| Literature DB >> 25655315 |
Bidii S Ngalah1, Luiser A Ingasia2, Agnes C Cheruiyot2, Lorna J Chebon1, Dennis W Juma2, Peninah Muiruri1, Irene Onyango2, Jack Ogony2, Redemptah A Yeda2, Jelagat Cheruiyot3, Emmanuel Mbuba4, Grace Mwangoka4, Angela O Achieng3, Zipporah Ng'ang'a5, Ben Andagalu2, Hoseah M Akala2, Edwin Kamau2.
Abstract
Genetic analysis of molecular markers is critical in tracking the emergence and/or spread of artemisinin resistant parasites. Clinical isolates collected in western Kenya pre- and post- introduction of artemisinin combination therapies (ACTs) were genotyped at SNP positions in regions of strong selection signatures on chromosome 13 and 14, as described in Southeast Asia (SEA). Twenty five SNPs were genotyped using Sequenom MassArray and pfmdr1 gene copy number by real-time PCR. Parasite clearance half-life and in vitro drug sensitivity testing were performed using standard methods. One hundred twenty nine isolates were successfully analyzed. Fifteen SNPs were present in pre-ACTs isolates and six in post-ACTs. None of the SNPs showed association with parasite clearance half-life. Post-ACTs parasites had significantly higher pfmdr1 copy number compared to pre-ACTs. Seven of eight parasites with multiple pfmdr1 were post-ACTs. When in vitro IC50s were compared for parasites with single vs. multiple gene copies, only amodiaquine and piperaquine reached statistical significance. Data showed SNPs on chromosome 13 and 14 had different frequency and trend in western Kenya parasites compared SEA. Increase in pfmdr1 gene copy is consistent with recent studies in African parasites. Data suggests genetic signature of artemisinin resistance in Africa might be different from SEA.Entities:
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Year: 2015 PMID: 25655315 PMCID: PMC4319159 DOI: 10.1038/srep08308
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379
Figure 1The call rate in each SNP in 129 isolates assayed.
48 samples were pre-ACT samples collected between period (1995–2003), 10 were collected in the post ACT period during transition period (2005–2008) and 71 were from the 2013–2014 in vivo efficacy clinical trial study. The call rates for each SNP (x-axis) in all 129 isolates analyzed is shown.
Single nucleotide polymorphism profile and respective minor allele frequencies in different years
| Combined SNP-ID | Kisumu samples 1995–2003 | Kisumu samples 2005–2010 | Kisumu clinical trial samples 2013–2014 |
|---|---|---|---|
| n = 48 Allele (MAF) | n = 10 Allele (MAF) | n = 71 Allele (MAF) | |
| C (0.06) | |||
| T (0.06) | T(0.01) | ||
| G (0.08) | |||
| G (0.02) | |||
| C (0.06) | |||
| G (0.10) | |||
| C (0.25) | C(0.1) | C(0.13) | |
| A (0.04) | A(0.03) | ||
| C (0.06) | |||
| C (0.02) | |||
| C (0.44) | C(0.4) | C(0.31) | |
| G (0.08) | |||
| G (0.06) | |||
| T (0.54) | T(0.3) | T(0.38) | |
| T (0.13) | T(0.4) | T(0.01) |
Figure 2Comparison of the distribution of pfmdr1 copy number between pre- and post-ACTs periods.
Data showing the mean distribution of 48 samples pfmdr1copy number for pre-ACTs samples (1.14) and 71 post-ACT samples (1.32). There was statistical significant difference of pfmdr1 gene copy numbers between the two periods based on the t-test (p = 0.0002).
Correlation between IC50 and pfmdr1copy number outcome
| Single | Multiple | ||
|---|---|---|---|
| Drug | Median IC50 (IQR) nM | Median IC50 (IQR) nM | p value |
| 3.77 (2.7–5.49) | 4.21 (3.21–5.8) | 0.36 | |
| 15.01 (4.39–22.15) | 11.51 (9.93–16.53) | 0.80 | |
| 5.83 (0.0–12.09) | 7.071(5.62–11.35) | 0.59 | |
| 3.93 (0.33–5.67) | 8.62 (6.76–18.17) | 0.009 | |
| 29.9 (0.74–43.12) | 56.12 (28.11–48.35) | 0.26 | |
| 2.14 (0.98–3.14) | 4.02 (1.79 –8.22) | 0.21 | |
| 26.37 (0.72–35.46) | 37.29 (24.97–177.8) | 0.038 |