Creates a construct developed by the Niles Lab at MIT, designed to deliver a 3' UTR post-transcriptional regulatory element payload to a specific given gene in Plasmodium falciparum.
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Jun 20, 2024 - Python
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Creates a construct developed by the Niles Lab at MIT, designed to deliver a 3' UTR post-transcriptional regulatory element payload to a specific given gene in Plasmodium falciparum.
Bio-informed QSAR framework integrating P. falciparum transcriptomic signatures with molecular descriptors for enhanced antimalarial activity prediction (6.1% improvement, 98.3% feature reduction)
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Comprehensive transcriptomic analysis of host response to Plasmodium falciparum infection. This study identifies key immune pathways, differential gene expression patterns, and potential biomarkers associated with malaria pathogenesis.
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Utilizing 3D GCN machine learning models to expedite and improve malaria drug discovery through efficient inhibitor detection
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Effect of temperature stress on Plasmodium Falciparum. Code for data analysis. Rshiny app for data exploration.
Calculating the coverage depth for each coding gene and the percentage of each gene covered at ≥ 10X depth.
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