Biomarker Identification + Medical Device

Predictive modeling to identify digital biomarkers to accelerate oncology diagnosis for a medical device

Machine learning to maximize signal-to-noise to differentiate between normal and malignant tissue.
The challenge

Our client has a nano mechanical sensor in clinical trials that can differentiate cell types in patient biopsies. This innovation promises to accelerate the diagnosis of cancer and offer personalized treatment recommendations. Our client needed data science driven analysis of the machine signal to identify mechanical biomarkers to differentiate normal and malignant tissue.

Our Solution

We engineered features to quantify machine signal and applied clustering, regression and machine learning analysis. We built a data engineering pipeline to handle large scale measurement data. We trained a predictive model to differentiate between normal and malignant cells, providing insight into the most important mechanical biomarkers. We are now partnering with our client to plan their MLOps infrastructure to deploy and manage predictive models in production, edge deployed within clinical environments.

OUR Product
Vivo, the solution for the overwhelming amount of data in clinical trials
See How Vivo Transforms Data into Decisions
Transform clinical trials with OmniScience’s AI-driven platform, unifying real-time data for faster insights, reduced costs, and smarter decisions.