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1 is to allow for longitudinal RNA sequencing (RNA-seq).
2 of ~550,000 SNPs (Illumina 50 K SNP Chip and RNA-seq).
3 ivated cell sorting for bulk RNA sequencing (RNA-Seq).
4 igated using whole-transcriptome sequencing (RNA-seq).
5 4 versus n = 20) by immunohistochemistry and RNA-Seq.
6 tive splicing biomarkers from LC-MS/MS using RNA-Seq.
7 nes with corresponding expression changes by RNA-seq.
8 as well as 26 additional cultures using bulk RNA-seq.
9  may be applied to both single-cell and bulk RNA-seq.
10  by overdispersion and excessive dropouts in RNA-seq.
11 sorted and their gene expression compared by RNA-Seq.
12 uvenile yellow perch through RNA-sequencing (RNA-seq), after their initial introduction to a formulat
13 icroscopy, transmission electron microscopy, RNA-Seq analyses and RNA in situ hybridisation were used
14                               A total of 627 RNA-seq analyses are performed for 224 maize accessions
15                                  Here, using RNA-Seq analyses of clinical and preclinical samples, al
16                                           In RNA-Seq analyses of human brain samples from the NYGC AL
17 e of new spinach genome resources to conduct RNA-seq analyses of transcriptomic changes in leaf tissu
18                                              RNA-Seq analyses revealed that ROCK2 controlled a unique
19                                 ATAC-seq and RNA-seq analyses showed that CHD1 loss resulted in globa
20                                              RNA-seq analyses showed that MITF A isoform (MITF-A) was
21 nocarcinoma model through DNA methyl-Seq and RNA-Seq analyses.
22                               In conclusion, RNA-seq analysis appears to offer an informative genetic
23                                              RNA-Seq analysis demonstrates down-regulated expression
24                                 Results from RNA-seq analysis determined shared and unique functional
25 ingle-omic data, for example, in single cell RNA-seq analysis for clustering the transcriptomes of in
26                                              RNA-seq analysis identified insulin-like growth factor-b
27                                              RNA-seq analysis in human lung cancer cell line H1299 re
28  FAP cell type was also found in single cell RNA-seq analysis in mouse.
29                                              RNA-Seq analysis in untransformed cells showed that they
30 nomic actions of budesonide were analyzed by RNA-Seq analysis of 24 hours treated HASM, with and with
31                                              RNA-Seq analysis of ASH1L knockout versus WT ATC cell li
32 ary cells and segment centres, together with RNA-seq analysis of Fgf-regulated genes, has revealed ne
33                                              RNA-Seq analysis of freshly isolated intestinal crypt ce
34                                        Using RNA-seq analysis of mouse neocortical polysomes, here we
35                                              RNA-seq analysis of QPM and o2 endosperms reveals a grou
36                                      We used RNA-Seq analysis of RNA from exhumed seeds and quantitat
37                                              RNA-Seq analysis of total retinal cells mainly brought t
38 Europe (OPTiMiSE) programme, we conducted an RNA-Seq analysis on 188 subjects with first episode psyc
39                                              RNA-seq analysis revealed alterations in pathways and ge
40                                              RNA-seq analysis revealed that NME1(LOW) cells express e
41                  Further characterization by RNA-seq analysis showed LOXL2 promotes proteoglycan netw
42                                              RNA-Seq analysis showed that both ID2 and Cysteine-rich
43                      Here we use single cell RNA-seq analysis to characterize latency in monocytes an
44                               In this study, RNA-seq analysis was used to assess changes in ET-1 medi
45                          Using a time-course RNA-seq analysis we identified transcriptomic changes du
46 tworks behind DB infestation to date palm by RNA-Seq analysis.
47 elated to leukocyte recruitment, and hepatic RNA-seq analysis.
48                    Transcriptome sequencing (RNA-seq) analysis of IRAK4 knockout cell lines (IRAK4 KO
49 per-enhancer activities can be quantified by RNA-seq and a user-friendly data portal, enabling a broa
50 as The Cancer Genome Atlas (TCGA), with both RNA-Seq and array-based platforms available.
51                         Cross-examination of RNA-seq and ATAC sequencing data obtained at different t
52 -1 mice were chronically fed EtOH, and ileum RNA-seq and bioinformatic analyses were performed.
