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1.
BMC Bioinformatics ; 21(1): 231, 2020 Jun 05.
Artigo em Inglês | MEDLINE | ID: mdl-32503412

RESUMO

BACKGROUND: During the last decade, there has been a surge towards computational drug repositioning owing to constantly increasing -omics data in the biomedical research field. While numerous existing methods focus on the integration of heterogeneous data to propose candidate drugs, it is still challenging to substantiate their results with mechanistic insights of these candidate drugs. Therefore, there is a need for more innovative and efficient methods which can enable better integration of data and knowledge for drug repositioning. RESULTS: Here, we present a customizable workflow (PS4DR) which not only integrates high-throughput data such as genome-wide association study (GWAS) data and gene expression signatures from disease and drug perturbations but also takes pathway knowledge into consideration to predict drug candidates for repositioning. We have collected and integrated publicly available GWAS data and gene expression signatures for several diseases and hundreds of FDA-approved drugs or those under clinical trial in this study. Additionally, different pathway databases were used for mechanistic knowledge integration in the workflow. Using this systematic consolidation of data and knowledge, the workflow computes pathway signatures that assist in the prediction of new indications for approved and investigational drugs. CONCLUSION: We showcase PS4DR with applications demonstrating how this tool can be used for repositioning and identifying new drugs as well as proposing drugs that can simulate disease dysregulations. We were able to validate our workflow by demonstrating its capability to predict FDA-approved drugs for their known indications for several diseases. Further, PS4DR returned many potential drug candidates for repositioning that were backed up by epidemiological evidence extracted from scientific literature. Source code is freely available at https://github.com/ps4dr/ps4dr.


Assuntos
Preparações Farmacêuticas/metabolismo , Interface Usuário-Computador , Ensaios Clínicos como Assunto , Biologia Computacional/métodos , Reposicionamento de Medicamentos , Estudo de Associação Genômica Ampla , Humanos , Transcriptoma , Fluxo de Trabalho
2.
Bioinformatics ; 33(22): 3679-3681, 2017 Nov 15.
Artigo em Inglês | MEDLINE | ID: mdl-28651363

RESUMO

MOTIVATION: The concept of a 'mechanism-based taxonomy of human disease' is currently replacing the outdated paradigm of diseases classified by clinical appearance. We have tackled the paradigm of mechanism-based patient subgroup identification in the challenging area of research on neurodegenerative diseases. RESULTS: We have developed a knowledge base representing essential pathophysiology mechanisms of neurodegenerative diseases. Together with dedicated algorithms, this knowledge base forms the basis for a 'mechanism-enrichment server' that supports the mechanistic interpretation of multiscale, multimodal clinical data. AVAILABILITY AND IMPLEMENTATION: NeuroMMSig is available at http://neurommsig.scai.fraunhofer.de/. CONTACT: martin.hofmann-apitius@scai.fraunhofer.de. SUPPLEMENTARY INFORMATION: Supplementary data are available at Bioinformatics online.


Assuntos
Algoritmos , Bases de Conhecimento , Doenças Neurodegenerativas/metabolismo , Doenças Neurodegenerativas/fisiopatologia , Humanos , Internet , Modelos Biológicos , Doenças Neurodegenerativas/genética , Software
3.
EPMA J ; 11(3): 367-376, 2020 Sep.
Artigo em Inglês | MEDLINE | ID: mdl-32843907

RESUMO

Artificial intelligence (AI) approaches pose a great opportunity for individualized, pre-symptomatic disease diagnosis which plays a key role in the context of personalized, predictive, and finally preventive medicine (PPPM). However, to translate PPPM into clinical practice, it is of utmost importance that AI-based models are carefully validated. The validation process comprises several steps, one of which is testing the model on patient-level data from an independent clinical cohort study. However, recruitment criteria can bias statistical analysis of cohort study data and impede model application beyond the training data. To evaluate whether and how data from independent clinical cohort studies differ from each other, this study systematically compares the datasets collected from two major dementia cohorts, namely, the Alzheimer's Disease Neuroimaging Initiative (ADNI) and AddNeuroMed. The presented comparison was conducted on individual feature level and revealed significant differences among both cohorts. Such systematic deviations can potentially hamper the generalizability of results which were based on a single cohort dataset. Despite identified differences, validation of a previously published, ADNI trained model for prediction of personalized dementia risk scores on 244 AddNeuroMed subjects was successful: External validation resulted in a high prediction performance of above 80% area under receiver operator characteristic curve up to 6 years before dementia diagnosis. Propensity score matching identified a subset of patients from AddNeuroMed, which showed significantly smaller demographic differences to ADNI. For these patients, an even higher prediction performance was achieved, which demonstrates the influence systematic differences between cohorts can have on validation results. In conclusion, this study exposes challenges in external validation of AI models on cohort study data and is one of the rare cases in the neurology field in which such external validation was performed. The presented model represents a proof of concept that reliable models for personalized predictive diagnostics are feasible, which, in turn, could lead to adequate disease prevention and hereby enable the PPPM paradigm in the dementia field.

