| Literature DB >> 28545022 |
Jing Wang1, Xue Yang1, Haofeng Chen2, Xuewei Wang1, Xiangyu Wang1, Yi Fang1, Zhenyu Jia3, Jidong Gao1.
Abstract
RNA in formalin-fixed and paraffin-embedded (FFPE) tissues provides large amount of information indicating disease stages, histological tumor types and grades, as well as clinical outcomes. However, Detection of RNA expression levels in formalin-fixed and paraffin-embedded samples is extremely difficult due to poor RNA quality. Here we developed a high-throughput method, Reverse Transcription-Multiple Ligation-dependent Probe Sequencing (RT-MLPSeq), to determine expression levels of multiple transcripts in FFPE samples. By combining Reverse Transcription-Multiple Ligation-dependent Amplification method and next generation sequencing technology, RT-MLPSeq overcomes the limit of probe length in multiplex ligation-dependent probe amplification assay and thus could detect expression levels of transcripts without quantitative limitations. We proved that different RT-MLPSeq probes targeting on the same transcripts have highly consistent results and the starting RNA/cDNA input could be as little as 1 ng. RT-MLPSeq also presented consistent relative RNA levels of selected 13 genes with reverse transcription quantitative PCR. Finally, we demonstrated the application of the new RT-MLPSeq method by measuring the mRNA expression levels of 21 genes which can be used for accurate calculation of the breast cancer recurrence score - an index that has been widely used for managing breast cancer patients.Entities:
Keywords: 21-gene; MLPA; RNA expression; breast cancer; next generation sequencing
Mesh:
Substances:
Year: 2017 PMID: 28545022 PMCID: PMC5542250 DOI: 10.18632/oncotarget.17551
Source DB: PubMed Journal: Oncotarget ISSN: 1949-2553
Figure 1The principle of RT-MLPSeq
First RNA from samples were reverse transcribed into cDNA. Probe pairs targeting on different genes were then hybridized to cDNA and ligated by DNA ligase. After PCR with adaptor primers RT-MLPSeq Libraries were prepared and sequenced. Finally relative RNA expression levels of different genes were determined by the ratio of number of corresponding reads.
Figure 2Comparison of RT-MLPSeq to real-time quantification RCR method
Four house-keeping gene were selected as reference gene as shown in panel (A) (ACTB), panel (B) (GUSB), panel (C) (RPLPO) as well as panel (D) (TFRC). The correlation coefficient were calculated by the default method in GraphPad Prism 5.0 and shown in the lower right of each panel.
Figure 3The performance of RT-MLPSeq on two probes targeting the same transcripts
RNA expression levels of 14 genes from A549 cell line were determined by RT-MLPSeq using two different probe pairs targeting for the same transcripts. All chosen 14 genes showed similar relative levels between the two probe pairs.
Figure 4The performance of RT-MLPSeq on different RNA input from same sample
Different starting RNA input (1 ng, 8ng, 40ng, 200ng and 1ug RNA from the same A549 sample) were reverse-transcribed and then RNA levels of 13 target genes were determined among these 5 assays. Pearson's correlation analysis were calculated to show the impact of RNA input.
