Introduction
Alzheimer’s disease (AD) is a chronic neurodegenerative disease characterized by progressive memory loss and cognitive impairment and is the predominant type of dementia. Neuron loss is one of the most predominant biomarkers of AD [
1,
2], associated with the atrophy of gray matter. Studying brain morphology using structural magnetic resonance imaging (sMRI) provides a powerful way to screen and diagnose AD
in vivo [
3,
4]. Gray matter volume (GMV) and cortical thickness (CT) are the most commonly used measurements based on sMRI images, which respond to changes from different aspects [
5‐
7]. It is important to establish the standard atrophy mapping on AD to reflect the common mechanism of neuron loss; however, this has not been consistent between studies due to the small sample size from a single site.
Previous studies have conducted literature-based meta-analyses to investigate the atrophy pattern in AD [
8,
9]. The literature-based meta-analysis also has potential limitations, such as publication bias, heterogeneity in the analysis steps, and statistical criteria of included studies [
10]. Nevertheless, by analyzing the raw data from different sites with state-of-the-art steps, a data-driven meta-analysis allowed a more robust detection of case-control differences [
11‐
14]. Hence, we expected to obtain reliable, systematic results of brain alteration using data-driven meta-analysis with a significantly larger sample.
One of the most recognized hypotheses in AD is the neurotoxic accumulation of amyloid beta (Aβ), which leads to neuron death and atrophy [
15]. In addition, other underlying biological changes, such as defective protein quality control and degradation pathways, dysfunctional mitochondrial homeostasis, stress granules, and maladaptive innate immune responses, have been thought to cause proximal changes in brain structure and function in AD [
16]. However, the underlying biological mechanisms behind the atrophy in AD remain elusive [
17,
18]. Imaging transcriptomics analysis is a rapidly emerging field that combines magnetic resonance imaging (MRI) and genetic profiles, which has the potential to identify atrophy-related genes and pathways [
19,
20]. Therefore, we hypothesized that linking the atrophy pattern with the transcriptomics patterns could offer a comprehensive multimodal perspective for understanding the central nervous system abnormalities in AD.
The main aim of the current study was to systematically evaluate the susceptibility of regional brain atrophy and its biological mechanism. Firstly, we applied data-driven meta-analysis to investigate reliable, systematic results by combining region of interest (ROI) features using a large sample with 3,118 subjects from 3 multi-site databases (a total of 23 sites). Then we systematically evaluated the genetic and molecular basis of the alterations in brain structure in MCI and AD using spatial whole-brain gene and neurotransmitter mapping.
Discussion
This study provided representative brain atrophy patterns in AD through a unified image processing pipeline and ROI-based data-driven meta-analysis of sMRI features with a large sample size (N = 3,118). We systematically evaluated the AD-associated alterations in region-specific atrophy, cognition, and brain topographic metabolism patterns. We showed that atrophy in some regions may be more severe and plays a critical role in cognitive decline. Furthermore, we found that the biological pathways associated with brain atrophy are mainly related to the glutamate signal pathway, cellular stress response, and synapse structure and function. These comprehensive findings showed that the cortical volumes in AD patients are smaller in the temporal areas and cortical regions associated with broader memory processing and language processing.
For the AD brain, several literature-based meta-analysis studies have found significant atrophy in the medial temporal lobe (MTL), temporal, and frontal lobes, while atrophy degrees of the parietal and occipital lobes are rarely reported [
8,
9]. The literature-based meta-analysis is a powerful tool but suffers several limitations, such as publication bias that may cause the overestimation of effect size and neglect of the negative or null results. A data-driven meta-analysis based on unified processed features is a valuable tool that (a) helps resolve inconsistencies in data origins, (b) avoids the heterogeneity caused by different preprocessing pipelines, (c) provides more precise estimates given a large amount of data from multiple datasets, and (d) provides the ability to compare the degree of atrophy between different brain regions [
40].
Benefiting from three multi-site sMRI datasets, we systematically evaluated the robust atrophy patterns for MCI and AD. The regions with the most severe atrophy are distributed in the MTL and limbic system, including the hippocampus, amygdala, and cingulate gyrus. These regions exhibit severe atrophy in the MCI stage and become more severe as the disease progresses. The MTL plays an essential role in memory formation and spatial navigation and is also involved in the consolidation and retrieval of episodic and semantic memory [
41]. Specifically, the hippocampus is crucial for forming new memories, and its dysfunction not only causes difficulties in forming new memories but also affects existing memories [
42]. Atrophy of the hippocampus is one of the hallmarks of the neurodegenerative changes in AD [
43,
44]. The emotion-related limbic system is also one of the regions most affected by atrophy [
45,
46]. Amygdala atrophy may cause neuropsychiatric symptoms such as hallucinations, delusions, paranoia, anxiety, and depression, which have also been characterized in AD [
47]. In addition to these regions, we also found atrophy in the frontal, parietal, and occipital lobes. Among these, the atrophy of the frontal lobe appeared in the MCI stage and further progressed as the disease developed. In some early studies, frontal lobe atrophy was not found in AD patients [
48‐
50]; meanwhile, some groups also found the frontal lobes are associated with gray matter atrophy [
51‐
54]. These conflicting findings might be due to large variances in previous small sample-size studies. The present data-driven meta-analysis results comprehensively demonstrate that frontal lobe atrophy begins in the early stages of the disease and is widespread in AD. Our study not only substantiates the presence of atrophy in the parietal and occipital lobes but also illuminates the onset of the atrophy that might appear from the MCI stages. These results further support the evidence of atrophy of the MTL in AD but also depict the effect size of the atrophy map of the global brain, giving us a deeper understanding of the degree and progression of atrophy in AD. Here, these findings provide the first quantitative changes of the whole brain and offer potential evidence for better understanding the pathological manifestations of AD.
