Literature DB >> 29950862

Impact of RNA integrity and blood sample storage conditions on the gene expression analysis.

Yanting Shen1,2, Rui Li1, Fei Tian1, Zhenzhu Chen1, Na Lu2, Yunfei Bai2, Qinyu Ge2, Zuhong Lu1,2.   

Abstract

BACKGROUND: The reliability of RNA sequencing (RNA-seq) output is affected by the quality of RNAs, which is in turn dependent on the quality of samples. Therefore, the purposes of this study were to reconsider the threshold of the RNA integrity number (RIN) and propose a simple and efficient storage scheme of blood samples for RNA-seq. PATIENTS AND METHODS: The RNAs were extracted from blood samples that were stored at different conditions and used for sequencing. The bioinformatic analyses were performed to evaluate the impact of RNA integrity and blood sample storage conditions on the gene expression analysis.
RESULTS: Our outcomes showed that the samples with RIN values more than 5.3 scarcely affected the quantitative results of RNA-seq, and the influence of inherent cellular physiological processes on RNA-seq output could be negligible.
CONCLUSION: The blood samples stored at 4°C within 7 days with RIN values more than 5.3 were available for RNA-seq.

Entities:  

Keywords:  NGS; RIN; RNA; blood; integrity; sequencing

Year:  2018        PMID: 29950862      PMCID: PMC6016255          DOI: 10.2147/OTT.S158868

Source DB:  PubMed          Journal:  Onco Targets Ther        ISSN: 1178-6930            Impact factor:   4.147


Introduction

Nowadays, cancer is a hot topic in the field of medicine, and is essentially a disease characterized by the abnormal proliferation of cells that is caused by the disorder of genetic or epigenetic functions. In the past, the limitations of genetic detection technologies have prevented our understanding of cancer and the development of targeted therapies. In recent years, with the development of the next-generation sequencing (NGS) technologies, our cognition of cancer has reached a new height. Among these technologies, the analysis of gene expression profiles based on RNA sequencing (RNA-seq) is the most widely used in cancer research.1,2 However, the reliability of its results is affected by the quality of RNAs, which is commonly evaluated by the RNA integrity number (RIN). Focusing on this point, many related studies have been reported to be devoted to setting a threshold of RIN value for RNA-seq.3–7 Yet, the results were not as consistent as expected. The exiting commercial NGS platforms still regard 8 as the threshold, by experience, to determine whether a sample was available, which makes some gene information of the samples with RIN values lower than 8 missing. Based on this, in the present study, we firstly reconsidered the threshold of RIN values for RNA-seq through comparing the RNA-seq output of the samples with RIN values lower than 8 with the samples with RIN values more than 8. The integrity of the RNA is in turn dependent on the quality of samples from which it is extracted. The whole blood, a conventional minimally invasive sample, is becoming highly valued, because it is relatively easily obtained and small volumes can be collected with little harm to people when compared to tissue samples.8,9 In order to make the blood sample available for RNA-seq, how to preserve it effectively before any treatments, should be considered first. Solutions to this dilemma have been proposed previously. Blood samples could be directly stored at −80°C or frozen in liquid nitrogen for a long time,10 but these methods caused blood cell freezing damage, thus affecting the follow-up RNA detection of the blood cells. In recent years, some researchers believed that adding appropriate protective agents to the blood sample before cooling it down could effectively protect the cells in the blood from damage. For example, Ohmomo et al found that after storage at −80°C for a period of time, the quality of the RNA extracted from the peripheral blood mononuclear cells (PBMCs) with RNA protective agent was significantly higher than from the PBMCs without RNA protective agent.11 However, these methods of blood storage are limited by some objective conditions such as storage equipment, reagents, sample collection and the professionalism of interim management personnel. They may be difficult for onerous clinical procedures of for some more remote transporting after sampling. Therefore, a more convenient and effective short-term storage scheme for blood samples needs to be put forward to meet the dual needs of the clinic and research. Commonly, 4°C is used to preserve samples temporarily in a conventional routine. It is not only easier and cheaper for implementation than snap freezing or storage in special additives, but also more beneficial for postponing RNA degradation than at room temperature (25°C). It presents a potential for blood preservation. But, the exact time that the blood samples can be preserved efficiently at 4°C before subsequent manipulations is not clear and the related exploration for the preserved time at 4°C is still scarce. Thus, secondly we have tried to propose a simple and efficient storage scheme for blood samples for RNA-seq through analyzing the impact of storage time at 4°C on the gene expression analysis. Considering that the blood cells are still alive at 4°C, therefore, besides the RNA integrity, the effect of inherent cellular biological processes was also considered in this study.

