Abstract

Cigarette smoking is the major risk factor for development of lung cancer. Identification of effects of tobacco on airway gene expression may provide insight into the causes. This research aimed to compare gene expression of large airway epithelium cells in normal smokers (n=13) and non-smokers (n=9) in order to find genes which discriminate the two groups and assess cigarette smoking effects on large airway epithelium cells. Genes discriminating smokers from non-smokers were identified by applying a neural network clustering method, growing self-organizing maps (GSOM), to microarray data according to class discrimination scores. An index was computed based on differentiation between each mean of gene expression in the two groups. This clustering approach provided the possibility of comparing thousands of genes simultaneously. The applied approach compared the mean of 7,129 genes in smokers and non-smokers simultaneously and classified the genes of large airway epithelium cells which had differently expressed in smokers comparing with non-smokers. Seven genes were identified which had the highest different expression in smokers compared with the non-smokers group: NQO1, H19, ALDH3A1, AKR1C1, ABHD2, GPX2 and ADH7. Most (NQO1, ALDH3A1, AKR1C1, H19 and GPX2) are known to be clinically notable in lung cancer studies. Furthermore, statistical discriminate analysis showed that these genes could classify samples in smokers and non-smokers correctly with 100% accuracy. With the performed GSOM map, other nodes with high average discriminate scores included genes with alterations strongly related to the lung cancer such as AKR1C3, CYP1B1, UCHL1 and AKR1B10. This clustering by comparing expression of thousands of genes at the same time revealed alteration in normal smokers. Most of the identified genes were strongly relevant to lung cancer in the existing literature. The genes may be utilized to identify smokers with increased risk for lung cancer. A large sample study is now recommended to determine relations between the genes ABHD2 and ADH7 and smoking.

Highlights

  • Lung cancer is one of the most frequent human cancers and the leading cause of cancer- related death in males and the second leading cause of cancer death among females (Jemal et al, 2011)

  • Materials and Methods: Genes discriminating smokers from non-smokers were identified by applying a neural network clustering method, growing self-organizing maps (GSOM), to microarray data according to class discrimination scores

  • There are lots of evidences proving that smokers with a particular mutation have a dramatically higher risk to develop lung cancer

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Summary

Introduction

Lung cancer is one of the most frequent human cancers and the leading cause of cancer- related death in males and the second leading cause of cancer death among females (Jemal et al, 2011). The identification of effects of smoking on airway gene expression may provide an insight to study the cause of this elevated risk and to diagnosis and prognosis of the lung cancer. To asses these alterations, finding the genes which have the different expression and distinguish smokers from non-smokers could be useful. The applied approach in this article is part of Hsu approach to compare smokers and non-smokers large airway epithelium cells gene expression in order to find genes which expressed differently in smokers group. Seven genes were identified which had the highest different expression in smokers compared with the non-smokers group: NQO1, H19, ALDH3A1, AKR1C1, ABHD2, GPX2 and ADH7. A large sample study is recommended to determine relations between the genes ABHD2 and ADH7 and smoking

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