Prediction of Postpartum Depression Using Multilayer Perceptrons and Pruning

Journal:Methods of Information in Medicine
ISSN:0026-1270
DOI:http://dx.doi.org/10.3414/ME0562
Issue:2009 (Vol. 48): Issue 3 2009
Pages:291-298

Prediction of Postpartum Depression Using Multilayer Perceptrons and Pruning

S. Tortajada (1), J. M. García-Gomez (1), J. Vicente (1), J. Sanjuán (2), R. de Frutos (2), R. Martín-Santos (3), L. García-Esteve (3), I. Gornemann (4), A. Gutiérrez-Zotes (5), F. Canellas (6), Á. Carracedo (7), M. Gratacos (8), R. Guillamat (9), E. Baca-García (10), M. Robles (1)

(1) IBIME, Instituto de Aplicaciones de las Tecnologías de la Información y de las Comunicaciones Avanzadas (ITACA), Universidad Politécnica de Valencia, Valencia, Spain; (2) Faculty of Medicine, Universidad de Valencia, Valencia CIBERSAM, Spain; (3) IMIM-Hospital del Mar and ICN-Hospital Clínic, Barcelona CIBERSAM, Spain; (4) Hospital Carlos Haya, Málaga, Spain; (5) Hospital Pere Mata, Reus, Spain; (6) Hospital Son Dureta, Palma de Mallorca, Spain; (7) National Genotyping Center, Hospital Clínico, Santiago de Compostela, Spain; (8) Center for Genomic Regulation, CRG, Barcelona, Spain; (9) Hospital Parc Tauli, Sabadell, Spain; (10) Hospital Jiménez Díaz, Madrid CIBERSAM, Spain

Summary

Objective: The main goal of this paper is to obtain a classification model based on feed-forward multilayer perceptrons in order to improve postpartum depression prediction during the 32 weeks after childbirth with a high sensitivity and specificity and to develop a tool to be integrated in a decision support system for clinicians. Materials and Methods: Multilayer perceptrons were trained on data from 1397 women who had just given birth, from seven Spanish general hospitals, including clinical, environmental and genetic variables. A prospective cohort study was made just after delivery, at 8 weeks and at 32 weeks after delivery. The models were evaluated with the geometric mean of accuracies using a hold-out strategy. Results: Multilayer perceptrons showed good performance (high sensitivity and specificity) as predictive models for postpartum depression. Conclusions: The use of these models in a decision support system can be clinically evaluated in future work. The analysis of the models by pruning leads to a qualitative interpretation of the influence of each variable in the interest of clinical protocols.

Keywords

postpartum depression, Multilayer perceptron, neural network, pruning

DOI

http://dx.doi.org/10.3414/ME0562

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