|
|

|

|
|

|
|
DOI: 10.1094/CC-83-0001
| VIEW
ARTICLE
Using Multivariate Techniques to Predict Wheat Flour Dough and
Noodle Characteristics from Size-Exclusion HPLC and RVA Data.
J.-B. Ohm (1,2), A. S. Ross (1), Y.-L. Ong (1), and C. J.
Peterson (1). (1) Research associate, associate professor,
graduate student, and professor, respectively. Oregon State
University, Dept. of Crop and Soil Science, Corvallis, OR
97331-3002. (2) Corresponding author. Phone: 541-737-9386. Fax:
541-737-0909. E-mail: <jae-bom.ohm@oregonstate.edu> Cereal Chem.
83(1):1-9. Accepted May 7, 2005. Copyright 2006 AACC
International, Inc.
Flour proteins of hard and soft winter wheats grown in Oregon
were characterized by size-exclusion HPLC (SE-HPLC). Flour
pasting characteristics were assessed by a Rapid Visco Analyser
(RVA). Principle component scores (PCS) were calculated from
both RVA data and from absorbance area and % absorbance values
from SE-HPLC. The PCS and cross-products, ratios, and squares
were used to derive wheat classification and quality prediction
models. A classification model calculated from PCS of SE-HPLC
data could reliably separate these hard and soft wheats. The
prediction models for mixing and noodle characteristics showed
better performance when calculated from PCS values of both
SE-HPLC and RVA data than from SE-HPLC data only. The R(^2)
values of prediction models for mixograph absorption, peak time,
and tolerance were 0.827, 0.813, and 0.851, respectively.
Prediction models for noodle hardness, cohesiveness, chewiness,
and resilience immediately after cooking had R(^2)
values of 0.928, 0.928, 0.896, and 0.855, respectively. These
results suggest that multivariate methods could be used to
develop reliable prediction models for dough mixing and noodle
characteristics using just SE-HPLC and RVA data.
|
|
|
|

|
|
|