利用治疗前静息态功能磁共振成像和随机森林机器学习预测乳腺癌后的长期认知结果
Predicting Long-Term Cognitive Outcome Following Breast Cancer with Pre-Treatment Resting State fMRI and Random Forest Machine Learning.
作者信息
Kesler Shelli R, Rao Arvind, Blayney Douglas W, Oakley-Girvan Ingrid A, Karuturi Meghan, Palesh Oxana
机构信息
Department of Neuro-Oncology, University of Texas MD Anderson Cancer Center, Houston, TX, United States.
Department of Bioinformatics and Computational Biology, University of Texas MD Anderson Cancer Center, Houston, TX, United States.
出版信息
Front Hum Neurosci. 2017 Nov 15;11:555. doi: 10.3389/fnhum.2017.00555. eCollection 2017.
We aimed to determine if resting state functional magnetic resonance imaging (fMRI) acquired at pre-treatment baseline could accurately predict breast cancer-related cognitive impairment at long-term follow-up. We evaluated 31 patients with breast cancer (age 34-65) prior to any treatment, post-chemotherapy and 1 year later. Cognitive testing scores were normalized based on data obtained from 43 healthy female controls and then used to categorize patients as impaired or not based on longitudinal changes. We measured clustering coefficient, a measure of local connectivity, by applying graph theory to baseline resting state fMRI and entered these metrics along with relevant patient-related and medical variables into random forest classification. Incidence of cognitive impairment at 1 year follow-up was 55% and was predicted by classification algorithms with up to 100% accuracy ( < 0.0001). The neuroimaging-based model was significantly more accurate than a model involving patient-related and medical variables ( = 0.005). Hub regions belonging to several distinct functional networks were the most important predictors of cognitive outcome. Characteristics of these hubs indicated potential spread of brain injury from default mode to other networks over time. These findings suggest that resting state fMRI is a promising tool for predicting future cognitive impairment associated with breast cancer. This information could inform treatment decision making by identifying patients at highest risk for long-term cognitive impairment.
我们旨在确定在治疗前基线期采集的静息态功能磁共振成像(fMRI)能否准确预测乳腺癌相关的长期随访认知障碍。我们对31例乳腺癌患者(年龄34 - 65岁)在任何治疗前、化疗后及1年后进行了评估。认知测试分数根据从43名健康女性对照者获得的数据进行标准化,然后根据纵向变化将患者分类为受损或未受损。我们通过将图论应用于基线静息态fMRI来测量聚类系数(一种局部连通性的度量),并将这些指标以及相关的患者相关和医学变量输入随机森林分类中。1年随访时认知障碍的发生率为55%,分类算法预测的准确率高达100%(<0.0001)。基于神经影像学的模型比涉及患者相关和医学变量的模型显著更准确(=0.005)。属于几个不同功能网络的枢纽区域是认知结果的最重要预测因子。这些枢纽的特征表明脑损伤可能会随着时间从默认模式扩散到其他网络。这些发现表明静息态fMRI是预测与乳腺癌相关的未来认知障碍的一种有前景的工具。这些信息可以通过识别长期认知障碍风险最高的患者来为治疗决策提供参考。
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