Lingyu Liu, Shen Sun, Wenjie Kang, Shuicai Wu, Lan Lin
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引用次数: 0
Abstract
Alzheimer's disease (AD) is a complex form of dementia and due to its high phenotypic variability, its diagnosis and monitoring can be quite challenging. Biomarkers play a crucial role in AD diagnosis and monitoring, but interpreting these biomarkers can be problematic due to their spatial and temporal heterogeneity. Therefore, researchers are increasingly turning to imaging-based biomarkers that employ data-driven computational approaches to examine the heterogeneity of AD. In this comprehensive review article, we aim to provide health professionals with a comprehensive view of past applications of data-driven computational approaches in studying AD heterogeneity and planning future research directions. We first define and offer basic insights into different categories of heterogeneity analysis, including spatial heterogeneity, temporal heterogeneity, and spatial-temporal heterogeneity. Then, we scrutinize 22 articles relating to spatial heterogeneity, 14 articles relating to temporal heterogeneity, and five articles relating to spatial-temporal heterogeneity, highlighting the strengths and limitations of these strategies. Furthermore, we discuss the importance of understanding spatial heterogeneity in AD subtypes and their clinical manifestations, biomarkers for abnormal orderings and AD stages, the recent advancements in spatial-temporal heterogeneity analysis for AD, and the emerging role of omics data integration in advancing personalized diagnosis and treatment for AD patients. By emphasizing the significance of understanding AD heterogeneity, we hope to stimulate further research in this field to facilitate the development of personalized interventions for AD patients.
阿尔茨海默病(AD)是一种复杂的痴呆症,由于其表型变化很大,其诊断和监测可能相当具有挑战性。生物标志物在阿尔茨海默病的诊断和监测中起着至关重要的作用,但由于生物标志物在空间和时间上的异质性,解释这些生物标志物可能存在问题。因此,研究人员越来越多地转向基于成像的生物标志物,利用数据驱动的计算方法来研究 AD 的异质性。在这篇综合性综述文章中,我们旨在向医疗专业人士全面介绍数据驱动计算方法在研究AD异质性方面的应用,并规划未来的研究方向。我们首先定义了异质性分析的不同类别,包括空间异质性、时间异质性和时空异质性,并提供了基本见解。然后,我们仔细研究了与空间异质性相关的 22 篇文章、与时间异质性相关的 14 篇文章和与时空异质性相关的 5 篇文章,强调了这些策略的优势和局限性。此外,我们还讨论了了解 AD 亚型及其临床表现中空间异质性的重要性、异常排序和 AD 分期的生物标志物、AD 时空异质性分析的最新进展,以及 omics 数据整合在推进 AD 患者个性化诊断和治疗中的新兴作用。通过强调了解AD异质性的意义,我们希望能促进该领域的进一步研究,从而推动针对AD患者的个性化干预措施的发展。
期刊介绍:
Reviews in the Neurosciences provides a forum for reviews, critical evaluations and theoretical treatment of selective topics in the neurosciences. The journal is meant to provide an authoritative reference work for those interested in the structure and functions of the nervous system at all levels of analysis, including the genetic, molecular, cellular, behavioral, cognitive and clinical neurosciences. Contributions should contain a critical appraisal of specific areas and not simply a compilation of published articles.