发明名称 Methods for optimizing and using medical diagnostic classifiers based on genetic algorithms
摘要 In a genetic optimization method, the genes of a chromosome population are computationally genetically evolved. The evolving includes evolving a number of expressed genes in each chromosome and employing a fitness criterion evaluated without reference to unexpressed genes of each chromosome. An optimized chromosome produced by the genetic evolving is selected.
申请公布号 US8798937(B2) 申请公布日期 2014.08.05
申请号 US200510597767 申请日期 2005.02.01
申请人 Koninklijke Philips N.V. 发明人 Schaffer J. David;Siimpson Mark R.
分类号 G01N33/48;G06F19/24 主分类号 G01N33/48
代理机构 代理人
主权项 1. A method for optimizing medical diagnostic classifiers using a genetic algorithm, the method comprising: training a classifier via a set of learning cases, the learning cases comprising measurement data for a set of measurements acquired from a pool of human test subjects some of whom have cancer and some of whom do not have cancer, the measurement data comprising measured concentrations of organic macromolecules; producing a first generation chromosome population comprising chromosomes, each chromosome represented as chromosomal bit-strings; assigning an index value to each gene of an ordered set of genes, wherein each index indexes a measurement of the set of measurements, and each gene of the ordered set of genes is represented as genetic bit-strings; assigning an ordinal position value to an expressed sub-set-size gene that separates expressed genes from unexpressed genes in the ordered set of genes; generating a fitness criterion that qualifies effectiveness of the expressed genes of each chromosome for identifying the cancer in the set of learning cases, the fitness criterion being evaluated without reference to the unexpressed genes of the chromosome to produce successive generation chromosome populations, wherein computational genetic evolving is performed by a computing system, the computational genetic evolving including: mating pairs of parent chromosomes of the present generation chromosome population to generate offspring chromosomes,for each offspring chromosome, computing a value for the fitness criterion using a classifier defined by the measurements specified by the expressed genes of the offspring chromosome without reference to the unexpressed genes of the offspring chromosome and trained on the set of learning cases, andselecting the next generation chromosome population based on the computed values of the fitness criterion; and selecting a classifier corresponding to a most it chromosome identified by genetic evolving.
地址 Eindhoven NL