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1 e to the assembly using additional available sequence data.
2 g closely-related bacteria from whole-genome sequence data.
3 ain the best performance over intergenic DNA sequence data.
4 P yield possible from low-coverage polyploid sequence data.
5 ting risk factors of disease from non-coding sequence data.
6 h as viral genome integration, in paired-end sequence data.
7 s various genomic annotations in addition to sequence data.
8  led to an explosive accumulation of genomic sequence data.
9 ntained even in the context of international sequence data.
10 ulation-based surveillance with accompanying sequence data.
11 ion algorithm to infer indel parameters from sequence data.
12  realistic, individual-level genome-wide SNP/sequence data.
13  from 7 bp to 1 kbp compared with short-read sequence data.
14 roach to reconstruct transmission trees with sequence data.
15 cept of rational vaccine design from genomic sequence data.
16 r of self-sustained epidemics from any viral sequence data.
17 ssifier, UTAX, and SINTAX) handle ITS fungal sequence data.
18  portal for organizing and sharing the viral sequence data.
19 have made it possible to obtain gigabases of sequence data.
20  identify structural variants in linked-read sequencing data.
21 ding characters than can pollute large-scale sequencing data.
22  recover immune receptor alleles from genome sequencing data.
23 ng all studies which include next generation sequencing data.
24 ation analysis with count-based small-sample sequencing data.
25 re variants in heterogeneous next-generation sequencing data.
26  framework for management of next-generation sequencing data.
27 ons at base pair level using next-generation sequencing data.
28 cilitating interpretation of next-generation sequencing data.
29 ariants and is applicable to a wide range of sequencing data.
30 termine HLA allele-specific copy number from sequencing data.
31 lization and interpretability of single-cell sequencing data.
32 sions in standard single- and paired-end RNA-sequencing data.
33 wnstream analysis functions for whole genome sequencing data.
34 esulting in an enormous amount of microbiome sequencing data.
35 difficulties in detecting them in short-read sequencing data.
36 ntegrating whole-genome CNVs and whole-exome sequencing data.
37 e infinite sites assumption with single-cell sequencing data.
38  must be computationally inferred from these sequencing data.
39 ds of thousands of samples with whole-genome sequencing data.
40 ematic to genotype STRs from high-throughput sequencing data.
41 ns impacted by batch effects in whole genome sequencing data.
42 rchromosomal SVs from mate-pair and pair-end sequencing data.
43 structural variants from Illumina short-read sequencing data.
44 ed pre-processing tool for immune repertoire sequencing data.
45 g carriage might limit the interpretation of sequencing data.
46 ction and read coverage from next-generation sequencing data.
47 cific tumor neoantigens from next generation sequencing data.
48 ration such as time-series analysis on cfDNA sequencing data.
49 so determined using paired RNA and small RNA sequencing data.
50  (RGEPs) from tumour-derived single-cell RNA sequencing data.
51 ese variations accurately in next generation sequencing data.
52 e of EP in protein-DNA binding using massive sequencing data.
53 tility of pooled analysis of mouse and human sequencing data.
54 ctural variation breakpoints in whole-genome sequencing data.
55  individuals with both imaging and brain RNA sequencing data.
56 , in particular, for time series metagenomic sequencing data.
57  analyses of variants identified in pathogen sequencing data.
58 y and mitigate batch effects in whole genome sequencing data.
59 ers to collect a large volume of metagenomic sequencing data.
60                               Finally, using sequencing data, a computational model was generated to
61 grating parallel (phospho)proteomic and mRNA sequencing data across 12 TCGA tumour data sets to inter
62                             MinION long-read sequence data also facilitated the elucidation of comple
63 le enough for routine use in single-cell RNA sequencing data analyses.
