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Aristeidis Chatzimichail
Aristeidis Chatzimichail
Hellenic Complex Systems Laboratory
LOCATION: Drama
BLOG: Not indicated
INTERESTS IN JOBS & NETWORKING: Not indicated
ABOUT ME:

I am Fellow of the Hellenic Complex Systems Laboratory (HCSL). Established in 1993, HCSL is an innovative virtual research laboratory dedicated to evaluating and reducing uncertainty in complex systems. Through a transdisciplinary framework, HCSL develops novel clinical, laboratory, research, and educational tools to assess and address uncertainties inherent in complex processes. The principal research areas of HCSL include: 1. Designing, evaluating, and optimizing quality control (QC) procedures in laboratory medicine. 2. Evaluating and expressing measurement uncertainty. 3. Investigating diagnostic accuracy assessment techniques. 4. Applying and developing methodologies for Bayesian inference in medical diagnosis. In addition, HCSL explores genetic algorithms (GAs), neural networks (NNs), network science and statistics in complex systems. Notable achievements include: 1. 1993: Introduced a genetic algorithm–based design for statistical QC. 2. 2009: Developed a theoretical framework and algorithm for optimizing statistical QC of an analytical process based on the reliability of the analytical system and the risk of analytical error. 3. 2020: Created a software tool for exploring the relation between diagnostic accuracy and measurement uncertainty. 4. 2021: Proposed a method for estimating the uncertainty of diagnostic accuracy measures using uncertainty propagation rules. 5. 2022: Designed one-dimensional convolutional NNs to be applied to QC samples of very small size. 6. 2023: Developed a computational platform for parametric and nonparametric Bayesian medical diagnosis. 7. 2024: Produced a software tool for parametric estimation of Bayesian diagnostic measures and their uncertainty. HCSL has actively contributed to standards-development committees of the Clinical and Laboratory Standards Institute (CLSI) and served as a founding node of the Network of Excellence in Evolutionary Computing (Evonet).