17 results on '"Tanevski J"'
Search Results
2. A machine-learning model for quantitative characterization of human skin using photothermal radiometry and diffuse reflectance spectroscopy.
- Author
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Verdel, N., Tanevski, J., Džeroski, S., and Majaron, B.
- Published
- 2018
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3. Synthesis of Zeolite a from Silicate Raw Materials and its Application in Formulations of Detergents
- Author
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Donevska, S., Tanevski, J., and Daskalova, N.
- Published
- 1985
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4. LIANA+ provides an all-in-one framework for cell-cell communication inference.
- Author
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Dimitrov D, Schäfer PSL, Farr E, Rodriguez-Mier P, Lobentanzer S, Badia-I-Mompel P, Dugourd A, Tanevski J, Ramirez Flores RO, and Saez-Rodriguez J
- Subjects
- Humans, Software, Animals, Transcriptome, Computational Biology methods, Gene Expression Profiling methods, Cell Communication, Single-Cell Analysis methods, Signal Transduction
- Abstract
The growing availability of single-cell and spatially resolved transcriptomics has led to the development of many approaches to infer cell-cell communication, each capturing only a partial view of the complex landscape of intercellular signalling. Here we present LIANA+, a scalable framework built around a rich knowledge base to decode coordinated inter- and intracellular signalling events from single- and multi-condition datasets in both single-cell and spatially resolved data. By extending and unifying established methodologies, LIANA+ provides a comprehensive set of synergistic components to study cell-cell communication via diverse molecular mediators, including those measured in multi-omics data. LIANA+ is accessible at https://github.com/saezlab/liana-py with extensive vignettes ( https://liana-py.readthedocs.io/ ) and provides an all-in-one solution to intercellular communication inference., (© 2024. The Author(s).)
- Published
- 2024
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5. Assessing the impact of transcriptomics data analysis pipelines on downstream functional enrichment results.
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Paton V, Ramirez Flores RO, Gabor A, Badia-I-Mompel P, Tanevski J, Garrido-Rodriguez M, and Saez-Rodriguez J
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- Humans, Cell Line, Tumor, Software, Heart Failure genetics, Workflow, Neoplasms genetics, Data Analysis, Benchmarking, Gene Expression Profiling methods, Transcriptome genetics
- Abstract
Transcriptomics is widely used to assess the state of biological systems. There are many tools for the different steps, such as normalization, differential expression, and enrichment. While numerous studies have examined the impact of method choices on differential expression results, little attention has been paid to their effects on further downstream functional analysis, which typically provides the basis for interpretation and follow-up experiments. To address this, we introduce FLOP, a comprehensive nextflow-based workflow combining methods to perform end-to-end analyses of transcriptomics data. We illustrate FLOP on datasets ranging from end-stage heart failure patients to cancer cell lines. We discovered effects not noticeable at the gene-level, and observed that not filtering the data had the highest impact on the correlation between pipelines in the gene set space. Moreover, we performed three benchmarks to evaluate the 12 pipelines included in FLOP, and confirmed that filtering is essential in scenarios of expected moderate-to-low biological signal. Overall, our results underscore the impact of carefully evaluating the consequences of the choice of preprocessing methods on downstream enrichment analyses. We envision FLOP as a valuable tool to measure the robustness of functional analyses, ultimately leading to more reliable and conclusive biological findings., (© The Author(s) 2024. Published by Oxford University Press on behalf of Nucleic Acids Research.)
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- 2024
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6. Opening the Black Box: Spatial Transcriptomics and the Relevance of Artificial Intelligence-Detected Prognostic Regions in High-Grade Serous Carcinoma.