Patients and methods

Sample preparation and ethics statement

The blood sample was obtained from a healthy donor who provided written informed consent. The study was approved by the Ethics Committee of Zhongda Hospital Affiliated Southeast University (Nanjing, People’s Republic of China) (Approval No: 2012ZDKYSB15.0). All experiments were performed in accordance with relevant guidelines and regulations set out by the ethical committee. The blood sample was divided into 15 parts, equally. Ten samples were used to extract RNA immediately, and then the RNAs were stored at room temperature (25°C) for different times (30 min–24 h). The remaining 5 blood samples were stored at 4°C for 4 hours, 1 day, 3 days, 5 days and 7 days prior to RNA extraction, respectively.

RNA extraction and degradation assessment

The RNA was extracted using TRIZOL reagent (Thermo Fisher Scientific, Waltham, MA, USA) following standard procedures as previously described.12 In all, 200 μL of each blood sample was incubated with 800 μL TRIZOL reagent for 5 min at room temperature, followed by supplementation with 200 μL chloroform. After vigorous mixing and centrifugation at 12,000× g for 15 min at 4°C, the upper layer was transferred to a new tube. An aliquot of 500 μL isopropanol was added and the resulting mixture was incubated for 10 min at room temperature, followed by centrifugation at 12,000× g for 15 min at 4°C to pellet RNA. The pellet was washed with 1 mL 75% ethanol and air-dried for 5 min. RNA was dissolved in 20 μL RNase-free water. Then, the RNA degradation was assessed using the Agilent 2100 Bioanalyzer and accompanying software, and the RIN values were provided to evaluate the integrity of RNA.

Poly-A-enriched RNA sequencing library preparation and sequencing

Five RNA samples extracted from the blood samples stored at 4°C from 4 hours to 7 days prior to RNA extraction, and 4 of 10 RNA samples extracted immediately, with the RIN values spanning the entire scale of RNA quality of the samples stored at 4°C, were selected for sequencing. The poly-A enriched RNA-seq libraries were prepared according to a previously published protocol, using 0.5 μg of total RNA per library in all instances.13 Each sample constructed two libraries. All of the libraries were multiplexed and sequenced on 1 lane of an Illumina X10 using standard protocols and reagents.

Bioinformatic analysis

The raw reads were filtered by SOAPnuke (version 1.0.1), and then were mapped to the human (hg19) genomes provided by Illumina iGenomes (downloaded from cufflinks.cbcb.umd.edu/igenomes.html) with Tophat2 (version 2.0.7) calling Bowtie2 (version 2.1.0), using the default settings. The alignment and differentially expression gene (DEG) analysis were performed with Cufflinks (version 2.0.2).14 The DEGs with q-value less than 0.05 and a fold change greater than 2-fold were regarded as significantly altered. Gene body coverage was calculated by RSeQC (version 2.6.1). For functional analyses, Gene Ontology (GO) analysis was carried out with the protein annotation through evolutionary relationship (PANTHER) classification system (http://www.pantherdb.org/).15 The statistical overrepresentation test and enrichment test were performed. The former was based conceptually on the simple binomial test and used to determine whether a particular class (eg, a GO biological process or the PANTHER pathway) of genes was overrepresented or underrepresented. The latter was based on the Mann–Whitney test and used to determine whether any ontology class or pathway had numeric values that were non-randomly distributed with respect to the entire list of values.

