About us
Our Vision
We reshape how you approach your health, combining cutting-edge research with data-driven insights to create nutrition tailored to your unique biology. No guesswork — just a clear, science-backed path to feeling your best.
Science Behind Nutrifix
Our approach is grounded in the latest scientific research and the field of nutrigenomics. By ana-lysing individual biomarkers and genetic data, we’re able to offer precise, effective nutrition advice that works for you.
Supporting Studies
Our recommendations don’t come from trends – they’re backed by science. We’ve compiled the key studies that inform every aspect of our nutrition plans. From cutting-edge molecular biology to ancestral nutrition, these studies are the foundation of everything we do.
How Nutrifix Works
We focus on the essentials — optimising genetic predispositions and micronutrient imbalances to support overall homeostasis, and enhance perfor-mance. Our approach is laser-focused on results and your actual individual needs.
Our Story
Nutrifix was born from our own personal journeys in the pursuit of health optimisation. Our founders met at the crossroads of shared passion and scientific expertise. Together, we realised we could combine our knowledge to create truly personalised nutrition plans that anyone can access.
Meet the Experts
We are a team of biohackers, scientists, and nutrition geeks who live and breathe health optimization. Our diverse expertise enables us to deliver real, measurable results
Mihai
Longevity Geek
MSc Nutrigenomics
Founder with a focus on nutrigenomic research and practical biohacking.
Gabi
The mTOR Girl
MSc Nutrigenomics
Biotech engineer with a passion for molecular biology and performance optimization.
Diana
Lipids Freak
MD, PhD Molecular
Biochemistry
Lipid specialist and geneticist focusing on longevity.
Adrian
Metabolic Guy
PhD Biology,
MSc Nutrigenomics
Biochemist focused on metabolic pathways and nutrient programming.
Our Commitment
Nutrition shouldn’t be complicated, but it should be powerful. We’re crafting perso-nalised nutrient stacks that are not only effective but easy to follow. No more cutting out entire food groups or restrictive diets — just actionable, nutrient-packed plans tailored for you.
Our Future
We’re not stopping at nutrition. Nutrifix is expanding into comprehensive lifestyle optimisation — from fitness guidance to stress management strategies, we’re your go-to for everything related to health and wellness. Consider us your personal health concierge.
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