Title :
A fuzzy measurement-based assessment of breast cancer prognostic markers
Author :
Seker, H. ; Odetayo, M. ; Petrovic, D. ; Naguib, R.N.G. ; Bartoli, C. ; Alasio, L. ; Lakshmi, M.S. ; Sherbet, V.
Author_Institution :
Sch. of Math. & Inf. Sci., Coventry Univ., UK
Abstract :
The paper aims to assess breast cancer prognostic markers and to determine an optimum subset that can yield high prediction accuracy for an individual breast cancer patient´s prognosis by means of a fuzzy measurement derived from the fuzzy k-nearest neighbour algorithm (FK-NN). The analyses are carried out for both nodal involvement and five-year survival. The data set used for the analysis of breast cancer prognosis consists of seven input markers (histology type, grade, DNA ploidy, S-Phase Fraction (SPF), G0G1/G2M ratio, minimum and maximum nuclear pleomorphism indices (NPI)) and two corresponding outputs to be predicted (negative or positive nodal status in the case of nodal involvement assessment, and whether the patient is alive or dead within 5 years of diagnosis for survival analysis). The highest predictive accuracy is 78% with the fuzzy measurement of 0.7254 for nodal involvement assessment, and 88% with the fuzzy measurement of 0.8183 for survival analysis. The best results are obtained from the subset (Histology type, Grade, DNA. Ploidy, SPF (%), G0G1/G2M Ratio) for survival prediction and the subset (Grade, SPF, minimum NPI) for nodal involvement analysis
Keywords :
cancer; fuzzy set theory; medical diagnostic computing; medical expert systems; DNA ploidy; FK-NN; S-Phase Fraction; breast cancer patient; breast cancer prognosis; breast cancer prognostic markers; data set; fuzzy k-nearest neighbour algorithm; fuzzy measurement; fuzzy measurement based assessment; histology type; input markers; nodal involvement; nodal involvement analysis; nodal involvement assessment; nuclear pleomorphism indices; optimum subset; positive nodal status; prediction accuracy; predictive accuracy; survival analysis; survival prediction; Accuracy; Artificial intelligence; Biomedical computing; Biomedical measurements; Breast cancer; DNA; Diseases; Medical diagnostic imaging; Oncology; USA Councils;
Conference_Titel :
Information Technology Applications in Biomedicine, 2000. Proceedings. 2000 IEEE EMBS International Conference on
Conference_Location :
Arlington, VA
Print_ISBN :
0-7803-6449-X
DOI :
10.1109/ITAB.2000.892381