Suppr超能文献

在将多发性硬化症患者分为残疾组时,预估连通性网络的分类效果优于观察连通性网络。

Estimated connectivity networks outperform observed connectivity networks when classifying people with multiple sclerosis into disability groups.

机构信息

Department of Radiology, Weill Cornell Medicine, New York, NY, USA.

Electrical and Computer Engineering Department, Cornell University, Ithaca 14850, USA.

出版信息

Neuroimage Clin. 2021;32:102827. doi: 10.1016/j.nicl.2021.102827. Epub 2021 Sep 25.

Abstract

BACKGROUND

Multiple Sclerosis (MS), a neurodegenerative and neuroinflammatory disease, causing lesions that disrupt the brain's anatomical and physiological connectivity networks, resulting in cognitive, visual and/or motor disabilities. Advanced imaging techniques like diffusion and functional MRI allow measurement of the brain's structural connectivity (SC) and functional connectivity (FC) networks, and can enable a better understanding of how their disruptions cause disability in people with MS (pwMS). However, advanced MRI techniques are used mainly for research purposes as they are expensive, time-consuming and require high-level expertise to acquire and process. As an alternative, the Network Modification (NeMo) Tool can be used to estimate SC and FC using lesion masks derived from pwMS and a reference set of controls' connectivity networks.

OBJECTIVE

Here, we test the hypothesis that estimated SC and FC (eSC and eFC) from the NeMo Tool, based only on an individual's lesion masks, can be used to classify pwMS into disability categories just as well as SC and FC extracted from advanced MRI directly in pwMS. We also aim to find the connections most important for differentiating between no disability vs evidence of disability groups.

MATERIALS AND METHODS

One hundred pwMS (age:45.5 ± 11.4 years, 66% female, disease duration: 12.97 ± 8.07 years) were included in this study. Expanded Disability Status Scale (EDSS) was used to assess disability, 67 pwMS had no disability (EDSS < 2). Observed SC and FC were extracted from diffusion and functional MRI directly in pwMS, respectively. The NeMo Tool was used to estimate the remaining structural connectome (eSC), by removing streamlines in a reference set of tractograms that intersected the lesion mask. The NeMo Tool's eSC was used then as input to a deep neural network to estimate the corresponding FC (eFC). Logistic regression with ridge regularization was used to classify pwMS into disability categories (no disability vs evidence of disability), based on demographics/clinical information (sex, age, race, disease duration, clinical phenotype, and spinal lesion burden) and either pairwise entries or regional summaries from one of the following matrices: SC, FC, eSC, and eFC. The area under the ROC curve (AUC) was used to assess the classification performance. Both univariate statistics and parameter coefficients from the classification models were used to identify features important to differentiating between the groups.

RESULTS

The regional eSC and eFC models outperformed their observed FC and SC counterparts (p-value < 0.05), while the pairwise eSC and SC performed similarly (p = 0.10). Regional eSC and eFC models had higher AUC (0.66-0.68) than the pairwise models (0.60-0.65), with regional eFC having highest classification accuracy across all models. Ridge regression coefficients for the regional eFC and regional observed FC models were significantly correlated (Pearson's r = 0.52, p-value < 10e-7). Decreased estimated SC node strength in default mode and ventral attention networks and increased eFC node strength in visual networks was associated with evidence of disability.

DISCUSSION

Here, for the first time, we use clinically acquired lesion masks to estimate both structural and functional connectomes in patient populations to better understand brain lesion-dysfunction mapping in pwMS. Models based on the NeMo Tool's estimates of SC and FC better classified pwMS by disability level than SC and FC observed directly in the individual using advanced MRI. This work provides a viable alternative to performing high-cost, advanced MRI in patient populations, bringing the connectome one step closer to the clinic.

摘要

背景

多发性硬化症(MS)是一种神经退行性和神经炎症性疾病,会导致病变,破坏大脑的解剖和生理连通性网络,导致认知、视觉和/或运动障碍。扩散和功能磁共振成像等高级成像技术可测量大脑的结构连通性(SC)和功能连通性(FC)网络,并能更好地理解其中断如何导致 MS 患者(pwMS)出现残疾。然而,高级 MRI 技术主要用于研究目的,因为它们昂贵、耗时且需要高水平的专业知识来获取和处理。作为替代方案,Network Modification (NeMo) 工具可用于使用源自 pwMS 和一组参考对照连通性网络的病变掩模来估计 SC 和 FC。

目的

在这里,我们检验了以下假设:仅基于个体的病变掩模,NeMo 工具估计的 SC 和 FC(eSC 和 eFC)可以像从 pwMS 中直接提取的 SC 和 FC 那样,将 pwMS 分类为残疾类别。我们还旨在找到对区分无残疾和有残疾组最重要的连接。

材料和方法

本研究纳入了 100 名 pwMS(年龄:45.5 ± 11.4 岁,66%为女性,疾病持续时间:12.97 ± 8.07 年)。扩展残疾状况量表(EDSS)用于评估残疾情况,67 名 pwMS 无残疾(EDSS < 2)。分别从扩散和功能磁共振成像中直接提取观察到的 SC 和 FC。NeMo 工具用于通过从参考轨迹集中去除与病变掩模相交的轨迹线来估计剩余结构连通体(eSC)。然后,将 NeMo 工具的 eSC 用作输入,输入到深度神经网络中以估计相应的 FC(eFC)。使用具有 ridge 正则化的逻辑回归对 pwMS 进行残疾分类(无残疾与有残疾),基于人口统计学/临床信息(性别、年龄、种族、疾病持续时间、临床表型和脊髓病变负担)和以下矩阵中的成对条目或区域摘要:SC、FC、eSC 和 eFC。使用 ROC 曲线下面积(AUC)评估分类性能。使用单变量统计和分类模型的参数系数来识别对组间差异有重要意义的特征。

结果

与观察到的 FC 和 SC 相比,区域 eSC 和 eFC 模型表现更好(p 值<0.05),而成对 eSC 和 SC 表现相似(p=0.10)。区域 eSC 和 eFC 模型的 AUC(0.66-0.68)高于成对模型(0.60-0.65),所有模型中区域 eFC 的分类准确率最高。区域 eFC 和区域观察到的 FC 模型的 Ridge 回归系数显著相关(Pearson r=0.52,p 值<10e-7)。默认模式和腹侧注意网络中估计的 SC 节点强度降低,以及视觉网络中 eFC 节点强度增加与残疾有关。

讨论

在这里,我们首次使用临床获得的病变掩模来估计患者人群中的结构和功能连通体,以更好地了解 MS 患者大脑病变-功能障碍的映射。基于 NeMo 工具对 SC 和 FC 的估计的模型比使用高级 MRI 直接在个体中观察到的 SC 和 FC 更好地对 pwMS 进行残疾分类。这项工作为在患者人群中进行高成本、高级 MRI 提供了一种可行的替代方案,使连通体更接近临床应用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b96b/8488753/fb7aab3d03b2/gr1.jpg

文献检索

告别复杂PubMed语法,用中文像聊天一样搜索,搜遍4000万医学文献。AI智能推荐,让科研检索更轻松。

立即免费搜索

文件翻译

保留排版,准确专业,支持PDF/Word/PPT等文件格式,支持 12+语言互译。

免费翻译文档

深度研究

AI帮你快速写综述,25分钟生成高质量综述,智能提取关键信息,辅助科研写作。

立即免费体验