4.7 Article

Diabetes detection using deep learning techniques with oversampling and feature augmentation

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ELSEVIER IRELAND LTD
DOI: 10.1016/j.cmpb.2021.105968

关键词

Diabetes; Detection; Deep learning; Sparse autoencoder; Variational autoencoder; Oversampling

资金

  1. Consejeria de Educacion, Junta de Castilla y Leon [LE078G18, UXXI2018/000149, U-220]

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This paper proposes a deep learning pipeline to predict diabetic people, achieving a high accuracy rate. The use of this method shows promising results in the field of diabetes detection, outperforming existing proposals.
Background and objective : Diabetes is a chronic pathology which is affecting more and more people over the years. It gives rise to a large number of deaths each year. Furthermore, many people living with the disease do not realize the seriousness of their health status early enough. Late diagnosis brings about numerous health problems and a large number of deaths each year so the development of methods for the early diagnosis of this pathology is essential.& nbsp; & nbsp;Methods: In this paper, a pipeline based on deep learning techniques is proposed to predict diabetic peo-ple. It includes data augmentation using a variational autoencoder (VAE), feature augmentation using an sparse autoencoder (SAE) and a convolutional neural network for classification. Pima Indians Diabetes Database, which takes into account information on the patients such as the number of pregnancies, glu-cose or insulin level, blood pressure or age, has been evaluated.& nbsp; Results: A 92 . 31% of accuracy was obtained when CNN classifier is trained jointly the SAE for featuring augmentation over a well balanced dataset. This means an increment of 3.17% of accuracy with respect the state-of-the-art.& nbsp; Conclusions : Using a full deep learning pipeline for data preprocessing and classification has demonstrate to be very promising in the diabetes detection field outperforming the state-of-the-art proposals.& nbsp; (c) 2021 Elsevier B.V. All rights reserved.

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