Exploring how artificial intelligence can improve the early detection and understanding of neurodegenerative diseases
Selected publications and forthcoming work on machine learning, digital biomarkers, and neurodegenerative disease detection.
Dr. Artur Chudzik (PhD), is an AI engineer and researcher specializing in medical artificial intelligence and computational neuroscience. His research focuses on explainable machine learning methods for the early detection and monitoring of neurodegenerative diseases, including Parkinson's and Alzheimer's disease.
He holds a PhD in Computer Science from the Polish-Japanese Academy of Information Technology in Warsaw. He earned both his M.Sc. and B.Sc. degrees in Computer Engineering from Rzeszow University of Technology, where he developed an eye-tracking system that enabled individuals with severe disabilities to communicate using eye movements - a project that received positive media coverage.
Currently, his research explores digital biomarkers derived from brain imaging, online cognitive testing, eye-tracking, and movement analysis. By combining interpretable machine learning with accessible digital tools, his work aims to enable earlier and more reliable detection of neurological disorders.
He also contributes to the academic community through peer review and has been recognized as a Reviewer of the Month by the journal Quantitative Imaging in Medicine and Surgery.
Alongside academic research, he has more than a decade of experience in software engineering and applied AI, building intelligent systems that are transparent, reliable, and clinically useful.
As a scientific side interest, he explores questions in cosmology and theoretical physics, including numerical studies of the relationship between cosmic time and the expansion of the universe and the analysis of gamma-ray bursts as cosmological probes.
I work on building machine learning systems for biomedical data that are not only accurate, but also understandable. I am especially interested in explainable AI - models that clinicians can trust and interpret. When AI is transparent, it can reveal meaningful patterns in data and make it easier to bring these tools into real healthcare settings.
My research explores how computational models can help us better understand the brain, particularly in neurodegenerative diseases. By connecting data analysis with biological processes, I aim to identify early changes in the brain and contribute to earlier detection and intervention strategies.
I am fascinated by complex systems - from high-dimensional data to mathematical models that describe how patterns emerge. Using tools from applied mathematics and data science, I study how structure and behavior arise in complicated systems, with the goal of improving both prediction and understanding.