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Towards the identification of imaging biomarkers in schizophrenia using multivariate pattern classification at a single-subject level

机译:为了在精神分裂症中识别成像生物标志物使用单受试者水平的多元模式分类

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摘要

Standard univariate analyses of brain imaging data have revealed a host of structural and functional brain alterations in schizophrenia. However, these analyses typically involve examining each voxel separately and making inferences at group-level, thus limiting clinical translation of their findings. Taking into account the fact that brain alterations in schizophrenia expand over a widely distributed network of brain regions, univariate analysis methods may not be the most suited choice for imaging data analysis. To address these limitations, the neuroimaging community has turned to machine learning methods both because of their ability to examine voxels jointly and their potential for making inferences at a single-subject level. This article provides a critical overview of the current and foreseeable applications of machine learning, in identifying imaging-based biomarkers that could be used for the diagnosis, early detection and treatment response of schizophrenia, and could, thus, be of high clinical relevance. We discuss promising future research directions and the main difficulties facing machine learning researchers as far as their potential translation into clinical practice is concerned.
机译:对大脑成像数据的标准单变量分析显示,精神分裂症中存在许多结构和功能性大脑改变。但是,这些分析通常涉及分别检查每个体素并在组级别进行推断,从而限制了其发现的临床翻译。考虑到精神分裂症中的大脑变化会扩展到分布广泛的大脑区域网络这一事实,单变量分析方法可能不是最适合成像数据分析的选择。为了解决这些局限性,神经影像社区已经转向机器学习方法,这是因为它们能够共同检查体素,并且具有在单个主题级别进行推理的潜力。本文对机器学习的当前和可预见的应用进行了重要的概述,它在识别基于影像的生物标志物时可用于精神分裂症的诊断,早期发现和治疗反应,因此具有很高的临床意义。我们讨论了有前途的未来研究方向,以及就机器学习研究人员向临床实践的潜在转化而言所面临的主要困难。

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