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Laury AR, Zheng S, Aho N, Fallegger R, Hänninen S, Saez-Rodriguez J, Tanevski J, Youssef O, Tang J, and Carpén OM
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- Humans, Female, Prognosis, Gene Expression Profiling methods, Middle Aged, Aged, Ovarian Neoplasms genetics, Ovarian Neoplasms pathology, Ovarian Neoplasms drug therapy, Transcriptome, Cystadenocarcinoma, Serous genetics, Cystadenocarcinoma, Serous pathology, Cystadenocarcinoma, Serous drug therapy, Artificial Intelligence
- Abstract
Image-based deep learning models are used to extract new information from standard hematoxylin and eosin pathology slides; however, biological interpretation of the features detected by artificial intelligence (AI) remains a challenge. High-grade serous carcinoma of the ovary (HGSC) is characterized by aggressive behavior and chemotherapy resistance, but also exhibits striking variability in outcome. Our understanding of this disease is limited, partly due to considerable tumor heterogeneity. We previously trained an AI model to identify HGSC tumor regions that are highly associated with outcome status but are indistinguishable by conventional morphologic methods. Here, we applied spatially resolved transcriptomics to further profile the AI-identified tumor regions in 16 patients (8 per outcome group) and identify molecular features related to disease outcome in patients who underwent primary debulking surgery and platinum-based chemotherapy. We examined formalin-fixed paraffin-embedded tissue from (1) regions identified by the AI model as highly associated with short or extended chemotherapy response, and (2) background tumor regions (not identified by the AI model as highly associated with outcome status) from the same tumors. We show that the transcriptomic profiles of AI-identified regions are more distinct than background regions from the same tumors, are superior in predicting outcome, and differ in several pathways including those associated with chemoresistance in HGSC. Further, we find that poor outcome and good outcome regions are enriched by different tumor subpopulations, suggesting distinctive interaction patterns. In summary, our work presents proof of concept that AI-guided spatial transcriptomic analysis improves recognition of biologic features relevant to patient outcomes., (Copyright © 2024 The Authors. Published by Elsevier Inc. All rights reserved.)
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- 2024
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7. DOT: a flexible multi-objective optimization framework for transferring features across single-cell and spatial omics.
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Rahimi A, Vale-Silva LA, Fälth Savitski M, Tanevski J, and Saez-Rodriguez J
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- Humans, Gene Expression Profiling methods, Transcriptome, Animals, Computational Biology methods, Single-Cell Analysis methods, Algorithms
- Abstract
Single-cell transcriptomics and spatially-resolved imaging/sequencing technologies have revolutionized biomedical research. However, they suffer from lack of spatial information and a trade-off of resolution and gene coverage, respectively. We propose DOT, a multi-objective optimization framework for transferring cellular features across these data modalities, thus integrating their complementary information. DOT uses genes beyond those common to the data modalities, exploits the local spatial context, transfers spatial features beyond cell-type information, and infers absolute/relative abundance of cell populations at tissue locations. Thus, DOT bridges single-cell transcriptomics data with both high- and low-resolution spatially-resolved data. Moreover, DOT combines practical aspects related to cell composition, heterogeneity, technical effects, and integration of prior knowledge. Our fast implementation based on the Frank-Wolfe algorithm achieves state-of-the-art or improved performance in localizing cell features in high- and low-resolution spatial data and estimating the expression of unmeasured genes in low-coverage spatial data., (© 2024. The Author(s).)
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- 2024
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8. Spatial multi-omic map of human myocardial infarction.
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Kuppe C, Ramirez Flores RO, Li Z, Hayat S, Levinson RT, Liao X, Hannani MT, Tanevski J, Wünnemann F, Nagai JS, Halder M, Schumacher D, Menzel S, Schäfer G, Hoeft K, Cheng M, Ziegler S, Zhang X, Peisker F, Kaesler N, Saritas T, Xu Y, Kassner A, Gummert J, Morshuis M, Amrute J, Veltrop RJA, Boor P, Klingel K, Van Laake LW, Vink A, Hoogenboezem RM, Bindels EMJ, Schurgers L, Sattler S, Schapiro D, Schneider RK, Lavine K, Milting H, Costa IG, Saez-Rodriguez J, and Kramann R
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- Case-Control Studies, Chromatin genetics, Epigenome, Humans, Myocardium metabolism, Myocardium pathology, Myocytes, Cardiac metabolism, Myocytes, Cardiac pathology, Time Factors, Atrial Remodeling genetics, Chromatin Assembly and Disassembly, Gene Expression Profiling, Myocardial Infarction genetics, Myocardial Infarction pathology, Single-Cell Analysis, Ventricular Remodeling genetics
- Abstract
Myocardial infarction is a leading cause of death worldwide
1 . Although advances have been made in acute treatment, an incomplete understanding of remodelling processes has limited the effectiveness of therapies to reduce late-stage mortality2 . Here we generate an integrative high-resolution map of human cardiac remodelling after myocardial infarction using single-cell gene expression, chromatin accessibility and spatial transcriptomic profiling of multiple physiological zones at distinct time points in myocardium from patients with myocardial infarction and controls. Multi-modal data integration enabled us to evaluate cardiac cell-type compositions at increased resolution, yielding insights into changes of the cardiac transcriptome and epigenome through the identification of distinct tissue structures of injury, repair and remodelling. We identified and validated disease-specific cardiac cell states of major cell types and analysed them in their spatial context, evaluating their dependency on other cell types. Our data elucidate the molecular principles of human myocardial tissue organization, recapitulating a gradual cardiomyocyte and myeloid continuum following ischaemic injury. In sum, our study provides an integrative molecular map of human myocardial infarction, represents an essential reference for the field and paves the way for advanced mechanistic and therapeutic studies of cardiac disease., (© 2022. The Author(s), under exclusive licence to Springer Nature Limited.)- Published
- 2022
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9. Explainable multiview framework for dissecting spatial relationships from highly multiplexed data.
