Litcius/Paper detail

Machine learning for artemisinin resistance in malaria treatment across in vivo-in vitro platforms

Hanrui Zhang, Jiantao Guo, Hongyang Li, Yuanfang Guan

2022iScience14 citationsDOIOpen Access PDF

Abstract

IC50 measurement and based on different microarray and data processing modalities. The validity of the algorithm is further supported by its first placement in the DREAM Malaria challenge. We identified transcription biomarkers to artemisinin treatment resistance that can predict artemisinin resistance and are conserved in their expression modules. This is a critical step in the research of malaria treatment, as it demonstrated the potential of a platform-robust, personalized model for artemisinin resistance using molecular biomarkers.

Topics & Concepts

ArtemisininMalariaDrug resistanceIn vivoPlasmodium falciparumPharmacologyDrugComputational biologyBiologyMedicineBiotechnologyImmunologyMicrobiologyMalaria Research and ControlComputational Drug Discovery MethodsMosquito-borne diseases and control