How Monte Carlo heuristics aid to identify the physical processes of drug release kinetics

We implement a Monte Carlo heuristic algorithm to model drug release from a solid dosage form. We show that with Monte Carlo simulations it is possible to identify and explain the causes of the unsatisfactory predictive power of current drug release models. It is well known that the power-law, the e...

Full description

Bibliographic Details
Main Author: Paola Lecca
Format: Article
Language:English
Published: Elsevier 2018-01-01
Series:MethodsX
Online Access:http://www.sciencedirect.com/science/article/pii/S2215016118300311
id doaj-b1c9cb245e324aacaa449123d97e078b
record_format Article
spelling doaj-b1c9cb245e324aacaa449123d97e078b2020-11-25T01:46:31ZengElsevierMethodsX2215-01612018-01-015204216How Monte Carlo heuristics aid to identify the physical processes of drug release kineticsPaola Lecca0Department of Mathematics, University of Trento, via Sommarive 14, 38123, Trento, ItalyWe implement a Monte Carlo heuristic algorithm to model drug release from a solid dosage form. We show that with Monte Carlo simulations it is possible to identify and explain the causes of the unsatisfactory predictive power of current drug release models. It is well known that the power-law, the exponential models, as well as those derived from or inspired by them accurately reproduce only the first 60% of the release curve of a drug from a dosage form. In this study, by using Monte Carlo simulation approaches, we show that these models fit quite accurately almost the entire release profile when the release kinetics is not governed by the coexistence of different physico-chemical mechanisms. We show that the accuracy of the traditional models are comparable with those of Monte Carlo heuristics when these heuristics approximate and oversimply the phenomenology of drug release. This observation suggests to develop and use novel Monte Carlo simulation heuristics able to describe the complexity of the release kinetics, and consequently to generate data more similar to those observed in real experiments. Implementing Monte Carlo simulation heuristics of the drug release phenomenology may be much straightforward and efficient than hypothesizing and implementing from scratch complex mathematical models of the physical processes involved in drug release. Identifying and understanding through simulation heuristics what processes of this phenomenology reproduce the observed data and then formalize them in mathematics may allow avoiding time-consuming, trial-error based regression procedures.Three bullet points, highlighting the customization of the procedure. • An efficient heuristics based on Monte Carlo methods for simulating drug release from solid dosage form encodes is presented. It specifies the model of the physical process in a simple but accurate way in the formula of the Monte Carlo Micro Step (MCS) time interval. • Given the experimentally observed curve of drug release, we point out how Monte Carlo heuristics can be integrated in an evolutionary algorithmic approach to infer the mode of MCS best fitting the observed data, and thus the observed release kinetics. • The software implementing the method is written in R language, the free most used language in the bioinformaticians community. Method name: Heuristic algorithm based on Monte Carlo methods to simulate drug release profiles, Keywords: Monte Carlo heuristics, drug release kinetics, drug release profilehttp://www.sciencedirect.com/science/article/pii/S2215016118300311
collection DOAJ
language English
format Article
sources DOAJ
author Paola Lecca
spellingShingle Paola Lecca
How Monte Carlo heuristics aid to identify the physical processes of drug release kinetics
MethodsX
author_facet Paola Lecca
author_sort Paola Lecca
title How Monte Carlo heuristics aid to identify the physical processes of drug release kinetics
title_short How Monte Carlo heuristics aid to identify the physical processes of drug release kinetics
title_full How Monte Carlo heuristics aid to identify the physical processes of drug release kinetics
title_fullStr How Monte Carlo heuristics aid to identify the physical processes of drug release kinetics
title_full_unstemmed How Monte Carlo heuristics aid to identify the physical processes of drug release kinetics
title_sort how monte carlo heuristics aid to identify the physical processes of drug release kinetics
publisher Elsevier
series MethodsX
issn 2215-0161
publishDate 2018-01-01
description We implement a Monte Carlo heuristic algorithm to model drug release from a solid dosage form. We show that with Monte Carlo simulations it is possible to identify and explain the causes of the unsatisfactory predictive power of current drug release models. It is well known that the power-law, the exponential models, as well as those derived from or inspired by them accurately reproduce only the first 60% of the release curve of a drug from a dosage form. In this study, by using Monte Carlo simulation approaches, we show that these models fit quite accurately almost the entire release profile when the release kinetics is not governed by the coexistence of different physico-chemical mechanisms. We show that the accuracy of the traditional models are comparable with those of Monte Carlo heuristics when these heuristics approximate and oversimply the phenomenology of drug release. This observation suggests to develop and use novel Monte Carlo simulation heuristics able to describe the complexity of the release kinetics, and consequently to generate data more similar to those observed in real experiments. Implementing Monte Carlo simulation heuristics of the drug release phenomenology may be much straightforward and efficient than hypothesizing and implementing from scratch complex mathematical models of the physical processes involved in drug release. Identifying and understanding through simulation heuristics what processes of this phenomenology reproduce the observed data and then formalize them in mathematics may allow avoiding time-consuming, trial-error based regression procedures.Three bullet points, highlighting the customization of the procedure. • An efficient heuristics based on Monte Carlo methods for simulating drug release from solid dosage form encodes is presented. It specifies the model of the physical process in a simple but accurate way in the formula of the Monte Carlo Micro Step (MCS) time interval. • Given the experimentally observed curve of drug release, we point out how Monte Carlo heuristics can be integrated in an evolutionary algorithmic approach to infer the mode of MCS best fitting the observed data, and thus the observed release kinetics. • The software implementing the method is written in R language, the free most used language in the bioinformaticians community. Method name: Heuristic algorithm based on Monte Carlo methods to simulate drug release profiles, Keywords: Monte Carlo heuristics, drug release kinetics, drug release profile
url http://www.sciencedirect.com/science/article/pii/S2215016118300311
work_keys_str_mv AT paolalecca howmontecarloheuristicsaidtoidentifythephysicalprocessesofdrugreleasekinetics
_version_ 1725018886566313984