- Author
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Tanevski J, Flores ROR, Gabor A, Schapiro D, and Saez-Rodriguez J
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- Female, Humans, Breast Neoplasms genetics, Machine Learning
- Abstract
The advancement of highly multiplexed spatial technologies requires scalable methods that can leverage spatial information. We present MISTy, a flexible, scalable, and explainable machine learning framework for extracting relationships from any spatial omics data, from dozens to thousands of measured markers. MISTy builds multiple views focusing on different spatial or functional contexts to dissect different effects. We evaluated MISTy on in silico and breast cancer datasets measured by imaging mass cytometry and spatial transcriptomics. We estimated structural and functional interactions coming from different spatial contexts in breast cancer and demonstrated how to relate MISTy's results to clinical features., (© 2022. The Author(s).)
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- 2022
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10. Cell-to-cell and type-to-type heterogeneity of signaling networks: insights from the crowd.
- Author
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Gabor A, Tognetti M, Driessen A, Tanevski J, Guo B, Cao W, Shen H, Yu T, Chung V, Bodenmiller B, and Saez-Rodriguez J
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- Female, Humans, Machine Learning, Proteins, Breast Neoplasms genetics, Signal Transduction
- Abstract
Recent technological developments allow us to measure the status of dozens of proteins in individual cells. This opens the way to understand the heterogeneity of complex multi-signaling networks across cells and cell types, with important implications to understand and treat diseases such as cancer. These technologies are, however, limited to proteins for which antibodies are available and are fairly costly, making predictions of new markers and of existing markers under new conditions a valuable alternative. To assess our capacity to make such predictions and boost further methodological development, we organized the Single Cell Signaling in Breast Cancer DREAM challenge. We used a mass cytometry dataset, covering 36 markers in over 4,000 conditions totaling 80 million single cells across 67 breast cancer cell lines. Through four increasingly difficult subchallenges, the participants predicted missing markers, new conditions, and the time-course response of single cells to stimuli in the presence and absence of kinase inhibitors. The challenge results show that despite the stochastic nature of signal transduction in single cells, the signaling events are tightly controlled and machine learning methods can accurately predict new experimental data., (© 2021 The Authors. Published under the terms of the CC BY 4.0 license.)
- Published
- 2021
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11. Deep spatial profiling of human COVID-19 brains reveals neuroinflammation with distinct microanatomical microglia-T-cell interactions.
