{"title":"Data-driven multimodal fusion: approaches and applications in psychiatric research.","authors":"Jing Sui, Dongmei Zhi, Vince D Calhoun","doi":"10.1093/psyrad/kkad026","DOIUrl":null,"url":null,"abstract":"<p><p>In the era of big data, where vast amounts of information are being generated and collected at an unprecedented rate, there is a pressing demand for innovative data-driven multi-modal fusion methods. These methods aim to integrate diverse neuroimaging perspectives to extract meaningful insights and attain a more comprehensive understanding of complex psychiatric disorders. However, analyzing each modality separately may only reveal partial insights or miss out on important correlations between different types of data. This is where data-driven multi-modal fusion techniques come into play. By combining information from multiple modalities in a synergistic manner, these methods enable us to uncover hidden patterns and relationships that would otherwise remain unnoticed. In this paper, we present an extensive overview of data-driven multimodal fusion approaches with or without prior information, with specific emphasis on canonical correlation analysis and independent component analysis. The applications of such fusion methods are wide-ranging and allow us to incorporate multiple factors such as genetics, environment, cognition, and treatment outcomes across various brain disorders. After summarizing the diverse neuropsychiatric magnetic resonance imaging fusion applications, we further discuss the emerging neuroimaging analyzing trends in big data, such as N-way multimodal fusion, deep learning approaches, and clinical translation. Overall, multimodal fusion emerges as an imperative approach providing valuable insights into the underlying neural basis of mental disorders, which can uncover subtle abnormalities or potential biomarkers that may benefit targeted treatments and personalized medical interventions.</p>","PeriodicalId":93496,"journal":{"name":"Psychoradiology","volume":"3 ","pages":"kkad026"},"PeriodicalIF":0.0000,"publicationDate":"2023-11-22","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10734907/pdf/","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Psychoradiology","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.1093/psyrad/kkad026","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"2023/1/1 0:00:00","PubModel":"eCollection","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 0
Abstract
In the era of big data, where vast amounts of information are being generated and collected at an unprecedented rate, there is a pressing demand for innovative data-driven multi-modal fusion methods. These methods aim to integrate diverse neuroimaging perspectives to extract meaningful insights and attain a more comprehensive understanding of complex psychiatric disorders. However, analyzing each modality separately may only reveal partial insights or miss out on important correlations between different types of data. This is where data-driven multi-modal fusion techniques come into play. By combining information from multiple modalities in a synergistic manner, these methods enable us to uncover hidden patterns and relationships that would otherwise remain unnoticed. In this paper, we present an extensive overview of data-driven multimodal fusion approaches with or without prior information, with specific emphasis on canonical correlation analysis and independent component analysis. The applications of such fusion methods are wide-ranging and allow us to incorporate multiple factors such as genetics, environment, cognition, and treatment outcomes across various brain disorders. After summarizing the diverse neuropsychiatric magnetic resonance imaging fusion applications, we further discuss the emerging neuroimaging analyzing trends in big data, such as N-way multimodal fusion, deep learning approaches, and clinical translation. Overall, multimodal fusion emerges as an imperative approach providing valuable insights into the underlying neural basis of mental disorders, which can uncover subtle abnormalities or potential biomarkers that may benefit targeted treatments and personalized medical interventions.
在大数据时代,海量信息正以前所未有的速度产生和收集,人们对创新的数据驱动多模态融合方法有着迫切的需求。这些方法旨在整合不同的神经成像视角,以提取有意义的见解,从而更全面地了解复杂的精神疾病。然而,对每种模式进行单独分析可能只能揭示部分见解,或忽略不同类型数据之间的重要关联。这就是数据驱动的多模态融合技术发挥作用的地方。通过将多种模式的信息以协同增效的方式结合起来,这些方法使我们能够发现隐藏的模式和关系,否则这些模式和关系就会被忽视。在本文中,我们广泛概述了有无先验信息的数据驱动多模态融合方法,并特别强调了典型相关分析和独立分量分析。这种融合方法的应用范围很广,使我们能够将遗传、环境、认知和治疗结果等多种因素纳入各种脑部疾病的研究中。在总结了各种神经精神磁共振成像融合应用之后,我们进一步讨论了大数据中新兴的神经成像分析趋势,如 N 路多模态融合、深度学习方法和临床转化。总之,多模态融合是一种势在必行的方法,它能为精神疾病的潜在神经基础提供有价值的见解,从而发现微妙的异常或潜在的生物标记物,这可能有利于靶向治疗和个性化医疗干预。