64 tochrome c oxidase subunit I) and subsequent sequence data analysis provided experimental evidence of
65 erence database giving global context to DNA sequence data and a framework for incorporating data fro
66 lification introduces redundant reads in the sequence data and estimating the PCR duplication rate is
67                   The recent surge in genome sequence data and functional genomics research has usher
68 lve this, we generated the first genome-wide sequence data and mitochondrial genomes from eleven arch
69                         However, the massive sequence data and the diverse properties of different ge
70         The detection of RNA 3D modules from sequence data and their automatic implementation belong
71 o automate the screening of large amounts of sequence data and to focus on the most promising strains
72                                          RNA sequencing data and a uidA reporter assay indicated that
73 t to interpret clonal analysis of repertoire sequencing data and allow for rigorous testing of other
74  incorporation of -omics and next-generation sequencing data and continual improvement in measures of
75 le biomarker candidates from high throughput sequencing data and could be generalized to other datase
76  physiologically relevant splice forms using sequencing data and demonstrated that the resulting isof
77 on computational analysis of single-cell RNA-sequencing data and discuss underlying assumptions, meth
78 ng need for new data structures to store raw sequencing data and efficient algorithms for population
79 f fusion genes encompassing analysis of deep sequencing data and manual curations.
80 , through January 31, 2017, used DNA and RNA sequencing data and messenger RNA expression results fro
81  to be directly established, the increase in sequencing data and readily available computational powe
82            Technical advances in single-cell sequencing data and their application to greater samples
83 rds: "whole genome", "transcriptome or exome sequencing data", and "genome-wide genotyping array data
84 perating on bacterial IGRs from whole-genome sequence data, and suggests that our current understandi
85  available genotyping tools and whole-genome sequencing data, and argue for a better integration of p
86 updated through the addition of new strains, sequencing data, and association mapping results.
87  fetal and adult human liver single-cell RNA sequencing data, and find a striking correspondence betw
88 ws online browsing of mapped high throughput sequencing data, and its implementation for several RNA-
89 A polymorphisms, from whole-genome bisulfite sequencing data, and nucleosome occupancy from NOMe-seq
90 st, enabling the application to whole-genome sequencing data, and straightforward to implement.
91 ly genotyping and phasing STRs from Illumina sequencing data, and we report a genome-wide analysis an
92  DACE clustered the Lake Taihu 16S rRNA gene sequencing data ( approximately 316M reads, 30 GB) in 25
93                 We present deep whole-genome sequencing data ( approximately 38x) from 28 individuals
94  and the Ocean TARA Eukaryotic 18S rRNA gene sequencing data ( approximately 500M reads, 88 GB) into
95 s from 17 populations for which Y-chromosome sequence data are also available.
96 tion of novel alleles discovered from genome sequence data are likely to be particularly significant
97 ilities to identify neoantigens from genomic sequencing data are a limiting factor for understanding
98                       As genomic interaction sequencing data are becoming prevalent, a standard file
99 scribe the biological samples from which the sequencing data are derived.
100                              High-throughput sequencing data are widely collected and analyzed in the
101                         MusiteDeep takes raw sequence data as input and uses convolutional neural net
102 nformation and individual-level genotype and sequence data associated with phenotypic features mainta
103     Among 58 469 participants with CETP gene-sequencing data available, average age was 51.5 years an
104              Here using a large whole-genome sequencing data bank, cancer registry and colorectal tum
105 so correlated to previous ITH estimates from sequencing data but heterogeneity in the fraction of tum
106 ion of differential mRNA decay rate from RNA-sequencing data by modeling the kinetics of mRNA metabol
107  major taxa, we show that disparate amplicon sequence data can be combined at the taxonomy-based leve
108  as single-end sequencing data or paired-end sequencing data can accommodate to detect SV.