Furthermore, we investigated the underlying biological mechanisms responsible for the atrophy. The most significantly enriched pathway is related to the glutamate signaling pathway. Glutamate is the major excitatory neurotransmitter in the central nervous system, and its receptor N-methyl-D-aspartate (NMDA) plays a crucial role in learning and memory [
55]. Dysfunction of glutamatergic synapses results in a Na
+ influx, membrane depolarization, and increased intracellular Ca
2+, promoting membrane depolarization and neuronal excitotoxicity and causing neurodegeneration, which has been well-characterized in AD [
55,
56]. A glutamate receptor blocker, memantine, is used clinically to treat moderate to severe AD [
57]. Hence, the present study confirmed the association of glutamate with brain atrophy in AD from a data-driven perspective, further emphasizing the importance of glutamate pathway research in slowing AD brain atrophy.
The cellular stress response has also been found to be strongly associated with brain atrophy in AD. It comprises complex cellular processes and molecular mechanisms to restore cellular homeostasis and maintain cell survival. For example, the unfolded protein response is a cellular stress response mechanism activated in response to the accumulation of misfolded proteins, such as Aβ and tau in AD [
58,
59]. Cellular stress can also activate the innate immune response and lead to inflammation, a central pathology in AD [
60]. GSEA has also revealed a series of pathways related to synapse structure and function, as revealed in previous research [
61‐
63]. Maintaining proper synapse structure and function is essential for normal brain function, and disruption can cause consequences for neural communication and, in some cases, neuron death [
64,
65]. These results show some complex mechanisms behind brain atrophy in AD, highlighting the role of the cellular stress response and synapse dysfunction.
Further, the atrophy pattern in AD showed a significant correlation with the Aβ deposition pattern, supporting the possibility that Aβ is involved in the biological processes associated with the atrophy of gray matter. Moreover, our analysis of neurotransmitter expression patterns found significant correlations among serotonin, atrophy, and Aβ deposition patterns. Serotonin receptors are well-known as inhibitory heteroreceptors that regulate the release and activity of glutamate [
66,
67]. Loss of glutamatergic pyramidal neurons in the CA1 field of the hippocampus has been found to be relevant to the decrease in 5-HT
1A receptor densities [
68]. The 5-HT
1A receptors are highly concentrated in the cerebral cortex, hippocampus, septum, and amygdala, and they influence the activity of glutamatergic and other neurotransmitters, affecting memory functions [
69]. A significant decline in 5-HT
1B receptor expression has consistently been seen in post-mortem cortical tissue from AD donors, reflecting the neuronal loss and relevant cognitive decline in this illness [
70]. Hence, it is reasonable to hypothesize that these receptors help to preserve functions resulting from brain atrophy in advanced stages of AD. Our findings provide essential insights for thoroughly investigating candidate molecular mechanisms from readily available neuroimaging data, but further mechanism association requires more experiments.
The present study still has some limitations. First, we mainly conducted observational studies based on cross-sectional images, so we need more longitudinal data to corroborate our results. Third, we need further physiological experiments on glutamate and serotonin receptors to verify their relationship with atrophy. Last, since the publicly accessible AHBA gene expression atlas and JuSpace neurotransmitter maps were collected from healthy people, it is necessary to collect AD patients’ data to obtain a more in-depth biological basis for brain atrophy in AD and MCI.
Collectively, this study has successfully identified the robust atrophy patterns in AD using a unified image processing pipeline and data-driven meta-analysis based on sMRI features of a large sample. The analysis showed that the brain atrophy first appears in the MTL, limbic system, and parts of the frontal lobe and spreads to the whole brain, with the most severe atrophy in the hippocampus and amygdala. The glutamate signaling pathway, cellular stress response, and synapse structure and function are strongly associated with atrophy. This study also revealed significant correlations among the serotonin, atrophy, and Aβ deposition patterns. Overall, these findings provide essential insights for developing early detection and treatment strategies for AD.