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Significant Effects of Linear Model Models designed to predict infant temperament using mid-frontal, lateral-frontal and parietal EEG asymmetry.

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Figshare2015-12-02 更新2026-04-29 收录
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N = 22; Note that denominator degrees of freedom are estimated from Satterthwaite approximations without exact F distributions.Degrees of freedom were estimated for the population based on a restricted maximum likelihood procedure, and were rounded to the nearest whole number. Over the mid-frontal region, higher EEG asymmetry scores were related to higher Approach, F(1, 201) = 14.27, pr = .29; Distress to Limitations, F(1, 196) = 7.40, pr = .23; Fear, F(1, 200) = 17.65, pr = .36; Perceptual Sensitivity, F(1, 202) = 30.84, pr = .41; and lower Falling Reactivity, F(1, 202) = 49.21, pr = −.44;. Similarly, over the lateral-frontal region, higher EEG asymmetries were related to higher Approach, F(1, 165) = 20.76, pr = .46; Distress to Limitations, F(1, 169) = 14.18, pr = .35; Soothability, F(1, 166) = 23.17, pr = .30; and lower Falling Reactivity, F(1, 179) = 39.75, pr = −.59.

样本量N=22;请注意,分母自由度采用萨特思韦特近似法(Satterthwaite approximations)进行估计,未使用精确F分布(F distributions)。总体自由度基于受限极大似然法(restricted maximum likelihood procedure)进行估计,并四舍五入至整数。在额中区,较高的脑电图(Electroencephalogram, EEG)不对称得分与更高的趋近性(Approach)呈正相关:F(1, 201) = 14.27,pr = 0.29;与受限痛苦(Distress to Limitations)呈正相关:F(1, 196) = 7.40,pr = 0.23;与恐惧(Fear)呈正相关:F(1, 200) = 17.65,pr = 0.36;与知觉敏感性(Perceptual Sensitivity)呈正相关:F(1, 202) = 30.84,pr = 0.41;而与跌倒反应性(Falling Reactivity)呈负相关:F(1, 202) = 49.21,pr = −0.44。同理,在额侧区,较高的脑电图不对称性与更高的趋近性呈正相关:F(1, 165) = 20.76,pr = 0.46;与受限痛苦呈正相关:F(1, 169) = 14.18,pr = 0.35;与易安抚性(Soothability)呈正相关:F(1, 166) = 23.17,pr = 0.30;而与跌倒反应性呈负相关:F(1, 179) = 39.75,pr = −0.59。
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