109 ider how emerging data types, such as genome-sequence data, can serve as proxies for microbial commun
110                                         From sequence data collected aboard the ISS, we constructed d
111                                              Sequence data compared well to resistance phenotypic dat
112 fy microorganisms using whole-genome shotgun sequencing data, comprehensive comparisons of these meth
113 conducted using Sanger population nucleotide sequencing data derived from blood samples from study pa
114  public collection of mutant seed stocks and sequence data enables rapid identification of mutations
115   We analyzed clinical, microbiological, and sequencing data for 451 patients and their clinical isol
116 ail manifestations, we scrutinized the exome sequencing data for additional potentially deleterious g
117               By integrating high-throughput sequencing data for binding and splicing quantification
118              Based on use of next-generation sequencing data for characterizing epigenetic marks and
119                             We mined our RNA-sequencing data for differentially up-regulated genes th
120            Pre-processing of high-throughput sequencing data for immune repertoire profiling is essen
121 lysis web server, to analyze next-generation sequencing data for retroviral vector integration sites.
122  been clearly demonstrated based on TCGA RNA sequencing data for studying two closely related types o
123 hips among stinging-wasp families, gathering sequence data from >800 UCE loci and 187 samples, includ
124                         Analyzing cumulative sequence data from 1,351 blood samples collected from 18
125                Here, we queried whole-genome sequence data from 1,916 patients across 24 cancer types
126 eterious genetic variation using whole-exome sequence data from 262 case subjects with pulmonary fibr
127   Using ultra-low-coverage (0.3x) population sequence data from 488 recombinant inbred Arabidopsis th
128             We demonstrate its use for exome sequence data from 60 706 individuals in the Exome Aggre
129                        Here we analyze exome sequence data from 60,706 individuals to make genome-wid
130     Toward this end, the availability of DNA sequence data from 60,706 people through the Exome Aggre
131  systematic review of 11 publications, using sequence data from 863 familial CRC cases and 1604 indiv
132 ch we have compiled tumor and matched normal sequence data from a unique cohort of more than 10,000 p
133                     We analyzed whole-genome sequence data from families affected by Alzheimer diseas
134 00 discrete morphological characters and DNA sequence data from five gene regions.
135 s from new low-coverage whole-genome shotgun sequence data from five hunter-gatherers and five first
136                          By analyzing genome sequence data from human populations, including 1269 ind
137                    We apply SMC++ to analyze sequence data from over a thousand human genomes in Afri
138 lele fraction from corresponding RNA and DNA sequence data from patients with breast cancer acquired
139                 CryptSplice interrogation of sequence data from six individuals with X-linked dyskera
140         Analysis of simulated data and exome sequence data from the 1000 Genomes project demonstrated
141 icly available version includes pre-analyzed sequence data from the European Molecular Biology Labora
142 ses and 374,939 controls, using whole-genome sequence data from the Icelandic population, and tested
143       Furthermore, analysis of transcriptome sequence data from the starfish Asterias rubens revealed
144                                    Using RNA-sequencing data from 100 hippocampi from mice with epile
145 orage disorder genes, leveraging whole exome sequencing data from 1156 Parkinson's disease cases and
146                  We then mined published RNA sequencing data from 117 hPS cell lines, and observed an
147                  Application of the model to sequencing data from 17 cancer types demonstrates an inc
148                         We used whole-genome sequencing data from 2,619 individuals through the UK10K
149                                 We reanalyse sequencing data from 461 samples into a coordinated cata
150               Comparing whole-exome germline sequencing data from 488 TCGA lung cancer samples to ger
151                      We analysed whole-exome sequencing data from 5777 solid tumours, spanning 19 can
152      We have applied BeviMed to whole-genome sequencing data from 6,586 individuals with diverse rare
153                                     In exome sequencing data from a sister population, the Nunavik In
154                                          RNA sequencing data from both human fetal ear and mouse seco
155 nonuclear cells as well as 16S ribosomal RNA sequencing data from bronchoalveolar lavage obtained as
156 on we segment a time-series of transcriptome sequencing data from budding yeast, in high temporal res
157 quences are observed in ALS, we analysed RNA sequencing data from C9orf72-positive and sporadic ALS c
158                                We integrated sequencing data from chromatin immunoprecipitation, RNA
159            Here, we capitalized on small RNA sequencing data from distinct species such as Arabidopsi
160 ns in the GEF1 domain of Trio in whole-exome sequencing data from individuals with ASD, and confirm t
161                             Here, we combine sequencing data from mouse models of IR-induced malignan
162 entify methylation loci from high-throughput sequencing data from multiple experimental conditions.
