Would artificial neural networks implemented in clinical wards help nephrologists in predicting epoetin responsiveness?

<p>Abstract</p> <p>Background</p> <p>Due to its strong intra- and inter-individual variability, predicting the ideal erythropoietin dose is a difficult task. The aim of this study was to re-evaluate the impact of the main parameters known to influence the responsiveness...

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Main Authors: Marone Claudio, Bianda Josephine, Lötscher Nathalie, Gabutti Luca, Mombelli Giorgio, Burnier Michel
Format: Article
Language:English
Published: BMC 2006-09-01
Series:BMC Nephrology
Online Access:http://www.biomedcentral.com/1471-2369/7/13
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spelling doaj-6f2c7b2a38da4605bdc341936b29a2042020-11-24T20:57:55ZengBMCBMC Nephrology1471-23692006-09-01711310.1186/1471-2369-7-13Would artificial neural networks implemented in clinical wards help nephrologists in predicting epoetin responsiveness?Marone ClaudioBianda JosephineLötscher NathalieGabutti LucaMombelli GiorgioBurnier Michel<p>Abstract</p> <p>Background</p> <p>Due to its strong intra- and inter-individual variability, predicting the ideal erythropoietin dose is a difficult task. The aim of this study was to re-evaluate the impact of the main parameters known to influence the responsiveness to epoetin beta and to test the performance of artificial neural networks (ANNs) in predicting the dose required to reach the haemoglobin target and the monthly dose adjustments.</p> <p>Methods</p> <p>We did a secondary analysis of the survey on Anaemia Management in dialysis patients in Switzerland; a prospective, non-randomized observational study, enrolling 340 patients of 26 centres and in order to have additional information about erythropoietin responsiveness, we included a further 92 patients from the Renal Services of the Ente Ospedaliero Cantonale, Bellinzona, Switzerland. The performance of ANNs in predicting the epoetin dose was compared with that of linear regressions and of nephrologists in charge of the patients.</p> <p>Results</p> <p>For a specificity of 50%, the sensitivity of ANNs compared with linear regressions in predicting the erythropoietin dose to reach the haemoglobin target was 78 vs. 44% (<it>P </it>< 0.001). The ANN built to predict the monthly adaptations in erythropoietin dose, compared with the nephrologists' opinion, allowed to detect 48 vs. 25% (<it>P </it>< 0.05) of the patients treated with an insufficient dose with a specificity of 92 vs. 83% (<it>P </it>< 0.05).</p> <p>Conclusion</p> <p>In predicting the erythropoietin dose required for an individual patient and the monthly dose adjustments ANNs are superior to nephrologists' opinion. Thus, ANN may be a useful and promising tool that could be implemented in clinical wards to help nephrologists in prescribing erythropoietin.</p> http://www.biomedcentral.com/1471-2369/7/13
collection DOAJ
language English
format Article
sources DOAJ
author Marone Claudio
Bianda Josephine
Lötscher Nathalie
Gabutti Luca
Mombelli Giorgio
Burnier Michel
spellingShingle Marone Claudio
Bianda Josephine
Lötscher Nathalie
Gabutti Luca
Mombelli Giorgio
Burnier Michel
Would artificial neural networks implemented in clinical wards help nephrologists in predicting epoetin responsiveness?
BMC Nephrology
author_facet Marone Claudio
Bianda Josephine
Lötscher Nathalie
Gabutti Luca
Mombelli Giorgio
Burnier Michel
author_sort Marone Claudio
title Would artificial neural networks implemented in clinical wards help nephrologists in predicting epoetin responsiveness?
title_short Would artificial neural networks implemented in clinical wards help nephrologists in predicting epoetin responsiveness?
title_full Would artificial neural networks implemented in clinical wards help nephrologists in predicting epoetin responsiveness?
title_fullStr Would artificial neural networks implemented in clinical wards help nephrologists in predicting epoetin responsiveness?
title_full_unstemmed Would artificial neural networks implemented in clinical wards help nephrologists in predicting epoetin responsiveness?
title_sort would artificial neural networks implemented in clinical wards help nephrologists in predicting epoetin responsiveness?
publisher BMC
series BMC Nephrology
issn 1471-2369
publishDate 2006-09-01
description <p>Abstract</p> <p>Background</p> <p>Due to its strong intra- and inter-individual variability, predicting the ideal erythropoietin dose is a difficult task. The aim of this study was to re-evaluate the impact of the main parameters known to influence the responsiveness to epoetin beta and to test the performance of artificial neural networks (ANNs) in predicting the dose required to reach the haemoglobin target and the monthly dose adjustments.</p> <p>Methods</p> <p>We did a secondary analysis of the survey on Anaemia Management in dialysis patients in Switzerland; a prospective, non-randomized observational study, enrolling 340 patients of 26 centres and in order to have additional information about erythropoietin responsiveness, we included a further 92 patients from the Renal Services of the Ente Ospedaliero Cantonale, Bellinzona, Switzerland. The performance of ANNs in predicting the epoetin dose was compared with that of linear regressions and of nephrologists in charge of the patients.</p> <p>Results</p> <p>For a specificity of 50%, the sensitivity of ANNs compared with linear regressions in predicting the erythropoietin dose to reach the haemoglobin target was 78 vs. 44% (<it>P </it>< 0.001). The ANN built to predict the monthly adaptations in erythropoietin dose, compared with the nephrologists' opinion, allowed to detect 48 vs. 25% (<it>P </it>< 0.05) of the patients treated with an insufficient dose with a specificity of 92 vs. 83% (<it>P </it>< 0.05).</p> <p>Conclusion</p> <p>In predicting the erythropoietin dose required for an individual patient and the monthly dose adjustments ANNs are superior to nephrologists' opinion. Thus, ANN may be a useful and promising tool that could be implemented in clinical wards to help nephrologists in prescribing erythropoietin.</p>
url http://www.biomedcentral.com/1471-2369/7/13
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