53        When tested on 12 ChIP-seq, ATAC-seq, RNA-seq and ChIA-PET datasets, pyBedGraph is on average
54                                     Combined RNA-seq and ChIP-seq analysis of lymphomas from Lck-Dlx5
55                                        Using RNA-seq and ChIP-seq approaches we identified genes regu
56 ltasigG1 and DeltarsfG strains combined with RNA-seq and ChIP-seq experiments, suggests the involveme
57     Variants in the PLASMA credible sets for RNA-seq and ChIP-seq were enriched for open chromatin an
58                                        Using RNA-seq and ChIP-seq, we determined that H-NS and LuxR c
59     By generating a multi-stress and species RNA-Seq and experimental evolution dataset, we highlight
60                               In this study, RNA-Seq and functional assays were performed to define t
61                             Combined with EU-RNA-seq and Hi-C analyses, we found that during prometap
62                                 We performed RNA-seq and histone mark ChIP-seq to define the transcri
63                                              RNA-Seq and immunoblotting analyses showed that MEOX1 kn
64           Using a combination of single-cell RNA-seq and lineage-tracing, we find that progenitor cel
65          Second, the combined application of RNA-Seq and MetaRibo-Seq identifies differences in the t
66  and expression of linc-SPRY3-2/3/4 in NSCLC RNA-seq and microarray data revealed a negative correlat
67 ed the literature and identified a number of RNA-Seq and microarray datasets in order to develop, tra
68 e features of readthrough transcription from RNA-seq and other next-generation sequencing (NGS) assay
69                     Using transcriptome-wide RNA-Seq and polysome profiling-Seq in halofuginone-treat
70  this approach as CARP: Combined Analysis of RNA-seq and PRO-seq.
71  that we used for analyzing multidimensional RNA-seq and proteomic data from a knock-in mouse model (
72                                              RNA-Seq and qRT-PCR analyses reveal that auxin-responsiv
73                                              RNA-seq and Ribotag analyses identified classes of mRNAs
74           Gene expression was analyzed using RNA-Seq and RT-PCR.
75 ic data, including bulk RNA-seq, single-cell RNA-seq and spatial transcriptomic datasets.
76                                              RNA-seq and systems biology analysis revealed a striking
77 equent analysis of relevant A1CF functional (RNA-seq) and binding data (PAR-CLIP).
78 ta-cells followed by transcriptome analysis (RNA-seq) and immunohistology identified cell- and stage-
79 profiles analyses, including RNA sequencing (RNA-seq) and small RNA sequencing (sRNA-seq) data analys
80 n accessibility (ATAC-Seq), gene expression (RNA-Seq), and adipocyte differentiation.
81 ner ears utilizing otoscopy, RNA sequencing (RNA-seq), and histopathological analysis.
82             Integrated analyses of ChIP-seq, RNA-seq, and patient prognosis identified sphingosine ki
83 hensive atlas comprising ATAC-seq, ChIP-seq, RNA-seq, and proteomics datasets.
84 ling pathways were examined by Western blot, RNA-seq, and qPCR.
85 e methods developed for single-cell and bulk RNA-seq, and specifically for microbiome data, in terms
86 es of primary OCs using H3K27ac ChIP-seq and RNA-seq, and then integrate these with whole genome sequ
87 e PCR, immunostaining, reporter gene assays, RNA-Seq, and two-photon glutamate uncaging with calcium
88    With the present study, we used a RiboTag/RNA-Seq approach to explore the timing of maternal mRNA
89                Here, using a high-throughput RNA-Seq approach, we examined genome-wide circadian and
90                                     Using an RNA-seq approach, we identified the increased expression
91                                     Using an RNA-seq approach, we show that several members of the ER
92                                              RNA-seq approaches allowed us to map the details of urid
93 ssumption that mRNA abundance estimates from RNA-seq are reliable estimates of true expression levels
94 9 functional screening that uses single-cell RNA-seq as readout.
95 a cultures using single-cell RNA sequencing (RNA-seq) as well as 26 additional cultures using bulk RN
96  pathways can be revealed by RNA sequencing (RNA-seq) at up to hundreds of folds reduction in convent
97                                              RNA-seq based analysis of 310 induced pluripotent stem c
98                     Simplex mRNA Sequencing (RNA-Seq) based isoform quantification approaches are fac
99                              Both short-read RNA-seq-based HLA typing and BCR/TCR repertoire sequenci
100                                              RNA-Seq-based transcriptome analysis of ask1 uncovered a
101                                   Thus, dual RNA-seq can provide insight into the biology and host-pa
102 cent studies have shown that RNA-sequencing (RNA-seq) can be used to measure mRNA of sufficient quali
103                 Analysis of a combination of RNA-seq, Capture Hi-C, and patient survival data suggest
104 -iChip to purify CTCs from PDAC patients for RNA-seq characterization, we identify three major correl
105                       Using reporter assays, RNA-seq, ChIP-seq, and loss-of-function mutations, we ca
106 id wheat nuclear architecture by integrating RNA-seq, ChIP-seq, ATAC-seq, Hi-C, and Hi-ChIP data.
