Growing use of electronic medical records, advances in data mining and machine learning, and the continually increasing cost of healthcare in the United States drive the necessity of algorithmic solutions with the potential to improve patient care and reduce healthcare costs. Such algorithms can enable the identification of the most relevant parameters for predicting adverse events, reveal underlying physiological mechanisms of diseases, and determine likelihood of complications that may lead to rehospitalization of discharged patients. Key limitations in computational tools currently used in healthcare or with the potential to greatly benefit the healthcare system can be overcome by methods that allow for soft constraints or promote smooth...
There have been many recent advances in machine learning, resulting in models which have had major i...
Purpose:This study develops a pattern recognition method that identifies patterns based on their sim...
This dissertation focuses on solving problems for service systems improvement using newly developed ...
Early detection of acute hospitalizations and enhancing treatment efficiency is important to improve...
The proliferation of digitally-available medical data has enabled a new paradigm of decision-making ...
Over the past decades, analytics have provided the promise of revolutionizing healthcare, providing ...
Clustering real-world data is a challenging task, since many real-data collections are characterized...
OBJECTIVE: To derive a predictive model to identify patients likely to be hospitalized during the fo...
Increasingly we are faced with complex health data, thus researchers are limited in their capacity t...
Thesis: Ph. D., Massachusetts Institute of Technology, Sloan School of Management, Operations Resear...
Disease progression manifests through a broad spectrum of statically and longitudinally linked clini...
© 2017 Dr Yamuna KankanigePredicting health-related outcomes is important for developing decision su...
The huge amount of healthcare data, coupled with the need for data analysis tools has made data mini...
The United States health-care system is considered to be unsustainable due to its unbearably high co...
The availability of data and advanced data analysis tools in the health care domain provide great op...
There have been many recent advances in machine learning, resulting in models which have had major i...
Purpose:This study develops a pattern recognition method that identifies patterns based on their sim...
This dissertation focuses on solving problems for service systems improvement using newly developed ...
Early detection of acute hospitalizations and enhancing treatment efficiency is important to improve...
The proliferation of digitally-available medical data has enabled a new paradigm of decision-making ...
Over the past decades, analytics have provided the promise of revolutionizing healthcare, providing ...
Clustering real-world data is a challenging task, since many real-data collections are characterized...
OBJECTIVE: To derive a predictive model to identify patients likely to be hospitalized during the fo...
Increasingly we are faced with complex health data, thus researchers are limited in their capacity t...
Thesis: Ph. D., Massachusetts Institute of Technology, Sloan School of Management, Operations Resear...
Disease progression manifests through a broad spectrum of statically and longitudinally linked clini...
© 2017 Dr Yamuna KankanigePredicting health-related outcomes is important for developing decision su...
The huge amount of healthcare data, coupled with the need for data analysis tools has made data mini...
The United States health-care system is considered to be unsustainable due to its unbearably high co...
The availability of data and advanced data analysis tools in the health care domain provide great op...
There have been many recent advances in machine learning, resulting in models which have had major i...
Purpose:This study develops a pattern recognition method that identifies patterns based on their sim...
This dissertation focuses on solving problems for service systems improvement using newly developed ...