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Home › Dataset Library › Gene expression data from 131 human subjects in Detroit, Michigan

Dataset: Gene expression data from 131 human subjects in Detroit, Michigan

Background Complex diseases are often difficult to diagnose, treat and study due to the multi-factorial nature of the underlying...

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Background Complex diseases are often difficult to diagnose, treat and study due to the multi-factorial nature of the underlying etiology. Large data sets are now widely available that can be used to define novel, mechanistically distinct disease subtypes (endotypes) in a completely data-driven manner. However, significant challenges exist with regard to how to segregate individuals into suitable subtypes of the disease and understand the distinct biological mechanisms of each when the goal is to maximize the discovery potential of these data sets. Results A multi-step decision tree-based method is described for defining endotypes based on gene expression, clinical covariates, and disease indicators using childhood asthma as a case study. We attempted to use alternative approaches such as the Student’s t-test, single data domain clustering and the Modk-prototypes algorithm, which incorporates multiple data domains into a single analysis and none performed as well as the novel multi-step decision tree method. This new method gave the best segregation of asthmatics and non-asthmatics, and it provides easy access to all genes and clinical covariates that distinguish the groups. Conclusions The multi-step decision tree method described here will lead to better understanding of complex disease in general by allowing purely data-driven disease endotypes to facilitate the discovery of new mechanisms underlying these diseases. This application should be considered a complement to ongoing efforts to better define and diagnose known endotypes. When coupled with existing methods developed to determine the genetics of gene expression, these methods provide a mechanism for linking genetics and exposomics data and thereby accounting for both major determinants of disease. We collected peripheral blood samples from 131 children for RNA extraction and hybridization of target cDNA onto Affymetrix Human U133 Plus 2.0 whole genome array.

