Title :
Use of Machine Learning Classification Techniques to Detect Atypical Behavior in Medical Applications
Author :
Ziemniak, Terrence
Author_Institution :
IS Security & Compliance Resurrection Health Care Chicago, Chicago, IL, USA
Abstract :
Health care informatics is growing at an incredible pace. Originally, health care organizations, like all other industries, used pen and paper to track medical information. Ten years ago the more mature health care organizations had simply practice management applications. Today, these organizations have full blown electronic health records systems. Tomorrow these organizations will be sharing information across the globe. Physicians (and the sponsoring organizations) are obligated to protect this data. Health care has followed the trend of many other industries in implementing technologies and processes to address certain risks. Encryption is enabled to ensure confidentiality. Business continuity techniques are applied to ensure system availability. However, there is no best practice solution that can be applied to the problem of detecting inappropriate activity. How can a hospital tell when Nurse Smith is "snooping" in medical records? How can a radiologist tell when a lab technician is feeding information to a law firm? This paper describes a system that will detect atypical behavior in a health care application. The first section will discuss the impetus for such a system. The second section will describe the design and implementation of this system. The third section will document a series of experiments showing the effectiveness of detecting atypical behavior and the analysis of whether said behavior was inappropriate.
Keywords :
cryptography; health care; learning (artificial intelligence); medical information systems; pattern classification; atypical behavior detection; business continuity techniques; electronic health records systems; encryption; health care informatics; machine learning classification techniques; medical applications; Accuracy; Biomedical equipment; Hospitals; Machine learning; Organizations; Security;
Conference_Titel :
IT Security Incident Management and IT Forensics (IMF), 2011 Sixth International Conference on
Conference_Location :
Stuttgart
Print_ISBN :
978-1-4577-0146-7
DOI :
10.1109/IMF.2011.20