PredictMod
About
PredictMod (https://hivelab.biochemistry.gwu.edu/predictmod) is an application designed to provide clinicians with a powerful decision making tool that enhances clinical understanding of patient-level data. Through the use of the open-source PredictMod platform, clinicians, patients, and researchers will access predictive ML models based on real-world data. The platform empowers users with limited experience in bioinformatics to leverage the power of predictive modeling, providing a collaborative solution for improving patient outcomes. The PredictMod platform utilizes ML tools and complex datasets based on electronic medical records (EMR), gut microbiome, and other -omics data to forecast patient outcomes, often in response to treatment for a particular condition.
While our primary conditions of interest are prediabetes and cancer, the tool is designed to be used for a variety of conditions, interventions, and data types. The agnostic nature of the platform allows for widespread use and relevance to all fields within the scope of medicine.
Publications & MultiMedia
Recent Publications:PredictMod: a machine learning-based platform for predicting and sharing intervention outcomes in patients.
Krammer L, Aggarwal V, Bhuiyan U, McNeely P, Mazumder R. PredictMod: a machine learning-based platform for predicting and sharing intervention outcomes in patients. Poster presented at: 22nd International Conference on Artificial Intelligence in Medicine; July 9-12, 2024; Salt Lake City, Utah, USA.
Current and Former Contributors
The George Washington University
Raja Mazumder
Pat McNeely
Urnisha Bhuiyan
Lori Krammer
Miguel Mazumder
External Collaborators
Sabyasachi Sen, Veterans Administration
Jorge Sepulveda, Medical Faculty Associates
Atin Basu Choudhary, Virginia Military Institute
John David, Virginia Military Institute
Vinod Aggarwal, Veterans Administration
Former Contributors
Abel Argaw
Stephanie Singleton
Sangeeta Agarwal
Zacharie Savarie
Janet Chrosniak
Josh Hakakian
Nicole Richmond
Wilma Jogunoori
Arad Jain
Hadley King
Robel Kahsay
Special thanks to our interns and volunteers.