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首页> 外文期刊>Brain Sciences >Machine Learning Detects Pattern of Differences in Functional Magnetic Resonance Imaging (fMRI) Data between Chronic Fatigue Syndrome (CFS) and Gulf War Illness (GWI)
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Machine Learning Detects Pattern of Differences in Functional Magnetic Resonance Imaging (fMRI) Data between Chronic Fatigue Syndrome (CFS) and Gulf War Illness (GWI)

机译:机器学习检测慢性疲劳综合征(CFS)和海湾战争疾病(GWI)之间的功能磁共振成像(FMRI)数据的差异模式

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Background: Gulf War Illness (GWI) and Chronic Fatigue Syndrome (CFS) are two debilitating disorders that share similar symptoms of chronic pain, fatigue, and exertional exhaustion after exercise. Many physicians continue to believe that both are psychosomatic disorders and to date no underlying etiology has been discovered. As such, uncovering objective biomarkers is important to lend credibility to criteria for diagnosis and to help differentiate the two disorders. Methods: We assessed cognitive differences in 80 subjects with GWI and 38 with CFS by comparing corresponding fMRI scans during 2-back working memory tasks before and after exercise to model brain activation during normal activity and after exertional exhaustion, respectively. Voxels were grouped by the count of total activity into the Automated Anatomical Labeling (AAL) atlas and used in an “ensemble” series of machine learning algorithms to assess if a multi-regional pattern of differences in the fMRI scans could be detected. Results: A K-Nearest Neighbor (70%/81%), Linear Support Vector Machine (SVM) (70%/77%), Decision Tree (82%/82%), Random Forest (77%/78%), AdaBoost (69%/81%), Na?ve Bayes (74%/78%), Quadratic Discriminant Analysis (QDA) (73%/75%), Logistic Regression model (82%/82%), and Neural Net (76%/77%) were able to differentiate CFS from GWI before and after exercise with an average of 75% accuracy in predictions across all models before exercise and 79% after exercise. An iterative feature selection and removal process based on Recursive Feature Elimination (RFE) and Random Forest importance selected 30 regions before exercise and 33 regions after exercise that differentiated CFS from GWI across all models, and produced the ultimate best accuracies of 82% before exercise and 82% after exercise by Logistic Regression or Decision Tree by a single model, and 100% before and after exercise when selected by any six or more models. Differential activation on both days included the right anterior insula, left putamen, and bilateral orbital frontal, ventrolateral prefrontal cortex, superior, inferior, and precuneus (medial) parietal, and lateral temporal regions. Day 2 had the cerebellum, left supplementary motor area and bilateral pre- and post-central gyri. Changes between days included the right Rolandic operculum switching to the left on Day 2, and the bilateral midcingulum switching to the left anterior cingulum. Conclusion: We concluded that CFS and GWI are significantly differentiable using a pattern of fMRI activity based on an ensemble machine learning model.
机译:背景:海湾战争疾病(GWI)和慢性疲劳综合征(CFS)是两种衰弱的疾病,其在运动后享有类似的慢性疼痛,疲劳和抵抗疲惫的类似症状。许多医生仍然认为,两者都是心身疾病,并迄今为止没有发现潜在的病因。因此,揭示客观生物标志物对于借鉴诊断标准以及有助于区分两种疾病的重要性是重要的。方法:通过在正常活动期间和培训期间,通过比较28后工作记忆任务,在正常活动期间和施用后的脑激活期间,通过比较28次与CFS评估80个受试者的认知差异。通过总活动的计数分组体素分为自动解剖标记(AAL)地图集,并用于“集合”系列机器学习算法,以评估FMRI扫描中的多区域差异模式是否可以检测到。结果:K最近邻居(70%/ 81%),线性支持向量机(SVM)(70%/ 77%),决策树(82%/ 82%),随机森林(77%/ 78%), Adaboost(69%/ 81%),Na've贝叶斯(74%/ 78%),二次判别分析(QDA)(73%/ 75%),逻辑回归模型(82%/ 82%)和神经网络( 76%/ 77%的)能够在运动之前和之后将CFS与GWI分化,平均在运动前的所有模型中的预测性75%的准确性,运动后79%。基于递归特征消除(RFE)和随机森林重要性的迭代特征选择和去除过程在锻炼前选择30个地区,运动后33个区域,从所有型号中的GWI分化,并在运动前产生了最佳最佳精度82%通过单一型号的逻辑回归或决策树运动后运动后82%,并且在任何六种或更多型号选择时锻炼之前和锻炼前后100%。两天内的差异激活包括右侧肠道,左侧腐烂和双侧轨道正面,腹外侧前甲醛皮质,优越,劣等和前静脉(内侧)的垂直颞部区域。第2天具有小脑,左侧补充电机面积和双边前和中央吉尔。天之间的变化包括在第2天的右侧罗兰曲调转换为左侧,以及向左前曲线切换的双侧中间轴。结论:我们得出的结论是,使用基于集合机器学习模型的FMRI活动模式,CFS和GWI显着微不足道。

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