Title of article :
Pathway-based identification of a smoking associated 6-gene signature predictive of lung cancer risk and survival
Author/Authors :
Guo، نويسنده , , Nancy Lan and Wan، نويسنده , , Ying-Wooi، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2012
Abstract :
Objective
g is a prominent risk factor for lung cancer. However, it is not an established prognostic factor for lung cancer in clinics. To date, no gene test is available for diagnostic screening of lung cancer risk or prognostication of clinical outcome in smokers. This study sought to identify a smoking associated gene signature in order to provide a more precise diagnosis and prognosis of lung cancer in smokers.
s and materials
lication network based methodology was used to identify biomarkers by modeling crosstalk with major lung cancer signaling pathways. Specifically, the methodology contains the following steps: (1) identifying genes significantly associated with lung cancer survival; (2) selecting candidate genes which are differentially expressed in smokers versus non-smokers from the survival genes identified in Step 1; (3) from these candidate genes, constructing gene coexpression networks based on prediction logic for the smoker group and the non-smoker group, respectively; (4) identifying smoking-mediated differential components, i.e., the unique gene coexpression patterns specific to each group; and (5) from the differential components, identifying genes directly co-expressed with major lung cancer signaling hallmarks.
s
ing-associated 6-gene signature was identified for prognosis of lung cancer from a training cohort (n = 256). The 6-gene signature could separate lung cancer patients into two risk groups with distinct post-operative survival (log-rank P < 0.04, Kaplan–Meier analyses) in three independent cohorts (n = 427). The expression-defined prognostic prediction is strongly related to smoking association and smoking cessation (P < 0.02; Pearsonʹs Chi-squared tests). The 6-gene signature is an accurate prognostic factor (hazard ratio = 1.89, 95% CI: [1.04, 3.43]) compared to common clinical covariates in multivariate Cox analysis. The 6-gene signature also provides an accurate diagnosis of lung cancer with an overall accuracy of 73% in a cohort of smokers (n = 164). The coexpression patterns derived from the implication networks were validated with interactions reported in the literature retrieved with STRING8, Ingenuity Pathway Analysis, and Pathway Studio.
sions
thway-based approach identified a smoking-associated 6-gene signature that predicts lung cancer risk and survival. This gene signature has potential clinical implications in the diagnosis and prognosis of lung cancer in smokers.
Keywords :
Implication networks based on prediction logic , Gene coexpression networks based on formal logic , Smoking , Gene signature , Lung cancer diagnosis and prognosis , Signaling Pathways
Journal title :
Artificial Intelligence In Medicine
Journal title :
Artificial Intelligence In Medicine