Visualization of a pharmaceutical unit operation: wet granulation

Research output: Contribution to journalJournal articleResearchpeer-review

Standard

Visualization of a pharmaceutical unit operation : wet granulation. / Jørgensen, Anna Cecilia; Rantanen, Jukka; Luukkonen, Pirjo; Laine, Sampsa; Yliruusi, Jouko.

In: Analytical Chemistry, Vol. 76, No. 18, 15.09.2004, p. 5331-8.

Research output: Contribution to journalJournal articleResearchpeer-review

Harvard

Jørgensen, AC, Rantanen, J, Luukkonen, P, Laine, S & Yliruusi, J 2004, 'Visualization of a pharmaceutical unit operation: wet granulation', Analytical Chemistry, vol. 76, no. 18, pp. 5331-8. https://doi.org/10.1021/ac049843p

APA

Jørgensen, A. C., Rantanen, J., Luukkonen, P., Laine, S., & Yliruusi, J. (2004). Visualization of a pharmaceutical unit operation: wet granulation. Analytical Chemistry, 76(18), 5331-8. https://doi.org/10.1021/ac049843p

Vancouver

Jørgensen AC, Rantanen J, Luukkonen P, Laine S, Yliruusi J. Visualization of a pharmaceutical unit operation: wet granulation. Analytical Chemistry. 2004 Sep 15;76(18):5331-8. https://doi.org/10.1021/ac049843p

Author

Jørgensen, Anna Cecilia ; Rantanen, Jukka ; Luukkonen, Pirjo ; Laine, Sampsa ; Yliruusi, Jouko. / Visualization of a pharmaceutical unit operation : wet granulation. In: Analytical Chemistry. 2004 ; Vol. 76, No. 18. pp. 5331-8.

Bibtex

@article{25748466bc1b4b00b337e8bae25b67bd,
title = "Visualization of a pharmaceutical unit operation: wet granulation",
abstract = "Recent developments in the field of process engineering and manufacturing sciences enable a new level of process understanding. However, extracting this understanding from increasing amounts of information is challenging. The aim of this study was to create a process vector from a model process describing all relevant information and, by that means, create a tool for combining and visualizing this information. Physical (impeller torque and temperature) and chemical (near-infrared spectroscopy) information from a small-scale high-shear granulation was used in the process vector. The vectors created were visualized by two different methods: principal component analysis (PCA) and the self-organizing map (SOM). None of the individual measurement techniques were able to describe the state of the process alone, although they provided important information about the process. By combining the data and visualizing it, an overview could be achieved. The SOM approach had two advantages over the PCA: it presented the results in terms of the original variables and enabled the analysis of nonlinear responses. However, both visualization methods could be used to describe the progress of the process and to increase the level of process understanding.",
keywords = "Chemistry, Pharmaceutical, Microscopy, Electron, Scanning, Principal Component Analysis, Theophylline, Torque",
author = "J{\o}rgensen, {Anna Cecilia} and Jukka Rantanen and Pirjo Luukkonen and Sampsa Laine and Jouko Yliruusi",
year = "2004",
month = sep,
day = "15",
doi = "10.1021/ac049843p",
language = "English",
volume = "76",
pages = "5331--8",
journal = "Industrial And Engineering Chemistry Analytical Edition",
issn = "0003-2700",
publisher = "American Chemical Society",
number = "18",

}

RIS

TY - JOUR

T1 - Visualization of a pharmaceutical unit operation

T2 - wet granulation

AU - Jørgensen, Anna Cecilia

AU - Rantanen, Jukka

AU - Luukkonen, Pirjo

AU - Laine, Sampsa

AU - Yliruusi, Jouko

PY - 2004/9/15

Y1 - 2004/9/15

N2 - Recent developments in the field of process engineering and manufacturing sciences enable a new level of process understanding. However, extracting this understanding from increasing amounts of information is challenging. The aim of this study was to create a process vector from a model process describing all relevant information and, by that means, create a tool for combining and visualizing this information. Physical (impeller torque and temperature) and chemical (near-infrared spectroscopy) information from a small-scale high-shear granulation was used in the process vector. The vectors created were visualized by two different methods: principal component analysis (PCA) and the self-organizing map (SOM). None of the individual measurement techniques were able to describe the state of the process alone, although they provided important information about the process. By combining the data and visualizing it, an overview could be achieved. The SOM approach had two advantages over the PCA: it presented the results in terms of the original variables and enabled the analysis of nonlinear responses. However, both visualization methods could be used to describe the progress of the process and to increase the level of process understanding.

AB - Recent developments in the field of process engineering and manufacturing sciences enable a new level of process understanding. However, extracting this understanding from increasing amounts of information is challenging. The aim of this study was to create a process vector from a model process describing all relevant information and, by that means, create a tool for combining and visualizing this information. Physical (impeller torque and temperature) and chemical (near-infrared spectroscopy) information from a small-scale high-shear granulation was used in the process vector. The vectors created were visualized by two different methods: principal component analysis (PCA) and the self-organizing map (SOM). None of the individual measurement techniques were able to describe the state of the process alone, although they provided important information about the process. By combining the data and visualizing it, an overview could be achieved. The SOM approach had two advantages over the PCA: it presented the results in terms of the original variables and enabled the analysis of nonlinear responses. However, both visualization methods could be used to describe the progress of the process and to increase the level of process understanding.

KW - Chemistry, Pharmaceutical

KW - Microscopy, Electron, Scanning

KW - Principal Component Analysis

KW - Theophylline

KW - Torque

U2 - 10.1021/ac049843p

DO - 10.1021/ac049843p

M3 - Journal article

C2 - 15362889

VL - 76

SP - 5331

EP - 5338

JO - Industrial And Engineering Chemistry Analytical Edition

JF - Industrial And Engineering Chemistry Analytical Edition

SN - 0003-2700

IS - 18

ER -

ID: 140623284