能度量。结果最高AUC为0.73 [95%置信区间(CI):0.68-0.78; CC视图上的Googlenet-LDA模型]使用全乳房时,分别使用致密组织时,分别使用致密组织时(MLOΔ+?CC视图上的Googlenet-LDA模型)作为模型输入时,分别为0.72(95%CI:0.67-0.76; Googlenet-LDA模型) 。 Googlenet-LDA模型显着(所有p?& 0. 0.05)在所有实验中表现出端到端的歌曲线型模型。无论输入子区域如何,CC视图比MLO视图始终如一地预测。两种模型表现出优于乳房密度百分比的性能(AUC?= 0.54; 95%CI:0.49-0.59)。结论建议的深度学习建模方法可以使用正常筛选乳房图图像预测短期乳腺癌风险。需要更大的研究来进一步揭示深入学习在提高基于成像的乳腺癌风险评估方面的承诺。

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