107                                              RNA-Seq/ChIP-Seq and a subsequent modifier screen reveal
108 ce, C57BL/6J and BALB/cJ, and deploying deep RNA-Seq complemented with quantitative RT-PCR, we found
109 patients, and flow cytometry and sorted-cell RNA-seq confirmed the presence of PRIME cells in 19 addi
110 he dropout pattern by binarizing single-cell RNA-seq count data, and present a co-occurrence clusteri
111 translation, and the presence of substantial RNA-Seq counts attributable to introns, provide the rati
112  a single individual and to population-scale RNA-seq data across many individuals, we detect ASAS eve
113 ey four computational strategies for nuclear RNA-seq data analysis and develop a new pipeline, Tuxedo
114                               By integrating RNA-seq data and GWAS summary statistics, novel computat
115  from the ancestry of the mice, ranging from RNA-Seq data and published literature to shortlist candi
116 eloped to detect circRNAs from rRNA-depleted RNA-seq data based on back-splicing junction-spanning re
117 xpression levels of APA isoforms from 3'-end RNA-Seq data by exploiting both paired-end reads for gen
118                  Integration of ChIP-seq and RNA-seq data for master regulators of the Hippo pathway
119 es, this can affect interpretations of tumor RNA-seq data for response-signature association studies.
120                   By uniformly analyzing 723 RNA-seq data from 91 tissues and cell types, we built a
121                                        Using RNA-Seq data from a study of major depressive disorder (
122     We also compare these methods using real RNA-seq data from a study of major depressive disorder.T
123                                     Further, RNA-Seq data from APP/PS1 hippocampal tissue revealed th
124           We exemplify the method on sets of RNA-seq data from human tissues obtained though the Geno
125                             Using rat retina RNA-seq data from ischemic and normal conditions, we sho
126 ementary analysis of endothelial single cell RNA-Seq data identified the molecular signatures shared
127                                      The raw RNA-Seq data is freely available for download from NCBI
128                           Publicly available RNA-seq data is routinely used for retrospective analysi
129              Applying PAIRADISE to replicate RNA-seq data of a single individual and to population-sc
130 yses using chromatin immunoprecipitation and RNA-seq data revealed that the transcriptomic difference
131 ss referencing bulk RNA-seq with single-cell RNA-seq data revealed the CNTF responsive cell types, in
132 al principal component analysis (cPCA) on an RNA-Seq data set profiling gene expression of the extern
133 ed by joint analysis of large collections of RNA-seq data sets has emerged as one such analysis.
134             Applying PRAM to 30 human ENCODE RNA-seq data sets identified unannotated transcripts wit
135                             Our ChIP-seq and RNA-seq data sets provide an excellent resource for comp
136 es in multiple simulated and real biological RNA-seq data sets with positive control outlier samples.
137 e application of PRAM to mouse hematopoietic RNA-seq data sets.
138                                              RNA-Seq data showed reduced expression of genes associat
139 presents a bioinformatics workflow for using RNA-seq data to discover novel alternative splicing biom
140 e present FilTar, a method that incorporates RNA-Seq data to make miRNA target prediction specific to
141 ity Maximization algorithm, to analyze novel RNA-Seq data to understand the effects of low-dose (56)F
142                Analysis of three independent RNA-seq data verified the XIST-associated skewed AE on X
143    Genotype-Tissue Expression Project (GTEx) RNA-seq data were used to construct the top 10% specific
144 as then replicated in an application to real RNA-Seq data where MCMSeq was able to find previously re
145 ), we present evidence that subsampled tumor RNA-seq data with a few hundred thousand reads per sampl
146 ch-effect correction on bulk and single-cell RNA-seq data with emphasis on improving both clustering
147 common and robust approach for understanding RNA-seq data, but it coarsens the resulting analysis to
148                    By comparing results with RNA-seq data, ChIP-seq peaks, and DNase-seq footprints,
149    Compared to previous SBT methods, on real RNA-seq data, HowDe-SBT can construct the index in less
150 q library preparation and the lack of normal RNA-Seq data, presenting analytical challenges for disco
151 ods designed to analyze bulk and single-cell RNA-seq data, there is a growing need for approaches tha
152 n the S. lycopersicoides genome sequence and RNA-Seq data, two of the eight genes emerged as the stro
153 on extensive simulations and case studies of RNA-Seq data, we show that NBAMSeq offers improved perfo
154                            Using single-cell RNA-seq data, we showed that the core regulatory modules
155 ce of ssNPA on liver development single-cell RNA-seq data, where the correct cell timing is recovered
156 ion of full-length transcripts in short-read RNA-Seq data, which encourages the development of method
157 nalysis of large collections of CLIP-seq and RNA-seq data.