Species:
human

Samples:
131

Source:
E-GEOD-35571

PubMed:
24188919

Updated:
Dec.12, 2014

Registered:
Jul.11, 2014


Factors: (via ArrayExpress)
Sample DISEASE STATUS AGE YR SEX
GSM871032 non-asthmatic 10.3 male
GSM87103 Asthmatic 10.0 female
GSM871030 Asthmatic 13.5 male
GSM871029 Asthmatic 9.8 male
GSM871028 N/A 12.9 female
GSM871027 non-asthmatic 10.8 male
GSM871026 non-asthmatic 12.5 male
GSM871026 non-asthmatic 12.5 male
GSM871029 Asthmatic 9.8 male
GSM871030 Asthmatic 13.5 male
GSM871022 non-asthmatic 11.4 female
GSM87102 non-asthmatic 11.3 male
GSM871020 non-asthmatic 9.9 female
GSM871019 Asthmatic 10.4 female
GSM871018 N/A 10.1 female
GSM871017 non-asthmatic 11.1 female
GSM871016 non-asthmatic 13.0 male
GSM871015 non-asthmatic 13.3 female
GSM871014 non-asthmatic 10.7 male
GSM871013 non-asthmatic 12.8 male
GSM871030 Asthmatic 13.5 male
GSM8710 Asthmatic 11.3 male
GSM871010 Asthmatic 13.1 female
GSM871009 Asthmatic 13.2 male
GSM871008 Asthmatic 12.8 female
GSM871007 non-asthmatic 10.8 female
GSM871006 non-asthmatic 13.3 male
GSM871008 Asthmatic 12.8 female
GSM871004 Asthmatic 12.5 female
GSM871003 non-asthmatic 12.5 female
GSM871002 Asthmatic 11.1 male
GSM8710 Asthmatic 11.3 male
GSM871020 non-asthmatic 9.9 female
GSM870999 Asthmatic 11.7 male
GSM870998 Asthmatic 10.4 male
GSM870997 non-asthmatic 12.4 female
GSM870996 non-asthmatic 10.6 female
GSM87102 non-asthmatic 11.3 male
GSM870994 non-asthmatic 11.2 male
GSM870993 Asthmatic 13.4 female
GSM870992 non-asthmatic 11.0 female
GSM871013 non-asthmatic 12.8 male
GSM870990 non-asthmatic 13.4 male
GSM870989 Asthmatic 11.2 female
GSM870988 Asthmatic 12.0 female
GSM870987 Asthmatic 11.6 male
GSM870986 non-asthmatic 12.3 male
GSM870994 non-asthmatic 11.2 male
GSM870984 Asthmatic 13.3 female
GSM871013 non-asthmatic 12.8 male
GSM870982 Asthmatic 9.8 female
GSM870990 non-asthmatic 13.4 male
GSM870980 non-asthmatic 11.7 female
GSM870992 non-asthmatic 11.0 female
GSM870978 non-asthmatic 12.7 female
GSM870977 Asthmatic 13.3 male
GSM870976 Asthmatic 10.7 male
GSM870990 non-asthmatic 13.4 male
GSM870974 non-asthmatic 10.7 female
GSM871030 Asthmatic 13.5 male
GSM870972 non-asthmatic 10.0 male
GSM87097 N/A 9.7 female
GSM870990 non-asthmatic 13.4 male
GSM870969 Asthmatic 12.2 male
GSM870972 non-asthmatic 10.0 male
GSM870967 non-asthmatic 11.1 male
GSM870966 N/A 10.1 male
GSM870965 non-asthmatic 10.3 female
GSM870964 non-asthmatic 11.7 male
GSM870963 Asthmatic 11.2 male
GSM870962 N/A 9.9 female
GSM87096 non-asthmatic 11.6 male
GSM870960 non-asthmatic 12.1 male
GSM870959 Asthmatic 13.4 male
GSM870958 Asthmatic 10.9 male
GSM870957 non-asthmatic 10.6 male
GSM870956 non-asthmatic 9.8 female
GSM870960 non-asthmatic 12.1 male
GSM870954 Asthmatic 9.9 male
GSM870953 non-asthmatic 12.2 female
GSM870952 non-asthmatic 13.2 female
GSM87095 Asthmatic 12.0 male
GSM870950 non-asthmatic 9.6 female
GSM871016 non-asthmatic 13.0 male
GSM870977 Asthmatic 13.3 male
GSM871026 non-asthmatic 12.5 male
GSM870946 non-asthmatic 12.2 male
GSM870945 Asthmatic 12.1 male
GSM871006 non-asthmatic 13.3 male
GSM870943 non-asthmatic 9.7 male
GSM870942 non-asthmatic 11.9 male
GSM87094 Asthmatic 10.2 female
GSM870940 Asthmatic 11.7 female
GSM870939 non-asthmatic 10.5 male
GSM870997 non-asthmatic 12.4 female
GSM870937 Asthmatic 10.8 male
GSM870936 Asthmatic 10.6 male
GSM871014 non-asthmatic 10.7 male
GSM87095 Asthmatic 12.0 male
GSM870997 non-asthmatic 12.4 female
GSM870932 Asthmatic 10.2 male
GSM871020 non-asthmatic 9.9 female
GSM870987 Asthmatic 11.6 male
GSM870929 N/A 13.1 female
GSM870928 non-asthmatic 12.1 female
GSM870993 Asthmatic 13.4 female
GSM870926 Asthmatic 9.5 male
GSM870925 non-asthmatic 10.1 female
GSM870924 Asthmatic 10.1 female
GSM870923 Asthmatic 11.5 female
GSM870922 Asthmatic 12.9 male
GSM87092 Asthmatic 13.1 male
GSM870920 non-asthmatic 10.5 female
GSM870919 Asthmatic 11.8 male
GSM87092 Asthmatic 13.1 male
GSM870932 Asthmatic 10.2 male
GSM871006 non-asthmatic 13.3 male
GSM870936 Asthmatic 10.6 male
GSM870914 Asthmatic 12.1 female
GSM871008 Asthmatic 12.8 female
GSM870912 N/A 13.4 male
GSM870922 Asthmatic 12.9 male
GSM870910 Asthmatic 12.3 female
GSM870909 non-asthmatic 11.3 female
GSM871013 non-asthmatic 12.8 male
GSM871009 Asthmatic 13.2 male
GSM870906 Asthmatic 11.3 female
GSM870905 Asthmatic 11.8 female
GSM870999 Asthmatic 11.7 male
GSM870903 Asthmatic 10.1 male
GSM870902 non-asthmatic 10.2 female

Tags

  • asthma
  • disease
  • genome
  • peripheral
  • tree

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