| Literature DB >> 29566683 |
Jesmin Permala Lohy Das1, Myat P Kyaw2, Myat H Nyunt2, Khin Chit2, Kyin H Aye2, Moe M Aye2, Mats O Karlsson1, Martin Bergstrand1, Joel Tarning3,4.
Abstract
BACKGROUND: Artemisinins are the most effective anti-malarial drugs for uncomplicated and severe Plasmodium falciparum malaria. However, widespread artemisinin resistance in the Greater Mekong Region of Southeast Asia is threatening the possibility to control and eliminate malaria. This work aimed to evaluate the pharmacokinetic and pharmacodynamic properties of artesunate and its active metabolite, dihydroartemisinin, in patients with sensitive and resistant falciparum infections in Southern Myanmar. In addition, a simple nomogram previously developed to identify artemisinin resistant malaria infections was evaluated.Entities:
Keywords: Artemisinin; Malaria; Nonlinear mixed-effects modelling; Parasite clearance; Pharmacodynamics; Pharmacokinetics; Resistance
Mesh:
Substances:
Year: 2018 PMID: 29566683 PMCID: PMC5865368 DOI: 10.1186/s12936-018-2278-5
Source DB: PubMed Journal: Malar J ISSN: 1475-2875 Impact factor: 2.979
Baseline study demographics
| Characteristics | Median (interquartile range) |
|---|---|
| Weight (kg) | 50.0 (46.0–53.5) |
| Age (years) | 25.5 (21.5–39.5) |
| Oral temperature at enrollment (°C) | 38.4 (37.6–39.1) |
| Haemoglobin (g/dl) | 12.4 (10.6–13.7) |
| Baseline parasite density (parasite/μl) | 29,900 (15,200–129,000) |
| Fever clearance time (day) | 3 (2–4) |
Fig. 1Schematic representation of the final population pharmacokinetic-pharmacodynamic model for parent compound (artesunate; ARS) and its active metabolite (dihydroartemisinin; DHA) in patients with uncomplicated P. falciparum malaria. Ce, predicted DHA concentration in the effect compartment; CL, elimination clearance; EC50, the DHA concentration which produces 50% of maximum parasite killing effect; Emax, maximum parasite killing effect; ke0, effect compartment rate constant governing the delayed drug effect; KGROWTH, parasite multiplication rate, fixed to tenfold multiplication per 48-h cycle; KTR, first order transit absorption rate constant; V, apparent volume of distribution
Fig. 2Visual predictive check of final population pharmacokinetic model of artesunate (a) and dihydroartemisinin (b), and population pharmacodynamic model (c) in patients with uncomplicated P. falciparum malaria. The open circles are observed data points, the solid red line represents the 50th percentile of observed data; dashed red lines represent the 5th and 95th percentiles (pharmacokinetic model) and the 10th and 90th percentiles (pharmacodynamic model) of observed data; shaded areas are the model predicted 95% confidence intervals of the simulated percentiles; vertical grey lines represent the lower limit of quantification (LLOQ) for artesunate (3.12 nM), dihydroartemisinin (7.02 nM) and parasite density (107.73). The lower panels show the fraction of observed data below the LLOQ (open circles) overlaid with the 95% prediction interval of the fraction of simulated data below the LLOQ (shaded area)
Parameter estimates of the final pharmacokinetic-pharmacodynamic model
| Parameter | Estimates (% RSE) | 95% CI | %CV BSV (% RSE) | 95% CI |
|---|---|---|---|---|
| Pharmacokinetics | ||||
| Artesunate | ||||
| F (%) |
| – | 31.2 (29.4) | 19.3–50.8 |
| MTT (h) | 1.34 (18.8) | 1.04–1.96 | 85.3 (24.9) | 65.7–133.0 |