4.
Sci Rep ; 10(1): 10971, 2020 07 03.
Artigo em Inglês | MEDLINE | ID: mdl-32620927

RESUMO

Translational research of many disease areas requires a longitudinal understanding of disease development and progression across all biologically relevant scales. Several corresponding studies are now available. However, to compile a comprehensive picture of a specific disease, multiple studies need to be analyzed and compared. A large number of clinical studies is nowadays conducted in the context of drug development in pharmaceutical research. However, legal and ethical constraints typically do not allow for sharing sensitive patient data. In consequence there exist data "silos", which slow down the overall scientific progress in translational research. In this paper, we suggest the idea of a virtual cohort (VC) to address this limitation. Our key idea is to describe a longitudinal patient cohort with the help of a generative statistical model, namely a modular Bayesian Network, in which individual modules are represented as sparse autoencoder networks. We show that with the help of such a model we can simulate subjects that are highly similar to real ones. Our approach allows for incorporating arbitrary multi-scale, multi-modal data without making specific distribution assumptions. Moreover, we demonstrate the possibility to simulate interventions (e.g. via a treatment) in the VC. Overall, our proposed approach opens the possibility to build sufficiently realistic VCs for multiple disease areas in the future.


Assuntos
Teorema de Bayes , Aprendizado Profundo , Pesquisa Translacional Biomédica/métodos , Doença de Alzheimer/diagnóstico por imagem , Doença de Alzheimer/genética , Encéfalo/diagnóstico por imagem , Estudos de Coortes , Simulação por Computador , Bases de Dados Factuais/estatística & dados numéricos , Progressão da Doença , Humanos , Estudos Longitudinais , Modelos Estatísticos , Doença de Parkinson/diagnóstico , Polimorfismo de Nucleotídeo Único , Pesquisa Translacional Biomédica/estatística & dados numéricos , Interface Usuário-Computador
5.
Sci Rep ; 10(1): 19097, 2020 11 05.
Artigo em Inglês | MEDLINE | ID: mdl-33154531

RESUMO

One of the visions of precision medicine has been to re-define disease taxonomies based on molecular characteristics rather than on phenotypic evidence. However, achieving this goal is highly challenging, specifically in neurology. Our contribution is a machine-learning based joint molecular subtyping of Alzheimer's (AD) and Parkinson's Disease (PD), based on the genetic burden of 15 molecular mechanisms comprising 27 proteins (e.g. APOE) that have been described in both diseases. We demonstrate that our joint AD/PD clustering using a combination of sparse autoencoders and sparse non-negative matrix factorization is reproducible and can be associated with significant differences of AD and PD patient subgroups on a clinical, pathophysiological and molecular level. Hence, clusters are disease-associated. To our knowledge this work is the first demonstration of a mechanism based stratification in the field of neurodegenerative diseases. Overall, we thus see this work as an important step towards a molecular mechanism-based taxonomy of neurological disorders, which could help in developing better targeted therapies in the future by going beyond classical phenotype based disease definitions.


Assuntos
Doença de Alzheimer/classificação , Doença de Alzheimer/genética , Doença de Parkinson/classificação , Doença de Parkinson/genética , Idoso , Idoso de 80 Anos ou mais , Doença de Alzheimer/metabolismo , Peptídeos beta-Amiloides/líquido cefalorraquidiano , Encéfalo/diagnóstico por imagem , Análise por Conglomerados , Estudos de Coortes , Desenvolvimento de Medicamentos , Epigenoma , Feminino , Genótipo , Humanos , Masculino , Pessoa de Meia-Idade , Neuroimagem , Avaliação de Resultados em Cuidados de Saúde , Doença de Parkinson/metabolismo , Polimorfismo de Nucleotídeo Único , Medicina de Precisão , Transcriptoma , Aprendizado de Máquina não Supervisionado
6.
Gigascience ; 8(11)2019 11 01.
Artigo em Inglês | MEDLINE | ID: mdl-31730697

RESUMO

BACKGROUND: Precision medicine requires a stratification of patients by disease presentation that is sufficiently informative to allow for selecting treatments on a per-patient basis. For many diseases, such as neurological disorders, this stratification problem translates into a complex problem of clustering multivariate and relatively short time series because (i) these diseases are multifactorial and not well described by single clinical outcome variables and (ii) disease progression needs to be monitored over time. Additionally, clinical data often additionally are hindered by the presence of many missing values, further complicating any clustering attempts. FINDINGS: The problem of clustering multivariate short time series with many missing values is generally not well addressed in the literature. In this work, we propose a deep learning-based method to address this issue, variational deep embedding with recurrence (VaDER). VaDER relies on a Gaussian mixture variational autoencoder framework, which is further extended to (i) model multivariate time series and (ii) directly deal with missing values. We validated VaDER by accurately recovering clusters from simulated and benchmark data with known ground truth clustering, while varying the degree of missingness. We then used VaDER to successfully stratify patients with Alzheimer disease and patients with Parkinson disease into subgroups characterized by clinically divergent disease progression profiles. Additional analyses demonstrated that these clinical differences reflected known underlying aspects of Alzheimer disease and Parkinson disease. CONCLUSIONS: We believe our results show that VaDER can be of great value for future efforts in patient stratification, and multivariate time-series clustering in general.


