dc.description.abstract | Context: Andrographis paniculata is one of the plants from Acanthaceae family that
usually used as a traditional medicine in Indonesia. Aims: This research aims to
explore the capability of Near Infrared (NIR) spectroscopy and chemometrics to
classify the A. paniculata leaves extracts which were planted in different altitude
regions and determine phytochemical content of the leaves extracts. Settings and
Design: A model for determining calssification of plant extracts was formed using
NIR spectra and chemometric then the model was applied on real samples.
Phytochemical content of the leaves extracts were determined by partial least square
model. Methods and Material: Samples were extracted by methanol then scanning
the extract with NIR spectrophotometer at (780 to 2 500) nm. NIR spectra was
analyzed with The Unscrambler software to formed classification model. Statistical
analysis used: The samples was classified using LDA (Linear Discriminant
Analysis), SIMCA (Soft Independent Modelling of Class Analogies), SVM (Support
Vector Machines) and CA (Cluster Analysis). Results: LDA, SIMCA and SVM has
formed an accuracy value of 100 % while the CA classification model produces two
clusters, cluster A consist of extracts from Malang and Madura region, Indonesia,
and cluster B consist of extracts from Jember region, Indonesia. A. paniculata from
Malang region, Indonesia has the highest concentration of phenolic, flavonoid and
alkaloid that were 164.3 mg GAE g
.
Conclusions: This study showed that NIR spectroscopy coupled with chemometric
could be used for classified the A. paniculata which is planted in different altitude
regions. | en_US |