Publications

A Cluster-Based Machine Learning Model for Large Healthcare Data Analysis [abstract]

A Cluster-Based Machine Learning Model for Large Healthcare Data Analysis [abstract]

A Cluster-Based Machine Learning Model for Large Healthcare Data Analysis

Fatemeh Sharifi, Emad Mohammed, Trafford Crump, Behrouz H. Far

Abstract

There is huge growth in the amount of patient survey data being generated in healthcare industries and hospitals. Curse of dimensionality is a barrier to extracting useful information from patient survey data which can help in the treatment and care of patients. It is paramount to have methods to find importance of features based on such huge volumes of stored information for the desired outputs. The health-related quality of life (HRQOL) is a powerful paradigm to help reaching such a desired output, measuring as patient satisfaction. In such scenarios, it is difficult to investigate the features, out of such high-dimensional data, that could best represent desired output and explain them so that such features can be used in the future at the point f care. In this paper we propose a Cluster-based Random Forest (CB-RF) method to particularly exploit the most important features for the desired output, which is Expanded Prostate Index Composite-26 (EPIC-26) domain scores. EPIC-26 is being used for assessing a range of HRQOL issues related to the diagnosis and treatment of prostate cancer. Different feature extraction methods are applied to extract features and the best method is the proposed CB-RF model which could find the most important features (10 or less) out of over 1500 features that can be used to accurately estimate patient with their EPIC-26 values with on average 85% coefficient of correlation between predicted and observed values of real dataset including 5093 patients.

Keywords

Machine learning Big data Patient quality of life Dimension reduction 

Part of the Communications in Computer and Information Science book series (CCIS, volume 1054)

Post-Doctoral Fellow Dr. Lian Willetts shines light on the frontiers of discovery

Dr. Lian Willetts was awarded 2nd place in the Falling Walls Lab Finale in Berlin representing Dr. John Lewis’ lab by presenting: “Breaking the Walls of Prostate Cancer Metastasis”

Lab Falling Walls is an international competition that challenges graduate students to showcase how their research is redefining their respective fields and breaking down the walls to the next major scientific breakthrough. The University of Alberta is one of 20 approved international events, and the Sept. 30 event saw 16 outstanding examples of graduate research. Dr. Willetts was awarded 1st place during this night.

International Labs and the Finale in Berlin

Falling Walls Lab is a global scale event that takes place in different vibrant cities around the world throughout the year. The Falling Walls Lab Finale is held each year in Berlin on 8 November. The Finale gathers 100 participants, among them all winners of the international Labs.

- Catalina Vasquez