MOE-LCSM, School of Mathematics and Statistics, Hunan Normal University, Changsha 410006, P.R.China.
Key Laboratory of Applied Statistics and Data Science, Hunan Normal University, College of Hunan Province, Changsha 410006, P.R.China.
Psychol Med. 2023 Dec;53(16):7785-7794. doi: 10.1017/S0033291723001812. Epub 2023 Aug 9.
Smoking contributes to a variety of neurodegenerative diseases and neurobiological abnormalities, suggesting that smoking is associated with accelerated brain aging. However, the neurobiological mechanisms affected by smoking, and whether they are genetically influenced, remain to be investigated.
Using structural magnetic resonance imaging data from the UK Biobank ( = 33 293), a brain age predictor was trained on non-smoking healthy groups and tested on smokers to obtain the BrainAge Gap (BAG). The cumulative effect of multiple common genetic variants associated with smoking was then calculated to acquire a polygenic risk score (PRS). The relationship between PRS, BAG, total gray matter volume (tGMV), and smoking parameters was explored and further genes included in the PRS were annotated to identify potential molecular mechanisms affected by smoking.
The BrainAge in smokers was predicted with very high accuracy ( = 0.725, MAE = 4.16). Smokers had a greater BAG (Cohen's = 0.074, < 0.0001) and higher PRS (Cohen's = 0.63, < 0.0001) than non-smokers. A higher PRS was associated with increased amount of smoking, mediated by BAG and tGMV. Several neurotransmitters and ion channel pathways were enriched in the group of smoking-related genes involved in addiction, brain synaptic plasticity, and some neurological disorders.
By using a simplified single indicator of the entire brain (BAG) in combination with the PRS, this study highlights the greater BAG in smokers and its linkage with genes and smoking behavior, providing insight into the neurobiological underpinnings and potential features of smoking-related aging.
吸烟会导致多种神经退行性疾病和神经生物学异常,这表明吸烟与大脑加速老化有关。然而,吸烟影响的神经生物学机制以及这些机制是否受到遗传影响仍有待研究。
使用来自英国生物银行(=33293)的结构磁共振成像数据,在非吸烟健康人群中训练大脑年龄预测器,并在吸烟者中进行测试,以获得大脑年龄差距(BAG)。然后计算与吸烟相关的多个常见遗传变异的累积效应,以获得多基因风险评分(PRS)。探讨了 PRS、BAG、总灰质体积(tGMV)与吸烟参数之间的关系,并进一步注释了 PRS 中包含的基因,以确定受吸烟影响的潜在分子机制。
吸烟者的大脑年龄预测具有非常高的准确性(=0.725,MAE=4.16)。与非吸烟者相比,吸烟者的 BAG 更大(Cohen's =0.074,<0.0001),PRS 更高(Cohen's =0.63,<0.0001)。较高的 PRS 与吸烟量增加有关,这是通过 BAG 和 tGMV 介导的。一些神经递质和离子通道途径在与成瘾、大脑突触可塑性和一些神经紊乱相关的吸烟相关基因中富集。
本研究通过使用整个大脑的简化单一指标(BAG)与 PRS 相结合,突出了吸烟者更大的 BAG 及其与基因和吸烟行为的联系,为吸烟相关衰老的神经生物学基础和潜在特征提供了深入了解。