Department of Community Dentistry and Behavioral Science, University of Florida, Gainesville, FL, United States.
Pain Research and Intervention Center of Excellence, University of Florida, Gainesville, FL, United States.
Pain. 2023 Dec 1;164(12):2822-2838. doi: 10.1097/j.pain.0000000000002984. Epub 2023 Jul 25.
Brain age predicted differences (brain-PAD: predicted brain age minus chronological age) have been reported to be significantly larger for individuals with chronic pain compared with those without. However, a debate remains after one article showed no significant differences. Using Gaussian Process Regression, an article provides evidence that these negative results might owe to the use of mixed samples by reporting a differential effect of chronic pain on brain-PAD across pain types. However, some remaining methodological issues regarding training sample size and sex-specific effects should be tackled before settling this controversy. Here, we explored differences in brain-PAD between musculoskeletal pain types and controls using a novel convolutional neural network for predicting brain-PADs, ie, DeepBrainNet. Based on a very large, multi-institutional, and heterogeneous training sample and requiring less magnetic resonance imaging preprocessing than other methods for brain age prediction, DeepBrainNet offers robust and reproducible brain-PADs, possibly highly sensitive to neuropathology. Controlling for scanner-related variability, we used a large sample (n = 660) with different scanners, ages (19-83 years), and musculoskeletal pain types (chronic low back [CBP] and osteoarthritis [OA] pain). Irrespective of sex, brain-PAD of OA pain participants was ∼3 to 4.7 years higher than that of CBP and controls, whereas brain-PAD did not significantly differ among controls and CBP. Moreover, brain-PAD was significantly related to multiple variables underlying the multidimensional pain experience. This comprehensive work adds evidence of pain type-specific effects of chronic pain on brain age. This could help in the clarification of the debate around possible relationships between brain aging mechanisms and pain.
大脑年龄预测差异(brain-PAD:预测大脑年龄减去实际年龄)已被报道在患有慢性疼痛的个体中比在没有慢性疼痛的个体中显著更大。然而,一篇文章显示没有显著差异后,争议仍然存在。使用高斯过程回归,一篇文章提供了证据,表明这些负面结果可能归因于混合样本的使用,通过报告慢性疼痛对脑-PAD 的不同影响跨越疼痛类型。然而,在解决这一争议之前,仍有一些关于训练样本大小和性别特异性效应的方法学问题需要解决。在这里,我们使用一种新的卷积神经网络(DeepBrainNet)来预测脑-PAD,探索了不同的肌肉骨骼疼痛类型与对照组之间的脑-PAD 差异。基于一个非常大的、多机构的、异质的训练样本,并且需要比其他大脑年龄预测方法更少的磁共振成像预处理,DeepBrainNet 提供了强大且可重复的脑-PAD,可能对神经病理学高度敏感。在控制扫描仪相关变异性的情况下,我们使用了一个大型样本(n = 660),包括不同的扫描仪、年龄(19-83 岁)和肌肉骨骼疼痛类型(慢性下背痛[CBP]和骨关节炎[OA]疼痛)。无论性别如何,OA 疼痛参与者的脑-PAD 比 CBP 和对照组高约 3 至 4.7 年,而 CBP 和对照组之间的脑-PAD 没有显著差异。此外,脑-PAD 与多维疼痛体验的多个变量显著相关。这项全面的工作增加了慢性疼痛对大脑年龄的特定疼痛类型影响的证据。这有助于澄清围绕大脑老化机制与疼痛之间可能存在的关系的争论。