158 ection and quantification results from small RNA-seq data.
159 malization method, labeled MIXnorm, for FFPE RNA-seq data.
160 tic, germline and artifact indels from tumor RNA-Seq data.
161 oped for differential expression analysis of RNA-seq data.
162  5p and 3p arms based on user-provided small RNA-seq data.
163 ta using standard methods developed for bulk RNA-seq data.
164 ession transformations to robustly decompose RNA-seq data.
165 imensional data with small sample sizes like RNA-seq data.
166  the levels of gene expression inferred from RNA-seq data; (v) validation studies using qRT-PCR were
167                              RNA-sequencing (RNA-seq) data enable the quantification of complex trans
168 the p53 pathway, we analyzed RNA sequencing (RNA-seq) data from colorectal cancer cell lines (HCT116,
169         Previous analysis of RNA sequencing (RNA-seq) data from human naive pluripotent stem cells re
170  especially with single-cell RNA sequencing (RNA-seq) data.
171 ans and mice and for a microdissected tubule RNA-seq dataset from rat.
172   Additionally, we scrutinized a large human RNA-Seq dataset of aortic tissue to assess the co-expres
173                         We compared our rice RNA-seq dataset with a nodule transcriptome dataset in M
174 e structures (NLS) in rice and compared rice RNA-seq dataset with a nodule transcriptome dataset in M
175                  On the ATAC-seq dataset and RNA-seq dataset, ClusterATAC has achieved excellent perf
176 ets), an individual microarray study, and an RNA-Seq dataset, using gene ratios instead of gene expre
177  Rlogreg) were compared for simulated and an RNA-seq dataset.
178 s were performed for five kidney single-cell RNA-seq datasets from humans and mice and for a microdis
179 ) datasets and technical metadata along with RNA-seq datasets from other studies to understand factor
180                         The analyses of bulk RNA-seq datasets of the melanoma samples identify and va
181                                    Zebrafish RNA-seq datasets show a preponderance of 3' alternative
182 putation tasks (within and across microarray/RNA-seq datasets) establishes that SampleLASSO is the mo
183 tive splicing in human and mouse single-cell RNA-seq datasets, and model them with a probabilistic si
184  control brain and stem cell gene expression RNA-seq datasets, to identify gene network regulatory mo
185 -specific genes in both bulk and single cell RNA-seq datasets, where it also improves resolution of c
186 per we develop methods to add signal to real RNA-seq datasets.
187 nes are complete and only integrate multiple RNA-seq datasets.
188 hese OCRs using ChIP-seq, Bisulfite-seq, and RNA-seq datasets.
189 paring various factor analysis techniques on RNA-seq datasets.
190 brain repositories using (1) RNA sequencing (RNA-seq) datasets and (2) DNA samples extracted from AD
191 lated expression solely from RNA-sequencing (RNA-seq) datasets.
192                                              RNA-seq demonstrated that even in a healthy CNS, astrocy
193 mission at the cone pedicle, we performed an RNA-seq differential expression analysis between cone-sp
194  provide a framework for power estimation of RNA-Seq differential expression under complex experiment
195 this article, we present a novel single-cell RNA-seq drop-out correction (scDoc) method, imputing dro
196                    Droplet-based single-cell RNA-seq (dscRNA-seq) data are being generated at an unpr
197                              RNA-sequencing (RNA-seq) enables global identification of RNA-editing si
198 ed by applying deconvolution methods to bulk RNA-Seq estimates.
199                       ChIP-seq, ATAC-seq and RNA-seq experiments reveal that CASZ1 directly up-regula
200 ression files from both bulk and single-cell RNA-Seq experiments, supporting simultaneous queries on
201 ngle cells from TF/pathway perturbation bulk RNA-seq experiments.
202                                              RNA-Seq expression analysis currently relies primarily u
203                              Comparison with RNA-seq expression data reveals a strong overlap between
204                               Thus, clinical RNA-Seq extends molecular diagnostics of rare genodermat
205 ive reverse-transcriptase PCR (qRT-PCR), and RNA-Seq for PD-1 expression.
