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利用可解释人工智能识别首发精神病和临床高风险患者的 MRI 脑纹理异常。

Identification of texture MRI brain abnormalities on first-episode psychosis and clinical high-risk subjects using explainable artificial intelligence.

机构信息

Translational Psychiatry, Department of Psychiatry and Psychotherapy, University of Luebeck, Ratzeburger Allee 160, 23562, Lübeck, Germany.

Department of Psychiatry and Psychotherapy, Ludwig Maximilian University, Nussbaumstr. 7, 80336, Munich, Germany.

出版信息

Transl Psychiatry. 2022 Nov 16;12(1):481. doi: 10.1038/s41398-022-02242-z.

Abstract

Structural MRI studies in first-episode psychosis and the clinical high-risk state have consistently shown volumetric abnormalities. Aim of the present study was to introduce radiomics texture features in identification of psychosis. Radiomics texture features describe the interrelationship between voxel intensities across multiple spatial scales capturing the hidden information of underlying disease dynamics in addition to volumetric changes. Structural MR images were acquired from 77 first-episode psychosis (FEP) patients, 58 clinical high-risk subjects with no later transition to psychosis (CHR_NT), 15 clinical high-risk subjects with later transition (CHR_T), and 44 healthy controls (HC). Radiomics texture features were extracted from non-segmented images, and two-classification schemas were performed for the identification of FEP vs. HC and FEP vs. CHR_NT. The group of CHR_T was used as external validation in both schemas. The classification of a subject's clinical status was predicted by importing separately (a) the difference of entropy feature map and (b) the contrast feature map, resulting in classification balanced accuracy above 72% in both analyses. The proposed framework enhances the classification decision for FEP, CHR_NT, and HC subjects, verifies diagnosis-relevant features and may potentially contribute to identification of structural biomarkers for psychosis, beyond and above volumetric brain changes.

摘要

结构磁共振成像研究在首发精神病和临床高危状态中一致显示出体积异常。本研究旨在介绍放射组学纹理特征在精神病识别中的应用。放射组学纹理特征描述了多个空间尺度上体素强度之间的相互关系,除了体积变化之外,还可以捕捉潜在疾病动态的隐藏信息。从 77 例首发精神病(FEP)患者、58 例无后期精神病转化的临床高危受试者(CHR_NT)、15 例后期精神病转化的临床高危受试者(CHR_T)和 44 例健康对照(HC)中采集结构磁共振图像。从非分割图像中提取放射组学纹理特征,并对 FEP 与 HC 和 FEP 与 CHR_NT 进行两分类方案。在这两个方案中,CHR_T 组被用作外部验证。通过分别导入(a)熵特征图差异和(b)对比度特征图,对受试者的临床状态分类进行预测,在这两种分析中,分类平衡准确性均高于 72%。该框架增强了对 FEP、CHR_NT 和 HC 受试者的分类决策,验证了与诊断相关的特征,并可能有助于识别精神病的结构生物标志物,超越并超越大脑体积变化。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3f05/9668814/325c53836a91/41398_2022_2242_Fig1_HTML.jpg

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