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CARE 2.0: reducing false-positive sequencing error corrections using machine learning.

Felix KallenbornJulian CascittiBertil Schmidt
Published in: BMC bioinformatics (2022)
False-positive corrections can negatively influence down-stream analysis. The precision of CARE 2.0 greatly reduces the number of those corrections compared to other state-of-the-art programs including BFC, Karect, Musket, Bcool, SGA, and Lighter. Thus, higher-quality datasets are produced which improve k-mer analysis and de-novo assembly in real-world datasets which demonstrates the applicability of machine learning techniques in the context of sequencing read error correction. CARE 2.0 is written in C++/CUDA for Linux systems and can be run on the CPU as well as on CUDA-enabled GPUs. It is available at https://github.com/fkallen/CARE .
Keyphrases
  • healthcare
  • palliative care
  • quality improvement
  • machine learning
  • pain management
  • single cell
  • public health
  • rna seq
  • chronic pain
  • deep learning