163                                 High quality sequencing data from radiotherapy-induced cancers is par
164 ntial expression analysis of the count-based sequencing data from RNA-seq.
165  embedding and clustering of single-cell RNA sequencing data from six biopsy samples showed two major
166                              High-throughput sequencing data from TCRs and Igs can provide valuable i
167                By taking advantage of genome sequencing data from the 1001 Genomes Consortium, we cha
168                             By analyzing RNA-sequencing data from The Cancer Genome Atlas (TCGA) for
169 between gene age and expression level in RNA sequencing data from The Cancer Genome Atlas for seven s
170 alyses of whole genomes and multi-tissue RNA-sequencing data from the Genotype-Tissue Expression (GTE
171 iated with coronary heart disease using gene sequencing data from the Myocardial Infarction Genetics
172 ne Mutation Scoring Tool fOr Next-generation sEquencing data (GeMSTONE), a cloud-based variant priori
173 es have been identified from high throughput sequencing data generated from cancer genomes by using n
174 of tools to identify causative variants from sequencing data greatly limits the promise of precision
175    However, analysis of genome/transcriptome sequence data has revealed that PP/OK-type neuropeptides
176       High-quality phylogenetic placement of sequence data has the potential to greatly accelerate st
177   Integrative analysis of whole-genome/exome-sequencing data has been challenging, especially for the
178                                  Genome-wide sequencing data has enabled modern phylogenomic methods
179 Accurate typing of HLA genes with short-read sequencing data has historically been difficult due to t
180                   The use of high-throughput sequencing data has improved the results of genomic anal
181                                Extensive DNA sequence data have made it possible to reconstruct human
182                     Tremendous amount of RNA sequencing data have been produced by large consortium p
183 tes, and merging of these sites with the RNA sequencing data identified a set of canola genes targete
184   In this paper, we present the evolution of sequence data in a Bayesian framework and the approximat
185 drogram production, genotype imputation from sequence data in linkage studies, and additional tools.
186 of PVP for the interpretation of whole exome sequencing data in patients suffering from congenital hy
187              Nevertheless, the paucity of 3'-sequencing data in this species precludes comprehensive
188 -scale mapping of the branchpoints from deep sequencing data in three different species and in the SF
189 , however, requires accurate partitioning of sequence data into B-cell clones and identification of t
190       What does it take to convert a heap of sequencing data into a publishable result?
191               However, converting short-read sequencing data into reliable genotype data remains a no
192                                          The sequence data is available at www.ncbi.nlm.nih.gov/sra/?
193 relationship between transmission events and sequence data is obscured by uncertainty arising from fo
194 f microbial genomes based on next-generation sequencing data is a challenging problem in metagenomics
195 tion in a more clinical context, where exome sequencing data is abundant and the discovery of retrodu
196                 The quality of whole-genomic sequencing data is comparable across all samples regardl
197 age and transmission of such vast amounts of sequencing data is expensive.
198 ction of structural mosaicism using targeted sequencing data is lacking.
199 ing have been published, the noisy nature of sequencing data is still a limitation for accuracy and c
200 ith the availability of massive whole genome sequencing data, it becomes practical to mine STR profil
201 genetic methods for identifying selection in sequence data may allow us to evaluate the roles of muta
