PAPER SENDING

  • googleplus
  • facebook
  • twitter
  • linkedin
  • linkedin

REVISTA DYNA MANAGEMENT REVISTA DYNA MANAGEMENT

  • Skip to the menu
  • Skip to the content
  • DYNA Publishing
    • DYNA
    • DYNA Energy & Sustainability
    • DYNA Management
    • DYNA New Technologies
  • Journal
    • The Journal and its bodies
      • The Journal
      • Editorial Board
      • Advisory-Scientific Board
    • Indexation & databases
    • Mission, Vision & Values
    • Collaborating with DYNA
    • Links of interest
      • Engineers associations
      • Engineering universities
      • Other magazines
      • Other engineering links
  • Authors & Referees
    • Guidelines, rules and forms
    • Collaborating with Journal
  • Papers
    • Search Content
    • Volumes/Issues
    • Most downloaded
    • Sending papers
  • Forum
  • News
    • News about management
    • DYNA newsletter
    • Best practices
  • Advertising
    • Advertising at DYNA
    • Advertising rates
  • Contact
    • Contacting
  • Search
    • In this Journal
    • Search in DYNA journals
  • Submit
  • Sign In
    • Privacy Policy

Return to the menu

  • Homepage
  • Papers
  • Search Content

Search Content

×

 |    : /

Vote:

Results: 

0 points

 0  Votes

PREDICTING CHRONIC DISEASES IN HIGHLY POLLUTED INDUSTRIAL ENVIRONMENTS USING MACHINE LEARNING

 |    : /

JANUARY-DECEMBER 2023   -  Volume: 11 -  Pages: [11P.]

DOI:

https://doi.org/10.6036/MN11066

Authors:

DANIEL TLANEPANTLA PANTOJA
-
SILVIA SOLEDAD MORENO GUTIERREZ
-
SOCRATES LOPEZ PEREZ
-
HÉCTOR HUGO SILICEO CANTERO

Disciplines:

  • INFORMATION TECHNOLOGY AND KNOWLEDGE (INTELIGENCIA ARTIFICIAL Y SIMULACION )
  • Social change and development (TECNOLOGIA Y CAMBIO SOCIAL )

Downloads:   21

How to cite this paper:  
Download pdf

Download pdf

Received Date :   19 September 2023

Reviewing Date :   25 September 2023

Accepted Date :   27 November 2023


Key words:
aprendizaje automático, enfermedades crónicas, zonas industriales, contaminación, data science, diabetes, hypertension, respiratory diseases, industrial sites
Article type:
ARTICULO DE INVESTIGACION / RESEARCH ARTICLE
Section:
RESEARCH ARTICLES

ABSTRACT:
Environmental pollution is a risk factor for chronic diseases (CD), which today are identified as the main cause of death in the world, 80% in low- and middle-income countries, in people of all ages. Given that industrial areas maintain a high rate of air pollution, their inhabitants are considered highly vulnerable, such is the case of the Metropolitan Area of Tula Hgo., in Mexico. At the request of the World Health Organization to integrate vulnerable populations to the quality of life through innovative strategies, the present study aims to build prediction models for CD of higher frequency in the area, to support predictive diagnosis through machine learning algorithms, recognized for their high performance in health areas. Based on the CRISP-DM methodology, requirements, characteristics and data behavior were analyzed, exhaustive cleaning and minmax scaler normalization were performed, the models were trained and validated with 80% - 20% of records, dropout and early stopping were applied to combat overtraining. The comparative analysis between 9 built models demonstrated the best performance of 3 of them, one for each EC; the Artificial Neural Network (ANN) for respiratory diseases and Random Forest (RF) for diabetes and high blood pressure. Its results of accuracy, precision, sensitivity, specificity and F1-score were 99%, 99%, 100%, 99% and 99.49% respectively for ANN, the RF model for diabetes obtained 98%, 100%, 97%, 100% and 98.7% and for arterial hypertension 95%, 97%, 94, 97% and 95.47%, these models were integrated into a graphical interface. The proposal constitutes a high-precision technological strategy for prevention and early diagnosis of CD in industrial areas, aimed at reducing mortality and improving the quality of life of the inhabitants.

Share:  

  • Twittear
  • facebook
  • google+
  • linkedin
  • delicious
  • yahoo
  • myspace
  • meneame
  

Search Content

banner crosscheck

  •  
  • Twitter
  • Twitter
  •  
  • Facebook
  • Facebook
  •  
Tweets por el @revistadyna.
Loading…

Anunciarse en DYNA 

© Dyna Management journal 2013

EDITORIAL: Publicaciones DYNA SL

Adress: Alameda Mazarredo 69 - 2º, 48009-Bilbao SPAIN

Email:info@dyna-management.com - Web site: www.dyna-management.com

  • Menu
  • DYNA Publishing
    • DYNA Publishing
    • DYNA
    • DYNA Energy & Sustainability
    • DYNA Management
    • DYNA New Technologies
  • Journal
    • Journal
    • The Journal and its bodies
      • The Journal and its bodies
      • The Journal
      • Editorial Board
      • Advisory-Scientific Board
    • Indexation & databases
    • Mission, Vision & Values
    • Collaborating with DYNA
    • Links of interest
      • Links of interest
      • Engineers associations
      • Engineering universities
      • Other magazines
      • Other engineering links
  • Authors & Referees
    • Authors & Referees
    • Guidelines, rules and forms
    • Collaborating with Journal
  • Papers
    • Papers
    • Search Content
    • Volumes/Issues
    • Most downloaded
    • Sending papers
  • Forum
  • News
    • News about management
    • DYNA newsletter
    • Best practices
  • Advertising
    • Advertising
    • Advertising at DYNA
    • Advertising rates
  • Contact
    • Contacting
  • Search
    • In this Journal
    • Search in DYNA journals
  • Submit
  • Sign In
    • Sign In
    • Privacy Policy

Regístrese en un paso con su email y podrá personalizar sus preferencias mediante su perfil


: *   

: *   

:

: *     

 

  

Loading Loading ...