KIR Genes and Patterns Given by the A Priori Algorithm: Immunity for Haematological Malignancies
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Killer-cell immunoglobulin-like receptors (KIRs) are membrane proteins expressed by cells of innate and adaptive immunity. The KIR system consists of 17 genes and 614 alleles arranged into different haplotypes. KIR genes modulate susceptibility to haematological malignancies, viral infections, and autoimmune diseases. Molecular epidemiology studies rely on traditional statistical methods to identify associations between KIR genes and disease. We have previously described our results by applying support vector machines to identify associations between KIR genes and disease. However, rules specifying which haplotypes are associated with greater susceptibility to malignancies are lacking. Here we present the results of our investigation into the rules governing haematological malignancy susceptibility. We have studied the different haplotypic combinations of 17 KIR genes in 300 healthy individuals and 43 patients with haematological malignancies (25 with leukaemia and 18 with lymphomas). We compare two machine learning algorithms against traditional statistical analysis and show that the a priori algorithm is capable of discovering patterns unrevealed by previous algorithms and statistical approaches. © 2015 J. Gilberto Rodríguez-Escobedo et al.
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killer cell immunoglobulin like receptor; killer cell immunoglobulin like receptor; adult; algorithm; Article; cancer susceptibility; controlled study; female; genotype; hematologic malignancy; human; leukemia; lymphoma; machine learning; major clinical study; male; tumor immunity; young adult; biological model; case control study; genetic predisposition; genetics; haplotype; hematologic disease; immunology; mathematical computing; multivariate analysis; systems biology; Adult; Algorithms; Case-Control Studies; Female; Genetic Predisposition to Disease; Haplotypes; Hematologic Neoplasms; Humans; Machine Learning; Male; Mathematical Computing; Models, Genetic; Multivariate Analysis; Receptors, KIR; Systems Biology; Young Adult
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