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Multiple sclerosis (MS) is an inflammatory disease that affects the nervous system and results in a wide range of signs and symptoms including physical and cognitive problems. Recent evidence demonstrates that interactions between the host immune system and the commensal gut microbiota have a key role in the development of the disease. However, the natures of these interactions are poorly studied, and the set of bacteria with pathogenic or protective potential are unknown. Here, the investigators propose a multi-pronged approach to deciphering the role of the microbiota in MS, by developing microbiome-based machine learning algorithms aimed at: (1) distinguishing healthy individuals from MS patients; (2) predicting the time since the onset of MS in relation to disease activity by predicting next relapse and neurological progression; (3) identifying microbiome signatures that characterize the relapse state; (4) distinguishing various MS phenotypes in relation to blood and microbiome transcriptome signatures; (5) predicting response to various immunomodulatory treatments in relation to blood and microbiome transcriptome signatures. Overall, these studies should establish the role of the microbiome in multiple sclerosis, resulting in a set of non-invasive tools for characterization of the disease; identification of the kinetics of MS using microbiome as a readout; and allowing the prediction of individuals prone to MS based on their microbiome and in relation to their protein expression. These new set of diagnostic and predictive tools may thus add a novel and unexplored dimension to the study of the disease that may lead in the future to new therapeutic avenues based on designing microbiome-targeted interventions.
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Description of methods and plan of operation
Our research plan consists of the following steps:
Machine learning algorithms. As a more global approach aimed at quantifying the overall contribution of the microbiome to MS and at unraveling the relative contribution of the different microbiome features, the investigators will classify the study participants into several groups in each aim (e.g., in aim 1 patients versus healthy individuals; in aim 2 individuals with high versus low EDSS score for the similar time from MS diagnosis), and develop different computational methods (e.g., boosted decision trees, Support Vector Machine algorithms (SVMs)) for this classification problem using only the microbiome features generated above. The investigators will use a cross validation scheme, whereby the model training is done on the data of a randomly chosen subset of participants and then tested on the data of the remaining held out participants. In addition, the investigators will leave aside a test set on which the investigators will evaluate the final model that is derived in cross validation, allowing a true estimate of the performance of our models. As the number of microbiome features and thus the number of dimensions is large, the investigators will employ various feature selection approaches as means of avoiding overfitting and reducing dimensionality. The Segal lab (Weizmann) has pioneered the development of several such methods in similar settings in the area of gene regulation. The investigators will also use a similar scheme to predict the continuous EDSS score representing MS severity. The problem setup is similar to classification, but the method development is quite different as the classification methods are replaced with regression type of methods (e.g., linear regression, probabilistic models, stochastic gradient descent).
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Eran Segal, PhD; Anat Achiron, MD, PhD
Data sourced from clinicaltrials.gov
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