Ryohei Eguchi, N. Ono, H. Horai, Md. Altuf-Ul Amin, Aki Hirai, J. Kawahara, S. Kasahara, Tomoaki Endo, S. Kanaya
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Here, if ith substring skeleton is present in a target compound, the ith element was set to 1; otherwise, the ith element was set to 0. Relationship of alkaloid compounds with biosynthetic pathways are examined based on the dendrogram produced by Ward clustering method to the matrix. Of 12,243 alkaloid compounds accumulated in KNApSAcK Core DB (http://kanaya.naist.jp/knapsack_jsp/top.html), 3,124 compounds (25.5 %) correspond to the pathway-known ring skeletons (187 ring skeletons), but the remaining 9,119 (74.5%) compounds do not. By examining the sub-ring skeleton similarity of the remaining compounds, it might be possible to obtain clues of pathway information and systemization of all alkaloid compounds. 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引用次数: 4
摘要
由于生物碱的骨架核是生物合成途径确定的主要标准,因此提出了基于环骨架的生物碱生物合成途径的系统表示。因此,将环骨架的思想扩展到基于环骨架的生物碱化合物分类,并将生物碱化合物系统化,并检验该方法在基于模块元素的生物合成途径预测中的性能。我们构建了一个二维二元矩阵,对应于2546个SRS和478个通路已知的生物碱化合物。这里,如果目标化合物中存在ith子字符串骨架,则将第i元素设置为1;否则,第i个元素被设为0。基于Ward聚类法对基质生成的树形图,研究了生物碱化合物与生物合成途径的关系。在KNApSAcK Core DB (http://kanaya.naist.jp/knapsack_jsp/top.html)中积累的12243个生物碱化合物中,3124个(25.5%)化合物对应于途径已知的环骨架(187个),其余9119个(74.5%)化合物不对应于途径已知的环骨架。通过检测剩余化合物的亚环骨架相似性,可以获得所有生物碱化合物的通路信息和系统化线索。因此,本文的研究重点是基于亚骨架谱的生物碱化合物的综合系统化和生物碱环骨架的构建原理。
[Dedicated to Prof. T. Okada and Prof. T. Nishioka: data science in chemistry]Classification of Alkaloid Compounds Based on Subring Skeleton (SRS) Profiling: On Finding Relationship of Compounds with Metabolic Pathways
Systematic representation of alkaloid biosynthetic pathways based on ring skeletons has been proposed because the skeleton nucleus of an alkaloid is the main criterion for determination in biosynthetic pathways. So the idea of ring skeletons was extended to apply classification of alkaloid compounds based on ring skeletons and to systematize alkaloid compounds and to examine the performance of this approach to predict biosynthetic pathways based on module elements. We constructed a 2-dimensional binary matrix corresponding to 2546 SRS and 478 pathway-known alkaloid compounds. Here, if ith substring skeleton is present in a target compound, the ith element was set to 1; otherwise, the ith element was set to 0. Relationship of alkaloid compounds with biosynthetic pathways are examined based on the dendrogram produced by Ward clustering method to the matrix. Of 12,243 alkaloid compounds accumulated in KNApSAcK Core DB (http://kanaya.naist.jp/knapsack_jsp/top.html), 3,124 compounds (25.5 %) correspond to the pathway-known ring skeletons (187 ring skeletons), but the remaining 9,119 (74.5%) compounds do not. By examining the sub-ring skeleton similarity of the remaining compounds, it might be possible to obtain clues of pathway information and systemization of all alkaloid compounds. Therefore, the present work focuses on comprehensive systematization of the alkaloid compounds and construction principles of ring skeletons in alkaloids based on subring skeleton profiling.