Data analysis

All of data were analysed with MATLAB® (version 2010b). The fragments per kilo base transcript per million (FPKM) values were logarithmically transformed (to base 10). The mean of FPKM was compared with Student’s t-test or 1-way ANOVA. The distribution plot was provided to visualize the differences between samples. Principal components analysis (PCA), cluster analysis and correlation analysis were performed to analyze the similarity of the samples. For PCA, the princomp function was used. The number of principal components was determined according to the cumulative contribution (85%), and the loading coefficients were used to evaluate the ability of each sample’s contribution to affect the overall variance of the data. For cluster analysis, we used a hierarchical approach with the average linkage method. Distances between samples were measured as Euclidean distance. Cophenetic coefficient was calculated to evaluate the effect of clustering, and the inconsistent function was performed to determine the optimal number of categories. For the correlation analysis, Pearson’s correlation coefficient was used to assess the similarity of samples. P-value <0.05 was considered significant.

Results

General information of sequencing data

Fifteen aliquots of blood samples were obtained from 1 health donor and divided into 2 parts. Five samples were stored at 4°C for 4 hours, 1 day, 3 days, 5 days and 7 days prior to RNA extraction. Surprisingly, time to RNA extraction seemed to contribute little to the RNA quality, with RIN=7.0 at 4 hours and 5.5 at 7 days. The remaining 10 samples were used to extract RNAs immediately after blood collection and then the RNAs were stored at room temperature (25°C) for different time periods to obtain the different degree, degraded RNAs. Four of them whose RIN values could be matched to the samples stored at 4°C were chosen for subsequent steps. We used these 9 samples to generate 18 poly-A-enriched RNA-seq libraries using a standard protocol (each sample constructed 2 libraries). Following sequencing and alignment, the samples that had fewer than 400,000 reads were excluded. Eventually, 13 sequencing data were involved in this study and we were able to get an average of 56,059,135 raw reads per sample, with 23,264,042 averaged mapped reads. The general sequencing information is given in Table S1. In the meantime, the library replicates to test for reproducibility yielded comparable results (r=0.815–0.869, P<0.001, Figure 1), indicating that there was no obvious data distortion caused by differences inherent to cDNA construction protocols.
Figure 1

Reproducibility of library replicates.

Notes: (A) The correlation between Sample R1-1 and Sample R1-2 (r=0.819, P<0.001). (B) The correlation between Sample R2-1 and Sample R2-2 (r=0.821, P<0.001). (C) The correlation between Sample Q4-1 and Sample Q4-2 (r=0.815, P<0.001). (D) The correlation between Sample Q5-1 and Sample Q5-2 (r=0.869, P<0.001). “R” represents the samples that were used to extract RNA immediately, and then the RNAs were stored at room temperature (25°C) for different times (30 min–24 h); “Q” represents the samples that were stored at 4°C for 4 hours, 1 day, 3 days, 5 days and 7 days prior to RNA extraction, respectively. “R1-1” and “R1-2” were the 2 replicates of samples at 1 time point; the same with “R2-1” and “R2-2”, “Q4-1” and “Q4-2”, and “Q5-1” and “Q5-2”.

Abbreviation: FPKM, fragments per kilo base transcript per million.

The impact of RNA integrity on RNA-seq output

Four of 10 RNAs that were extracted immediately after blood collection and then stored at room temperature (25°C) for different time periods were selected to analyze the influence of RNA integrity on RNA-seq output. Their RIN values were 9.0, 7.0, 6.3 and 5.3, respectively, which spanned the entire scale of RIN values of the RNAs extracted from the samples stored at 4°C, for 4 hours to 7 days, prior to RNA extraction. Our outcomes showed that the RIN values affected gene body coverage, the number of clean reads and GC percentage, slightly (Figure 2).
Figure 2

Number of clean reads, GC percentage and gene body coverage of the samples with different RIN values.

Notes: (A) The number of clean reads and GC percentage of the samples with different RIN values. Percentage of clean reads: Sample R (RIN 9.0) was 98.5%; Sample R0 (RIN 7.3) was 96.0%; Sample R1 (RIN 6.3) was 96.0% (average percentage of clean reads of Sample R1-1 and R1-2); Sample R2 (RIN 5.3) was 96.0% (average percentage of clean reads of Sample R2-1 and R2-2); GC percentage: Sample R (RIN 9.0) was 53.9%; Sample R0 (RIN 7.3) was 56.5%; Sample R1 (RIN 6.3) was 55.8% (average GC percentage of Sample R1-1 and R1-2); Sample R2 (RIN 5.3) was 56.0% (average GC percentage of Sample R2-1 and R2-2). (B) Gene body coverage of samples with different RIN values. “R” represents the samples that were used to extract RNA immediately, and then the RNAs were stored at room temperature (25°C) for different times (30 min–24 h).

