Fusion of FNA-cytology and Gene-expression Data Using Dempster-Shafer Theory of Evidence to Predict Breast Cancer Tumors

Decision-in decision-out fusion architecture can be used to fuse the outputs of multiple classifiers from different diagnostic sources. In this paper, Dempster-Shafer Theory (DST) has been used to fuse classification results of breast cancer data from two different sources: gene-expression patterns in peripheral blood cells and Fine-Needle Aspirate Cytology (FNAc) data. Classification of individual sources is done by Support Vector Machine (SVM) with linear, polynomial and Radial Base Function (RBF) kernels. Out put belief of classifiers of both data sources are combined to arrive at one final decision. Dynamic uncertainty assessment is based on class differentiation of the breast cancer. Experimental results have shown that the new proposed breast cancer data fusion methodology have outperformed single classification models.

[1]  Z. Hall Cancer , 1906, The Hospital.

[2]  ScienceDirect The American journal of pathology , 1925 .

[3]  L. Tippett,et al.  Applied Statistics. A Journal of the Royal Statistical Society , 1952 .

[4]  E. W. Shrigley Medical Physics , 1944, British medical journal.

[5]  E H Cooper,et al.  Progress in Clinical Cancer , 1976, Springer Berlin Heidelberg.

[6]  H. Bush,et al.  Breast Cancer Research , 1978, British Journal of Cancer.

[7]  R. Fildes Journal of the American Statistical Association : William S. Cleveland, Marylyn E. McGill and Robert McGill, The shape parameter for a two variable graph 83 (1988) 289-300 , 1989 .

[8]  Oncology research. , 1992, New Jersey medicine : the journal of the Medical Society of New Jersey.

[9]  Thomas G. Dietterich What is machine learning? , 2020, Archives of Disease in Childhood.

[10]  김삼묘,et al.  “Bioinformatics” 특집을 내면서 , 2000 .