Large-scale gene discovery in human airway epithelia reveals novel transcripts

Author:

Scheetz Todd E.12,Zabner Joseph3,Welsh Michael J.3,Coco Justin4,Eyestone Mari4,de Fatima Bonaldo Maria4,Kucaba Tamara4,Casavant Thomas L.562,Soares M. Bento4,McCray Paul B.4

Affiliation:

1. Ophthalmology

2. Center for Bioinformatics and Computational Biology, Roy J. and Lucille A. Carver College of Medicine, University of Iowa, Iowa City, Iowa 52242

3. Internal Medicine

4. Departments of Pediatrics

5. Electrical and Computer Engineering

6. Biomedical Engineering

Abstract

The airway epithelium represents an important barrier between the host and the environment. It is a first site of contact with pathogens, particulates, and other stimuli, and has evolved the means to dynamically respond to these challenges. In an effort to define the transcript profile of airway epithelia, we created and sequenced cDNA libraries from cystic fibrosis (CF) and non-CF epithelia and from human lung tissue. Sequencing of these libraries produced ∼53,000 3′-expressed sequence tags (3′-ESTs). From these, a nonredundant UniGene set of more than 19,000 sequences was generated. Despite the relatively small contribution of airway epithelia to the total mass of the lung, focused gene discovery in this tissue yielded novel results. The ESTs included several thousand transcripts (6,416) not previously identified from cDNA sequences as expressed in the lung. Among the abundant transcripts were several genes involved in host defense. Most importantly, the set also included 879 3′-ESTs that appear to be novel sequences not previously represented in the National Center for Biotechnology Information UniGene collection. This UniGene set should be useful for studies of pulmonary diseases involving the airway epithelium including cystic fibrosis, respiratory infections and asthma. It also provides a reagent for large-scale expression profiling.

Publisher

American Physiological Society

Subject

Genetics,Physiology

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