Evolutionary radial basis function network for gestational diabetes data analytics

Abstract The development of smart decision support systems (DSSs) that seek to simulate human behavioral aspects is a major challenge for computational intelligence (CI). Artificial neural network (ANN) approaches have the ability to solve complex decision-making problems that involve uncertainty and a large amount of information in a fast and reliable way. The application of this evolutionary CI technique to analyze a large amount of data is an important strategy to solve several problems in healthcare management. This paper proposes the modeling, performance evaluation, and comparison analysis of an ANN technique known as the radial basis function network (RBFNetwork) to identify possible cases of gestational diabetes that can lead to multiple risks for both the pregnant women and the fetus. This method achieved promising results with a precision of 0.785, F -measure of 0.786, ROC area of 0.839, and Kappa statistic of 0.5092. These indicators show that this ANN-based approach is an excellent predictor for gestational diabetes mellitus. This research provides a comprehensive decision-making model capable of improving the care provided to women who are at a risk of developing gestational diabetes, which is the most common metabolic problem in gestation with a prevalence of 3–18%. Thus, this work can contribute to the reduction of maternal and fetal mortality and morbidity rates.

[1]  Francesc Moreno-Noguer,et al.  Learning Depth-Aware Deep Representations for Robotic Perception , 2017, IEEE Robotics and Automation Letters.

[2]  Gerardo Maximiliano Mendez,et al.  Non-iterative Radial Basis Function Neural Networks to Quality Control via Image Processing , 2015, IEEE Latin America Transactions.

[3]  Harichandran Khanna Nehemiah,et al.  A Swarm Optimization approach for clinical knowledge mining , 2015, Comput. Methods Programs Biomed..

[4]  D.M. Mount,et al.  An Efficient k-Means Clustering Algorithm: Analysis and Implementation , 2002, IEEE Trans. Pattern Anal. Mach. Intell..

[5]  Alexandre Carlos Brandão Ramos,et al.  Neural Networks for an Analysis of the Hemometabolites Biosensor Response , 2013, Int. J. E Health Medical Commun..

[6]  Umer Rashid,et al.  ANN based Expert System to Predict Disease in Cardiac Patients at Initial Stages , 2015, Int. J. E Health Medical Commun..

[7]  Arturo Hernández-Aguirre,et al.  Hyperconic Multilayer Perceptron , 2017 .

[8]  Luigi Grippo,et al.  Decomposition Techniques for Multilayer Perceptron Training , 2016, IEEE Transactions on Neural Networks and Learning Systems.

[9]  Ramin Hashemi,et al.  COMPARISON OF DATA MINING ALGORITHMS IN THE DIAGNOSIS OF TYPE II DIABETES , 2015 .

[10]  Sylvain Arlot,et al.  Cross-Validation , 2017, Encyclopedia of Machine Learning and Data Mining.

[11]  David J. Brown,et al.  A survey on computational intelligence approaches for predictive modeling in prostate cancer , 2017, Expert Syst. Appl..

[12]  Lei Li,et al.  Bringing business intelligence to healthcare informatics curriculum: a preliminary investigation , 2014, SIGCSE.

[13]  Maryam Ahmadi,et al.  Type 2 Diabetes Mellitus Screening and Risk Factors Using Decision Tree: Results of Data Mining , 2015, Global journal of health science.

[14]  Chun-Yi Su,et al.  Vision-Based Model Predictive Control for Steering of a Nonholonomic Mobile Robot , 2016, IEEE Transactions on Control Systems Technology.

[15]  Abdulhamit Subasi,et al.  Effect of Multiscale PCA De-noising in ECG Beat Classification for Diagnosis of Cardiovascular Diseases , 2015, Circuits Syst. Signal Process..

[16]  V. Vaidehi,et al.  Dynamic higher level learning Radial Basis Function for healthcare application , 2014, 2014 International Conference on Recent Trends in Information Technology.

[17]  Lijuan Huang,et al.  Analysis of Factors Influencing Hospitalization Costs for Patients with Lung Cancer Surgery Based on the BP Neural Network , 2014 .

[18]  A. B. M. Shawkat Ali,et al.  Brain Cancer Diagnosis-Association Rule Based Computational Intelligence Approach , 2016, 2016 IEEE International Conference on Computer and Information Technology (CIT).

[19]  Appa Rao Allam,et al.  A computational intelligence technique for the effective diagnosis of diabetic patients using principal component analysis (PCA) and modified fuzzy SLIQ decision tree approach , 2016 .

[20]  Félix Mora-Camino,et al.  Heart Disease Diagnosis Using Fuzzy Supervised Learning Based on Dynamic Reduced Features , 2014, Int. J. E Health Medical Commun..