206 and humans at single-cell resolution: RAISIN RNA-seq for profiling intact nuclei with ribosome-bound
207                                  Single cell RNA-seq from 66 studies shows significant overlap betwee
208 ve therapeutic targets, yet low consensus of RNA-Seq fusion prediction algorithms makes therapeutic p
209                           Through integrated RNA-seq, genome-wide ChIP-seq, and CUT&RUN association p
210                                  Single-cell RNA-seq has been established as a reliable and accessibl
211                                        While RNA-seq has enabled comprehensive quantification of alte
212 echnologies, gene expression profiling using RNA-seq has increased the scope of sequencing experiment
213                                     However, RNA-seq has technical features that incumbent tests (e.g
214    Transcriptome analysis by RNA sequencing (RNA-seq) has become an indispensable research tool in mo
215           High-throughput sequencing of RNA (RNA-seq) has expedited the exploration of these regulato
216                     Compared to conventional RNA-Seq, hsRNA-Seq increased reads mapping to the Bacter
217                                              RNA-seq identified marked differences among NM, TC-TAM,
218                              RNA sequencing (RNA-seq) identified opsin candidates in both species, in
219         Flow cytometry and sorted-blood-cell RNA-seq in additional patients were used to validate the
220 ory CD4(+) T cell activation with high-depth RNA-seq in healthy individuals.
221                                              RNA-Seq indicated distinct transcriptional responses: ni
222                                              RNA-seq indicated that among the Wnt ligands with high e
223                              RNA sequencing (RNA-seq) is a powerful technology for studying human tra
224 need due to artifacts generated in PCR-based RNA-Seq library preparation and the lack of normal RNA-S
225 a against a customized protein database from RNA-Seq may produce a subset of alternatively spliced pr
226                                    This lets RNA-seq methods developers assess their procedures in no
227                             By using Tn-Seq, RNA-Seq, microarray and proteomics datasets from two hum
228 with various state-of-the-art microarray and RNA-seq networks was also performed, however, none outpe
229                                        Using RNA-Seq, no significant upregulation of any Pgp was dete
230 oblastoma, which was verified in single-cell RNA-seq of human glioblastoma samples.
231                          Hence, we performed RNA-Seq of leaf infected with or without DB to understan
232 mmunoprecipitation and laser-microdissection RNA-seq of leaf primordial margins to identify gene targ
233                                  Single-cell RNA-seq of microglia after acute systemic administration
234 d single human muscle fibers and single cell RNA-seq of mononuclear cells from human vastus lateralis
235 scriptional programs of hypoxic ECs by using RNA-Seq of primary cultured human umbilical vein ECs exp
236 sion patterns of skeletal muscle cells using RNA-seq of subtype-pooled single human muscle fibers and
237                                              RNA-seq of the ventral hippocampus (vHpc) highlights tha
238       Performing single-cell RNA sequencing (RNA-seq) of 179,632 cells across 23 teratomas from 4 cel
239                     Transcriptomic analysis (RNA-seq) of tomato demonstrated that biochar had a primi
240   In this study, we performed single-nucleus RNA-Seq on the adult mouse SV in conjunction with sample
241 ne expression analysis using RNA sequencing (RNA-seq) on prenatal (N = 33; 16 smoking-exposed) as wel
242 and able to run on signatures generated from RNA-Seq or ATAC-Seq data.
243 o use these three metrics to select sensible RNA-seq pipelines for the improved accuracy, precision,
244 ocused on the impact of the joint effects of RNA-seq pipelines on gene expression estimation as well
245                                  We detected RNA-seq profiles in 96 of 100 of samples (96%), with 412
246       Sixteen tape strips were collected for RNA-seq profiling from 19 infants/toddlers (<5 years old
247 n cells within human lung tumors, we perform RNA-seq profiling of flow-sorted malignant cells, endoth
248                                        Using RNA-seq profiling of the intima of lesions, here we iden
249                                              RNA-Seq profiling shows differential expression of many
250                                              RNA-seq profiling was done on leaf samples collected at
251 3 commonly used scRNA-seq and single-nucleus RNA-seq protocols applied to a heterogeneous reference s
252 nt approaches to single-cell RNA sequencing (RNA-seq) provide only limited information about the dyna
253 g or truncating default annotations based on RNA-Seq read evidence and (ii) filter putative miRNA tar
254 cal assembly-based algorithm that integrates RNA-seq read support with extensive annotation for candi
255 y of expressed non-coding RNAs and UTRs from RNA-seq reads mapped to a reference genome.