- Author
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Schwabenland M, Salié H, Tanevski J, Killmer S, Lago MS, Schlaak AE, Mayer L, Matschke J, Püschel K, Fitzek A, Ondruschka B, Mei HE, Boettler T, Neumann-Haefelin C, Hofmann M, Breithaupt A, Genc N, Stadelmann C, Saez-Rodriguez J, Bronsert P, Knobeloch KP, Blank T, Thimme R, Glatzel M, Prinz M, and Bengsch B
- Subjects
- Blood-Brain Barrier immunology, Blood-Brain Barrier metabolism, Blood-Brain Barrier pathology, Brain metabolism, Brain pathology, CD8-Positive T-Lymphocytes metabolism, COVID-19 pathology, Cell Communication, Central Nervous System immunology, Central Nervous System metabolism, Central Nervous System pathology, Humans, Immune Checkpoint Proteins metabolism, Inflammation, Lymphocyte Activation, Multiple Sclerosis immunology, Multiple Sclerosis pathology, Olfactory Bulb immunology, Olfactory Bulb metabolism, Olfactory Bulb pathology, Respiratory Insufficiency immunology, Respiratory Insufficiency pathology, SARS-CoV-2, Spike Glycoprotein, Coronavirus metabolism, T-Lymphocyte Subsets immunology, T-Lymphocyte Subsets metabolism, Brain immunology, CD8-Positive T-Lymphocytes immunology, COVID-19 immunology, Microglia immunology
- Abstract
COVID-19 can cause severe neurological symptoms, but the underlying pathophysiological mechanisms are unclear. Here, we interrogated the brain stems and olfactory bulbs in postmortem patients who had COVID-19 using imaging mass cytometry to understand the local immune response at a spatially resolved, high-dimensional, single-cell level and compared their immune map to non-COVID respiratory failure, multiple sclerosis, and control patients. We observed substantial immune activation in the central nervous system with pronounced neuropathology (astrocytosis, axonal damage, and blood-brain-barrier leakage) and detected viral antigen in ACE2-receptor-positive cells enriched in the vascular compartment. Microglial nodules and the perivascular compartment represented COVID-19-specific, microanatomic-immune niches with context-specific cellular interactions enriched for activated CD8
+ T cells. Altered brain T-cell-microglial interactions were linked to clinical measures of systemic inflammation and disturbed hemostasis. This study identifies profound neuroinflammation with activation of innate and adaptive immune cells as correlates of COVID-19 neuropathology, with implications for potential therapeutic strategies., Competing Interests: Declaration of interests The authors declare no competing interests., (Copyright © 2021 Elsevier Inc. All rights reserved.)- Published
- 2021
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12. Gene selection for optimal prediction of cell position in tissues from single-cell transcriptomics data.
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Tanevski J, Nguyen T, Truong B, Karaiskos N, Ahsen ME, Zhang X, Shu C, Xu K, Liang X, Hu Y, Pham HV, Xiaomei L, Le TD, Tarca AL, Bhatti G, Romero R, Karathanasis N, Loher P, Chen Y, Ouyang Z, Mao D, Zhang Y, Zand M, Ruan J, Hafemeister C, Qiu P, Tran D, Nguyen T, Gabor A, Yu T, Guinney J, Glaab E, Krause R, Banda P, Stolovitzky G, Rajewsky N, Saez-Rodriguez J, and Meyer P
- Subjects
- Algorithms, Animals, Databases, Genetic, Drosophila genetics, Forecasting methods, Gene Expression Regulation, Developmental genetics, Gene Regulatory Networks genetics, Sequence Analysis, RNA methods, Transcriptome genetics, Zebrafish genetics, Computational Biology methods, Gene Expression Profiling methods, Single-Cell Analysis methods, Spatial Analysis
- Abstract
Single-cell RNA-sequencing (scRNAseq) technologies are rapidly evolving. Although very informative, in standard scRNAseq experiments, the spatial organization of the cells in the tissue of origin is lost. Conversely, spatial RNA-seq technologies designed to maintain cell localization have limited throughput and gene coverage. Mapping scRNAseq to genes with spatial information increases coverage while providing spatial location. However, methods to perform such mapping have not yet been benchmarked. To fill this gap, we organized the DREAM Single-Cell Transcriptomics challenge focused on the spatial reconstruction of cells from the Drosophila embryo from scRNAseq data, leveraging as silver standard, genes with in situ hybridization data from the Berkeley Drosophila Transcription Network Project reference atlas. The 34 participating teams used diverse algorithms for gene selection and location prediction, while being able to correctly localize clusters of cells. Selection of predictor genes was essential for this task. Predictor genes showed a relatively high expression entropy, high spatial clustering and included prominent developmental genes such as gap and pair-rule genes and tissue markers. Application of the top 10 methods to a zebra fish embryo dataset yielded similar performance and statistical properties of the selected genes than in the Drosophila data. This suggests that methods developed in this challenge are able to extract generalizable properties of genes that are useful to accurately reconstruct the spatial arrangement of cells in tissues., (© 2020 Tanevski et al.)
