Publications by authors named "Georgios L Stamokostas"

Complexity metrics and machine learning (ML) models have been utilized to analyze the lengths of segmental genomic entities of DNA sequences (exonic, intronic, intergenic, repeat, unique) with the purpose to ask questions regarding the segmental organization of the human genome within the size distribution of these sequences. For this we developed an integrated methodology that is based upon the reconstructed phase space theorem, the non-extensive statistical theory of Tsallis, ML techniques, and a technical index, integrating the generated information, which we introduce and named complexity factor (COFA). Our analysis revealed that the size distribution of the genomic regions within chromosomes are not random but follow patterns with characteristic features that have been seen through its complexity character, and it is part of the dynamics of the whole genome.

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Synopsis of recent research by authors named "Georgios L Stamokostas"

  • - Georgios L Stamokostas focuses on the complexity metrics and machine learning models to analyze segmental genomic entities in the human genome, specifically investigating the organization and distribution of various DNA sequence types.
  • - His research introduces a novel methodology combining the reconstructed phase space theorem, Tsallis non-extensive statistical theory, and machine learning, resulting in the creation of a new complexity index termed the complexity factor (COFA).
  • - Findings indicate that the size distribution of genomic regions within chromosomes exhibits non-random patterns and characteristic features, suggesting a deeper dynamical relationship across the human genome.