

Author: Ma Yi Chen Bin Wang HongXiang Hu Kai Huang YiRan
Publisher: Oxford University Press
ISSN: 1460-2350
Source: Human Reproduction, Vol.26, Iss.2, 2011-02, pp. : 294-298
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Abstract
BACKGROUND At present, non-invasive methods are not comprehensive enough to enable urologists to predict sperm retrieval results accurately in patients with non-obstructive azoospermia (NOA). Our aim was to improve the prediction accuracy of sperm retrieval by using leptin and artificial neural networks (ANNs). METHODS Data from May 2004 to July 2010 for 280 patients with NOA were reviewed and assigned into the training and testing set for ANNs. All patients underwent standard diagnostic infertility evaluation and testicular sperm extraction (TESE). Twelve factors were recorded as the input variables for ANNs:
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