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Diagnostic classification based onfunctional connectivity inchronic pain: Model optimization in fibromyalgia and rheumatoid arthritis

机译:基于功能连接性慢性疼痛的诊断分类:纤维肌痛和类风湿关节炎的模型优化

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Rationale and Objectives: The combination of functional magnetic resonance imaging (fMRI) of the brain with multivariate pattern analysis (MVPA) has been proposed as a possible diagnostic tool. Goal of this investigation was to identify potential functional connectivity (FC) differences in the salience network (SN) and default mode network (DMN) between fibromyalgia syndrome (FMS), rheumatoid arthritis (RA), and controls (HC) and to evaluate the diagnostic applicability of derived pattern classification approaches. Materials and Methods: The resting period during an fMRI examination was retrospectively analyzed in women with FMS (n=17), RA (n=16), and HC (n=17). FC was calculated for SN and DMN subregions. Classification accuracies of discriminative MVPA models were evaluated with cross-validation: (1) inferential test of a single method, (2) explorative model optimization. Results: No inferentially tested model was able to classify subjects with statistically significant accuracy. However, the diagnostic ability for the differential diagnostic problem exhibited a trend to significance (accuracy: 69.7%, P=086). Optimized models in the explorative analysis reached accuracies up to 73.5% (FMS vs. HC), 78.8% (RA vs. HC), and 78.8% (FMS vs. RA) whereas other models performed at or below chance level. Comparable support vector machine approaches performed above average for all three problems. Conclusions: Observed accuracies are not sufficient to reliably differentiate between FMS and RA for diagnostic purposes. However, some indirect evidence in support of the feasibility of this approach is provided. This exploratory analysis constitutes a fundamental model optimization effort to be based on in further investigations.
机译:原理和目的:已提出将大脑的功能磁共振成像(fMRI)与多变量模式分析(MVPA)结合起来作为一种可能的诊断工具。这项研究的目的是确定纤维肌痛综合征(FMS),类风湿性关节炎(RA)和对照(HC)之间在显着网络(SN)和默认模式网络(DMN)中潜在的功能连接(FC)差异,并评估派生模式分类方法的诊断适用性。材料与方法:回顾性分析FMS(n = 17),RA(n = 16)和HC(n = 17)的女性在fMRI检查期间的休息时间。计算了SN和DMN子区域的FC。区分性MVPA模型的分类准确性通过交叉验证进行了评估:(1)单一方法的推理测试,(2)探索性模型优化。结果:没有经过推论检验的模型能够以统计学上显着的准确性对受试者进行分类。但是,对鉴别诊断问题的诊断能力呈现出显着的趋势(准确性:69.7%,P = 086)。探索性分析中的优化模型达到了高达73.5%(FMS vs. HC),78.8%(RA vs. HC)和78.8%(FMS vs. RA)的准确性,而其他模型则达到或低于机会水平。可比的支持向量机方法在所有三个问题上的执行均高于平均值。结论:观察到的准确性不足以可靠地区分FMS和RA用于诊断目的。但是,提供了一些间接证据来支持此方法的可行性。该探索性分析构成了进一步研究所基于的基本模型优化工作。

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