Lin Kai-Yi, Chen Vincent Chin-Hung, Tsai Yuan-Hsiung, McIntyre Roger S, Weng Jun-Cheng
Department of Medical Imaging and Radiological Sciences, Bachelor Program in Artificial Intelligence, Chang Gung University, Taoyuan 33302, Taiwan.
School of Medicine, Chang Gung University, Taoyuan 33302, Taiwan.
J Pers Med. 2021 Oct 14;11(10):1025. doi: 10.3390/jpm11101025.
Breast cancer is the most common female cancer worldwide, and breast cancer accounts for 30% of female cancers. Of all the treatment modalities, breast cancer survivors who have undergone chemotherapy might complain about cognitive impairment during and after cancer treatment. This phenomenon, chemo-brain, is used to describe the alterations in cognitive functions after receiving systemic chemotherapy. Few reports detect the chemotherapy-induced cognitive impairment (CICI) by performing functional MRI (fMRI) and a deep learning analysis. In this study, we recruited 55 postchemotherapy breast cancer survivors (C+ group) and 65 healthy controls (HC group) and extracted mean fractional amplitudes of low-frequency fluctuations (mfALFF) from resting-state fMRI as our input feature. Two state-of-the-art deep learning architectures, ResNet-50 and DenseNet-121, were transformed to 3D, embedded with squeeze and excitation (SE) blocks and then trained to differentiate cerebral alterations based on the effect of chemotherapy. An integrated gradient was applied to visualize the pattern that was recognized by our model. The average performance of SE-ResNet-50 models was an accuracy of 80%, precision of 78% and recall of 70%; on the other hand, the SE-DenseNet-121 model reached identical results with an average of 80% accuracy, 86% precision and 80% recall. The regions with the greatest contributions highlighted by the integrated gradients algorithm for differentiating chemo-brain were the frontal, temporal, parietal and occipital lobe. These regions were consistent with other studies and strongly associated with the default mode and dorsal attention networks. We constructed two volumetric state-of-the-art models and visualized the patterns that are critical for identifying chemo-brains from normal brains. We hope that these results will be helpful in clinically tracking chemo-brain in the future.
乳腺癌是全球最常见的女性癌症,占女性癌症的30%。在所有治疗方式中,接受过化疗的乳腺癌幸存者可能会抱怨在癌症治疗期间及之后出现认知障碍。这种现象,即化疗脑,用于描述接受全身化疗后认知功能的改变。很少有报告通过功能磁共振成像(fMRI)和深度学习分析来检测化疗引起的认知障碍(CICI)。在本研究中,我们招募了55名化疗后的乳腺癌幸存者(C+组)和65名健康对照者(HC组),并从静息态fMRI中提取低频波动的平均分数振幅(mfALFF)作为我们的输入特征。将两种最先进的深度学习架构ResNet-50和DenseNet-121转换为3D,嵌入挤压与激励(SE)模块,然后进行训练以根据化疗效果区分脑部改变。应用积分梯度来可视化我们模型识别的模式。SE-ResNet-50模型的平均性能为准确率80%、精确率78%和召回率70%;另一方面,SE-DenseNet-121模型达到了相同的结果,平均准确率80%、精确率86%和召回率80%。积分梯度算法突出显示的对区分化疗脑贡献最大的区域是额叶、颞叶、顶叶和枕叶。这些区域与其他研究一致,并且与默认模式和背侧注意网络密切相关。我们构建了两个体积最先进的模型,并可视化了从正常大脑中识别化疗脑至关重要的模式。我们希望这些结果将来有助于临床上追踪化疗脑。