Title :
Mining Unexpected Temporal Associations: Applications in Detecting Adverse Drug Reactions
Author :
Huidong Jin ; Jie Chen ; Hongxing He ; Williams, G.J. ; Kelman, C. ; O´Keefe, C.M.
Author_Institution :
Nat. Inf. & Commun. Technol. Australia (NICTA), Canberra, ACT
fDate :
7/1/2008 12:00:00 AM
Abstract :
In various real-world applications, it is very useful mining unanticipated episodes where certain event patterns unexpectedly lead to outcomes, e.g., taking two medicines together sometimes causing an adverse reaction. These unanticipated episodes are usually unexpected and infrequent, which makes existing data mining techniques, mainly designed to find frequent patterns, ineffective. In this paper, we propose unexpected temporal association rules (UTARs) to describe them. To handle the unexpectedness, we introduce a new interestingness measure, residual-leverage, and develop a novel case-based exclusion technique for its calculation. Combining it with an event-oriented data preparation technique to handle the infrequency, we develop a new algorithm MUTARC to find pairwise UTARs. The MUTARC is applied to generate adverse drug reaction (ADR) signals from real-world healthcare administrative databases. It reliably shortlists not only six known ADRs, but also another ADR, flucloxacillin possibly causing hepatitis, which our algorithm designers and experiment runners have not known before the experiments. The MUTARC performs much more effectively than existing techniques. This paper clearly illustrates the great potential along the new direction of ADR signal generation from healthcare administrative databases.
Keywords :
data mining; discrete event simulation; drugs; expert systems; health care; medical administrative data processing; medical signal processing; patient diagnosis; MUTARC; adverse drug reaction detection; case based exclusion technique; data mining techniques; event oriented data preparation; event pattern; flucloxacillin; healthcare administrative database; hepatitis; interestingness measure; residual leverage; signal generation; unexpected temporal association rules; Association rules; Australia; Communications technology; Data mining; Databases; Drugs; Event detection; Medical services; Signal generators; Adverse drug reaction (ADR); Data mining; adverse drug reaction; data mining; healthcare administrative databases; pharmacovigilance; unanticipated episode; unexpected temporal association; Adverse Drug Reaction Reporting Systems; Algorithms; Artificial Intelligence; Australia; Decision Support Systems, Clinical; Information Storage and Retrieval; Mandatory Reporting; Medical Records Systems, Computerized; Pattern Recognition, Automated; Risk Assessment;
Journal_Title :
Information Technology in Biomedicine, IEEE Transactions on
DOI :
10.1109/TITB.2007.900808