Abbreviation: RIN, RNA integrity number.

Moreover, we also plotted the distribution of FPKM values to analyze the effect of RNA degradation on the library complexity. The results showed that relative to RIN=9.0, the samples whose RIN values were 7.3, 6.3 and 5.3 have lower mean FPKM, respectively [Sample R (RIN 9.0) vs Sample R0 (RIN 7.3): 0.98±0.60 vs 0.57±0.58, t=42.90, P<0.001; Sample R (RIN 9.0) vs Sample R1 (RIN 6.3): 0.98±0.60 vs 0.46±0.60, t=53.06, P<0.001; Sample R (RIN 9.0) vs Sample R2 (RIN 5.3): 0.98±0.60 vs 0.33±0.67, t=62.26, P<0.001; Sample R (RIN 9.0) vs Sample R0 (RIN 7.3) vs Sample R1 (RIN 6.3) vs Sample R2 (RIN 5.3): 0.98±0.60 vs 0.57±0.58 vs 0.46±0.60 vs 0.33±0.67, F=1,564.16, P<0.001, Figure 3], and there was a significant negative association between the RIN values with the mean FPKM values (r=0.98, P=0.019). As previous studies reported, these results indicated that the library complexity could reflect the quality of RNA samples. Yet, it is still unclear to what extent this property could affect the gene expression levels. Therefore, we subsequently performed the correlation analysis based on the gene expression data (Figure 4A, Table S2). It showed that all of the correlation coefficients between these samples were more than 0.8, presenting strong correlations and indicating that the samples with RIN values more than 5.3 had little effect on the quantitative results of the RNA-seq.
Figure 3

Changes in library complexity.

Notes: Dashed lines indicate mean FPKM of the samples with different RIN values. (A) RIN=9.0 and RIN=5.3; (B) RIN=9.0 and RIN=6.3; (C) RIN=9.0 and RIN=7.3; (D) density plots of FPKM values among all 4 individuals with RIN values of 9.0, 7.3, 6.3 and 5.3, respectively. “R” represents the samples that were used to extract RNA immediately, and then the RNAs were stored at room temperature (25°C) for different times (30 min–24 h).

Abbreviations: FPKM, fragments per kilo base transcript per million; RIN, RNA integrity number.

Figure 4

Impact of RNA integrity and blood sample storage conditions on the gene expression profiles.

Notes: Sample R, Sample R0, Sample R1 and Sample R2 were the RNA samples that were extracted immediately after blood collection and then stored at room temperature (25°C) for different time periods. Sample Q1, Sample Q2, Sample Q3, Sample Q4 and Sample Q5 were the RNA samples extracted from the blood samples that were stored at 4°C for 4 hours, 1 day, 3 days, 5 days and 7 days. (A) Correlation matrix based on the Gene Expression Data; (B) Loading Factors Plot of PCA: 2-dimensional PCA plot of genome-wide expression profiles showing PC1 and PC2. The first axis (PC1) accounts for 85% of the overall variance of the data, the second axis accounts for 11% (PC2). At the PC1, the loading coefficients were 0.12 for Sample R (RIN 9.0), 0.35 for Sample R0 (RIN 7.3), 0.35 for Sample R1 (RIN 6.3), 0.36 for Sample R2 (RIN 6.3), 0.33 for Sample Q1 (RIN 7.0), 0.35 for Sample Q2 (RIN 6.8), 0.35 for Sample Q3 (RIN 6.3), 0.36 for Sample Q4 (RIN 5.5) and 0.36 for Sample Q5 (RIN 5.5). (C) Heatmap of cluster analysis. “R” represents the samples that were used to extract RNA immediately, and then the RNAs were stored at room temperature (25°C) for different times (30 min–24 h). “Q” represents the samples that were stored at 4°C for 4 hours, 1 day, 3 days, 5 days and 7 days prior to RNA extraction, respectively.

