Presented By: DCMB Tools and Technology Seminar
DCM&B Tools and Technology Seminar
Meera Krishnamoorthy, "AMAISE: a machine learning approach to index-free sequence enrichment"
Metagenomics holds potential to improve clinical diagnostics of infectious diseases, but DNA from clinical specimens is often dominated by host-derived sequences. To address this, researchers employ host-depletion methods. Laboratory-based host-depletion methods, however, are costly in terms of time and effort, while computational host-depletion methods rely on memory-intensive reference index databases and struggle to accurately classify noisy sequence data. To solve these challenges, we propose an index-free tool, AMAISE (A Machine Learning Approach to Index-Free Sequence Enrichment). Applied to the task of separating host from microbial reads, AMAISE achieves over 98% accuracy. Applied prior to metagenomic classification, AMAISE results in a 14–18% decrease in memory usage compared to using metagenomic classification alone. Our results show that a reference-independent machine learning approach to host depletion allows for accurate and efficient sequence detection.
Tool Link: https://github.com/MLD3/AMAISE
This presentation will be held in 2036 Palmer Commons. There will also be a remote viewing option via Zoom.
Tool Link: https://github.com/MLD3/AMAISE
This presentation will be held in 2036 Palmer Commons. There will also be a remote viewing option via Zoom.
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