Disease diagnosis validation in TROPIX using CBR

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摘要

1TROPIX is a practical application project initially designed to help improve health care delivery in the rural/semi urban clinics and public hospitals in Nigeria due largely to limited laboratory facilities, medical doctors, and expertise. This paper is devoted to the use of case-based reasoning (CBR) paradigm in concert with statistical association-based reasoning (ABR) for disease diagnosis, validation and therapy selection components of the research. Essentially, tentative disease diagnosis arrived at by some classification method using similarity and dissimilarity aggregate functions, the matched vector functions (MVF), aided by the application of evidence ratio factors (ERF) for tied match cases is passed to the CBR model for validation by reusing past similar cases. The design and organization of the case-library using singular value decomposition (SVD) technique on the disease-attribute decision matrix to generate primary/secondary storage key clusters, as well as the use of domain-specific case-object properties that help to build a good case-base are described in some detail. The paper presents a disease case validation algorithm for appropriate data filtering and therapy selection enhancement from the new case-base.

论文关键词:Disease,Diagnosis,Validation,Classification,Clustering,TROPIX,Case library,Data filtering

论文评审过程:Received 30 April 1996, Revised 31 August 1996, Accepted 15 April 1997, Available online 19 February 1998.

论文官网地址:https://doi.org/10.1016/S0933-3657(97)00039-0