Abbreviations: PCA, principal components analysis; PC1, principal components 1; PC2, principal components 2; RIN, RNA integrity number.

The impact of blood sample storage conditions on RNA-seq output

When the blood samples were stored at 4°C, the cells were still alive and underwent various physiological processes, such as apoptosis and internal RNA degradation, which might affect the gene expression profiles. Especially for disease-related studies, these changed genes could make the output distorted and confused. Therefore, besides RNA degradation, the inherent cellular physiological processes should also be considered when evaluating how long the blood samples can be preserved efficiently at 4°C for RNA-seq. We analyzed the RNA-seq data of the RNAs extracted from the blood samples placed at 4°C for 4 hours to 7 days, and the RIN-matched RNAs extracted immediately after blood collection, together, to address the question of how significant the influence of blood sample storage conditions are on the gene expression analysis. To gain insights into the RNA-seq output, different bioinformatic methods were applied. The multivariate data analysis method, PCA, was used to visualize similarities or dissimilarities between gene expression profiles of cellular physiological biological processes and degradation stages in a 2-dimensional plot. PCA is a linear projection method that allows visualization of high-dimensional data in a lower dimensional space. The results of the PCA analysis for the normalized RNA-seq dataset are shown in Figure 4B. The first principal component (PC1) accounted for 85% of the overall variance of the data. It could be used to represent substantially all of the initial information, and at this principal component, each sample had parallel contribution, clearly presenting similarity to each other. Furthermore, we applied a clustering approach using an agglomerative hierarchical clustering algorithm (Figure 4C). The data showed that the Cophenetic correlation coefficient was 0.74, and according to inconsistent analysis, all of the samples finally clustered together as one category. To demonstrate this, the pairwise similarity metrics between samples was calculated using Pearson’s correlation coefficient. As shown in Figure 4A, we observe that all of the correlation coefficients between these samples were more than 0.7, presenting strong correlations (Table S2). Moreover, what is noteworthy is that the sequencing output of samples with the same RIN values, but stored for different time periods before RNA extraction, was very similar [Pearson’s correlation coefficient of Sample Q4 (RIN 5.5) and Sample Q5 (RIN 5.5) was 0.820 (P<0.001); Pearson’s correlation coefficient of Sample R0 (RIN 7.3) and Sample Q1 (RIN 7.0) was 0.819 (P<0.001); Pearson’s correlation coefficient of Sample Q3 (RIN 6.3) and Sample R1 (RIN 6.3) was 0.806 (P<0.001); Pearson’s correlation coefficient of Sample R2 (RIN 5.3) and Sample Q4 (RIN 5.5) was 0.910 (P<0.001)], demonstrating that the influence of inherent cellular physiological processes on RNA-seq output could be negligible.

Analysis of differentially expressed genes

While there was no obvious differences observed between the samples stored at 4°C within 7 days, we still wanted to analyze the statistical DEGs that would have to be carefully considered in future studies, especially for the disease-related studies, because they would be influenced by the RNA integrity or inherent cellular physiological biological processes rather than reflecting pathological biological differences. As shown in Table 1, compared to the samples stored at 4°C for 4 hours before RNA extraction, we observed only 27 upregulated DEGs in the samples stored for 5 days, while no DEG was found in the samples stored at 4°C for 1 day, 3 days or 7 days. To functionally characterize these DEGs, we carried out GO analysis to identify groups of genes with similar functions. The results of the overrepresentation test showed that 5 DEGs, NAP1L1, S100A12, ATM, ATRX and AKAP9, were enriched in the DNA metabolic process (GO: 0006259, fold enrichment was 10.98, P-value was 0.0173), which played a role in the process of DNA replication or RNA transcription.
Table 1

Different expression genes (log2 FC>|2|)

TermsDEGsUp-DEGsDown-DEGs
1d000
3d000
5d27270
7d000

Abbreviation: DEGs, differentially expression genes.

