Literature DB >> 30762572

Discovering the Type 2 Diabetes in Electronic Health Records Using the Sparse Balanced Support Vector Machine.

Michele Bernardini, Luca Romeo, Paolo Misericordia, Emanuele Frontoni.   

Abstract

The diagnosis of type 2 diabetes (T2D) at an early stage has a key role for an adequate T2D integrated management system and patient's follow-up. Recent years have witnessed an increasing amount of available electronic health record (EHR) data and machine learning (ML) techniques have been considerably evolving. However, managing and modeling this amount of information may lead to several challenges, such as overfitting, model interpretability, and computational cost. Starting from these motivations, we introduced an ML method called sparse balanced support vector machine (SB-SVM) for discovering T2D in a novel collected EHR dataset (named Federazione Italiana Medici di Medicina Generale dataset). In particular, among all the EHR features related to exemptions, examination, and drug prescriptions, we have selected only those collected before T2D diagnosis from an uniform age group of subjects. We demonstrated the reliability of the introduced approach with respect to other ML and deep learning approaches widely employed in the state-of-the-art for solving this task. Results evidence that the SB-SVM overcomes the other state-of-the-art competitors providing the best compromise between predictive performance and computation time. Additionally, the induced sparsity allows to increase the model interpretability, while implicitly managing high-dimensional data and the usual unbalanced class distribution.

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Year:  2019        PMID: 30762572     DOI: 10.1109/JBHI.2019.2899218

Source DB:  PubMed          Journal:  IEEE J Biomed Health Inform        ISSN: 2168-2194            Impact factor:   5.772


  9 in total

1.  Explainable artificial intelligence models using real-world electronic health record data: a systematic scoping review.

Authors:  Seyedeh Neelufar Payrovnaziri; Zhaoyi Chen; Pablo Rengifo-Moreno; Tim Miller; Jiang Bian; Jonathan H Chen; Xiuwen Liu; Zhe He
Journal:  J Am Med Inform Assoc       Date:  2020-07-01       Impact factor: 4.497

2.  Harnessing the Power of Smart and Connected Health to Tackle COVID-19: IoT, AI, Robotics, and Blockchain for a Better World.

Authors:  Farshad Firouzi; Bahar Farahani; Mahmoud Daneshmand; Kathy Grise; Jaeseung Song; Roberto Saracco; Lucy Lu Wang; Kyle Lo; Plamen Angelov; Eduardo Soares; Po-Shen Loh; Zeynab Talebpour; Reza Moradi; Mohsen Goodarzi; Haleh Ashraf; Mohammad Talebpour; Alireza Talebpour; Luca Romeo; Rupam Das; Hadi Heidari; Dana Pasquale; James Moody; Chris Woods; Erich S Huang; Payam Barnaghi; Majid Sarrafzadeh; Ron Li; Kristen L Beck; Olexandr Isayev; Nakmyoung Sung; Alan Luo
Journal:  IEEE Internet Things J       Date:  2021-04-19       Impact factor: 10.238

3.  Design and Development of Diabetes Management System Using Machine Learning.

Authors:  Robert A Sowah; Adelaide A Bampoe-Addo; Stephen K Armoo; Firibu K Saalia; Francis Gatsi; Baffour Sarkodie-Mensah
Journal:  Int J Telemed Appl       Date:  2020-07-16

4.  Unbox the black-box for the medical explainable AI via multi-modal and multi-centre data fusion: A mini-review, two showcases and beyond.

Authors:  Guang Yang; Qinghao Ye; Jun Xia
Journal:  Inf Fusion       Date:  2022-01       Impact factor: 12.975

Review 5.  Machine learning and deep learning predictive models for type 2 diabetes: a systematic review.

Authors:  Luis Fregoso-Aparicio; Julieta Noguez; Luis Montesinos; José A García-García
Journal:  Diabetol Metab Syndr       Date:  2021-12-20       Impact factor: 3.320

6.  Appositeness of Optimized and Reliable Machine Learning for Healthcare: A Survey.

Authors:  Subhasmita Swain; Bharat Bhushan; Gaurav Dhiman; Wattana Viriyasitavat
Journal:  Arch Comput Methods Eng       Date:  2022-03-22       Impact factor: 8.171

Review 7.  Machine learning for diabetes clinical decision support: a review.

Authors:  Ashwini Tuppad; Shantala Devi Patil
Journal:  Adv Comput Intell       Date:  2022-04-13

8.  Machine Learning for Predicting Hyperglycemic Cases Induced by PD-1/PD-L1 Inhibitors.

Authors:  Jincheng Yang; Ning Li; Weilong Lin; Liming Shi; Ming Deng; Qin Tong; Wenjing Yang
Journal:  J Healthc Eng       Date:  2022-08-19       Impact factor: 3.822

9.  A Unified Hierarchical XGBoost model for classifying priorities for COVID-19 vaccination campaign.

Authors:  Luca Romeo; Emanuele Frontoni
Journal:  Pattern Recognit       Date:  2021-07-22       Impact factor: 7.740

  9 in total

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