Understanding Sequence Similarity and Framework Analysis Between Centromere Proteins Using Computational Biology

被引:0
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作者
C. George Priya Doss
Chiranjib Chakrabarty
C. Debajyoti
S. Debottam
机构
[1] VIT University,Medical Biotechnology Division, School of Biosciences and Technology
[2] Galgotias University,Department of Bio
来源
关键词
Centromere; Centromere proteins; Sequence; In silico;
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学科分类号
摘要
Certain mysteries pointing toward their recruitment pathways, cell cycle regulation mechanisms, spindle checkpoint assembly, and chromosome segregation process are considered the centre of attraction in cancer research. In modern times, with the established databases, ranges of computational platforms have provided a platform to examine almost all the physiological and biochemical evidences in disease-associated phenotypes. Using existing computational methods, we have utilized the amino acid residues to understand the similarity within the evolutionary variance of different associated centromere proteins. This study related to sequence similarity, protein–protein networking, co-expression analysis, and evolutionary trajectory of centromere proteins will speed up the understanding about centromere biology and will create a road map for upcoming researchers who are initiating their work of clinical sequencing using centromere proteins.
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页码:897 / 906
页数:9
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