2017
DOI: 10.1016/j.xphs.2016.08.026
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A Practical Framework Toward Prediction of Breaking Force and Disintegration of Tablet Formulations Using Machine Learning Tools

Abstract: Enabling the paradigm of quality by design requires the ability to quantitatively correlate material properties and process variables to measureable product performance attributes. Conventional, quality-by-test methods for determining tablet breaking force and disintegration time usually involve destructive tests, which consume significant amount of time and labor and provide limited information. Recent advances in material characterization, statistical analysis, and machine learning have provided multiple too… Show more

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Cited by 33 publications
(20 citation statements)
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“…The decrease in the compaction force, and hence tablet crushing strength from 15 kP to 5 kP was observed along LV2. The compression force was observed to significantly affect the compact crushing strength as demonstrated earlier by Akseli et al 50 The direction of the arrow suggests increasing crushing strength.…”
Section: Development Of the Reference Hplc Methods And Comparison Of Mpssupporting
confidence: 66%
“…The decrease in the compaction force, and hence tablet crushing strength from 15 kP to 5 kP was observed along LV2. The compression force was observed to significantly affect the compact crushing strength as demonstrated earlier by Akseli et al 50 The direction of the arrow suggests increasing crushing strength.…”
Section: Development Of the Reference Hplc Methods And Comparison Of Mpssupporting
confidence: 66%
“…Akseli et al published several articles about the use of ultrasonic methods to analyse mechanical properties of tablets [133, 134] and recently they utilised ultrasonic measurements to predict the breaking force and disintegration time of tablets [135]. The authors applied machine learning concepts (neural networks, genetic algorithms, support vector machines and random forest) to predict the disintegration time from ultrasonic measurements and several other tablet properties (tablet diameter, thickness, weight, porosity and breaking force) as well as process parameters (compression force and tablet compaction speed).…”
Section: Quantifying Disintegration Mechanismsmentioning
confidence: 99%
“…The performance of a tablet formulation depends on several factors such as dissolution, tablet breaking force, disintegration, the homogeneity of composition, etc. (Akseli et al, 2017) Similarly, the effect of Trichoderma based formulation depends on different factors namely p H , moisture content, inoculum concentration, storage temperature, inoculum age, and the incubation period (Mulatu et al, 2021). Therefore, integrating knowledge of material science and fungal physiological behavior is paramount for the development of antagonistic fungi-based tablet bioformulations.…”
Section: Discussionmentioning
confidence: 99%