202                                    Since NGS sequencing data may be accompanied by genotype data for
203   Substructures can help make highly diverse sequence data more tractable.
204   With the rapidly increasing volume of deep sequencing data, more efficient algorithms and data stru
205 in the subset of participants with DLPFC RNA sequencing data (n = 469), brain transcription levels of
206 s been studied for decades, large amounts of sequencing data now available allows us to examine the m
207 lso applied the algorithm to high throughput sequencing data obtained for viruses present in sewage s
208             This study compares whole-genome sequencing data obtained from chemo-naive and chemo-trea
209 amples system contains annotated DNA and RNA sequence data of (i) archaeal, bacterial, eukaryotic and
210              We generated deep, whole-genome sequence data of 17 individuals in a three-generation pe
211                         Samples of molecular sequence data of a locus obtained from random individual
212                                              Sequence data of three nuclear genes and three plastid D
213 or analyses and visualization of TCR and BCR sequencing data of 13 species.
214                                        Exome sequencing data of 24 MSI colorectal cancers revealed in
215 20 candidate genes were extracted from exome-sequencing data of 42 subjects with EE and no previous g
216                                        Exome sequencing data of families were filtered for rare varia
217 on single-cell resolution.In single-cell RNA sequencing data of heterogeneous cell populations, cell
218  simultaneous generation of high-dimensional sequencing data of multiple gene targets.
219 95 samples across 20 cancer types from miRNA sequencing data of The Cancer Genome Atlas and identifie
220                  Analysis of next-generation sequencing data often results in a list of genomic regio
221                      Using available genomic sequence data on coagulation factor VIII and predictive
222 rmatics solution to understand ASE using RNA sequencing data only.
223 types of sequencing data, such as single-end sequencing data or paired-end sequencing data can accomm
224 r one million reads and several gigabases of sequence data per run.
225           The analysis of human whole-genome sequencing data presents significant computational chall
226 them particularly useful for next-generation sequencing data processing and analysis.
227                          The next-generation sequencing data provided a previously unreported (to our
228                                         Deep-sequencing data provided additional diagnostic informati
229 spect to the human reference, with long-read sequencing data providing a fivefold increase in sensiti
230 ers the assessment and demultiplexing of the sequencing data, read mapping, inference of RAD loci, ge
231 tive detection of CNVs from targeted capture sequencing data remains challenging.
232                Processing of high-throughput sequencing data requires basic bioinformatics skills and
233                        However, whole-genome sequencing data revealed at least five independent inser
234                                      Our RNA-sequencing data set provides a valuable resource for ben
235 We therefore produced an extensive small RNA sequencing data set to analyze male and female miRNA exp
236 e the generation of a comprehensive nanopore sequencing data set with a median read length of 11,979
237 metagenomic (random) and amplicon (targeted) sequence data sets.
238 ating on IGRs in bacteria using whole-genome sequence data sets.
239  SNP influence gene expression using two RNA sequencing data sets (n = 210 and n = 159).
240 on with 101 reduced-representation bisulfite sequencing data sets and 637 methylation array data sets
241  after analysis of 61 whole-genome bisulfite sequencing data sets and validation with 101 reduced-rep
242 nown and putative SSP genes based on 144 RNA sequencing data sets covering various stages of macronut
243 n individual tumors for 11 of 12 single-cell sequencing data sets from a variety of human cancers.
244 rtant, we found signatures of damage in most sequencing data sets in widely used resources, including
245 d for pre-processing large immune repertoire sequencing data sets.
246 itation [ChIP] combined with high-throughput sequencing) data show that YAP impairs SMAD recruitment
247     We generated high-spatial-resolution RNA sequencing data spanning the secondary phloem, vascular
248                           Different types of sequencing data, such as single-end sequencing data or p
249                     Examination of available sequence data suggests that Arg-135 may have originated
250  a lgorithm for c lustering e xtremely large sequencing data, termed .
