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KarySOM: An Unsupervised Learning based Approach for Human Karyotyping using Self-Organizing Maps

机译:Karysom:使用自组织地图的人类核型纯粹基于学习的学习方法

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Cytogenetics is a field of genetics investigating the relationships between the hereditary characteristics, structure and behavior of human chromosomes, as well as the medical and evolutionary repercussions of chromosomal abnormalities. Detecting the human karyotype and chromosomal anomalies could offer relevant information about human genetics and possible genetic disorders. This paper investigates an automatic solution for chromosomes classification and introduces an unsupervised learning approach KarySOM based on self-organizing maps for the problem of automatically human karyotyping, with the more general goal of uncovering chromosomal anomalies. The experimental evaluation of the proposed approach highlights its effectiveness for unsupervised classification of human chromosomes.
机译:细胞遗传学是研究人染色体的遗传特征,结构和行为之间的关系的遗传学领域,以及染色体异常的医学和进化的影响。检测人核型和染色体异常可以提供有关人类遗传和可能的遗传疾病的相关信息。本文研究了染色体分类的自动解决方案,并根据自动组织地图引入无监督的学习方法Karysom,以便自动核对核心型问题,具有较为普遍的染色体异常的目标。该拟议方法的实验评估突出了其对人染色体无监督分类的有效性。

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