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Tet Fatt Chia

Researcher at National Institute of Education

Publications -  5
Citations -  264

Tet Fatt Chia is an academic researcher from National Institute of Education. The author has contributed to research in topics: Gene & Polygonum. The author has an hindex of 5, co-authored 5 publications receiving 246 citations.

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Journal ArticleDOI

Antioxidant flavonoids from leaves of Polygonum hydropiper L.

TL;DR: Evaluation of the antioxidative activity, conducted in vitro, by using electron spin resonance (ESR) and ultraviolet visible (UV-vis) spectrophotometric assays, showed that these isolated flavonoids possess strong antioxidative capabilities.
Journal ArticleDOI

Diagnosis of virus infection in orchid plants with high-resolution optical coherence tomography

TL;DR: The results suggest that virus-infected orchid plants can be accurately identified by imaging the epidermal layers of their leaves with OCT, which may potentially lead to significant cost savings and better control of the spread of viruses in the orchid industry.
Journal ArticleDOI

Toward the Development of Raman Spectroscopy as a Nonperturbative Online Monitoring Tool for Gasoline Adulteration

TL;DR: The promising results in this study illustrate the capability and the potential of Raman spectroscopy, together with multivariate analysis, as a low-cost, powerful tool for on-site rapid detection of gasoline adulteration and opens substantive avenues for applications in related fields of quality control in the oil industry.
Journal ArticleDOI

Parentage determination of Vanda Miss Joaquim (Orchidaceae) through two chloroplast genes rbcL and matK

TL;DR: The use of the DNA barcoding regions matK and rbcL to determine the seed parent of the popular orchid hybrid and Singapore's national flower, Vanda Miss Joaquim, found it to be V. hookeriana.
Proceedings ArticleDOI

Plant Cell Injection Based on Autofocusing Algorithm

TL;DR: An automatic injection system based on the microscopic focus measurement is developed to automate injection process and also to enable the flexible selection of the target cells and the successful rate is quantified.