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1.
Cell Rep ; 27(8): 2385-2398.e3, 2019 05 21.
Article in English | MEDLINE | ID: mdl-31116983

ABSTRACT

Loss of synchrony between geophysical time and insulin action predisposes to metabolic diseases. Yet the brain and peripheral pathways linking proper insulin effect to diurnal changes in light-dark and feeding-fasting inputs are poorly understood. Here, we show that the insulin sensitivity of several metabolically relevant tissues fluctuates during the 24 h period. For example, in mice, the insulin sensitivity of skeletal muscle, liver, and adipose tissue is lowest during the light period. Mechanistically, by performing loss- and gain-of-light-action and food-restriction experiments, we demonstrate that SIRT1 in steroidogenic factor 1 (SF1) neurons of the ventromedial hypothalamic nucleus (VMH) convey photic inputs to entrain the biochemical and metabolic action of insulin in skeletal muscle. These findings uncover a critical light-SF1-neuron-skeletal-muscle axis that acts to finely tune diurnal changes in insulin sensitivity and reveal a light regulatory mechanism of skeletal muscle function.


Subject(s)
Insulin/metabolism , Muscle, Skeletal/metabolism , Phototherapy/methods , Ventromedial Hypothalamic Nucleus/physiopathology , Animals , Circadian Rhythm , Humans , Mice
2.
Cell Metab ; 18(3): 431-44, 2013 Sep 03.
Article in English | MEDLINE | ID: mdl-24011077

ABSTRACT

The dogma that life without insulin is incompatible has recently been challenged by results showing the viability of insulin-deficient rodents undergoing leptin monotherapy. Yet, the mechanisms underlying these actions of leptin are unknown. Here, the metabolic outcomes of intracerebroventricular (i.c.v.) administration of leptin in mice devoid of insulin and lacking or re-expressing leptin receptors (LEPRs) only in selected neuronal groups were assessed. Our results demonstrate that concomitant re-expression of LEPRs only in hypothalamic γ-aminobutyric acid (GABA) and pro-opiomelanocortin (POMC) neurons is sufficient to fully mediate the lifesaving and antidiabetic actions of leptin in insulin deficiency. Our analyses indicate that enhanced glucose uptake by brown adipose tissue and soleus muscle, as well as improved hepatic metabolism, underlies these effects of leptin. Collectively, our data elucidate a hypothalamic-dependent pathway enabling life without insulin and hence pave the way for developing better treatments for diseases of insulin deficiency.


Subject(s)
Hypothalamus/drug effects , Insulin/metabolism , Leptin/pharmacology , Neurons/drug effects , Adipose Tissue, Brown/metabolism , Animals , Diabetes Mellitus, Experimental/drug therapy , Diabetes Mellitus, Experimental/metabolism , GABAergic Neurons/drug effects , GABAergic Neurons/metabolism , Glucose/analysis , Hyperglycemia/drug therapy , Hyperglycemia/mortality , Hypothalamus/metabolism , Kaplan-Meier Estimate , Leptin/therapeutic use , Liver/metabolism , Mice , Muscle, Skeletal/metabolism , Neurons/metabolism , Receptors, Leptin/genetics , Receptors, Leptin/metabolism
3.
J Chem Inf Model ; 49(4): 756-66, 2009 Apr.
Article in English | MEDLINE | ID: mdl-19391629

ABSTRACT

Given activity training data from high-throughput screening (HTS) experiments, virtual high-throughput screening (vHTS) methods aim to predict in silico the activity of untested chemicals. We present a novel method, the Influence Relevance Voter (IRV), specifically tailored for the vHTS task. The IRV is a low-parameter neural network which refines a k-nearest neighbor classifier by nonlinearly combining the influences of a chemical's neighbors in the training set. Influences are decomposed, also nonlinearly, into a relevance component and a vote component. The IRV is benchmarked using the data and rules of two large, open, competitions, and its performance compared to the performance of other participating methods, as well as of an in-house support vector machine (SVM) method. On these benchmark data sets, IRV achieves state-of-the-art results, comparable to the SVM in one case, and significantly better than the SVM in the other, retrieving three times as many actives in the top 1% of its prediction-sorted list. The IRV presents several other important advantages over SVMs and other methods: (1) the output predictions have a probabilistic semantic; (2) the underlying inferences are interpretable; (3) the training time is very short, on the order of minutes even for very large data sets; (4) the risk of overfitting is minimal, due to the small number of free parameters; and (5) additional information can easily be incorporated into the IRV architecture. Combined with its performance, these qualities make the IRV particularly well suited for vHTS.


Subject(s)
Algorithms , Computer Simulation , Drug Evaluation, Preclinical/methods , Neural Networks, Computer , Anti-HIV Agents/chemistry , Anti-HIV Agents/pharmacology , Artificial Intelligence , Databases, Factual , Informatics , Models, Molecular , Reproducibility of Results , Structure-Activity Relationship , Tetrahydrofolate Dehydrogenase/chemistry
4.
J Chem Inf Model ; 47(3): 965-74, 2007.
Article in English | MEDLINE | ID: mdl-17338509

ABSTRACT

Many chemoinformatics applications, including high-throughput virtual screening, benefit from being able to rapidly predict the physical, chemical, and biological properties of small molecules to screen large repositories and identify suitable candidates. When training sets are available, machine learning methods provide an effective alternative to ab initio methods for these predictions. Here, we leverage rich molecular representations including 1D SMILES strings, 2D graphs of bonds, and 3D coordinates to derive efficient machine learning kernels to address regression problems. We further expand the library of available spectral kernels for small molecules developed for classification problems to include 2.5D surface and 3D kernels using Delaunay tetrahedrization and other techniques from computational geometry, 3D pharmacophore kernels, and 3.5D or 4D kernels capable of taking into account multiple molecular configurations, such as conformers. The kernels are comprehensively tested using cross-validation and redundancy-reduction methods on regression problems using several available data sets to predict boiling points, melting points, aqueous solubility, octanol/water partition coefficients, and biological activity with state-of-the art results. When sufficient training data are available, 2D spectral kernels in general tend to yield the best and most robust results, better than state-of-the art. On data sets containing thousands of molecules, the kernels achieve a squared correlation coefficient of 0.91 for aqueous solubility prediction and 0.94 for octanol/water partition coefficient prediction. Averaging over conformations improves the performance of kernels based on the three-dimensional structure of molecules, especially on challenging data sets. Kernel predictors for aqueous solubility (kSOL), LogP (kLOGP), and melting point (kMELT) are available over the Web through: http://cdb.ics.uci.edu.


Subject(s)
Drug Evaluation, Preclinical/methods , Informatics/methods , Pharmaceutical Preparations/chemistry , Alkanes/chemistry , Benzodiazepines/chemistry , Benzodiazepines/pharmacology , Solubility , Transition Temperature
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