Discussion

In order to determine the time that the blood samples could be stored at 4°C for RNA-seq, 2 factors should be considered carefully. The first one is the integrity of RNA. RNA is an extremely labile molecule that is prone to damage from either intrinsic or external factors.16 A previous study showed that it degraded fast when the blood cells were stored at room temperature (25°C). Over 84 hours, RIN value decreased from 9 to 3.8.3 Based on this, we changed to 4°C, a lower temperature, to preserve the blood samples, to prolong the degradation of RNA. Expectedly, the results showed the RIN value was still 5.5 at the seventh day, suggesting that 4°C was more appropriate to store blood samples than room temperature (25°C). Subsequently, we selected 4 of 10 RNAs that were extracted from blood samples immediately after collection, and stored at room temperature (25°C) for different time periods, to analyze the influence of the RNA integrity on RNA-seq output. The results demonstrated that although it seemed that the higher quality RNA had higher sequencing library complexity, the quality of sequencing and gene expression profiling might not be affected, indicating that blood samples with RIN values ranging from 5.3 to 9.0 were available for RNA-seq (Figures 2–4A). This was similar to the results of a previous study,17 which indicated that degraded RNA from tumor samples (RIN >5) could still be used to perform RNA-seq. The second factor was the inherent cellular physiological process. Different bioinformatic methods including PCA, cluster analysis and correlation analysis were applied to address this point. All of their results were closely consistent, suggesting that neither RNA integrity nor inherent cellular biological processes could affect the output of RNA-seq (Figure 4A–C). Moreover, we analyzed the statistical DEGs that would have to be carefully considered in future studies, especially for some disease-related studies, because they might be influenced by the RNA quality or inherent cellular physiological biological processes rather than reflect pathological biological differences. Only 27 upregulated DEGs were found in the samples stored at 4°C for 5 days, demonstrating that preservation of blood samples at 4°C seemed to have a significant influence only on a fairly small number of genes (27/37,000 genes) but not a global effect of RNA degradation on gene expression. Five DEGs were identified to be enriched in the DNA metabolic process (GO: 0006259, fold enrichment was 10.98, P-value was 0.0173), but no relation to known RNA degradation processes or pathways that were involved in some diseases could be found. The absence of these findings clearly showed that changes in the expression profiles were generated at the RNA level and not by de novo transcription or some inherent cellular physiological processes, as expected from the experimental design. In addition, these DEGs were not found in the noteworthy pathways that were initiated during apoptosis or other pathological processes, indicating that in future studies, especially for disease-related studies, these DEGs should not confuse and distort the results. In conclusion, all of the results were closely consistent, pointing out that neither RNA integrity nor inherent cellular biological processes could affect the output of RNA-seq, and the blood samples stored at 4°C, within 7 days, with RIN values ranging from 5.3 to 9.0, were safe and available for RNA-seq. In addition, the analysis of DEGs demonstrated that changes in the expression profiles were generated at the RNA level and not by de novo transcription or some inherent cellular physiological processes, as expected from the experimental design. Meanwhile, RNA degradation and cellular biological processes seemed to have a significant influence only on a fairly small number of genes (27/37,000 genes) but not on the global gene expression profiles, indicating that in future studies, the effect of these DEGs on the RNA-seq output could be negligible.

Data sharing statement

Raw RNA-seq reads have been submitted to the NCBI Short Read Archive under accession number SRP091823. Data generated or analyzed during this study are included in this published article and its supplementary information files. General sequencing information Notes: The samples were used to extract RNA immediately after collection and stored at room temperature for different times to obtain the RNAs whose RIN values could be matched to the samples stored at 4°C, and then were chosen for the subsequent steps. The samples were stored at 4°C for 4 hours, 1 day, 3 days, 5 days and 7 days prior to RNA extraction. Abbreviation: RIN, RNA integrity number. Correlation coefficient Abbreviation: RIN, RNA integrity number.
Table S1

