Indian Journal of Occupational and Environmental Medicine   Official publication of Indian Association of  0ccupational  Health  
 Print this page Email this page   Small font sizeDefault font sizeIncrease font size
 Users Online:130

  IAOH | Subscription | e-Alerts | Feedback | Login 

Home About us Current Issue Archives Search Instructions
Read this article

 


    Article Cited by others

REVIEW ARTICLE

Using spirometry results in occupational medicine and research: Common errors and good practice in statistical analysis and reporting

Wagner N L, Beckett W S, Steinberg R

Year : 2006| Volume: 10| Issue : 1 | Page no: 5-10

   This article has been cited by
 
1 A 2-year follow-up of spirometric parameters in workers of a tile and ceramic industry, Yazd, southeastern Iran
Mehrparvar, A.H. and Mirmohammadi, S.J. and Mostaghaci, M. and Davari, M.H. and Hashemi, S.H.
International Journal of Occupational and Environmental Medicine. 2013; 4(2): 73-79
[Pubmed]  [Google Scholar]
2 Work related respiratory symptoms and pulmonary function tests observed among construction and sanitary workers of Thoothukudi
Mariammal, T. and Amutha Jaisheeba, A. and Sornaraj, R.
International Journal of PharmTech Research. 2012; 4(3): 1266-1273
[Pubmed]  [Google Scholar]
3 Effect of occupational exposure to dust on pulmonary function in workers associated with building demolition
Smilee, J.S. and Ajay, K.T. and Dhanyakumar, G. and Prabhu, R.N. and Vivian, S.T.
Biomedical Research. 2011; 22(2): 241-247
[Pubmed]  [Google Scholar]
4 Evaluation of flow - Volume spirometric test using neural network based prediction and principal component analysis
Kavitha, A. and Sujatha, M. and Ramakrishnan, S.
Journal of Medical Systems. 2011; 35(1): 127-133
[Pubmed]  [Google Scholar]
5 Evaluation of Flow–Volume Spirometric Test Using Neural Network Based Prediction and Principal Component Analysis
Anandan Kavitha,Manoharan Sujatha,Swaminathan Ramakrishnan
Journal of Medical Systems. 2011; 35(1): 127
[Pubmed]  [Google Scholar] [DOI]
6 Prediction of Spirometric Forced Expiratory Volume (FEV1) Data Using Support Vector Regression
A. Kavitha,C. Sujatha,S. Ramakrishnan
Measurement Science Review. 2010; 10(2)
[Pubmed]  [Google Scholar] [DOI]
7 Prediction of spirometric forced expiratory volume (FEV 1) data using support vector regression
Kavitha, A. and Sujatha, C.M. and Ramakrishnan, S.
Measurement Science Review. 2010; 10(2): 63-67
[Pubmed]  [Google Scholar]
8 Predictive equations for lung function based on a large occupational population in North China
Wu, Y., Zhang, Z., Gang, B., Love, E.J.
Journal of Occupational Health. 2009; 51(6): 471-477
[Pubmed]  [Google Scholar]