I'm @LMigliet, a passionate Data Scientist with a rich background in Biology and Bioinformatics. My journey intersects data science, healthcare, and biological research, leveraging the power of machine learning to explore and understand complex biological processes.
About Me - Scholar
Author of over 20 peer-reviewed articles and 5 international patents at Imperial College London. I am one of the inventors of Data-Driven Multiplexing, a timely and cost-effective framework to detect multiple pathogens in a SINGLE MOLECULAR TEST.
- π Data Scientist: Expertise in data analysis, machine learning, and predictive modeling.
- 𧬠Bioinformatician: Deep understanding of biological data, especially in genomics and molecular biology.
- π§βπ¬ Biologist: Practical experience in laboratory techniques, including PCR, dPCR, and other molecular biology methods.
- πΌ Data Engineer: Skilled in building data pipelines, ensuring data integrity, and optimizing performance for large datasets.
- Healthcare: Utilizing data science to improve patient outcomes, personalize medicine, and advance healthcare technologies.
- Machine Learning: Exploring innovative algorithms to gain insights from biological data and enhance predictive accuracy.
- Biological Processes: Investigating molecular mechanisms and genetic interactions through computational approaches.
- Collaboration: Eager to work on interdisciplinary projects that bridge the gap between biology and data science.
- π± Exploring biological processes using advanced machine learning techniques.
- π¬ Developing data processing pipelines for high-throughput biological data.
- π€ Looking to collaborate on data science projects that have a significant impact on healthcare and biological research.
A Framework for Hybrid Development of Multiplex PCR Assays (from singleplex data) - PATENTED
- Branch: "smartplexer_paper_nature" for the code reported in the Nature Paper.
- Description: Optimizes the selection of primer mixes for multiplex PCR assays through empirical testing and in-silico simulations.
- Performance: Demonstrated excellent selection of multiplex assay with over 95% chance to be suitable for Data-Driven Multiplexing (ACA). Capable of detecting 7 different CORONAVIRUS (including COVID) strains in single-well and single-channel PCR reaction (with conventional PCR instruments).
An Advanced Filtering Technique for Biological Data
- Description: Implements an adaptive filtering technique to enhance the accuracy and reliability of biological data analysis.
- Applications: Remove outliers or non-efficient sigmoidal signals for better PCR performance. Paper
Enhancing PCR-Based Diagnostics with Machine Learning
- Description: Combines machine learning algorithms with real-time digital PCR (dPCR) instruments to increase classification accuracy of multiplex PCR assays. Accurate Classification of 5 CPE genes in single-well and single-channel PCR reaction. Paper
- Applications: Identification of the five major carbapenem-resistant genes in clinical CPO-isolates. Paper
- Performance: Demonstrated excellent predictive performance with 99.6% accuracy.
- πΌ LinkedIn
- π¦ X @LucaMigliettaIC
I'm always open to new opportunities and collaborations. Let's connect and make a difference together!