バイオグラフィー
Alexis Murillo is Geneticist At Universidad Nacional Mayor de San Marcos (Lima, Peru) and has completed a Ph.D. in Oncology at Universidade de São Paulo (São Paulo, Brazil). He is a specialist in molecular biology and data analysis. Member of the Executive Council of the Student Network on Extracellular Vesicles (SNEV) in 2022-2023. Member of the International Society for Extracellular Vesicles (ISEV) since 2022. Winner of the Maria Mitzi Brentani award in the period 2020-2021. Mentor of the Centifico Latino program (2023), SEH2Bioinfo (2022-Current), and the Immunology and Cancer research group, Immuca (2021-Current).
He has published over 20 scientific publications in national/international journals and has reviewed over 200 manuscripts. Among their most recent interest fields, are biomarkers research, liquid biopsy, extracellular vesicles, proteomics, genomics, and transcriptomics with a pharmacology approach.
研究の興味
Genetics, Rare Diseases, Oncology, Biomarkers, Theranostics, Data Analysis, Data Visualization

Editor
仕事内容
Doctor
University of São Paulo
Comprehensive Center for Precision Oncology
Brazil
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研究論文
- Effect of Rainfall on Water Parameters in Recreational Lakes in Heidelberg, Germany
- Exploring Upper Limb Kinematics in Limited Vision Conditions: Preliminary Insights from 3D Motion Analysis and IMU Data
- Analysis of the State of Moisture Control to Ensure and Regulate the Quality of Grain and Grain Products
- The Lukala Cement Plant's Life Cycle Analysis: Towards a More Sustainable Production
- Lifestyle and Well-being among Portuguese Firefighters
- Enhancing Material Property Predictions through Optimized KNN Imputation and Deep Neural Network Modeling
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