Brain disorders are marked by unique features yet share many clinical and genetic associations. Numerous neuroimaging studies have examined the brain morphological and connectivity patterns associated with these conditions, however, there is a scarcity of studies aiming to identify disorder-specific and cross-disorder brain alterations through a unified approach across disorders. The ERC CONNECT project strives to map and understand brain mechanisms underlying the overlap and specificities between different neuropsychiatric diseases. To achieve this aim, this project is structured around five main objectives covering both logistic and research aspects. These objectives comprise the pooling, preprocessing, and processing of a large number of (open) datasets across a wide range of neurologic and psychiatric brain conditions, the development of methodologies and tools to allow us to curate, combine, analyze and compare large datasets, derive and compare disease fingerprints, and the development of new machine learning based algorithms and tools to derive meaningful metrics for potential future clinical use.
Understanding how the brain functions in healthy individuals and in patients with brain disorders is a continuously pressing medical challenge. Traditionally, researchers viewed brain and mental disorders as distinct entities. While this approach helps diagnose and treat patients, recent evidence suggests that many disorders may share common underlying mechanisms, with patterns of brain alterations shared across conditions.
Magnetic resonance imaging (MRI) has become a powerful tool for studying the structure and function of the human brain. The influence of network neuroscience –the study of the relationships in structural and functional connections between brain regions– on mental health has grown to be an important area of research and a large body of neuroimaging studies have identified a wide range of abnormalities in brain connectivity for various mental disorders. These MRI studies often study these abnormalities for different conditions, mostly in isolation of other conditions. Less is known about how such brain patterns may overlap and/or differentiate. The CONNECT project now aims to bring together these datasets and investigate relationships in disease-related brain alterations between and across mental disorders.
Our project aims to identify common biological mechanisms by building a large-scale MRI database encompassing multiple mental disorders. This data is used to develop a framework to systematically search for shared patterns of brain function and dysfunction. CONNECT will further differentiate and disentangle these commonalities from disorder-specific alterations. The project is advancing our understanding in the fields of neuroimaging and network neuroscience through network analyses of neuroimaging data across various neuropsychiatric and neurological disorders. So far, we have achieved the collection, processing, and analysis of large volumes of MRI datasets (120 datasets, including over 26,000 controls and 15,000 patients across 20 disorders, in addition to the large-scale UK Biobank comprising 37,000 individuals, encompassing 15,000 patients with neuropsychiatric disorders) through means of open datasets and the establishment of invaluable academic collaborations. The data is used for the identification of brain patterns associated with each of these specific disorders, bringing 20 different disease brainmaps. Our next step will be to compare the derived disease maps and examine dysconnectivity cross-disorders patterns. Our main research objectives include assessing the replicability of neuroimaging findings, investigating cross-condition connectomic features, developing novel statistical tools (the PolyConnectomic Risk Score) for network analysis, and the creation of a repository of connectomic disease signatures to be utilized by the scientific community. Through these collaborations and developments of various methodologies, the project contributes significantly to the field to facilitate a more enhanced picture of brain disorders.