About PredictMod
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About the PredictMod Project
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.
Disclaimer
We make no guarantees on the accuracy of the predictions, and disclaim liability from damages resulting from its use. This site is for educational and informational purposes only, and should not be used instead of medical advice, treatment, or intervention.
License
We have chosen to apply the Creative Commons Attribution 4.0 International (CC BY 4.0) license to all our database sets. This means that you are free to copy, distribute, display and make commercial use of these databases in all legislations, provided you give us credit.
About the Mazumder Research Group
The Mazumder Research Group is involved in developing the High-performance Integrated Virtual Environment (HIVE) which aims to integrate various high throughput data analysis tools for bioinformatics. In addition to the HIVE platform, the lab is involved in developing bioinformatics tools and resources, such as standards for bioinformatics communication, knowledgebases for glycoinformatics and infectious diseases, cancer research, and microbiome analysis.
To learn more, visit the HIVE Lab Wiki.