1.Interactions of cadmium and aluminum toxicity in their effect on growth and physiological parameters in soybean.
Imran Haider SHAMSI ; Kang WEI ; Ghulam JILANI ; Guo-ping ZHANG
Journal of Zhejiang University. Science. B 2007;8(3):181-188
The effect of Al and Cd on the growth, photosynthesis, and accumulation of Al, Cd and plant nutrients in two soybean genotypes were determined using hydroponic culture. There were six treatments: pH 6.5; pH 4.0; pH 6.5+1.0 micromol/L Cd; pH 4.0+1.0 micromol/L Cd; pH 4.0+150 micromol/L Al; pH 4.0+1.0 micromol/L Cd+150 micromol/L Al. The low pH (4.0) and Al treatments caused marked reduction in root length, shoot height, dry weight, chlorophyll content (SPAD value) and photosynthetic rate. Al-sensitive cv. Zhechun 2 accumulated comparatively more Al and Cd in plants than Al-tolerant cv. Liao 1. Compared with pH 6.5, pH 4.0 resulted in significant increase in Cd and Al concentration in plants. Combined application of Cd and Al enhanced their accumulation in roots, but caused a reduction in shoots. The concentrations of all 10 nutrients (P, K, Ca, Mg, Fe, Mn, Cu, Zn and B), except Mo were also increased when plants were exposed to pH lower than pH 6.5. Al addition caused a reduction in the concentration of most nutrients in plant roots and shoots; but K, Mn and Zn in roots were increased. Treatments with Cd alone or together with Al reduced the concentrations of all the plant nutrients in plants. Al-sensitive genotype Zhechun 2 has lower nutrient concentration than Al-tolerant genotype Liao 1. The current findings imply that Al and Cd are synergistic in their effect on plant growth, physiological traits and nutrient uptake.
Aluminum
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toxicity
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Cadmium
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toxicity
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Hydrogen-Ion Concentration
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Photosynthesis
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drug effects
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Soybeans
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drug effects
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growth & development
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metabolism
2.Differential response of root morphology to potassium deficient stress among rice genotypes varying in potassium efficiency.
Yan-bo JIA ; Xiao-e YANG ; Ying FENG ; Ghulam JILANI
Journal of Zhejiang University. Science. B 2008;9(5):427-434
Disparity in the root morphology of six rice (Oryza sativa L.) genotypes varying in potassium (K) efficiency was studied with three K levels: 5 mg/L (low), 10 mg/L (moderate) and 40 mg/L (adequate) in hydroponic culture. Morphological parameters included root length, surface area, volume and count of lateral roots, as well as fine (diameter<0.2 mm) and thick (diameter>0.2 mm) roots. The results indicate that the root growth of all genotypes was reduced under low K, but moderate K deficiency increased the root length of the efficient genotypes. At deficient and moderate K levels, all the efficient rice genotypes developed more fine roots (diameter<0.2 mm) than the inefficient ones. Both fine root count and root surface area were found to be the best parameters to portray K stress in rice. In accordance with the root morphology, higher K concentrations were noted in shoots of the efficient genotypes when grown at moderate and deficient K levels, indicating that root morphology parameters are involved in root uptake for K and in the translocation of K up to shoots. K deficiency affected not only the root morphology, but also the root ultra-structure. The roots of high-efficient genotypes had stronger tolerance to K deficient stress for root membrane damage, and could maintain the developed root architecture to adapt to the low K growth medium.
Genotype
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Oryza
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growth & development
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metabolism
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ultrastructure
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Plant Roots
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growth & development
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ultrastructure
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Potassium
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metabolism
3.Prediction of anoxic sulfide biooxidation under various HRTs using artificial neural networks.
Qaisar MAHMOOD ; Ping ZHENG ; Dong-Lei WU ; Xu-Sheng WANG ; Hayat YOUSAF ; Ejaz UL-ISLAM ; Muhammad Jaffar HASSAN ; Ghulam JILANI ; Muhammad Rashid AZIM
Biomedical and Environmental Sciences 2007;20(5):398-403
OBJECTIVEDuring present investigation the data of a laboratory-scale anoxic sulfide oxidizing (ASO) reactor were used in a neural network system to predict its performance.
METHODSFive uncorrelated components of the influent wastewater were used as the artificial neural network model input to predict the output of the effluent using back-propagation and general regression algorithms. The best prediction performance is achieved when the data are preprocessed using principal components analysis (PCA) before they are fed to a back propagated neural network.
RESULTSWithin the range of experimental conditions tested, it was concluded that the ANN model gave predictable results for nitrite removal from wastewater through ASO process. The model did not predict the formation of sulfate to an acceptable manner.
CONCLUSIONApart from experimentation, ANN model can help to simulate the results of such experiments in finding the best optimal choice for ASObased denitrification. Together with wastewater collection and the use of improved treatment systems and new technologies, better control of wastewater treatment plant (WTP) can lead to more effective maneuvers by its operators and, as a consequence, better effluent quality.
Bioreactors ; Neural Networks (Computer) ; Oxidation-Reduction ; Sulfates ; chemistry ; Sulfides ; chemistry ; Time Factors ; Waste Disposal, Fluid ; methods