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Functional and Structural Connectome Features for Machine Learning Chemo-Brain Prediction in Women Treated for Breast Cancer with Chemotherapy

机译:化疗治疗乳腺癌妇女机器学习化疗化疗的功能和结构连接特征

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摘要

Breast cancer is the leading cancer among women worldwide, and a high number of breast cancer patients are struggling with psychological and cognitive disorders. In this study, we aim to use machine learning models to discriminate between chemo-brain participants and healthy controls (HCs) using connectomes (connectivity matrices) and topological coefficients. Nineteen female post-chemotherapy breast cancer (BC) survivors and 20 female HCs were recruited for this study. Participants in both groups received resting-state functional magnetic resonance imaging (rs-fMRI) and generalized q-sampling imaging (GQI). Logistic regression (LR), decision tree classifier (CART), and xgboost (XGB) were the models we adopted for classification. In connectome analysis, LR achieved an accuracy of 79.49% with the functional connectomes and an accuracy of 71.05% with the structural connectomes. In the topological coefficient analysis, accuracies of 87.18%, 82.05%, and 83.78% were obtained by the functional global efficiency with CART, the functional global efficiency with XGB, and the structural transitivity with CART, respectively. The areas under the curves (AUCs) were 0.93, 0.94, 0.87, 0.88, and 0.84, respectively. Our study showed the discriminating ability of functional connectomes, structural connectomes, and global efficiency. We hope our findings can contribute to an understanding of the chemo brain and the establishment of a clinical system for tracking chemo brain.
机译:乳腺癌是全世界女性的主要癌症,大量的乳腺癌患者正在与心理和认知障碍斗争。在本研究中,我们的目标是使用机器学习模型使用Connectomes(连接矩阵)和拓扑系数来区分化疗脑参与者和健康控制(HCS)。招募了19名女性后化疗后乳腺癌(BC)幸存者和20名雌性HCS进行这项研究。两个组的参与者接受了休息状态功能磁共振成像(RS-FMRI)和广义Q采样成像(GQI)。 Logistic回归(LR),决策树分类器(推车)和XGBoost(XGB)是我们采用的分类模型。在连接分析中,LR的精度为79.49%,功能互联网和结构钢丝孔的精度为71.05%。在拓扑系数分析中,通过随着推车的功能全球效率,具有XGB的功能全球效率和带推车的结构全球效率的功能全球效率,可以获得87.18%,82.05%和83.78%的精度。曲线(AUCS)下的区域分别为0.93,0.94,0.87,0.88和0.84。我们的研究表明,功能Concepomes,结构钢丝和全球效率的辨别能力。我们希望我们的研究结果可以促进对化疗大脑的理解和建立跟踪化疗脑的临床系统。

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