プレプリント / バージョン1

Effective Storytelling of Genomic Datasets through Visualization

##article.authors##

  • Malinda, Raj Rajeshwar PGD Data Science, Health and Climate Change for Social Impact, Indraprastha Institute of Information Technology.
  • Dipika Mishra School of Biological Sciences, University of Edinburgh.

DOI:

https://doi.org/10.51094/jxiv.678

キーワード:

Data Visualization、 Genetics、 Genomics、 DataViz、 AI Tools

抄録

Genomic data are inherently multidimensional and complex, therefore, presenting researcher with significant challenges in analysis and interpretation. Data visualization of genomic datasets can unravel the complexity and provide meaningful insights for effective communication. Here, we discuss that, in data-driven genomic studies, effective storytelling of formulated hypotheses can be significantly enhanced by using suitable data visualization tools. Further, with the ongoing advancement of technology, we argue that, the integration of these tools with artificial intelligence or machine learning concepts could potentially revolutionize the visualization trends within the field of genomic research.

利益相反に関する開示

The authors declare no competing interests.

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投稿日時: 2024-04-23 23:18:29 UTC

公開日時: 2024-04-26 01:26:16 UTC
研究分野
生物学・生命科学・基礎医学