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1.
Pharmaceutics ; 14(8)2022 Jul 22.
Artigo em Inglês | MEDLINE | ID: mdl-35893785

RESUMO

Pharmacometrics (PM) and machine learning (ML) are both valuable for drug development to characterize pharmacokinetics (PK) and pharmacodynamics (PD). Pharmacokinetic/pharmacodynamic (PKPD) analysis using PM provides mechanistic insight into biological processes but is time- and labor-intensive. In contrast, ML models are much quicker trained, but offer less mechanistic insights. The opportunity of using ML predictions of drug PK as input for a PKPD model could strongly accelerate analysis efforts. Here exemplified by rifampicin, a widely used antibiotic, we explore the ability of different ML algorithms to predict drug PK. Based on simulated data, we trained linear regressions (LASSO), Gradient Boosting Machines, XGBoost and Random Forest to predict the plasma concentration-time series and rifampicin area under the concentration-versus-time curve from 0-24 h (AUC0-24h) after repeated dosing. XGBoost performed best for prediction of the entire PK series (R2: 0.84, root mean square error (RMSE): 6.9 mg/L, mean absolute error (MAE): 4.0 mg/L) for the scenario with the largest data size. For AUC0-24h prediction, LASSO showed the highest performance (R2: 0.97, RMSE: 29.1 h·mg/L, MAE: 18.8 h·mg/L). Increasing the number of plasma concentrations per patient (0, 2 or 6 concentrations per occasion) improved model performance. For example, for AUC0-24h prediction using LASSO, the R2 was 0.41, 0.69 and 0.97 when using predictors only (no plasma concentrations), 2 or 6 plasma concentrations per occasion as input, respectively. Run times for the ML models ranged from 1.0 s to 8 min, while the run time for the PM model was more than 3 h. Furthermore, building a PM model is more time- and labor-intensive compared with ML. ML predictions of drug PK could thus be used as input into a PKPD model, enabling time-efficient analysis.

2.
Trends Biotechnol ; 37(7): 775-788, 2019 07.
Artigo em Inglês | MEDLINE | ID: mdl-30683459

RESUMO

Point-of-care (PoC) diagnostics promises to yield test results accessible anytime and anywhere. Its application has expanded from providing healthcare necessities to the real-time monitoring of the ageing and health conscious population. Following the evolving consumer demand, there is a trend toward developing non- and minimally invasive PoC tests. Emerging PoC sensors have not only demonstrated multifunctional capabilities such as sweat stimulation but also can be connected to drug delivery units via a wireless network, enabling an active role of the technology in disease management. This review article summarises the latest developments in non- and minimally invasive PoC diagnostics and provides an overview on the progress towards closed-loop integration of complementary technologies for comprehensive and autonomous patient care.


Assuntos
Líquidos Corporais/química , Testes Diagnósticos de Rotina/métodos , Testes Diagnósticos de Rotina/tendências , Gerenciamento Clínico , Sistemas Automatizados de Assistência Junto ao Leito/tendências , Técnicas Biossensoriais/métodos , Técnicas Biossensoriais/tendências , Humanos
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