基于人工智能的脑年龄估计及其在相关疾病中的应用综述。

IF 2.5 3区 生物学 Q3 BIOTECHNOLOGY & APPLIED MICROBIOLOGY Briefings in Functional Genomics Pub Date : 2025-01-15 DOI:10.1093/bfgp/elae042
Mohamed Azzam, Ziyang Xu, Ruobing Liu, Lie Li, Kah Meng Soh, Kishore B Challagundla, Shibiao Wan, Jieqiong Wang
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引用次数: 0

摘要

脑年龄研究是在过去十年间兴起的,旨在根据脑成像扫描来估算一个人的年龄。理想情况下,预测的脑年龄应与健康人的实际年龄相符。然而,脑部结构和功能会因脑部相关疾病而发生变化。因此,受影响个体的脑年龄也会发生变化,这就使得脑年龄差距(BAG)--脑年龄与实际年龄之间的差值--成为大脑健康、早期筛查以及识别与年龄相关的认知衰退和失调的潜在生物标志物。最近,人工智能在医疗保健领域取得了巨大成功,因此有必要跟踪最新进展并强调有前景的发展方向。本综述论文介绍了最近用于脑年龄估计(BAE)研究的机器学习技术。通常,BAE 模型涉及开发一个机器学习回归模型,以便从健康人的成像扫描中捕捉大脑结构中与年龄相关的变化,并自动预测新受试者的脑年龄。这一过程还包括估算作为大脑健康度量的 BAG。在讨论 BAE 方法的最新临床应用的同时,我们还回顾了可纳入 BAE 研究的生物年龄研究。最后,我们指出了 BAE 研究目前存在的局限性。
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A review of artificial intelligence-based brain age estimation and its applications for related diseases.

The study of brain age has emerged over the past decade, aiming to estimate a person's age based on brain imaging scans. Ideally, predicted brain age should match chronological age in healthy individuals. However, brain structure and function change in the presence of brain-related diseases. Consequently, brain age also changes in affected individuals, making the brain age gap (BAG)-the difference between brain age and chronological age-a potential biomarker for brain health, early screening, and identifying age-related cognitive decline and disorders. With the recent successes of artificial intelligence in healthcare, it is essential to track the latest advancements and highlight promising directions. This review paper presents recent machine learning techniques used in brain age estimation (BAE) studies. Typically, BAE models involve developing a machine learning regression model to capture age-related variations in brain structure from imaging scans of healthy individuals and automatically predict brain age for new subjects. The process also involves estimating BAG as a measure of brain health. While we discuss recent clinical applications of BAE methods, we also review studies of biological age that can be integrated into BAE research. Finally, we point out the current limitations of BAE's studies.

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来源期刊
Briefings in Functional Genomics
Briefings in Functional Genomics BIOTECHNOLOGY & APPLIED MICROBIOLOGY-GENETICS & HEREDITY
CiteScore
6.30
自引率
2.50%
发文量
37
审稿时长
6-12 weeks
期刊介绍: Briefings in Functional Genomics publishes high quality peer reviewed articles that focus on the use, development or exploitation of genomic approaches, and their application to all areas of biological research. As well as exploring thematic areas where these techniques and protocols are being used, articles review the impact that these approaches have had, or are likely to have, on their field. Subjects covered by the Journal include but are not restricted to: the identification and functional characterisation of coding and non-coding features in genomes, microarray technologies, gene expression profiling, next generation sequencing, pharmacogenomics, phenomics, SNP technologies, transgenic systems, mutation screens and genotyping. Articles range in scope and depth from the introductory level to specific details of protocols and analyses, encompassing bacterial, fungal, plant, animal and human data. The editorial board welcome the submission of review articles for publication. Essential criteria for the publication of papers is that they do not contain primary data, and that they are high quality, clearly written review articles which provide a balanced, highly informative and up to date perspective to researchers in the field of functional genomics.
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