[21]  Johannes Fürnkranz,et al.  Large-Scale Multi-label Text Classification - Revisiting Neural Networks , 2013, ECML/PKDD.

[22]  M. G. Ruano,et al.  A Radial Basis Function classifier for the automatic diagnosis of Cerebral Vascular Accidents , 2016, 2016 Global Medical Engineering Physics Exchanges/Pan American Health Care Exchanges (GMEPE/PAHCE).

[23]  Saad Amin,et al.  Diagnosis of heart disease by using a radial basis function network classification technique on patients' medical records , 2014, 2014 IEEE MTT-S International Microwave Workshop Series on RF and Wireless Technologies for Biomedical and Healthcare Applications (IMWS-Bio2014).

[24]  Oerip S. Santoso,et al.  Performance Evaluation of Color Retinal Image Quality Assessment in Asymmetric Channel VQ Coding , 2013, Int. J. E Health Medical Commun..

[25]  Hannu Kautiainen,et al.  Gestational Diabetes Mellitus Can Be Prevented by Lifestyle Intervention: The Finnish Gestational Diabetes Prevention Study (RADIEL) , 2015, Diabetes Care.

[26]  Elliot Saltzman,et al.  Hybrid convolutional neural networks for articulatory and acoustic information based speech recognition , 2017, Speech Commun..

[27]  Martin D. Buhmann Radial Basis Function Networks , 2017, Encyclopedia of Machine Learning and Data Mining.

[28]  Roy Harper,et al.  Self-Management of Diabetes Mellitus with Remote Monitoring: A Retrospective Review of 214 Cases , 2017, Int. J. E Health Medical Commun..

[29]  Guang-Bin Huang,et al.  Extreme Learning Machine for Multilayer Perceptron , 2016, IEEE Transactions on Neural Networks and Learning Systems.

[30]  Guodong Zhang,et al.  Exponential synchronization of delayed memristor-based chaotic neural networks via periodically intermittent control , 2014, Neural Networks.

[31]  Saad Amin,et al.  Heart Disease Diagnosis Using Reconstructive Radial Basis Function Networks with Overlapping Prevention Method , 2015 .

[32]  Chee Peng Lim,et al.  A hybrid intelligent system for medical data classification , 2014, Expert Syst. Appl..

[33]  Donna Spiegelman,et al.  Maternal hyperglycemia and adverse pregnancy outcomes in Dar es Salaam, Tanzania , 2014, International journal of gynaecology and obstetrics: the official organ of the International Federation of Gynaecology and Obstetrics.

[34]  Chris D. Geddes,et al.  National Institute of Biomedical Imaging and Bioengineering Point-of-Care Technology Research Network: Advancing Precision Medicine , 2016, IEEE Journal of Translational Engineering in Health and Medicine.

[35]  Chin-Hui Lee,et al.  Exploiting deep neural networks for detection-based speech recognition , 2013, Neurocomputing.

[36]  Ricardo Martinho,et al.  Text Mining Applied to Electronic Medical Records: A Literature Review , 2015, Int. J. E Health Medical Commun..

[37]  Xin Zhou,et al.  Deep neural networks: A promising tool for fault characteristic mining and intelligent diagnosis of rotating machinery with massive data , 2016 .

[38]  Nandan Parameswaran,et al.  Development of a Methodological Approach for Data Quality Ontology in Diabetes Management , 2014, Int. J. E Health Medical Commun..

[39]  Saibal Mukhopadhyay,et al.  On the Impact of Energy-Accuracy Tradeoff in a Digital Cellular Neural Network for Image Processing , 2015, IEEE Transactions on Computer-Aided Design of Integrated Circuits and Systems.

[40]  Faiza Charfi,et al.  Comparative Study of ECG Classification Performance Using Decision Tree Algorithms , 2012, Int. J. E Health Medical Commun..

[41]  Behrad Ziapour,et al.  Using an Artificial Neural Networks (ANNs) Model for Prediction of Intensive Care Unit (ICU) Outcome and Length of Stay at Hospital in Traumatic Patients. , 2015, Journal of clinical and diagnostic research : JCDR.

[42]  Rashedur M. Rahman,et al.  Comparison of Various Classification Techniques Using Different Data Mining Tools for Diabetes Diagnosis , 2013 .

[43]  M. Tierney,et al.  Short‐ and long‐term effects of gestational diabetes mellitus on healthcare cost: a cross‐sectional comparative study in the ATLANTIC DIP cohort , 2015, Diabetic medicine : a journal of the British Diabetic Association.

[44]  Veda C. Storey,et al.  Business Intelligence and Analytics: From Big Data to Big Impact , 2012, MIS Q..