Mokhtari Fatemeh, Paolini Brielle M, Burdette Jonathan H, Marsh Anthony P, Rejeski W Jack, Laurienti Paul J
Department of Radiology, Laboratory for Complex Brain Networks, Wake Forest University School of Medicine, Winston Salem, North Carolina, USA.
Department of Biomedical Engineering, Virginia Tech-Wake Forest University School of Biomedical Engineering and Sciences, Winston Salem, North Carolina, USA.
Obesity (Silver Spring). 2016 Dec;24(12):2475-2480. doi: 10.1002/oby.21652. Epub 2016 Nov 2.
The purpose of this study was to investigate whether structural brain phenotypes could be used to predict weight loss success following behavioral interventions in older adults with overweight or obesity and cardiometabolic dysfunction.
A support vector machine with a repeated random subsampling validation approach was used to classify participants into the upper and lower halves of the weight loss distribution following 18 months of a weight loss intervention. Predictions were based on baseline brain gray matter and white matter volume from 52 individuals who completed the intervention and a magnetic resonance imaging session.
The support vector machine resulted in an average classification accuracy of 72.62% based on gray matter and white matter volume. A receiver operating characteristic analysis indicated that classification performance was robust based on an area under the curve of 0.82.
Findings suggest that baseline brain structure was able to predict weight loss success following 18 months of treatment. The identification of brain structure as a predictor of successful weight loss was an innovative approach to identifying phenotypes for responsiveness to intensive lifestyle interventions. This phenotype could prove useful in future research focusing on the tailoring of treatment for weight loss.
本研究旨在调查大脑结构表型是否可用于预测超重或肥胖且伴有心脏代谢功能障碍的老年人在行为干预后的减肥成功情况。
采用带有重复随机子采样验证方法的支持向量机,将参与者在减肥干预18个月后的体重减轻分布分为上半部分和下半部分。预测基于52名完成干预和磁共振成像检查的个体的基线脑灰质和白质体积。
基于灰质和白质体积,支持向量机的平均分类准确率为72.62%。受试者工作特征分析表明,基于曲线下面积为0.82,分类性能稳健。
研究结果表明,基线脑结构能够预测18个月治疗后的减肥成功情况。将脑结构确定为减肥成功的预测指标是一种创新方法,可用于识别对强化生活方式干预有反应的表型。这种表型可能在未来针对减肥治疗个体化的研究中有用。