Patients information
| Patient | Gender | Age | Tumor type | Clinical stage | Tumor size | IHC |
|---|---|---|---|---|---|---|
| 1 | Female | 58 | Invasive breast carcinoma | pT2N0 | 3.0×2.8×2.0cm | CK5&6(−), E-cadherin(1+), EGFR(−), ER(+,95%), HER2(2+), Ki-67(+,30%), P53(−), PR(+, 60%), TOP2A(2+) |
| 2 | Female | 53 | Invasive breast carcinoma | pT1cN0 | 1.2×1.2×1.0cm | CK5&6(−), E-cadherin(2+), EGFR(−), ER(+, >90%), HER2(1+), Ki-67(+, 25%), PR(+, 10%) |
| 3 | Female | 54 | Invasive breast carcinoma | pT1cN0 | 1.5×1.2×1.2cm | CK5&6(−), E-cadherin(2+), EGFR(−), ER(+80%), HER2(2+), Ki-67(+20-30%), P53(−), PR(+10%), TOP2A(1+) |
| 4 | Female | 47 | Invasive lobular carcinoma | pT1cN0 | 1.4×1.2×1.2cm | CK5&6(−), E-cadherin(−), EGFR(−), ER(+, >95%), HER2(1+), Ki-67(+, 10%), P53(−), PR(+, >95%), TOP2A(1+) |
| 5 | Female | 64 | Invasive breast carcinoma | pT1N0 | 1.8×1.5×1.3cm | CK5&6(−), E-cadherin(1+), EGFR(−), ER(+80%), HER2(1+), Ki-67(+40%), P53(−), PR(+, <10%), TOP2A(2+) |
| 6 | Female | 38 | Invasive breast carcinoma | pT1cN0 | 1.8×1.5×1.3cm | CK5&6(−), E-cadherin(3+), EGFR(−), ER(+, 80%), HER2(1+), Ki-67(20%+), P53(−), PR(+, 80%), TOP2A(10%+) |
| 7 | Female | 38 | Invasive breast cancer with focal DCIS | pT1N0 | 2.2×1.8×1.3cm | CK5&6(−), E-cadherin(3+), EGFR(−), ER(+, >90%), HER2(1+), Ki-67(+5%), P53(−), PR(+, 25%) |
| 8 | Female | 43 | Invasive breast cancer with focal DCIS | pT1bN0 | 1.0×0.5×0.5cm | CK5&6(−), E-cadherin(2+), EGFR(−), ER(+, >90%), HER2(1+), Ki-67(+, 30%), P53(2+), PR(+, 70%), TOP2A(1+) |
| 9 | Female | 63 | Invasive ductal carcinoma | pT1N0 | 1.8×1.3×1.1cm | CK5/6(−), E-cad(2+), EGFR(1+), ER(+90%), HER2(2+), Ki-67(+, 30%), P53(−), PR(+1-10%), Top2A(1+) |
| 10 | Female | 57 | Invasive breast carcinoma | pT1N0 | 1.3×1.0×1.0cm | CK5&6(−), E-cadherin(2+), EGFR(−), ER(80%), HER2(1+), Ki-67(30%), P53(+), PR(80%), TOP2A(1+) |
| 11 | Female | 53 | Invasive breast carcinoma | pT1cN0 | 1.4×1.4×1.2cm | CK5&6(−), E-cadherin(3+), EGFR(−), ER(+, >95%), HER2(−), Ki-67(+, 30%), P53(−), PR(+, 80%), TOP2A(2+) |
To calculate the recurrence score, we converted the relative transcripts expression fold from both RT-MLPSeq method and RT-qPCR method to ΔCt value (−log2) and finally obtained the RS value based on the algorithm presented by Paik, Shak, Tang, et al. in which ΔCt values from real time PCR system were used as input data [3]. As shown in Figure 6, recurrence scores from RT-MLPSeq was highly consistent with RT-qPCR results (R2=0.9309).
Figure 5The RNA expression levels of 16 cancer-associated genes in patient #04 and #05 detected by both RT-MLPSeq and RT-qPCT methods
The RNA levels of 16 genes, including Ki67, STK15, Survivin, CCNB1, MYBL2, GRB7, HER2, MMP11, CTSL2, ER, PGR, BCL2, SCUBE2, GSTM1, CD68, BAG1 in FFPE sections were normalized to the average Ct value of 5 reference genes (ACTB, GAPDH, RPLPO, GUSB, TFRC).
Figure 6Recurrence scores of 11 breast cancer patients calculated by RT-qPCR and RT-MLPSeq methods
RNA from FFPE sections of 11 breast cancer patients were extracted and reverse-transcribed into cDNA. Then cDNA from the same patients were separated to determine the relative expression levels of 21 gene by RT-qPCR and MLPSeq. Recurrence scores were finally calculated according to the algorithm presented by Paik et al.
Figure 7RT-MLPSeq probes design
P5 adaptor primer contained identical sequences of illumina P5 Sequence and 5′ universal adaptors while indexed P7 adaptor primer had reverse-complemental sequences of illumina P7 and 3′ universal adaptor as well as 8Nt index.