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1 oring multibacteria relationships (microbial cliques).
2  (i.e., who belongs to which communities and cliques).
3 enic cooperation with all other genes in the clique.
4 promoters known as enhancer-promoter hubs or cliques.
5 ly fixed and smaller neighborhood systems or cliques.
6 number of cells that participate in multiple cliques.
7 sks that we compile a listing of all maximal cliques.
8 ce of a network core and the distribution of cliques, (2) global and local binary properties, (3) glo
9 n between prenatal Pb exposure and microbial clique abundance.
10 rm a global alignment by employing a maximum clique algorithm on a specially defined graph that we ca
11 romoter-enhancer interaction motifs, namely, cliques and networks, and interactions that are dependen
12 h asks us to determine the size of a largest clique, and the maximal clique enumeration problem, whic
13 hies, friendship networks are organized into cliques, and comparative relations (e.g., "bigger than"
14            We efficiently enumerate all such cliques, and derive a dynamic programming algorithm to f
15 sional spaces, rings, dominance hierarchies, cliques, and other forms and successfully discovers the
16 e peak matches in a graph, finds the maximal cliques, and then combines cliques with shared peaks to
17  maximal sets of completely connected nodes (cliques) are found using a clique-finding algorithm.
18  addition, activation patterns of the neural clique assemblies can be converted to strings of binary
19 s of the DMN were identified, as well as the cliques associated with a reduced preference for motor p
20 thm achieved a considerable improvement over clique based algorithms in terms of its ability to recov
21 om dynamic phenotype network using a maximal clique based approach.
22                                  This neural-clique-based hierarchical-extraction and parallel-bindin
23 l approaches, such as mean shortest path and clique-based metrics, have been useful but are not well
24 reased odds of having the two-taxa microbial clique below the median relative abundance (odds ratio (
25 lustering, to graphical approaches such as k-clique communities, weighted gene co-expression networks
26 hat the problems remains hard in the case of clique complexes, a family of simplicial complexes speci
27 elative packing group (RPG) that applies the clique concept from graph theory as a natural basis for
28 ree topologies is computed using the maximal cliques concept, in phase II divergence times for each o
29 bsume the classic version of the NP-complete clique decision problem.
30  a graph clustering problem called the quasi-clique decomposition problem, which has recently also be
31 ormalize the commonness of common sense as a clique detection problem on a bipartite belief graph of
32 MATE-CLEVER (Mendelian-inheritance-AtTEntive CLique-Enumerating Variant findER) as an approach that a
33                                  The maximum clique enumeration (MCE) problem asks that we identify a
34 he size of a largest clique, and the maximal clique enumeration problem, which asks that we compile a
35         The individual neurons within neural cliques exhibit "collective cospiking" dynamics that all
36                  We consider two algorithms [Clique Extracted Ontology (CliXO), LocalFitness] that un
37                                              Clique Finder (CF) identifies groups of genes which are
38 elation list can be examined using the novel clique finder tool to determine the sets of genes most l
39                   Then by applying a maximum clique finding algorithm, it finds all significant stems
40 ant-column biclustering problem as a maximal clique finding problem in a multipartite graph.
41 rk analysis, including identifying defective cliques, finding small network motifs (such as feed-forw
42  novel method that employs heaviest weighted clique-finding (HCF), which we show significantly outper
43  connected nodes (cliques) are found using a clique-finding algorithm.
44 We developed a new computational method, RNA-clique, for calculating genetic distances using assemble
45                            On the flip side, clique graphs are highly cooperative across social envir
46  Identity-By-Descent (IBD) segments based on clique graphs.
47 with an alternative method revealed that RNA-clique has relatively high time and memory requirements,
48 lied on the assumption that complexes form a clique in that graph.
49 E) problem asks that we identify all maximum cliques in a finite, simple graph.
50  framework for motif finding through finding cliques in a graph but have made this framework substant
51   CliXO is a new approach that finds maximal cliques in a network induced by progressive thresholding
52 independent and recurrent SCNA: s as maximal cliques in an interval graph constructed from overlaps b
53 ssemblies known as promoter-enhancer hubs or cliques in cancer.
54 ; (2) social cohesion, such as the extent of cliques in friendship networks; and (3) civic engagement
55 et of functional coding units, termed neural cliques, in the CA1 network.
56 of network-level coding units, termed neural cliques, in the hippocampus has enabled real-time patter
57 onary game theory model, that cooperation on cliques increases linearly with community motif count.
58 milarly to the case of single-node or single-clique initiators studied previously, we observe that co
59 population activity of such pyramidal neuron clique is temporally linked to the activity of the local
60  Many traditional graph algorithms such as k-clique, k-coloring, and subgraph matching have great pot
61 ce of algorithms on inherently low-diameter, clique-like benchmarks may not always be indicative of e
62 er grid, where a multiscale structure of non clique-like communities is revealed.
63 l scales, one can detect both clique- or non clique-like communities without imposing an upper scale
64 ume an implicit notion of community based on clique-like subgraphs, a form of community structure tha
65 m geometric constraints can have natural non clique-like substructures with large effective diameters
66 cer and promoter spatial clusters termed "3D cliques." Loss- and gain-of-function experiments show th
67                        SQ uses an atom-based clique-matching step followed by an alignment scoring fu
68  tuned interneurons and pyramidal cells into cliques may ensure that ensembles of functionally alike
69 erneuron sharing its feature tuning with the clique members.