General sequencing information

Sample IDRIN valuesRaw readsClean readsMapped reads
1R9.0140091314138029858 (98.5%)98691349 (71.5%)
1R07.33673620635168258 (95.7%)16318072 (46.4%)
1R1-16.37082302867866162 (95.8%)20248585 (29.8%)
1R1-26.34682407045188720 (96.5%)25456871 (56.3%)
1R2-15.38137851879891672 (98.2%)40536056 (50.7%)
1R2-25.34701232044489560 (94.6%)18049383 (40.6%)
2Q1-17.05226892833542190 (64.2%)6020397 (17.9%)
2Q2-16.85138903248389792 (94.1%)13299809 (27.5%)
2Q3-26.34990983844839786(89.8%)9244780 (20.6%)
2Q4-15.55578668647479870 (85.1%)17967837 (37.8%)
2Q4-25.53252756027984948 (86.0%)9635122 (34.4%)
2Q5-15.56706602656807680 (84.7%)16362545 (28.8%)
2Q5-25.53926622433130436 (84.4%)10601740 (32.0%)

Notes:

The samples were used to extract RNA immediately after collection and stored at room temperature for different times to obtain the RNAs whose RIN values could be matched to the samples stored at 4°C, and then were chosen for the subsequent steps.

The samples were stored at 4°C for 4 hours, 1 day, 3 days, 5 days and 7 days prior to RNA extraction.

Abbreviation: RIN, RNA integrity number.

Table S2

Correlation coefficient

Sample R (RIN 9.0)Sample R0 (RIN 7.3)Sample R1 (RIN 6.3)Sample R2 (RIN 5.3)Sample Q1 (RIN 7.0)Sample Q2 (RIN 6.8)Sample Q3 (RIN 6.3)Sample Q4 (RIN 5.5)Sample Q5 (RIN 5.5)
Sample R (RIN 9.0)10.8000.8540.9030.7230.8180.7800.8450.700
Sample R0 (RIN 7.3)0.80010.8100.8540.8190.8850.8590.8720.813
Sample R1 (RIN 6.3)0.8540.81010.9020.7340.8270.8060.8630.722
Sample R2 (RIN 5.3)0.9030.8540.90210.7750.8720.8450.9100.761
Sample Q1 (RIN 7.0)0.7230.8190.7340.77610.8520.8320.8100.814
Sample Q2 (RIN 6.8)0.8180.8850.8270.8720.85210.9030.8990.863
Sample Q3 (RIN 6.3)0.7800.8590.8060.8450.8320.90310.8800.853
Sample Q4 (RIN 5.5)0.8450.8720.8630.9100.8100.8990.88010.820
Sample Q5 (RIN 5.5)0.7000.8130.7220.7610.8140.8630.8530.8201

Abbreviation: RIN, RNA integrity number.

  17 in total

Review 1.  mRNA profiling in forensic genetics I: Possibilities and limitations.

Authors:  Marielle Vennemann; Antje Koppelkamm
Journal:  Forensic Sci Int       Date:  2010-08-17       Impact factor: 2.395

2.  Comparison of relative mRNA quantification models and the impact of RNA integrity in quantitative real-time RT-PCR.

Authors:  Simone Fleige; Vanessa Walf; Silvia Huch; Christian Prgomet; Julia Sehm; Michael W Pfaffl
Journal:  Biotechnol Lett       Date:  2006-08-10       Impact factor: 2.461

Review 3.  RNA integrity and the effect on the real-time qRT-PCR performance.

Authors:  Simone Fleige; Michael W Pfaffl
Journal:  Mol Aspects Med       Date:  2006-02-15

4.  Impact of thawing on RNA integrity and gene expression analysis in fresh frozen tissue.

Authors:  Johan Botling; Karolina Edlund; Ulrika Segersten; Simin Tahmasebpoor; Mats Engström; Magnus Sundström; Per-Uno Malmström; Patrick Micke
Journal:  Diagn Mol Pathol       Date:  2009-03

5.  RNA-seq: an assessment of technical reproducibility and comparison with gene expression arrays.

Authors:  John C Marioni; Christopher E Mason; Shrikant M Mane; Matthew Stephens; Yoav Gilad
Journal:  Genome Res       Date:  2008-06-11       Impact factor: 9.043

6.  Studies on RNA integrity and gene expression in human myocardial tissue, pericardial fluid and blood, and its postmortem stability.