256                     Cost-effective bacterial RNA-seq requires efficient physical removal of ribosomal
257 inference has radically enhanced single-cell RNA-seq research by enabling the study of dynamic change
258                                              RNA-Seq results suggested that the metastatic subclones
259 alyses of representative genes validated the RNA-Seq results.
260                                         Deep RNA-seq revealed a significant derepression of the miR-2
261                                              RNA-Seq revealed up-regulation of glycolytic enzymes and
262 d from mouse cell types, we deconvolute bulk RNA-seq samples from 28 GTEx tissues to quantify cellula
263  metadataset composed of 876 RNA-sequencing (RNA-Seq) samples from five publicly available sources re
264 ssential step in the analysis of single cell RNA-seq (scRNA-seq) data to shed light on tissue complex
265 thods for linking microscopy and single-cell RNA-seq (scRNA-seq) have limited scalability.
266                                  Single cell RNA-seq (scRNA-seq) is a powerful tool to discover cellu
267 ion-based approach that utilizes single-cell RNA-seq (scRNA-seq) or single-nucleus RNA-seq (snRNA-seq
268                         Although single-cell RNA-Seq (scRNA-Seq) profiles RNA from cells dissociated
269               Recent advances in single-cell RNA-seq (scRNA-seq) revolutionized cell type-specific ge
270                 The emergence of single-cell RNA-seq (scRNA-seq) technology has made it possible to m
271                    However, compared to bulk RNA-seq, scRNA-seq data are much noisier due to high tec
272 el molecules (UBXN4, MFSD12, and ACTR6) from RNA-seq served as potential prognostic markers for lung
273 kinds of transcriptomic data, including bulk RNA-seq, single-cell RNA-seq and spatial transcriptomic
274 e-cell RNA-seq (scRNA-seq) or single-nucleus RNA-seq (snRNA-seq) data to generate a reference express
275 issociated from fresh tumors, single-nucleus RNA-Seq (snRNA-Seq) is needed to profile frozen or hard-
276                                              RNA-seq studies found that chronic iAs drives the transi
277                                              RNA-Seq suggested periostin as a potential key factor fo
278                                              RNA-seq tape strip profiling detected distinct immune an
279                                        Using RNA-Seq technology, we provide evidence that the loss of
280 ent (TE) RNA expression, such as RT-qPCR and RNA-seq, that do not distinguish between TEs expressed f
281   Using single-cell and bulk RNA sequencing (RNA-seq), the authors compared DMD and control hiPSC-der
282             As determined by RNA sequencing (RNA-Seq), this low amount of IgHC sufficed to initiate P
283 We tested the recommendation system using an RNA-seq time course dataset from differentiation of embr
284                             We used Illumina RNA-Seq to analyse cDNA libraries for differential expre
285 ipicephalus microplus transcriptome, we used RNA-seq to carry out a study of expression in (i) embryo
286  by a transcriptomic analysis using unbiased RNA-Seq to identify concomitant changes in the liver tra
287 3 IAV- and IBV-activating proteases, we used RNA-Seq to investigate the protease repertoire of murine
288 e, we use time-lapse imaging and single cell RNA-seq to measure activation trajectories and rates in
289         Here we used multiplexed single-cell RNA-seq to profile 198 cancer cell lines from 22 cancer
290                      Here we use single cell RNA-seq to show that murine IFE differentiation is best
291        In this study, we applied single-cell RNA-seq to the 16-cell stage of the Ciona embryo, a mari
292 global methodologies (ATAC-seq, ChIP-seq and RNA-seq) to assess the effect of GCN5 loss-of-function o
293  to decipher transcriptome changes under DI, RNA-seq was performed in C-76 and Val-C.
294 eated with LPS at different time points, and RNA-seq was performed on microglia and cerebral endothel
295 hich are challenging to be investigated with RNA-Seq, we accurately defined boundaries of lowly expre
296                                        Using RNA-seq, we identify B. thetaiotaomicron genes that were
297                            Here, by means of RNA-Seq, we monitored the early steps of biofilm product
298  of large curated datasets from human cancer RNA-Seq, where we identify novel putative biomarker gene
299                       Cross referencing bulk RNA-seq with single-cell RNA-seq data revealed the CNTF
300 -transcriptome sequencing by RNA sequencing (RNA-Seq), with appropriate bioinformatics, provides a ro

 
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