Search Results

You are looking at 1 - 1 of 1 items for

  • Author: Joanna Smyczyńska x
Clear All Modify Search
Urszula Smyczyńska Department of Automatics and Biomedical Engineering, AGH University of Science and Technology, Krakow, Poland

Search for other papers by Urszula Smyczyńska in
Google Scholar
PubMed
Close
,
Joanna Smyczyńska Department of Endocrinology and Metabolic Diseases, Polish Mother’s Memorial Hospital – Research Institute, Lodz, Poland

Search for other papers by Joanna Smyczyńska in
Google Scholar
PubMed
Close
,
Maciej Hilczer Department of Endocrinology and Metabolic Diseases, Polish Mother’s Memorial Hospital – Research Institute, Lodz, Poland
Department of Paediatric Endocrinology, Medical University of Lodz, Lodz, Poland

Search for other papers by Maciej Hilczer in
Google Scholar
PubMed
Close
,
Renata Stawerska Department of Endocrinology and Metabolic Diseases, Polish Mother’s Memorial Hospital – Research Institute, Lodz, Poland

Search for other papers by Renata Stawerska in
Google Scholar
PubMed
Close
,
Ryszard Tadeusiewicz Department of Automatics and Biomedical Engineering, AGH University of Science and Technology, Krakow, Poland

Search for other papers by Ryszard Tadeusiewicz in
Google Scholar
PubMed
Close
, and
Andrzej Lewiński Department of Endocrinology and Metabolic Diseases, Polish Mother’s Memorial Hospital – Research Institute, Lodz, Poland
Department of Endocrinology and Metabolic Diseases, Medical University of Lodz, Lodz, Poland

Search for other papers by Andrzej Lewiński in
Google Scholar
PubMed
Close

Mathematical models have been applied in prediction of growth hormone treatment effectiveness in children since the end of 1990s. Usually they were multiple linear regression models; however, there are also examples derived by empirical non-linear methods. Proposed solution consists in application of machine learning technique – artificial neural networks – to analyse this problem. This new methodology, contrary to previous ones, allows detection of both linear and non-linear dependencies without assuming their character a priori. The aims of this work included: development of models predicting separately growth during 1st year of treatment and final height as well as identification of important predictors and in-depth analysis of their influence on treatment’s effectiveness. The models were derived on the basis of clinical data of 272 patients treated for at least 1 year, 133 of whom have already attained final height. Starting from models containing 17 and 20 potential predictors, respectively for 1st year and final height model, we were able to reduce their number to 9 and 10. Basing on the final models, IGF-I concentration and earlier growth were indicated as belonging to most important predictors of response to GH therapy, while results of GH secretion tests were automatically excluded as insignificant. Moreover, majority of the dependencies were observed to be non-linear, thus using neural networks seems to be reasonable approach despite it being more complex than previously applied methods.

Open access