Department of Neurology, Children's Hospital Boston and Harvard Medical School, 300 Longwood Ave, Boston, Massachusetts 02115, USA.
BMC Neurol. 2011 Jul 1;11:82. doi: 10.1186/1471-2377-11-82.
Previous studies suggest central nervous system involvement in chronic fatigue syndrome (CFS), yet there are no established diagnostic criteria. CFS may be difficult to differentiate from clinical depression. The study's objective was to determine if spectral coherence, a computational derivative of spectral analysis of the electroencephalogram (EEG), could distinguish patients with CFS from healthy control subjects and not erroneously classify depressed patients as having CFS.
This is a study, conducted in an academic medical center electroencephalography laboratory, of 632 subjects: 390 healthy normal controls, 70 patients with carefully defined CFS, 24 with major depression, and 148 with general fatigue. Aside from fatigue, all patients were medically healthy by history and examination. EEGs were obtained and spectral coherences calculated after extensive artifact removal. Principal Components Analysis identified coherence factors and corresponding factor loading patterns. Discriminant analysis determined whether spectral coherence factors could reliably discriminate CFS patients from healthy control subjects without misclassifying depression as CFS.
Analysis of EEG coherence data from a large sample (n = 632) of patients and healthy controls identified 40 factors explaining 55.6% total variance. Factors showed highly significant group differentiation (p < .0004) identifying 89.5% of unmedicated female CFS patients and 92.4% of healthy female controls. Recursive jackknifing showed predictions were stable. A conservative 10-factor discriminant function model was subsequently applied, and also showed highly significant group discrimination (p < .001), accurately classifying 88.9% unmedicated males with CFS, and 82.4% unmedicated male healthy controls. No patient with depression was classified as having CFS. The model was less accurate (73.9%) in identifying CFS patients taking psychoactive medications. Factors involving the temporal lobes were of primary importance.
EEG spectral coherence analysis identified unmedicated patients with CFS and healthy control subjects without misclassifying depressed patients as CFS, providing evidence that CFS patients demonstrate brain physiology that is not observed in healthy normals or patients with major depression. Studies of new CFS patients and comparison groups are required to determine the possible clinical utility of this test. The results concur with other studies finding neurological abnormalities in CFS, and implicate temporal lobe involvement in CFS pathophysiology.
先前的研究表明慢性疲劳综合征(CFS)涉及中枢神经系统,但目前尚无既定的诊断标准。CFS 可能难以与临床抑郁症区分。本研究的目的是确定脑电图(EEG)频谱相干性,即频谱分析的计算导数,是否可以区分 CFS 患者与健康对照组,并且不会错误地将抑郁患者归类为 CFS。
这是一项在学术医疗中心脑电图实验室进行的研究,共纳入 632 名受试者:390 名健康正常对照者、70 名经仔细定义的 CFS 患者、24 名重度抑郁症患者和 148 名一般性疲劳患者。除疲劳外,所有患者均通过病史和体格检查证实身体健康。在去除大量伪迹后获得 EEG 并计算频谱相干性。主成分分析确定相干性因素及其相应的因子负荷模式。判别分析确定频谱相干性因素是否可以可靠地区分 CFS 患者与健康对照组,而不会将抑郁误诊为 CFS。
对来自大量患者和健康对照者的 EEG 相干性数据进行分析(n = 632),确定了 40 个解释 55.6%总方差的因素。这些因素显示出高度显著的组间差异(p <.0004),可识别 89.5%未经药物治疗的女性 CFS 患者和 92.4%健康女性对照者。递归刀切法显示预测结果稳定。随后应用保守的 10 因素判别函数模型,也显示出高度显著的组间差异(p <.001),准确地将 88.9%未经药物治疗的 CFS 男性患者和 82.4%未经药物治疗的健康男性对照者分类。没有抑郁症患者被误诊为 CFS。该模型在识别服用精神药物的 CFS 患者时的准确性较低(73.9%)。涉及颞叶的因素最为重要。
脑电图频谱相干性分析可识别未经药物治疗的 CFS 患者和健康对照组,而不会将抑郁患者误诊为 CFS,这为 CFS 患者表现出的脑生理状态与健康正常人和重度抑郁症患者不同提供了证据。需要对新的 CFS 患者和对照人群进行研究,以确定该检测的可能临床应用价值。研究结果与其他研究一致,这些研究发现 CFS 存在神经异常,并提示颞叶参与 CFS 病理生理学。