| CLARS/F (l/h) | 1750 (8.55) | 1570–2090 | 26.8 (44.3) | 11.9–39.1 |
| VARS/F (l) | 1300 (12.6) | 1110–1660 | 74.7 (27.3) | 57.8–129 |
| RUV (%) | 73.2 (3.95) | 69.3–78.7 | – | – |
| Dihydroartemisinin | ||||
| CLDHA/F (l/h) | 76.7 (6.99) | 69.9–87.8 | 21.3 (30.3) | 13.3–88.1 |
| VDHA/F (l) | 102.0 (8.95) | 89.5–119.0 | 31.6 (40.5) | 21.3–131.0 |
| RUV (%) | 58.5 (3.34) | 56.6–63.4 | – | – |
| Covariate effects | ||||
| aPARAMTT (Log10 parasitaemia) | 0.115 (8.88) | 0.121–0.156 | – | – |
| aPARAmaxF | 1.51 (11.9) | 1.35–2.02 | – | – |
| aPARA50F (Log10 parasitaemia) | 8.32 (3.58) | 8.19–9.21 | – | – |
| Pharmacodynamics | ||||
| KGROWTH (48 h−1) |
| – | ||
| BASEPARA (Log10) | 11.0 (0.704) | 10.8–11.1 | 4.4 (19.6) | 3.13–5.78 |
| ke0 (h−1) | 0.123 (33.1) | 0.0584–0.188 | – | |
| aEC50 (nM) | 30.4 (34.2) | 13.5–46.1 | – | |
| aEmaxS (h−1) | 0.268 (5.89) | 0.242–0.295 | b49.0 (22.4) | 34.3–70.1 |
| EmaxR (h−1) | 0.155 (6.08) | 0.142–0.172 | 12.2 (45.5) | 6.54–35.8 |
| PMIX, resistant (%) | 56.1 (20.9) | 39.1–73.8 | – | |
| RUV (%) | 33.3 (5.91) | 30.5–37.1 | – | |
Coefficient of variation (%CV) of between subject variability (BSV) was calculated as 100 × (variance-1)1/2. Relative standard errors (% RSE) were calculated as 100 × (standard deviation/mean). The 95% confidence intervals (95% CI) of parameter estimates were obtained with the Sampling Importance Resampling (SIR) approach
ARS artesunate, BASE baseline parasitaemia, CL clearance, DHA dihydroartemisinin, F bioavailability, K parasite multiplication per 48 h parasite cycle, MTT mean transit time, PARA estimated linear effect of parasite density on MTT, PARAmax maximum effect of parasite density on F, PARA50 parasite density which produces 50% of the maximum covariate response, P probability of having an artemisinin-resistant infection, V volume of distribution, EC the DHA concentration which produces 50% of maximum parasite killing effect, Emax maximum parasite killing effect of a resistant parasite population, Emax maximum parasite killing effect of a sensitive parasite population, k effect compartment rate constant governing the delayed drug effect, RUV unexplained residual variability
aEstimation of these parameters were obtained by applying a frequentist prior approach using a previously published PK/PD model developed on data from Thailand and Cambodia (37)
bBSV (%CV) of EmaxS was calculated based on simulations (10,000 patients) with an estimated variance of 0.430 and the applied transformation presented in Eq. 7
Predictive performance of the baseline-adapted nomogram and the day-3 positivity test
| Statistics metric | Baseline-adapted nomogram | Day-3 positivity test | |
|---|---|---|---|
| Negative results (N) | The nomogram predicts the individual parasite density ratio ( | Non-resistant if observed parasitaemia is | |
| Positive results (P) | The nomogram predicts the individual parasite density ratio ( | Resistant if observed parasitaemia is | |
| True positive (TP) | The approach predicts correctly the patient to have a | ||
| True negative (TN) | The approach predicts correctly the patient to have a | ||
| Sensitivity | Probability of predicting correctly patients with | 90% | 55% |
| Specificity | Probability of predicting correctly patients with | 95% | 95% |
| Accuracy | Proportion of all correct predictions | 93% | 75% |