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Systematic measurement of combination-drug landscapes to predict in vivo treatment outcomes for tuberculosis

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TLDR
In this article, the authors provide an extensible approach to rationally prioritize combination therapies for testing in in-vivo mouse models of tuberculosis, and develop classifiers predictive of multidrug treatment outcome in a mouse model of disease relapse.
Abstract
Summary Lengthy multidrug chemotherapy is required to achieve a durable cure in tuberculosis. However, we lack well-validated, high-throughput in vitro models that predict animal outcomes. Here, we provide an extensible approach to rationally prioritize combination therapies for testing in in vivo mouse models of tuberculosis. We systematically measured Mycobacterium tuberculosis response to all two- and three-drug combinations among ten antibiotics in eight conditions that reproduce lesion microenvironments, resulting in >500,000 measurements. Using these in vitro data, we developed classifiers predictive of multidrug treatment outcome in a mouse model of disease relapse and identified ensembles of in vitro models that best describe in vivo treatment outcomes. We identified signatures of potencies and drug interactions in specific in vitro models that distinguish whether drug combinations are better than the standard of care in two important preclinical mouse models. Our framework is generalizable to other difficult-to-treat diseases requiring combination therapies. A record of this paper’s transparent peer review process is included in the supplemental information.

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Anti-tuberculosis treatment strategies and drug development: challenges and priorities

TL;DR: In this paper , the benefits and challenges of 'one-size-fits-all' regimens and treatment duration versus individualized therapy based on disease severity and host and pathogen characteristics, considering scientific and operational perspectives.
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The physiology and genetics of bacterial responses to antibiotic combinations

TL;DR: This Review presents the current understanding of bacterial cell physiology and genetics of responses to antibiotics, and emphasizes recently discovered mechanisms of synergistic and antagonistic drug interactions, hysteresis in temporal interactions between antibiotics that arise from microbial physiology and interactions between antibiotic and resistance mutations that can cause collateral sensitivity or cross-resistance.
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Advancement in leishmaniasis diagnosis and therapeutics: An update.

TL;DR: In this paper, the authors presented the conventional and recent approaches impended for the disease diagnosis and their sensitivity, specificity, and clinical application in parasite detection, and elaborated various new methods to cure leishmaniasis, which include host-directed therapies, drug repurposing, nanotechnology and combinational therapy.
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Types and functions of heterogeneity in mycobacteria

TL;DR: A review of different types of mycobacterial heterogeneity and how cell-to-cell heterogeneity and environmental heterogeneity are generated and regulated in response to environmental cues can be found in this paper .
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Design principles to assemble drug combinations for effective tuberculosis therapy using interpretable pairwise drug response measurements

TL;DR: In this paper , the authors train machine learning models to predict higher-order combination treatment outcomes in the relapsing BALB/c mouse model, using pairwise in vitro measurements.
References
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Book

ggplot2: Elegant Graphics for Data Analysis

TL;DR: This book describes ggplot2, a new data visualization package for R that uses the insights from Leland Wilkisons Grammar of Graphics to create a powerful and flexible system for creating data graphics.
Journal ArticleDOI

A rationale and test for the number of factors in factor analysis.

TL;DR: It is suggested that if Guttman's latent-root-one lower bound estimate for the rank of a correlation matrix is accepted as a psychometric upper bound, then the rank for a sample matrix should be estimated by subtracting out the component in the latent roots which can be attributed to sampling error.
Journal ArticleDOI

Evaluation of a nutrient starvation model of Mycobacterium tuberculosis persistence by gene and protein expression profiling.

TL;DR: A model in which M. tuberculosis arrests growth, decreases its respiration rate and is resistant to isoniazid, rifampicin and metronidazole is established, which is generated a model with which to search for agents active against persistent M.culosis.
Journal ArticleDOI

Random survival forests

TL;DR: This article introduces random survival forests, a random forests method for the analysis of right-censored survival data, and extends Breiman’s random forests (RF) method, showing it to be highly accurate and comparable to state-of-the-art methods.
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