For this meetup, we’ll have an invited speaker from IBM, Asad Mahmood, M.D., who will talk about two health-related applications he developed using Spark, Machine Learning and other technologies from the IBM Open Source Analytics portfolio.
The first application, Virtual Doc, is a user-interactive, Open Source web application for clinical medicine built in IBM Bluemix. Using patient records and patient satisfaction datasets that have been loaded into dashDB, IBM’s analytic cloud-based data warehouse, Virtual Doc prompts the user to enter their symptoms, suggests additional symptoms that may be related to the user’s present condition and then invokes Spark Machine Learning to calculate and predict the most likely diagnoses in real-time. Finally, Virtual Doc recommends the highest rated physicians by specialty that are best suited for the treatment/management of each predicted diagnosis.
The second application, Suicide Prevent, is an open source mobile application for the VA built as well in IBM Bluemix. Using patient medical and social media (Twitter, Facebook, LinkedIn) data that has been loaded into IBM Cloudant, Suicide Prevent invokes a standardized psychiatric scale in order to calculate a suicide risk score for each veteran loaded into the database. Based on the stratification of each score, Suicide Prevent then issues appropriate recommendations designed to continue preventative measures for low risk patients, schedule psychiatric consults for medium risk patients and contact emergency health services for hospitalization and rehabilitation of high risk patients.
Food and drinks will be provided by IBM.