Evaluation of droplet size distributions using univariate and multivariate approaches

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Standard

Evaluation of droplet size distributions using univariate and multivariate approaches. / Gauno, M.H.; Larsen, C.C.; Vilhelmsen, T.; Sonnergaard, Jørn; Wittendorff, J.; Rantanen, J.

In: Pharmaceutical Development and Technology, Vol. 18, No. 4, 01.07.2013, p. 926-934.

Research output: Contribution to journalJournal articleResearchpeer-review

Harvard

Gauno, MH, Larsen, CC, Vilhelmsen, T, Sonnergaard, J, Wittendorff, J & Rantanen, J 2013, 'Evaluation of droplet size distributions using univariate and multivariate approaches', Pharmaceutical Development and Technology, vol. 18, no. 4, pp. 926-934. https://doi.org/10.3109/10837450.2011.619542

APA

Gauno, M. H., Larsen, C. C., Vilhelmsen, T., Sonnergaard, J., Wittendorff, J., & Rantanen, J. (2013). Evaluation of droplet size distributions using univariate and multivariate approaches. Pharmaceutical Development and Technology, 18(4), 926-934. https://doi.org/10.3109/10837450.2011.619542

Vancouver

Gauno MH, Larsen CC, Vilhelmsen T, Sonnergaard J, Wittendorff J, Rantanen J. Evaluation of droplet size distributions using univariate and multivariate approaches. Pharmaceutical Development and Technology. 2013 Jul 1;18(4):926-934. https://doi.org/10.3109/10837450.2011.619542

Author

Gauno, M.H. ; Larsen, C.C. ; Vilhelmsen, T. ; Sonnergaard, Jørn ; Wittendorff, J. ; Rantanen, J. / Evaluation of droplet size distributions using univariate and multivariate approaches. In: Pharmaceutical Development and Technology. 2013 ; Vol. 18, No. 4. pp. 926-934.

Bibtex

@article{a7259329619347839a56a154dda2842c,
title = "Evaluation of droplet size distributions using univariate and multivariate approaches",
abstract = "Pharmaceutically relevant material characteristics are often analyzed based on univariate descriptors instead of utilizing the whole information available in the full distribution. One example is droplet size distribution, which is often described by the median droplet size and the width of the distribution. The current study was aiming to compare univariate and multivariate approach in evaluating droplet size distributions. As a model system, the atomization of a coating solution from a two-fluid nozzle was investigated. The effect of three process parameters (concentration of ethyl cellulose in ethanol, atomizing air pressure, and flow rate of coating solution) on the droplet size and droplet size distribution using a full mixed factorial design was used. The droplet size produced by a two-fluid nozzle was measured by laser diffraction and reported as volume based size distribution. Investigation of loading and score plots from principal component analysis (PCA) revealed additional information on the droplet size distributions and it was possible to identify univariate statistics (volume median droplet size), which were similar, however, originating from varying droplet size distributions. The multivariate data analysis was proven to be an efficient tool for evaluating the full information contained in a distribution.",
author = "M.H. Gauno and C.C. Larsen and T. Vilhelmsen and J{\o}rn Sonnergaard and J. Wittendorff and J. Rantanen",
year = "2013",
month = "7",
day = "1",
doi = "10.3109/10837450.2011.619542",
language = "English",
volume = "18",
pages = "926--934",
journal = "Pharmaceutical Development and Technology",
issn = "1083-7450",
publisher = "Taylor & Francis",
number = "4",

}

RIS

TY - JOUR

T1 - Evaluation of droplet size distributions using univariate and multivariate approaches

AU - Gauno, M.H.

AU - Larsen, C.C.

AU - Vilhelmsen, T.

AU - Sonnergaard, Jørn

AU - Wittendorff, J.

AU - Rantanen, J.

PY - 2013/7/1

Y1 - 2013/7/1

N2 - Pharmaceutically relevant material characteristics are often analyzed based on univariate descriptors instead of utilizing the whole information available in the full distribution. One example is droplet size distribution, which is often described by the median droplet size and the width of the distribution. The current study was aiming to compare univariate and multivariate approach in evaluating droplet size distributions. As a model system, the atomization of a coating solution from a two-fluid nozzle was investigated. The effect of three process parameters (concentration of ethyl cellulose in ethanol, atomizing air pressure, and flow rate of coating solution) on the droplet size and droplet size distribution using a full mixed factorial design was used. The droplet size produced by a two-fluid nozzle was measured by laser diffraction and reported as volume based size distribution. Investigation of loading and score plots from principal component analysis (PCA) revealed additional information on the droplet size distributions and it was possible to identify univariate statistics (volume median droplet size), which were similar, however, originating from varying droplet size distributions. The multivariate data analysis was proven to be an efficient tool for evaluating the full information contained in a distribution.

AB - Pharmaceutically relevant material characteristics are often analyzed based on univariate descriptors instead of utilizing the whole information available in the full distribution. One example is droplet size distribution, which is often described by the median droplet size and the width of the distribution. The current study was aiming to compare univariate and multivariate approach in evaluating droplet size distributions. As a model system, the atomization of a coating solution from a two-fluid nozzle was investigated. The effect of three process parameters (concentration of ethyl cellulose in ethanol, atomizing air pressure, and flow rate of coating solution) on the droplet size and droplet size distribution using a full mixed factorial design was used. The droplet size produced by a two-fluid nozzle was measured by laser diffraction and reported as volume based size distribution. Investigation of loading and score plots from principal component analysis (PCA) revealed additional information on the droplet size distributions and it was possible to identify univariate statistics (volume median droplet size), which were similar, however, originating from varying droplet size distributions. The multivariate data analysis was proven to be an efficient tool for evaluating the full information contained in a distribution.

UR - http://www.scopus.com/inward/record.url?scp=84877868863&partnerID=8YFLogxK

U2 - 10.3109/10837450.2011.619542

DO - 10.3109/10837450.2011.619542

M3 - Journal article

C2 - 23215949

AN - SCOPUS:84877868863

VL - 18

SP - 926

EP - 934

JO - Pharmaceutical Development and Technology

JF - Pharmaceutical Development and Technology

SN - 1083-7450

IS - 4

ER -

ID: 62955691