Authors:  Lucas González-Herrera; Aurora Valenzuela; Juan A Marchal; José A Lorente; Enrique Villanueva
Journal:  Forensic Sci Int       Date:  2013-08-15       Impact factor: 2.395

7.  Impact of RNA degradation on gene expression profiling.

Authors:  Lennart Opitz; Gabriela Salinas-Riester; Marian Grade; Klaus Jung; Peter Jo; Georg Emons; B Michael Ghadimi; Tim Beissbarth; Jochen Gaedcke
Journal:  BMC Med Genomics       Date:  2010-08-09       Impact factor: 3.063

Review 8.  Induced gene transcription: implications for biomarkers.

Authors:  C H Sewall; D A Bell; G C Clark; A M Tritscher; D B Tully; J Vanden Heuvel; G W Lucier
Journal:  Clin Chem       Date:  1995-12       Impact factor: 8.327

9.  RNA-seq: impact of RNA degradation on transcript quantification.

Authors:  Irene Gallego Romero; Athma A Pai; Jenny Tung; Yoav Gilad
Journal:  BMC Biol       Date:  2014-05-30       Impact factor: 7.431

10.  Guest editor's introduction for BDQ special issue: 'Advanced Molecular Diagnostics for Biomarker Discovery'.

Authors:  Michael W Pfaffl
Journal:  Biomol Detect Quantif       Date:  2015-10-08
View more
  6 in total

1.  Impact of storage conditions on peripheral leukocytes transcriptome.

Authors:  Yanru Xing; Xi Yang; Haixiao Chen; Sujun Zhu; Jinjin Xu; Yuan Chen; Juan Zeng; Fang Chen; Mark Richard Johnson; Hui Jiang; Wen-Jing Wang
Journal:  Mol Biol Rep       Date:  2021-02-09       Impact factor: 2.316

2.  Multiple freeze-thaw cycles lead to a loss of consistency in poly(A)-enriched RNA sequencing.

Authors:  Benjamin P Kellman; Hratch M Baghdassarian; Tiziano Pramparo; Isaac Shamie; Vahid Gazestani; Arjana Begzati; Shangzhong Li; Srinivasa Nalabolu; Sarah Murray; Linda Lopez; Karen Pierce; Eric Courchesne; Nathan E Lewis
Journal:  BMC Genomics       Date:  2021-01-21       Impact factor: 3.969

3.  At-home blood collection and stabilization in high temperature climates using homeRNA.

Authors:  Lauren G Brown; Amanda J Haack; Dakota S Kennedy; Karen N Adams; Jennifer E Stolarczuk; Meg G Takezawa; Erwin Berthier; Sanitta Thongpang; Fang Yun Lim; Damien Chaussabel; Mathieu Garand; Ashleigh B Theberge
Journal:  Front Digit Health       Date:  2022-08-09

4.  Prediction of Time-Series Transcriptomic Gene Expression Based on Long Short-Term Memory with Empirical Mode Decomposition.

Authors:  Ying Zhou; Erteng Jia; Huajuan Shi; Zhiyu Liu; Yuqi Sheng; Min Pan; Jing Tu; Qinyu Ge; Zuhong Lu
Journal:  Int J Mol Sci       Date:  2022-07-07       Impact factor: 6.208

5.  The impact of pre-freezing storage time and temperature on gene expression of blood collected in EDTA tubes.

Authors:  Serena Martire; Paola Valentino; Fabiana Marnetto; Luca Mirabile; Marco Capobianco; Antonio Bertolotto
Journal:  Mol Biol Rep       Date:  2022-03-12       Impact factor: 2.742

6.  Classification models using circulating neutrophil transcripts can detect unruptured intracranial aneurysm.

Authors:  Kerry E Poppenberg; Vincent M Tutino; Lu Li; Muhammad Waqas; Armond June; Lee Chaves; Kaiyu Jiang; James N Jarvis; Yijun Sun; Kenneth V Snyder; Elad I Levy; Adnan H Siddiqui; John Kolega; Hui Meng
Journal:  J Transl Med       Date:  2020-10-15       Impact factor: 5.531

  6 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.