Site icon Premium Researchers

Federated Learning Approach to Support Biopharma and Healthcare Collaboration to Accelerate Crisis Response

Do You Have New or Fresh Topic? Send Us Your Topic


Post Views:
0

Abstract

During a pandemic, such as COVID-19, the scientific community must optimize collaboration, as part of the race against time to identify and repurpose existing treatments. Today, Artificial Intelligence (AI) offers us a significant opportunity to generate insights and provide predictive models that could substantially improve the opportunities for understanding the core metrics that characterize the epidemic. A principal barrier for effective AI models in a collaborative environment, especially in the medical and pharmaceutical industries, is dealing with datasets that are distributed across multiple organizations, as traditional AI models rely on the datasets being in one location. In the status quo, organizations must slog through a costly and time-consuming process of extract-transform-loading to build a dataset in a singular location. This paper addresses how Federated Learning may be applied to facilitate flexible AI models that have been trained on biopharma and clinical unstructured data, with a special focus on extracting actionable intelligence from existing research and communications via Natural Language Processing (NLP).

Related

Previous articlePrediction of Diabetes Disease Using Machine Learning ModelNext articleSecured Image Retrieval from Cloud Repository Using Image Encryption Scheme

Not What You Were Looking For? Send Us Your Topic

INSTRUCTIONS AFTER PAYMENT

After making payment, kindly send the following:

» Send the above details to our email; contact@premiumresearchers.com or to our support phone number; (+234) 0813 2546 417 . As soon as details are sent and payment is confirmed, your project will be delivered to you within minutes.