| Literature DB >> 33241357 |
John SantaLucia1, Shanmuga Sozhamannan2, Jason D Gans3, Jeffrey W Koehler4, Ricky Soong5, Nancy J Lin6, Gary Xie3, Victoria Olson7, Kristian Roth5, Linda Beck8.
Abstract
Entities:
Mesh:
Year: 2020 PMID: 33241357 PMCID: PMC8370429 DOI: 10.1093/jaoacint/qsaa045
Source DB: PubMed Journal: J AOAC Int ISSN: 1060-3271 Impact factor: 1.913
Figure 1.Availability of whole genome sequences for representative bacteria. Black bar represents the assay design time frame.
Figure 2.Signature sequence identities of the target sequences for inclusivity/exclusivity panel strains (SPADA panels). Perfect (x) refers to a hypothetical assay; BA: Bacillus anthracis, YP: Yersinia pestis, FT: Francisella tularensis; BK-P: Burkholderia pseudomallei, BK-M: Burkholderia mallei, BK-NN: Burkholderia near neighbors. Representative data set depicting the heat map of amplicon percentage identity in various whole genome sequences of bacterial strains used in inclusivity and exclusivity testing of molecular assays. Strains are numbered as columns from 1 up to 24. Each row (indicated by lower case letters) represents a given assay.
Figure 3.(Courtesy: Kristin Jones Maia, DBPAO internal brief). Examples of the timeline for obtaining Ebola reference materials from Africa. A delay in obtaining pathogen reference materials may hamper the discovery of signature erosion and the follow-on development of new or ‘old and improved’ detection assays, thereby delaying an effective assay from reaching the field in a timely manner. ID- Identity, DRC- Democratic Republic of Congo, CRP- Critical Reagents Program, CBEP- Cooperative Biological Engagement Program, USAMRIID- United States Army Medical Research Institute of Infectious Diseases, DoD- Department of Defense, NEJM- New England Journal of Medicine, EBOV- Zaire Ebola Virus.
Figure 4.Traditional vs. modern assay development pipeline. Inc/Exc: Inclusivity/Exclusivity.
Figure 5.Traditional primer design approach. MSA: Multiple sequence alignment. The software tools depicted are only exemplar suggestions and not an endorsement of specific tools. Any other software with an equivalent functionality can also be used for producing similar outputs.
Figure 6.Plot showing the total number of draft and complete bacterial genomes in GenBank and the percentage that are complete as a function of year. These plots were made by parsing the “prokaryotes.txt
Figure 7.Modern Design Paradigm for Pathogen Detection by PCR.
Summary of recommendations for PCR primer design
| Design stage | Item | Recommendation | Reason |
|---|---|---|---|
| Preparation for design | Inclusivity database | Database and literature research on target sequences | Consensus design to conserved regions |
| Inclusivity database | Full-length genomes or genes | Fragments lead to design bias | |
| Exclusivity database | Near-neighbor sequences | Sequences likely to cause a false positive due to sequence relatedness or similar symptoms | |
| Background database | Gather contaminating genomes | Reduce false positives from human genome, human refseq, human microbiome, soil microbes, etc. | |
| Reaction conditions | Gather enzyme, buffer and salts, [NTPs], [Primers, Probes] | Needed for proper physical modeling and design | |
| Software input | Run software | Save all user settings and input, scoring terms and weights | |
| Save input file | Capture all software parameters | Allow for design to be reproduced, capture input for future meta-analysis using A.I. | |
| Run from input file | Software can be run from input file | Allow for design to be reproduced, reduce input errors in subsequent runs | |
| Algorithm | k-mer analysis | Use to find signature regions using inclusivity and exclusivity databases | Find signature regions that are conserved in the inclusivity and not found in exclusivity |
| Sequence alignments | Do not use for finding signature regions | Not applicable to long genomes and to many genomes | |
| Sequence alignments | Align design regions of all members of inclusivity | Use for reality check of consensus region only | |
| Physical chemistry modeling | Target secondary structure, primer hybridization, primer dimers | Naïve 2-state Tm is not sufficient | |
| Heuristic scoring | Scores for non-thermodynamic considerations | Examples: G-quartets, low complexity, amplicon length, amplicon folding, etc. | |
| Specificity scoring | Use thermodynamics-based scanning of primers against genomes | Check if primers are specific (PrimerBLAST, ThermoBLAST, ThermonucleotideBLAST) | |
