PAPER SENDING

  • googleplus
  • facebook
  • twitter
  • linkedin
  • linkedin

REVISTA DYNA NEW TECHNOLOGIES REVISTA DYNA NEW TECHNOLOGIES

  • Skip to the menu
  • Skip to the content
  • DYNA Publishing
    • DYNA
    • DYNA Energy and Sustainability
    • DYNA Management
    • DYNA New Technologies
  • Journal
    • The Journal and its bodies
      • The Journal
      • Editorial Board
      • Advisory-Scientific Board
    • Diffusion & indexation database
    • Mission, Vision & Values
    • Collaborating with DYNA
  • Authors & Referees
    • Guidelines, rules and forms
    • Collaborating with Journal
  • Papers
    • Search Content
    • Volumes / Issues
    • Most downloaded
    • Sending papers
  • Forum
  • News
    • News New Technologies
    • Newsletter DNT
  • 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

ADAPTATIVE NEURO-FUZZY INFERENCE SYSTEM (ANFIS) APPLIED ON RAMAN SPECTROSCOPY SIGNALS TO DECIPHER AND CLASSIFY HEALTHY AND DAMAGED BREAST CANCER TISSUE

 |    : /

JANUARY-DECEMBER 2022   -  Volume: 9 -  Pages: [13P.]

DOI:

https://doi.org/10.6036/NT10557

Authors:

REINIER CABRERA CABAÑAS
-
FRANCISCO LUNA ROSAS
-
JULIO CESAR MARTINEZ ROMO
-
CLAUDIO FRAUSTRO REYES
-
MARCO ANTONIO HERNANDEZ VARGAS

Disciplines:

  • Optics (ESPECTROSCOPIA )

Downloads:   34

How to cite this paper:  
Download pdf

Download pdf

Received Date :   19 April 2022

Reviewing Date :   26 April 2022

Accepted Date :   7 September 2022


Key words:
ANFIS, Breast Cancer, Raman Spectroscopy, Automatic Detection, Cáncer de mama, espectroscopía Raman, detección automática.
Article type:
ARTICULO DE INVESTIGACION / RESEARCH ARTICLE
Section:
RESEARCH ARTICLES

Abstract:
One of the most notable causes of death in the world is cancer. We know that some of these variants can be eliminated with some method such as surgery or chemotherapy. In this paper we present an optimized method which is responsible for classifying breast tissue into healthy and damaged. After getting the spectra one of the main challenges in this process is the elimination of spectral noise composed of (a) fluorescence background and (b) high frequency noise; we used Adaptative Neuro-Fuzzy Inference System (ANFIS) in combination with moving averages filter to eliminate these disturbances. When employing multicore technology to the set of biological spectra (data parallelism), we can clearly observe the significant reduction in processing time with a gain of approximately 59.67% compared to sequential process.
We highlight the advantages of applying a supervised learning algorithm like ANFIS on the principal components to perform the classification of healthy and damaged tissue and the results are compared with the well-known linear regression methods and vector support machines using testing table and k fold cross validation recording Mean Square Error values of 0.00458 and 0.002254 respectively. Based on the results obtained with this method, we consider that it would be an important clinical tool for specialists for a rapid and efficient automatic detection of breast cancer and consider the possibility of being applicable to other kinds of cancer, e.g., lung, prostate, stomach.
Keywords: ANFIS, Breast Cancer, Raman Spectroscopy, Automatic Detection.
We highlight the advantages of applying a supervised learning algorithm like ANFIS applied on the principal components from the point cloud to perform the classification of healthy and damaged tissue and the results are compared with the well-known linear regression methods and vector support machines. We highlight the advantages of using testing table method applied on ANFIS obtaining a considerable decrease in the Mean Square Error factor with a value of 0.00458, when we used cross validation The MSE decrease to 0.002254. Based on the results obtained with this method, we consider that it would be an important clinical tool for specialists for a rapid and efficient automatic detection of breast cancer and consider the possibility of being applicable to other kinds of cancer, e.g., lung, prostate, stomach.
Keywords: ANFIS, Breast Cancer, Raman Spectroscopy, Automatic Detection.

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 New Technologies Journal

EDITORIAL: Publicaciones DYNA SL

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

Email: info@dyna-newtech.com - Web: http://www.dyna-newtech.com

 

  • Menu
  • DYNA Publishing
    • DYNA Publishing
    • DYNA
    • DYNA Energy and 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
    • Diffusion & indexation database
    • Mission, Vision & Values
    • Collaborating with DYNA
  • Authors & Referees
    • Authors & Referees
    • Guidelines, rules and forms
    • Collaborating with Journal
  • Papers
    • Papers
    • Search Content
    • Volumes / Issues
    • Most downloaded
    • Sending papers
  • Forum
  • News
    • News
    • News New Technologies
    • Newsletter DNT
  • Advertising
    • Advertising
    • Advertising at DYNA
    • Advertising rates
  • Contact
    • 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 ...