Magnitude and kinetics of a set of neuroanatomic volume and thickness together with white matter hyperintensity is definitive of cognitive status and brain age

被引:0
作者
Yadav, Neha [1 ]
Gupta, Niraj Kumar [1 ]
Thakar, Darshit [1 ]
Tiwari, Vivek [1 ]
机构
[1] Indian Inst Sci Educ & Res IISER Berhampur, Berhampur, India
来源
TRANSLATIONAL PSYCHIATRY | 2024年 / 14卷 / 01期
基金
美国国家卫生研究院; 加拿大健康研究院;
关键词
ALZHEIMERS ASSOCIATION WORKGROUPS; CENTER NACC DATABASE; DIAGNOSTIC GUIDELINES; NATIONAL INSTITUTE; DISEASE; DEMENTIA; ATROPHY; IMPAIRMENT; RATES; RECOMMENDATIONS;
D O I
10.1038/s41398-024-03097-2
中图分类号
R749 [精神病学];
学科分类号
100205 ;
摘要
Even among the subjects classified as cognitively normal, there exists a subset of individuals at a given chronological age (CA) who harbor white matter hyperintensity (WMH) while another subset presents with low or undetectable WMH. Here, we conducted a comprehensive MRI segmentation of neuroanatomic structures along with WMH quantification in groups of cognitively normal (CN), cognitively impaired (CI) individuals, and individuals with an etiological diagnosis of cognitive impairment owing to Alzheimer's Disease (CI-AD) across the early (50-64 years), intermediate (65-79 years), and late (>= 80 years) age groups from the NACC cohort. Neuroanatomic volumetry quantification revealed that thinning of the parahippocampal gyrus in the early (p = 0.016) and intermediate age groups (p = 0.0001) along with an increase in CSF (p = 0.0009) delineates between CI and CI-AD subjects. Although, a significant loss of similar to 5-10% in volume of gray matter (p((CN vs CI)) < 0.0001, p((CN vs CI-AD)) < 0.0001), white matter (p((CN vs CI)) = 0.002, p((CN vs CI-AD)) = 0.0003) and hippocampus (p((CN vs CI)) = 0.007, p((CN vs CI-AD)) < 0.0001) was evident at the early age groups in the CI and CI-AD compared to CN but it was not distinct between CI and CI-AD. Using the neuroanatomic and WMH volume, and the supervised decision tree-based ML modeling, we have established that a minimum set of Three brain quantities; Total brain (GM + WM), CSF, and WMH volume, provide the Optimal quantitative features discriminative of cognitive status as CN, CI, and CI-AD. Furthermore, using the volume/thickness of 178 neuroanatomic structures, periventricular and deep WMH volume quantification for the 819 CN subjects, we have developed a quantitative index as 'Brain Age' (BA) depictive of neuroanatomic health at a given CA. Subjects with elevated WMH load (5-10 ml) had increased BA (+ 0.6 to +4 years) than the CA. Increased BA in the subjects with elevated WMH is suggestive of WMH-induced vascular insult leading to accelerated and early structural loss than expected for a given CA. Henceforth, this study establishes that quantification of WMH together with an optimal number of neuroanatomic features is mandatory to delve into the biological underpinning of aging and aging-associated cognitive disorders.
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页数:13
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