251  this correlation as structural semantics of sequence data that allows for a different interpretation
252 nce (PASTRI), a new algorithm for bulk-tumor sequencing data that clusters somatic mutations into clo
253     The accelerating growth in the corpus of sequencing data that underpins such analysis is making t
254 A-Seq data sets, as well as the whole genome sequencing data that was used in the construction of Ass
255  17 (19%) of the 90 patients (with available sequence data) that were discharged home before the diag
256  based on plastome and nuclear ribosomal DNA sequence data, the temporal history of the family was re
257  of existing dispersion and burden tests for sequencing data, therefore allowing meta-analysis of mul
258 hat has been successfully applied to protein sequence data to extract evolutionary signals that provi
259        The entire information flow, from raw sequence data to hypothesis testing, can be accomplished
260 et of newly generated and publicly available sequence data to infer the HCV4a and HCV4d evolutionary
261 sed to computationally process and interpret sequence data to inform medical or preventative action.
262        We investigated the potential of deep sequence data to provide greater resolution on transmiss
263                         By comparing ancient sequence data to that of modern specimens, we determine
264 RNA editing studies should complement genome sequence data to understand the full impact of nucleic a
265 Mirabello and colleagues use high-throughput sequencing data to assess the diversity of HPV16 isolate
266 h whole-animal chromatin immunoprecipitation sequencing data to deconvolve the cell type-specific eff
267 irst report of the use of transcriptome-wide sequencing data to identify molecular markers of antihyp
268 n data as well as experimental microarray or sequencing data to illustrate the usefulness of our meth
269                  Here, we use orthogonal RNA-sequencing data to quantify mtDNA expression (mtRNA), an
270 ion of chromosome (Hi-C) and single-cell RNA sequencing data together with discrete stochastic simula
271 for tumor phylogenies from noisy single-cell sequencing data under a finite-sites model.
272 nted, as well as the generation of simulated sequencing data under either negative binomial or compou
273    Simulated real-time analyses of in-flight sequence data using an automated bioinformatic pipeline
274   We analyzed both mitochondrial and nuclear sequence data using neutrality test and Bayesian analysi
275 coverage exome and low-coverage whole-genome sequencing data, utilizing information from both exon-ex
276                                      Genomic sequence data was contextualised through comparison with
277  integrative analysis of whole-exome and RNA-sequencing data was employed to extensively characterize
278                               From small RNA sequence data, we identified a set of reads with well-de
279 ately predicting gene fusion candidates from sequencing data, we are still faced with the critical ch
280 inctive signals of duplication in short-read sequencing data, we identified 744 duplicated loci in H.
281 action analysis by paired-end tag (ChIA-PET) sequencing data, we used CRISPR-Cas9 gene editing to tar
282  CDC for confirmatory agar dilution testing; sequence data were sent to CDC for analysis.
283                                              Sequencing data were also examined from an additional 39
284                                 Whole genome sequencing data were analyzed for rare pLoF variants (fr
285                                              Sequencing data were available for 254 (56%) of the NeoA
286                              Next-generation sequencing data were generated using the restriction-sit
287  Analyses of the Cancer Genome Atlas HCC RNA-sequencing data were performed by using Ingenuity Pathwa
288 ly on genomic context rather than the actual sequencing data which manifests in high recurrence of re
289 sing the availability of human mitochondrial sequencing data, which called for a cogent and significa
290 ndicate that haploid resolution of long-read sequencing data will significantly increase sensitivity
291 es, variety or accession, from all available sequence data, will immediately allow more robust analys
292  analysis and visualization of user-provided sequence data with associated metadata, predictions of n
293 m that combines a probabilistic model of DNA sequencing data with a enumeration algorithm based on th
294 l-length 16S gene sequences from metagenomic sequencing data with high accuracy.
295  many applications, clustering of very large sequencing data with high efficiency and accuracy is ess
296 etween two long sequences or Next-Generation Sequencing data with the Markov models of the background
297  novel cancer risk loci from next-generation sequencing data, with iterative data analysis from targe
298 arkers directly from high-throughput shotgun sequencing data without a reference genome, and an appro
299 ent in cfDNA from 0.1x coverage whole-genome sequencing data without prior knowledge of tumor mutatio
300       SynthEx robustly identifies CNAs using sequencing data without the additional costs associated

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