70 thm (QCM algorithm) into edge-covering Quasi-Clique Merger algorithm (eQCM) for mining weighted sub-n
71                        We modified the Quasi-Clique Merger algorithm (QCM algorithm) into edge-coveri
72 -expression networks and local maximal quasi-clique merger to identify gene co-expression modules.
73            First, we use local maximum quasi-clique merging (lmQCM) algorithm to reduce the mRNA and
74 s for a set of chromatograms, the Consistent Cliques Method (CCM) represents all peaks from all chrom
75 he protein interaction network for defective cliques (nearly complete complexes of pairwise interacti
76 ically alter the structure of scale-free and clique networks and show, through a stochastic evolution
77                       An RPG is defined as a clique of residues, where every member contacts all othe
78 ls and other cell types have revealed that a clique of self-regulated core TFs control cell identity
79 g Monte Carlo simulations, we identified two cliques of co-expressed genes that were significantly en
80 mensional scatter plots, and dissection into cliques of co-regulated genes.
81 twork architecture characterized by neuronal cliques of dense local connectivity communicating with e
82 sses small-world network architecture, where cliques of densely interconnected neurons ("small worlds
83                     Affective and perceptual cliques of the DMN were identified, as well as the cliqu
84 own and widely-studied problems: the maximum clique optimization problem, which asks us to determine
85 ughput network data has been to extract near-cliques or highly dense subgraphs from a single protein-
86 e network at all scales, one can detect both clique- or non clique-like communities without imposing
87                 The principles by which such cliques organize to encode information remain poorly und
88 ds to be an unusually high degree of maximum clique overlap.
89 of formation of new sexual partnerships, and clique partitioning of the population.
90 a novel in-house algorithm and a tailor-made Clique Percolation Method to extract linear and nonlinea
91 fied for survivors and non-survivors using k-clique percolation method.
92 contribution is the careful selection of the clique potential functions in the MRF so its maximum a p
93 that: (1) in mouse V1 individual small-world cliques preferably incorporate pyramidal neurons with si
94  by devising a scoring function, the Maximum Clique problem being a classic example, where S includes
95 gorithm was implemented to solve the maximal clique problem for a simple graph with six vertices.
96                                  The maximal clique problem has been solved by means of molecular bio
97 nally, we show that solving a single Maximum Clique problem using parallel quantum annealing reduces
98  metric for solving instances of the Maximum Clique problem when compared to solving each problem seq
99 lly polynomial complete problem (the maximal clique problem) in polynomial time.
100   Although based on solutions to the maximum clique problem, this algorithm deals properly with ambig
101 ool is used to solve the NP-complete maximal-clique problem.
102                                          RNA-clique reliably distinguished individual tall fescue pla
103 find an optimal selection of non-overlapping cliques, resulting in a very fast algorithm, which we ca
104 ements, the comparisons also showed that RNA-clique's results were at least as reliable as the altern
105  glycan structures through iterative maximum clique search and fragment superposition.
106 eraction networks were comprised of numerous cliques-sets of three or four genes such that each TSG w
107  or four genes such that each TSG within the clique showed oncogenic cooperation with all other genes
108  dissolution of intricate TAD-like structure cliques showing long-range interactions represents a pro
109 ature has classified these groups as support cliques, sympathy groups, bands, cognitive groups, tribe
110 s and Ruminococcus callidus and a three-taxa clique that also included Prevotella clara.
111 exposure, we identified a two-taxa microbial clique that included Bifidobacterium adolescentis and Ru
112              By identifying eQTL association cliques that expose the hidden structure of genotype and
113 tch preferentially targets hyperconnected 3D cliques that regulate the expression of crucial proto-on
114 -based inference to first identify microbial cliques that were predictive of prenatal Pb exposure and
115  describe groups of amino acid sites called "cliques" that were highly associated with each other.
116 ve cospiking" dynamics that allow the neural clique to overcome the response variability of its membe
117                              We propose that clique topology is a powerful new tool for matrix analys
118  a novel approach to matrix analysis, called clique topology, that extracts features of the data inva
119 sponding to the total ensemble of six-vertex cliques was built, followed by a series of selection pro
120                                Using the IBD cliques we were also able to infer the parental origin o
121            To identify potential small-world cliques, we searched for pyramidal cells whose calcium e
122                          Genes in both these cliques were significantly over-expressed in the cerebel
123  detection algorithm to assign plasmids into cliques, which correlate with plasmid gene content, bact
124 finds the maximal cliques, and then combines cliques with shared peaks to extract reliable features.
125                                          The cliques with the best weights represent the optimal comb
126 e reduced abundance of a probiotic microbial clique within the gut microbiome in late childhood.
127 el analytical approach to identify microbial cliques within the gut microbiome of children at 9-11 ye
128       Results of this work indicate that RNA-clique works well as a way of deriving genetic distances
129 ied, and behavioral domain analysis of these cliques yielded discrete functional properties, demonstr

 
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