scholarly journals Physicochemical Properties and Amino Acid Composition of Alkaline Proteinase from Aspergillus sojae

1967 ◽  
Vol 31 (10) ◽  
pp. 1171-1178 ◽  
Author(s):  
Kazuya HAYASHI ◽  
Danji FUKUSHIMA ◽  
Koya MOGI
2010 ◽  
Vol 28 (No. 3) ◽  
pp. 161-167 ◽  
Author(s):  
M.P. Simonová ◽  
Ľ. Chrastinová ◽  
J. Mojto ◽  
A. Lauková ◽  
R. Szábová ◽  
...  

The consumption of healthy and nutritive food (rich in proteins and low in cholesterol and lipid contents) is a preferred factor with the contemporary consumers. In addition, natural alternatives are requested to replace the additives used up to now but recently banned. To reach the above given condition, phyto-additives represent a good alternative. The aim of this study was to examine the physicochemical properties and amino acid composition of rabbit meat after the enrichment of rabbit diet with oregano, sage, and Eleutherococcus senticosus extracts, and to make a comparison with the commercial product XTRACT and control samples (without plant extracts). The addition of oregano and sage extracts as well as El. senticosus in the rabbit diet positively influenced the physicochemical properties of rabbit meat by increasing its energy value (P < 0.05 – sage). Supplementing rabbits feed with oregano and sage extracts led to an improvement on the amino acid composition (P < 0.01; P < 0.001 – serine). These findings are also supported by the good health state of rabbits. Outgoing from these results, the diet enriched with the plant extracts is beneficial for the health state of rabbits involving the nutritional quality of rabbit meat in connection with consumers.


1984 ◽  
Vol 219 (2) ◽  
pp. 539-546 ◽  
Author(s):  
R K Mehra ◽  
I Bremner

Large amounts of Cu-metallothionein were obtained by 2-mercaptoethanol and sodium dodecyl sulphate extractions of the particulate fractions of the liver of pigs given high-Cu2+ diets or rats injected with Cu2+. Three isoproteins were purified from pig liver and characterized on the basis of their physicochemical properties, metal content and amino acid composition. No such pool of Cu-metallothionein was present in the liver of Cu2+-loaded sheep or of rats given Cu2+-supplemented diets.


2021 ◽  
Vol 22 (1) ◽  
Author(s):  
Zhixia Teng ◽  
Zitong Zhang ◽  
Zhen Tian ◽  
Yanjuan Li ◽  
Guohua Wang

Abstract Background Amyloids are insoluble fibrillar aggregates that are highly associated with complex human diseases, such as Alzheimer’s disease, Parkinson’s disease, and type II diabetes. Recently, many studies reported that some specific regions of amino acid sequences may be responsible for the amyloidosis of proteins. It has become very important for elucidating the mechanism of amyloids that identifying the amyloidogenic regions. Accordingly, several computational methods have been put forward to discover amyloidogenic regions. The majority of these methods predicted amyloidogenic regions based on the physicochemical properties of amino acids. In fact, position, order, and correlation of amino acids may also influence the amyloidosis of proteins, which should be also considered in detecting amyloidogenic regions. Results To address this problem, we proposed a novel machine-learning approach for predicting amyloidogenic regions, called ReRF-Pred. Firstly, the pseudo amino acid composition (PseAAC) was exploited to characterize physicochemical properties and correlation of amino acids. Secondly, tripeptides composition (TPC) was employed to represent the order and position of amino acids. To improve the distinguishability of TPC, all possible tripeptides were analyzed by the binomial distribution method, and only those which have significantly different distribution between positive and negative samples remained. Finally, all samples were characterized by PseAAC and TPC of their amino acid sequence, and a random forest-based amyloidogenic regions predictor was trained on these samples. It was proved by validation experiments that the feature set consisted of PseAAC and TPC is the most distinguishable one for detecting amyloidosis. Meanwhile, random forest is superior to other concerned classifiers on almost all metrics. To validate the effectiveness of our model, ReRF-Pred is compared with a series of gold-standard methods on two datasets: Pep-251 and Reg33. The results suggested our method has the best overall performance and makes significant improvements in discovering amyloidogenic regions. Conclusions The advantages of our method are mainly attributed to that PseAAC and TPC can describe the differences between amyloids and other proteins successfully. The ReRF-Pred server can be accessed at http://106.12.83.135:8080/ReRF-Pred/.


The isolation of 1·6 S γ -histone is described, its amino-acid composition recorded and an account given of some of its physicochemical properties. Its molecular weight has been calculated from sedimentation velocities to be 74000 in its unaggregated condition. It thus represents a second histone of high molecular weight present in the nuclei of calf thymocytes. Both β and 1·6 S γ -histone are distinguished from the other four components in their ability to undergo aggregation. The γ -histone, however, does not aggregate so readily or so extensively as does β -histone. These two histones are also clearly distinguished by their amino-acid compositions.


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