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
トピック分野別の貢献
Why Publish with us?
Global Visibility – Indexed in major databases
Fast Peer Review – Decision within 14–21 days
Open Access – Maximize readership and citation
Multidisciplinary Scope – Biology, Medicine and Engineering
Editorial Board Excellence – Global experts involved
University Library Indexing – Via OCLC
Permanent Archiving – CrossRef DOI
APC – Affordable APCs with discounts
Citation – High Citation Potential
現在トレンドになっている記事はどれですか?
研究論文
- Prevalence of Non-specific Low Back Pain Among Chinese Healthcare Workers (Surgeons and Surgical Nurses): A Multi-Center Survey Study
- Assessment of Thermal Uniformity of Heating Plates Using a Thermal Imaging Camera
- AFM Analysis of Polymeric Membranes Fouling
- Screening for Sexually Transmitted Infections in Adolescents with Genitourinary Complaints: Is There a Still Role for Endocervical Gram Stains?
- From Traditionalism to Algorithms: Embracing Artificial Intelligence for Effective University Teaching and Learning
- A Comprehensive Methodology for Assessing the Business Reputation of Industrial and Production Personnel
Advertisement