A hybrid deep learning model for predicting and targeting the less immunized area to improve childrens vaccination rate

Author:

Mohanraj G.1,Mohanraj V.2,Senthilkumar J.2,Suresh Y.2

Affiliation:

1. Department of Computer Science and Engineering, Sona College of Technology, Salem, Tamil Nadu, India

2. Department of Information Technology, Sona College of Technology, Salem, Tamil Nadu, India

Abstract

There has been a major and rising interest in India for increasing vaccination rate among peoples to make the nation healthier and safer. In this paper, a new hybrid deep learning model is proposed to predict and target vaccination rates in the less immunized regions. The Rank-Based Multi-Layer Perceptron (R-MLP) hybrid deep learning framework uses the data collected from the recently updated District Level Household Survey-4 (DLHS). R-MLP model predicts and categorizes the percentage of partly immunized vaccination rates as extreme, low and medium ranges. This predicted findings are cross-verified by Deep Soft Cosine Semantic and Ranking SVM based model (DSS-RSM). DSS-RSM model uses the data obtained from the medical practitioners through a location-based social network. The proposed model predicts and extracts patterns with high similarity frequency for identifying vulnerable low immunization regions. It classifies the predicted patterns into two classes such as Class 1 is denoted as high ranked regions and Class 2 is denoted as low ranked regions based on the percentage of pattern matches. Finally, the results from R-MLP and DSS-RSM models are cross-linked together using ensemble model. This model finds the loss values to identify the target regions were health care program need to be conducted for increasing the level of immunization among children’s. The proposed hybrid deep learning models trains and validates using python-based Keras and TensorFlow deep learning libraries. The performance of the proposed hybrid deep learning model is compared with other variant machine learning techniques such as Decision Tree C5.0, Naive Bayes and Linear Regression. This comparative results are evaluated using evaluation measures such as Precision, Recall, Accuracy and F1-Measure. Our results show that the hybrid deep learning system is clearly superior to any other alternative approach.

Publisher

IOS Press

Subject

Artificial Intelligence,Computer Vision and Pattern Recognition,Theoretical Computer Science

Reference29 articles.

1. B. Paswan et al., National Family Health Survey (NFHS-4), 2015–16, in: Proceedings of the International Institute for Population Sciences on Family and Health Care Survey (IIPS) and International Classification of Functioning, Disability and Health (ICF), Controlled Press, India, 2016, pp. 1–6.

2. Vaccine hesitancy: Understanding better to address better;Kumar;Israel Journal of Health Policy Research,2016

3. Inequity in childhood immunization in India: A systematic review;Joseph;Indian Pediatrics,2012

4. A review of national health surveys in India;Rakhi;Bulletin of the World Health Organization,2016

5. Coverage of childhood vaccination among children aged 12–23 months, Tamil Nadu, 2015, India;Murhekar Manoj;Indian Journal of Medical Research,2017

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