Assuntos
Doença de Alzheimer/fisiopatologia , Bases de Dados Factuais , Aprendizado Profundo , Progressão da Doença , Modelos Neurológicos , Doença de Parkinson/fisiopatologia , Medicina de Precisão , Feminino , Humanos , Masculino
7.
Sci Rep ; 8(1): 11173, 2018 07 24.
Artigo em Inglês | MEDLINE | ID: mdl-30042519

RESUMO

Alzheimer's Disease (AD) is among the most frequent neuro-degenerative diseases. Early diagnosis is essential for successful disease management and chance to attenuate symptoms by disease modifying drugs. In the past, a number of cerebrospinal fluid (CSF), plasma and neuro-imaging based biomarkers have been proposed. Still, in current clinical practice, AD diagnosis cannot be made until the patient shows clear signs of cognitive decline, which can partially be attributed to the multi-factorial nature of AD. In this work, we integrated genotype information, neuro-imaging as well as clinical data (including neuro-psychological measures) from ~900 normal and mild cognitively impaired (MCI) individuals and developed a highly accurate machine learning model to predict the time until AD is diagnosed. We performed an in-depth investigation of the relevant baseline characteristics that contributed to the AD risk prediction. More specifically, we used Bayesian Networks to uncover the interplay across biological scales between neuro-psychological assessment scores, single genetic variants, pathways and neuro-imaging related features. Together with information extracted from the literature, this allowed us to partially reconstruct biological mechanisms that could play a role in the conversion of normal/MCI into AD pathology. This in turn may open the door to novel therapeutic options in the future.


Assuntos
Doença de Alzheimer/diagnóstico , Disfunção Cognitiva/diagnóstico por imagem , Disfunção Cognitiva/genética , Modelos Teóricos , Neuroimagem/métodos , Junções Aderentes/fisiologia , Idoso , Doença de Alzheimer/etiologia , Autofagia/fisiologia , Teorema de Bayes , Barreira Hematoencefálica/fisiopatologia , Encéfalo/fisiopatologia , Disfunção Cognitiva/complicações , Disfunção Cognitiva/patologia , Bases de Dados Genéticas , Diagnóstico Precoce , Humanos , Insulina/metabolismo , Estimativa de Kaplan-Meier , Células Matadoras Naturais/metabolismo , Aprendizado de Máquina , Polimorfismo de Nucleotídeo Único , Prognóstico , Modelos de Riscos Proporcionais , Risco
8.
J Alzheimers Dis ; 56(2): 677-686, 2017.
Artigo em Inglês | MEDLINE | ID: mdl-28035920

RESUMO

Neurodegenerative diseases including Alzheimer's disease are complex to tackle because of the complexity of the brain, both in structure and function. Such complexity is reflected by the involvement of various brain regions and multiple pathways in the etiology of neurodegenerative diseases that render single drug target approaches ineffective. Particularly in the area of neurodegeneration, attention has been drawn to repurposing existing drugs with proven efficacy and safety profiles. However, there is a lack of systematic analysis of the brain chemical space to predict the feasibility of repurposing strategies. Using a mechanism-based, drug-target interaction modeling approach, we have identified promising drug candidates for repositioning. Mechanistic cause-and-effect models consolidate relevant prior knowledge on drugs, targets, and pathways from the scientific literature and integrate insights derived from experimental data. We demonstrate the power of this approach by predicting two repositioning candidates for Alzheimer's disease and one for amyotrophic lateral sclerosis.


Assuntos
Doença de Alzheimer/tratamento farmacológico , Esclerose Lateral Amiotrófica/tratamento farmacológico , Reposicionamento de Medicamentos , Fármacos Neuroprotetores/farmacologia , Fármacos Neuroprotetores/uso terapêutico , Doença de Alzheimer/metabolismo , Esclerose Lateral Amiotrófica/metabolismo , Biologia Computacional , Simulação por Computador , Ciclosporina/farmacologia , Ciclosporina/uso terapêutico , Donepezila , Reposicionamento de Medicamentos/métodos , Humanos , Indanos/farmacologia , Indanos/uso terapêutico , Sondas Moleculares , Piperidinas/farmacologia , Piperidinas/uso terapêutico , Riluzol/farmacologia , Riluzol/uso terapêutico , Relação Estrutura-Atividade
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