PREDICTION MODELS FOR NON-DESTRUCTIVE ESTIMATION OF TOTAL CHLOROPHYLL CONTENT IN SUGARCANE

Total chlorophyll content of sugarcane is an important indicator of plant health, directly correlated to the photosynthetic potential of the crop. With recent technological advancements, portable chlorophyll meters have largely replaced biochemical chlorophyll estimation, requiring laborious extract...

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Main Authors: Vengavasi Krishnapriya, R Arunkumar, R Gomathi, S Vasantha
Format: Article
Language:English
Published: Society for Sugarcane Research and Development 2020-06-01
Series:Journal of Sugarcane Research
Online Access:http://epubs.icar.org.in/ejournal/index.php/JSR/article/view/95037
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spelling doaj-aad06e321d5d4521b7ec079a4af327762021-01-02T01:23:06ZengSociety for Sugarcane Research and DevelopmentJournal of Sugarcane Research2249-927X2582-47672020-06-019210.37580/JSR.2019.2.9.150-16342288PREDICTION MODELS FOR NON-DESTRUCTIVE ESTIMATION OF TOTAL CHLOROPHYLL CONTENT IN SUGARCANEVengavasi Krishnapriya0R Arunkumar1R Gomathi2S Vasantha3Plant Physiology section, Division of Crop Production, ICAR-Sugarcane Breeding Institute, Coimbatore - 641007Plant Physiology section, Division of Crop Production, ICAR-Sugarcane Breeding Institute, Coimbatore - 641007Plant Physiology section, Division of Crop Production, ICAR-Sugarcane Breeding Institute, Coimbatore - 641007Plant Physiology section, Division of Crop Production, ICAR-Sugarcane Breeding Institute, Coimbatore - 641007Total chlorophyll content of sugarcane is an important indicator of plant health, directly correlated to the photosynthetic potential of the crop. With recent technological advancements, portable chlorophyll meters have largely replaced biochemical chlorophyll estimation, requiring laborious extraction procedure with solvents like acetone and dimethyl sulphoxide. Chlorophyll meters determine only ‘greenness’ index, which has to be converted into scientifically standard units in order to make the data comprehensive. Prediction models for inter-conversion of chlorophyll units are available for crops like rice, wheat, sorghum, barley, maize, etc., but not for sugarcane till date. In the present study, total chlorophyll content was recorded in diverse sugarcane germplasm and commercial hybrids using both non-destructive and destructive sampling methods. A strong positive correlation was observed between meter readings (SPAD and CCI) with total chlorophyll content estimated using 80% acetone (r = 0.800 and 0.793) and dimethyl sulphoxide (r = 0.915 and 0.868). Regression models for the best fit curve between meter reading and extracted chlorophyll values of the tested sugarcane germplasm and hybrids were non-linear, polynomial equations of the second order. The model developed was validated in an independent experiment wherein sugarcane variety Co 86032 was subjected to increasing nitrogen levels. Highly significant linear regression was found between observed and predicted values of all estimates of total chlorophyll content with almost negligible prediction error. Thus, the model calibrated and validated for sugarcane germplasm and commercial hybrids would be a small yet significant step towards aiding high-throughput phenotyping in sugarcane thereby accelerating crop improvement programmes.http://epubs.icar.org.in/ejournal/index.php/JSR/article/view/95037
collection DOAJ
language English
format Article
sources DOAJ
author Vengavasi Krishnapriya
R Arunkumar
R Gomathi
S Vasantha
spellingShingle Vengavasi Krishnapriya
R Arunkumar
R Gomathi
S Vasantha
PREDICTION MODELS FOR NON-DESTRUCTIVE ESTIMATION OF TOTAL CHLOROPHYLL CONTENT IN SUGARCANE
Journal of Sugarcane Research
author_facet Vengavasi Krishnapriya
R Arunkumar
R Gomathi
S Vasantha
author_sort Vengavasi Krishnapriya
title PREDICTION MODELS FOR NON-DESTRUCTIVE ESTIMATION OF TOTAL CHLOROPHYLL CONTENT IN SUGARCANE
title_short PREDICTION MODELS FOR NON-DESTRUCTIVE ESTIMATION OF TOTAL CHLOROPHYLL CONTENT IN SUGARCANE
title_full PREDICTION MODELS FOR NON-DESTRUCTIVE ESTIMATION OF TOTAL CHLOROPHYLL CONTENT IN SUGARCANE
title_fullStr PREDICTION MODELS FOR NON-DESTRUCTIVE ESTIMATION OF TOTAL CHLOROPHYLL CONTENT IN SUGARCANE
title_full_unstemmed PREDICTION MODELS FOR NON-DESTRUCTIVE ESTIMATION OF TOTAL CHLOROPHYLL CONTENT IN SUGARCANE
title_sort prediction models for non-destructive estimation of total chlorophyll content in sugarcane
publisher Society for Sugarcane Research and Development
series Journal of Sugarcane Research
issn 2249-927X
2582-4767
publishDate 2020-06-01
description Total chlorophyll content of sugarcane is an important indicator of plant health, directly correlated to the photosynthetic potential of the crop. With recent technological advancements, portable chlorophyll meters have largely replaced biochemical chlorophyll estimation, requiring laborious extraction procedure with solvents like acetone and dimethyl sulphoxide. Chlorophyll meters determine only ‘greenness’ index, which has to be converted into scientifically standard units in order to make the data comprehensive. Prediction models for inter-conversion of chlorophyll units are available for crops like rice, wheat, sorghum, barley, maize, etc., but not for sugarcane till date. In the present study, total chlorophyll content was recorded in diverse sugarcane germplasm and commercial hybrids using both non-destructive and destructive sampling methods. A strong positive correlation was observed between meter readings (SPAD and CCI) with total chlorophyll content estimated using 80% acetone (r = 0.800 and 0.793) and dimethyl sulphoxide (r = 0.915 and 0.868). Regression models for the best fit curve between meter reading and extracted chlorophyll values of the tested sugarcane germplasm and hybrids were non-linear, polynomial equations of the second order. The model developed was validated in an independent experiment wherein sugarcane variety Co 86032 was subjected to increasing nitrogen levels. Highly significant linear regression was found between observed and predicted values of all estimates of total chlorophyll content with almost negligible prediction error. Thus, the model calibrated and validated for sugarcane germplasm and commercial hybrids would be a small yet significant step towards aiding high-throughput phenotyping in sugarcane thereby accelerating crop improvement programmes.
url http://epubs.icar.org.in/ejournal/index.php/JSR/article/view/95037
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