Diagnosis of Schizophrenia Based on the Data of Various Modalities: Biomarkers and Machine Learning Techniques (Review).

IF 1.1 Q4 MEDICINE, RESEARCH & EXPERIMENTAL Sovremennye Tehnologii v Medicine Pub Date : 2022-01-01 DOI:10.17691/stm2022.14.5.06
M G Sharaev, I K Malashenkova, A V Maslennikova, N V Zakharova, A V Bernstein, E V Burnaev, G S Mamedova, S A Krynskiy, D P Ogurtsov, E A Kondrateva, P V Druzhinina, M O Zubrikhina, A Yu Arkhipov, V B Strelets, V L Ushakov
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引用次数: 1

Abstract

Schizophrenia is a socially significant mental disorder resulting frequently in severe forms of disability. Diagnosis, choice of treatment tactics, and rehabilitation in clinical psychiatry are mainly based on the assessment of behavioral patterns, socio-demographic data, and other investigations such as clinical observations and neuropsychological testing including examination of patients by the psychiatrist, self-reports, and questionnaires. In many respects, these data are subjective and therefore a large number of works have appeared in recent years devoted to the search for objective characteristics (indices, biomarkers) of the processes going on in the human body and reflected in the behavioral and psychoneurological patterns of patients. Such biomarkers are based on the results of instrumental and laboratory studies (neuroimaging, electro-physiological, biochemical, immunological, genetic, and others) and are successfully being used in neurosciences for understanding the mechanisms of the emergence and development of nervous system pathologies. Presently, with the advent of new effective neuroimaging, laboratory, and other methods of investigation and also with the development of modern methods of data analysis, machine learning, and artificial intelligence, a great number of scientific and clinical studies is being conducted devoted to the search for the markers which have diagnostic and prognostic value and may be used in clinical practice to objectivize the processes of establishing and clarifying the diagnosis, choosing and optimizing treatment and rehabilitation tactics, predicting the course and outcome of the disease. This review presents the analysis of the works which describe the correlates between the diagnosis of schizophrenia, established by health professionals, various manifestations of the psychiatric disorder (its subtype, variant of the course, severity degree, observed symptoms, etc.), and objectively measured characteristics/quantitative indicators (anatomical, functional, immunological, genetic, and others) obtained during instrumental and laboratory examinations of patients. A considerable part of these works has been devoted to correlates/biomarkers of schizophrenia based on the data of structural and functional (at rest and under cognitive load) MRI, EEG, tractography, and immunological data. The found correlates/biomarkers reflect anatomic disorders in the specific brain regions, impairment of functional activity of brain regions and their interconnections, specific microstructure of the brain white matter and the levels of connectivity between the tracts of various structures, alterations of electrical activity in various parts of the brain in different EEG spectral ranges, as well as changes in the innate and adaptive links of immunity. Current methods of data analysis and machine learning to search for schizophrenia biomarkers using the data of diverse modalities and their application during building and interpretation of predictive diagnostic models of schizophrenia have been considered in the present review.

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基于各种模式数据的精神分裂症诊断:生物标志物和机器学习技术(综述)。
精神分裂症是一种具有社会意义的精神障碍,经常导致严重形式的残疾。临床精神病学的诊断、治疗策略的选择和康复主要基于对行为模式的评估、社会人口统计数据和其他调查,如临床观察和神经心理测试,包括精神病医生对患者的检查、自我报告和问卷调查。在许多方面,这些数据是主观的,因此近年来出现了大量的工作,致力于寻找人体中正在进行的过程的客观特征(指数,生物标志物),并反映在患者的行为和精神神经模式中。这些生物标志物是基于仪器和实验室研究(神经影像学、电生理、生化、免疫学、遗传学等)的结果,并成功地应用于神经科学,以了解神经系统病理的发生和发展机制。目前,随着新的有效的神经影像学、实验室和其他调查方法的出现,以及现代数据分析、机器学习和人工智能方法的发展,大量的科学和临床研究正在进行,致力于寻找具有诊断和预后价值的标记物,并可用于临床实践,以客观化建立和明确诊断的过程。选择和优化治疗和康复策略,预测疾病的过程和结局。这篇综述分析了一些著作,这些著作描述了精神分裂症的诊断(由卫生专业人员建立)、精神障碍的各种表现(其亚型、病程变异、严重程度、观察到的症状等)与患者在仪器和实验室检查中获得的客观测量特征/定量指标(解剖、功能、免疫、遗传等)之间的相关性。这些工作的相当一部分致力于基于结构和功能(静止和认知负荷下)MRI、EEG、神经束造影和免疫学数据的精神分裂症相关物/生物标志物。所发现的相关物/生物标志物反映了特定脑区的解剖紊乱、脑区功能活动及其相互联系的损害、脑白质的特定微观结构和各种结构束之间的连通性水平、不同脑电图频谱范围内脑各部位电活动的改变,以及免疫先天和适应性环节的变化。目前的数据分析和机器学习方法使用不同模式的数据来搜索精神分裂症生物标志物,以及它们在精神分裂症预测诊断模型的建立和解释中的应用。
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来源期刊
Sovremennye Tehnologii v Medicine
Sovremennye Tehnologii v Medicine MEDICINE, RESEARCH & EXPERIMENTAL-
CiteScore
1.80
自引率
0.00%
发文量
38
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