| Coverage scoring | Determine how well primers cover all members of inclusivity | Determine mismatches and amount bound for all members of inclusivity | |
| Total scoring | Weighted scoring equation | Combine thermodynamic, heuristic, kmer, specificty, and other terms into a total score. | |
| Add positive control | Check for compatibility of singplexes with the control gene | Don’t want control to interfere with desired target(s) | |
| Multiplex primer dimer check | Check for all possible primer dimer interactions | input for multiplex algorithm | |
| Multiplex primer-amplicon check | Compute cross-hybridizations of all primer candidates against all amplicons | Compute cross-hybridizations of all primer candidates against all amplicons | |
| Multiplex primer-background check | Compute false amplicons of all primers against background database | Multiplex algorithm needs to minimize false amplicons to allow even amplification of all targets | |
| Multiplexing |
| Determine optimum combination of singplexes that are mutually compatible with eachother | |
| Experimental validation | Determine performance of single-plexes | Capture single-plex performance metrics | Capture single-plex performance, link to input file information, allow for future A.I. meta-analysis |
| Redesign | Redesign of failed single-plexes | Tools that allow for replacement of poor performing primers | Hold constant primers that work, redesign primers for targets that don’t work |
| Redesign of failed mutliplexes | Tools that allow for replacement of poor performing primers | Hold constant primers that work, redesign primers for targets that don’t work | |
| Multiplexing |
| Determine optimum combination of singplexes that are mutually compatible with eachother | |
| Experimental validation | Determine performance of multiplex | Capture multiplexplex performance metrics | Capture multiplex performance, link to input file information, allow for future A.I. meta-analysis |
| Post-design analysis | Assay stewardship | Tools for analyzing existing assays using new target variants | Ensure that existing assays work on new target variants |
| Final report | Software summary of primer/probe performance | Summary of final design: thermodynamic, heuristic scores, specificity, sequence alignment | |
| Metrology | Analyze input and performance metrics to determine best practices | validate and verify predefined standards for traceability, accuracy, reliability, and precision |
Recommendations for PCR experiments
| Item | Recommendation | Reason |
|---|---|---|
| Gather target sequences | Database and literature research on target sequences | Learn about target sequence variation, design PCR to conserved regions |
| Enzyme | Not HiFi, no 3'-exonuclease | 3'-Exonuclease causes off-target amplification, PCR failure |
| PCR cycles | 45 | For 20 μL reaction, a single target molecule has Ct of about 38; using 45 cycles ensures detection |
| Denaturation temperature | First 3 cycles use 95°C and 20 s | Reduce delayed onset due to template re-annealing, lower Ct value observed |
| Denaturation temperature | Cycles 4–50 use 94°C for 5 s | Keep enzyme activity high |
| Dye-based detection | Good to evaluate if primers work | Test if primers work before ordering expensive fluorophore-labeled probes |
| Dye-based detection | Do not use for clinical testing | Often detect background amplification, causing false positives |
| No-template control | Run PCR without template DNA | Determine if “primer dimers” and other false amplicons are formed |
| Sanger sequencing | Perform sequencing on PCR reaction product | Verify that the amplicon product is indeed the correct target |
| Single-plex testing | Test all targets as single-plex before performing multiplex | If a reaction doesn’t work as single-plex, then it isn’t going to work in multiplex either |
| Positive control | Add to your analyte target | Verify that PCR is working, so that a negative for the target analyte is meaningful |
| Multiplex testing | Combine validated single-plexes into larger multiplexes | Verify that primers are compatible with each other |
| Synthetic target | Use synthetic gBlocks for initial testing | Cheap, nonpathogenic |
| Testing with patient samples | Use actual patient samples, known positives, and negatives | Determine sensitivity, specificity, and LOD |
| Gather assay information | Use MIQE standards | Ensure assay is reproducible and documented |