| Literature DB >> 27652094 |
John W Sessions1, Craig S Skousen2, Kevin D Price2, Brad W Hanks1, Sandra Hope2, Jonathan K Alder3, Brian D Jensen1.
Abstract
BACKGROUND: CRISPR-Cas9 genome editing and labeling has emerged as an important tool in biologic research, particularly in regards to potential transgenic and gene therapy applications. Delivery of CRISPR-Cas9 plasmids to target cells is typically done by non-viral methods (chemical, physical, and/or electrical), which are limited by low transfection efficiencies or with viral vectors, which are limited by safety and restricted volume size. In this work, a non-viral transfection technology, named lance array nanoinjection (LAN), utilizes a microfabricated silicon chip to physically and electrically deliver genetic material to large numbers of target cells. To demonstrate its utility, we used the CRISPR-Cas9 system to edit the genome of isogenic cells. Two variables related to the LAN process were tested which include the magnitude of current used during plasmid attraction to the silicon lance array (1.5, 4.5, or 6.0 mA) and the number of times cells were injected (one or three times).Entities:
Keywords: CRISPR-Cas9; Current control; Gene knock-out; Lance array nanoinjection; Non-viral transfection; Serial injection
Year: 2016 PMID: 27652094 PMCID: PMC5017990 DOI: 10.1186/s40064-016-3037-0
Source DB: PubMed Journal: Springerplus ISSN: 2193-1801
Fig. 1Isometric projection of silicon etched lance array taken by scanning electron microscope. Lances measure 8–10 µm in length and 1–2.5 µm in diameter. Spacing of lances from center-to-center measure 10 µm in both planar directions in a grid of 2000 by 2000 lances per chip
Fig. 2Diagram of the LAN set-up. On the left, the four phases of the LAN process in terms of electrical parameters and physical events are described. Illustration of the connection of the stepper motor to the orthoplanar spring is shown on the right. With the lance array pointed downward, during the injection process, the lances are inserted into cultured cells secured on the cell culture platform
Fig. 3Flow cytometry analysis to determine gene expression changes. Histograms of raw data were divided to determine the number of GFP negative (left side) and GFP positive (right side) cells on the plot for each sample. The number of cells expressing GFP did not decrease in control samples (a–d). Side-by-side, experimental samples exhibited a significant increase in GFP negative cells when injected three times (LANx3) compared to cells injected once (LANx1) in 1.5 mA injections (e, f), 4.5 mA injections (g, h), and 6.0 mA injections (i, j). Compare to data in Table 1 and Fig. 4
LAN Statistical summary of the sample types and associated GFP KO rates
| Sample type | Sample size (n) | Mean GFP KO percent (%) | Median GFP KO percent (%) |
|---|---|---|---|
| NTC | 21 | 5.27 | 5.37 |
| NC | 26 | 3.92 | 3.62 |
| BC | 18 | 5.96 | 5.37 |
| DC | 23 | 4.04 | 3.82 |
| 1.5 mA, x1 | 16 | 6.92 | 6.11 |
| 4.5 mA, x1 | 8 | 21.63 | 17.37 |
| 6.0 mA, x1 | 16 | 22.65 | 8.45 |
| 1.5 mA, x3 | 20 | 66.79 | 72.78 |
| 4.5 mA, x3 | 27 | 79.56 | 93.77 |
| 6.0 mA, x3 | 20 | 70.01 | 70.32 |
Data collected from flow cytometry and analyzed in JMP represents mean and median GFP KO rates for the respective sample types. Percentage of cells successfully transfected is calculated as the number of living and GFP negative cells divided by the number of living cells in each sample
Fig. 4Lance array nanoinjection delivers CRISPR DNA for gene expression knock out. The percentage of GFP negative cells within the viable population is plotted for each experimental group (mean and SEM). Controls include non-treated control (NTC), DNA background control (BC), negative electrical exposure control (NC), and DNA diffusion control (DC). Fully injected samples include cells injected once or three times with 1.5, 4.5, or 6.0 mA as the current on the LAN for release of DNA into the cells. Statistically significant relationships are noted in Tables 2 and 3
One-sided T test results from comparisons of multiple (x3) versus single (x1) injected samples
| Multiple injections (1) versus single injections (2) |
| Difference in mean GFP KO (1–2) (%) |
|---|---|---|
| 1.5 mA, x3 versus 1.5 mA, x1 | <0.0001 | 59.87 |
| 4.5 mA, x3 versus 4.5 mA, x1 | <0.0001 | 57.93 |
| 6.0 mA, x3 versus 6.0 mA, x1 | <0.0001 | 47.36 |
Represented data was initially screened in JMP using ANOVA test to determine presence of statistically significance relationships followed by one-sided t test (α = 0.05) evaluation of specific comparisons. Default minimum p value reported is 0.0001. All represented relationships are statistically different
One-sided T test results from intra-group comparisons (by number of times injected)
| Single (x1) injected comparisons |
| Multiple (x3) injected comparisons |
|
|---|---|---|---|
| 1.5 mA, x1 versus 4.5 mA, x1 | 0.0684 | 1.5 mA, x3 versus 4.5 mA, x3 | 0.0985 |
| 1.5 mA, x1 versus 6.0 mA, x1 | 0.0093 | 1.5 mA, x3 versus 6.0 mA, x3 | 0.3454 |
| 4.5 mA, x1 versus 6.0 mA, x1 | 0.4621 | 4.5 mA, x3 versus 6.0 mA, x3 | 0.8895 |
Represented data was initially screened in JMP using ANOVA test to determine presence of statistically significance relationships followed by one-sided t test (α = 0.05) evaluation of specific comparisons. Default minimum p value reported is 0.0001
Only one statistically significant relationship was identified between the 1.5 mA, x1 and 6.0 mA, x1