Li Hui, Robinson Kayla, Lan Li, Baughan Natalie, Chan Chun-Wai, Embury Matthew, Whitman Gary J, El-Zein Randa, Bedrosian Isabelle, Giger Maryellen L
Department of Radiology, The University of Chicago, Chicago, IL 60637, USA.
Department of Breast Surgical Oncology, The University of Texas MD Anderson Cancer Center, Houston, TX 77030, USA.
Cancers (Basel). 2023 Apr 4;15(7):2141. doi: 10.3390/cancers15072141.
The identification of women at risk for sporadic breast cancer remains a clinical challenge. We hypothesize that the temporal analysis of annual screening mammograms, using a long short-term memory (LSTM) network, could accurately identify women at risk of future breast cancer. Women with an imaging abnormality, which had been biopsy-confirmed to be cancer or benign, who also had antecedent imaging available were included in this case-control study. Sequences of antecedent mammograms were retrospectively collected under HIPAA-approved guidelines. Radiomic and deep-learning-based features were extracted on regions of interest placed posterior to the nipple in antecedent images. These features were input to LSTM recurrent networks to classify whether the future lesion would be malignant or benign. Classification performance was assessed using all available antecedent time-points and using a single antecedent time-point in the task of lesion classification. Classifiers incorporating multiple time-points with LSTM, based either on deep-learning-extracted features or on radiomic features, tended to perform statistically better than chance, whereas those using only a single time-point failed to show improved performance compared to chance, as judged by area under the receiver operating characteristic curves (AUC: 0.63 ± 0.05, 0.65 ± 0.05, 0.52 ± 0.06 and 0.54 ± 0.06, respectively). Lastly, similar classification performance was observed when using features extracted from the affected versus the contralateral breast in predicting future unilateral malignancy (AUC: 0.63 ± 0.05 vs. 0.59 ± 0.06 for deep-learning-extracted features; 0.65 ± 0.05 vs. 0.62 ± 0.06 for radiomic features). The results of this study suggest that the incorporation of temporal information into radiomic analyses may improve the overall classification performance through LSTM, as demonstrated by the improved discrimination of future lesions as malignant or benign. Further, our data suggest that a potential field effect, changes in the breast extending beyond the lesion itself, is present in both the affected and contralateral breasts in antecedent imaging, and, thus, the evaluation of either breast might inform on the future risk of breast cancer.
识别散发性乳腺癌风险女性仍然是一项临床挑战。我们假设,使用长短期记忆(LSTM)网络对年度筛查乳房X光片进行时间分析,可以准确识别未来有患乳腺癌风险的女性。本病例对照研究纳入了经活检证实为癌症或良性的影像异常女性,且这些女性之前有可用的影像资料。根据《健康保险流通与责任法案》(HIPAA)批准的指导方针,回顾性收集之前乳房X光片的序列。在之前图像中乳头后方的感兴趣区域提取基于影像组学和深度学习的特征。将这些特征输入LSTM循环网络,以分类未来病变是恶性还是良性。在病变分类任务中,使用所有可用的先前时间点和单个先前时间点评估分类性能。基于深度学习提取特征或影像组学特征、结合多个时间点与LSTM的分类器,在统计学上往往表现优于随机水平,而仅使用单个时间点的分类器与随机水平相比未能显示出性能改善,根据受试者工作特征曲线下面积判断(AUC分别为:0.63±0.05、0.65±0.05、0.52±0.06和0.54±0.06)。最后,在预测未来单侧恶性肿瘤时,使用从患侧乳房与对侧乳房提取的特征观察到了相似的分类性能(对于深度学习提取的特征,AUC分别为0.63±0.05和0.59±0.06;对于影像组学特征,AUC分别为0.65±0.05和0.62±0.06)。本研究结果表明,将时间信息纳入影像组学分析可能通过LSTM提高整体分类性能,这表现为对未来病变是恶性还是良性的辨别能力提高。此外,我们的数据表明,在之前的影像中,患侧乳房和对侧乳房都存在潜在的场效应,即乳房的变化超出病变本身,因此,对任何一侧乳房的评估都可能为未来患乳腺癌的风险提供信息。