Elinor Thompson, A. Schroder, Tiantian He, Cameron Shand, Sonja Soskic, N. Oxtoby, F. Barkhof, Daniel C. Alexander
{"title":"Combining multimodal connectivity information improves modelling of pathology spread in Alzheimer’s disease","authors":"Elinor Thompson, A. Schroder, Tiantian He, Cameron Shand, Sonja Soskic, N. Oxtoby, F. Barkhof, Daniel C. Alexander","doi":"10.1162/imag_a_00089","DOIUrl":null,"url":null,"abstract":"Abstract Cortical atrophy and aggregates of misfolded tau proteins are key hallmarks of Alzheimer’s disease. Computational models that simulate the propagation of pathogens between connected brain regions have been used to elucidate mechanistic information about the spread of these disease biomarkers, such as disease epicentres and spreading rates. However, the connectomes that are used as substrates for these models are known to contain modality-specific false positive and false negative connections, influenced by the biases inherent to the different methods for estimating connections in the brain. In this work, we compare five types of connectomes for modelling both tau and atrophy patterns with the network diffusion model, which are validated against tau PET and structural MRI data from individuals with either mild cognitive impairment or dementia. We then test the hypothesis that a joint connectome, with combined information from different modalities, provides an improved substrate for the model. We find that a combination of multimodal information helps the model to capture observed patterns of tau deposition and atrophy better than any single modality. This is validated with data from independent datasets. Overall, our findings suggest that combining connectivity measures into a single connectome can mitigate some of the biases inherent to each modality and facilitate more accurate models of pathology spread, thus aiding our ability to understand disease mechanisms, and providing insight into the complementary information contained in different measures of brain connectivity","PeriodicalId":507939,"journal":{"name":"Imaging Neuroscience","volume":"15 3","pages":"1-19"},"PeriodicalIF":0.0000,"publicationDate":"2024-02-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Imaging Neuroscience","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.1162/imag_a_00089","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 0
Abstract
Abstract Cortical atrophy and aggregates of misfolded tau proteins are key hallmarks of Alzheimer’s disease. Computational models that simulate the propagation of pathogens between connected brain regions have been used to elucidate mechanistic information about the spread of these disease biomarkers, such as disease epicentres and spreading rates. However, the connectomes that are used as substrates for these models are known to contain modality-specific false positive and false negative connections, influenced by the biases inherent to the different methods for estimating connections in the brain. In this work, we compare five types of connectomes for modelling both tau and atrophy patterns with the network diffusion model, which are validated against tau PET and structural MRI data from individuals with either mild cognitive impairment or dementia. We then test the hypothesis that a joint connectome, with combined information from different modalities, provides an improved substrate for the model. We find that a combination of multimodal information helps the model to capture observed patterns of tau deposition and atrophy better than any single modality. This is validated with data from independent datasets. Overall, our findings suggest that combining connectivity measures into a single connectome can mitigate some of the biases inherent to each modality and facilitate more accurate models of pathology spread, thus aiding our ability to understand disease mechanisms, and providing insight into the complementary information contained in different measures of brain connectivity
摘要 皮层萎缩和折叠错误的 tau 蛋白聚集是阿尔茨海默病的主要特征。模拟病原体在相连脑区之间传播的计算模型已被用于阐明这些疾病生物标志物传播的机理信息,如疾病的中心和传播速度。然而,众所周知,作为这些模型基底的连接组包含特定模式的假阳性和假阴性连接,这是受不同大脑连接估计方法固有偏差的影响。在这项研究中,我们比较了五种类型的连接组,以网络扩散模型来模拟tau和萎缩模式,并通过轻度认知障碍或痴呆症患者的tau PET和结构性核磁共振成像数据进行了验证。然后,我们检验了一个假设,即结合了不同模式信息的联合连接组能为模型提供更好的基底。我们发现,与任何单一模式相比,多模式信息的组合有助于模型更好地捕捉观察到的 tau 沉积和萎缩模式。这一点通过独立数据集的数据得到了验证。总之,我们的研究结果表明,将连通性测量结合到一个单一的连通组中可以减轻每种模式固有的一些偏差,有助于建立更准确的病理扩散模型,从而帮助我们理解疾病机制,并深入了解不同大脑连通性测量所包含的互补信息。