- Published
- 2020
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13. Predictive model for the quantitative analysis of human skin using photothermal radiometry and diffuse reflectance spectroscopy.
- Author
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Verdel N, Tanevski J, Džeroski S, and Majaron B
- Abstract
We have recently introduced a novel methodology for the noninvasive analysis of the structure and composition of human skin in vivo . The approach combines pulsed photothermal radiometry (PPTR), involving time-resolved measurements of mid-infrared emission after irradiation with a millisecond light pulse, and diffuse reflectance spectroscopy (DRS) in the visible part of the spectrum. Simultaneous fitting of both data sets with respective predictions from a numerical model of light transport in human skin enables the assessment of the contents of skin chromophores (melanin, oxy-, and deoxy-hemoglobin), as well as scattering properties and thicknesses of the epidermis and dermis. However, the involved iterative optimization of 14 skin model parameters using a numerical forward model ( i.e. , inverse Monte Carlo - IMC) is computationally very expensive. In order to overcome this drawback, we have constructed a very fast predictive model (PM) based on machine learning. The PM involves random forests, trained on ∼9,000 examples computed using our forward MC model. We show that the performance of such a PM is very satisfying, both in objective testing using cross-validation and in direct comparisons with the IMC procedure. We also present a hybrid approach (HA), which combines the speed of the PM with versatility of the IMC procedure. Compared with the latter, the HA improves both the accuracy and robustness of the inverse analysis, while significantly reducing the computation times., Competing Interests: The authors have no conflicts of interests to declare., (© 2020 Optical Society of America under the terms of the OSA Open Access Publishing Agreement.)
- Published
- 2020
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14. Robustness and applicability of transcription factor and pathway analysis tools on single-cell RNA-seq data.
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Holland CH, Tanevski J, Perales-Patón J, Gleixner J, Kumar MP, Mereu E, Joughin BA, Stegle O, Lauffenburger DA, Heyn H, Szalai B, and Saez-Rodriguez J
- Subjects
- Animals, Benchmarking, Gene Regulatory Networks, Humans, RNA-Seq standards, Single-Cell Analysis standards, Transcription Factors metabolism, Transcriptome, RNA-Seq methods, Single-Cell Analysis methods, Software standards
- Abstract
Background: Many functional analysis tools have been developed to extract functional and mechanistic insight from bulk transcriptome data. With the advent of single-cell RNA sequencing (scRNA-seq), it is in principle possible to do such an analysis for single cells. However, scRNA-seq data has characteristics such as drop-out events and low library sizes. It is thus not clear if functional TF and pathway analysis tools established for bulk sequencing can be applied to scRNA-seq in a meaningful way., Results: To address this question, we perform benchmark studies on simulated and real scRNA-seq data. We include the bulk-RNA tools PROGENy, GO enrichment, and DoRothEA that estimate pathway and transcription factor (TF) activities, respectively, and compare them against the tools SCENIC/AUCell and metaVIPER, designed for scRNA-seq. For the in silico study, we simulate single cells from TF/pathway perturbation bulk RNA-seq experiments. We complement the simulated data with real scRNA-seq data upon CRISPR-mediated knock-out. Our benchmarks on simulated and real data reveal comparable performance to the original bulk data. Additionally, we show that the TF and pathway activities preserve cell type-specific variability by analyzing a mixture sample sequenced with 13 scRNA-seq protocols. We also provide the benchmark data for further use by the community., Conclusions: Our analyses suggest that bulk-based functional analysis tools that use manually curated footprint gene sets can be applied to scRNA-seq data, partially outperforming dedicated single-cell tools. Furthermore, we find that the performance of functional analysis tools is more sensitive to the gene sets than to the statistic used.
- Published
- 2020
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15. Process-based design of dynamical biological systems.
- Author
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Tanevski J, Todorovski L, and Džeroski S
- Abstract
The computational design of dynamical systems is an important emerging task in synthetic biology. Given desired properties of the behaviour of a dynamical system, the task of design is to build an in-silico model of a system whose simulated be- haviour meets these properties. We introduce a new, process-based, design methodology for addressing this task. The new methodology combines a flexible process-based formalism for specifying the space of candidate designs with multi-objective optimization approaches for selecting the most appropriate among these candidates. We demonstrate that the methodology is general enough to both formulate and solve tasks of designing deterministic and stochastic systems, successfully reproducing plausible designs reported in previous studies and proposing new designs that meet the design criteria, but have not been previously considered.
