Data di Pubblicazione:
2022
Abstract:
Over the last decades, the exuberant development of next-generation sequencing has revolutionized gene
discovery. These technologies have boosted the mapping of single nucleotide polymorphisms (SNPs) across
the human genome, providing a complex universe of heterogeneity characterizing individuals worldwide.
Fractal dimension (FD) measures the degree of geometric irregularity, quantifying how "complex" a selfsimilar
natural phenomenon is. We compared two FD algorithms, box-counting dimension (BCD) and
Higuchi's fractal dimension (HFD), to characterize genome-wide patterns of SNPs extracted from the
HapMap data set, which includes data from 1184 healthy subjects of eleven populations. In addition, we
have used cluster and classification analysis to relate the genetic distances within chromosomes based
on FD similarities to the geographical distances among the 11 global populations. We found that HFD
outperformed BCD at both grand average clusterization analysis by the cophenetic correlation coefficient,
in which the closest value to 1 represents the most accurate clustering solution (0.981 for the HFD and
0.956 for the BCD) and classification (79.0% accuracy, 61.7% sensitivity, and 96.4% specificity for the
HFD with respect to 69.1% accuracy, 43.2% sensitivity, and 94.9% specificity for the BCD) of the 11
populations present in the HapMap data set. These results support the evidence that HFD is a reliable
measure helpful in representing individual variations within all chromosomes and categorizing individuals
and global populations.
Tipologia CRIS:
01.01 Articolo in rivista
Keywords:
fractal dimension; human genome; HapMap project; machine learning
Elenco autori:
Cerasa, Antonio; Porcaro, Camillo; Borri, Alessandro; Citrigno, Luigi
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