- Published
- 2016
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16. Learning stochastic process-based models of dynamical systems from knowledge and data.
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Tanevski J, Todorovski L, and Džeroski S
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- Disease Outbreaks, Gene Regulatory Networks, Humans, Influenza, Human epidemiology, Kinetics, Plague epidemiology, Stochastic Processes, Uncertainty, Computational Biology methods, Models, Biological
- Abstract
Background: Identifying a proper model structure, using methods that address both structural and parameter uncertainty, is a crucial problem within the systems approach to biology. And yet, it has a marginal presence in the recent literature. While many existing approaches integrate methods for simulation and parameter estimation of a single model to address parameter uncertainty, only few of them address structural uncertainty at the same time. The methods for handling structure uncertainty often oversimplify the problem by allowing the human modeler to explicitly enumerate a relatively small number of alternative model structures. On the other hand, process-based modeling methods provide flexible modular formalisms for specifying large classes of plausible model structures, but their scope is limited to deterministic models. Here, we aim at extending the scope of process-based modeling methods to inductively learn stochastic models from knowledge and data., Results: We combine the flexibility of process-based modeling in terms of addressing structural uncertainty with the benefits of stochastic modeling. The proposed method combines search trough the space of plausible model structures, the parsimony principle and parameter estimation to identify a model with optimal structure and parameters. We illustrate the utility of the proposed method on four stochastic modeling tasks in two domains: gene regulatory networks and epidemiology. Within the first domain, using synthetically generated data, the method successfully recovers the structure and parameters of known regulatory networks from simulations. In the epidemiology domain, the method successfully reconstructs previously established models of epidemic outbreaks from real, sparse and noisy measurement data., Conclusions: The method represents a unified approach to modeling dynamical systems that allows for flexible formalization of the space of candidate model structures, deterministic and stochastic interpretation of model dynamics, and automated induction of model structure and parameters from data. The method is able to reconstruct models of dynamical systems from synthetic and real data.
- Published
- 2016
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17. Domain-specific model selection for structural identification of the Rab5-Rab7 dynamics in endocytosis.
- Author
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Tanevski J, Todorovski L, Kalaidzidis Y, and Džeroski S
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- Protein Structure, Tertiary, rab7 GTP-Binding Proteins, Endocytosis, Models, Biological, rab GTP-Binding Proteins chemistry, rab GTP-Binding Proteins metabolism, rab5 GTP-Binding Proteins chemistry, rab5 GTP-Binding Proteins metabolism
- Abstract
Background: Given its recent rapid development and the central role that modeling plays in the discipline, systems biology clearly needs methods for automated modeling of dynamical systems. Process-based modeling focuses on explanatory models of dynamical systems; it constructs such models from measured time-course data and formalized modeling knowledge. In this paper, we apply process-based modeling to the practically relevant task of modeling the Rab5-Rab7 conversion switch in endocytosis. The task is difficult due to the limited observability of the system variables and the noisy measurements, which pose serious challenges to the process of model selection. To address these issues, we propose a domain-specific model selection criteria that take into account knowledge about the necessary properties of the simulated model behavior., Results: In a series of modeling experiments, we compare the results of process-based modeling obtained with different model selection criteria. The first is the standard maximum likelihood criterion based solely on least-squares model error. The second one is a parsimony-based criterion that also takes into account model complexity. We also introduce three domain-specific criteria based on domain expert expectations about the simulated behavior of an endocytosis model. According to the first criterion, 90 of the candidate models are indistinguishable. Furthermore, taking into account the complexity of the model does not lead to better model selection. However, the use of domain-specific criteria results in a remarkable improvement over the other two model selection criteria., Conclusions: We demonstrate the applicability of process-based modeling to the task of modeling the Rab5-Rab7 dynamics in endocytosis. Our experiments show that the domain-specific criteria outperform the standard domain-independent criteria for model selection. We also find that some of the model structures discarded as implausible in previous studies lead to the expected Rab5-Rab7 switch behavior.
- Published
- 2015
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