A New Skin Viewer and Analyzer on Mobile Phone

AUTHORS

S Mardanisamani 1 , A Jamshidzadeh 2 , M Yazdi 3 , *

1 Department of Electrical and Computer Engineering, Signal and Image Processing Lab, Shiraz University, Shiraz, Iran

2 Faculty of Pharmacy,, Shiraz University of Medical Science, Shiraz, Iran

3 Faculty of Electrical and Computer Engineering, Signal and Image Processing Lab, Shiraz University, Shiraz, Iran

How to Cite: Mardanisamani S, Jamshidzadeh A, Yazdi M. A New Skin Viewer and Analyzer on Mobile Phone, Shiraz E-Med J. 2018 ; 19(Suppl):e66356. doi: 10.5812/semj.66356.

ARTICLE INFORMATION

Shiraz E-Medical Journal: 19 (Suppl); e66356
Published Online: February 23, 2017
Article Type: Abstract
Received: December 11, 2016
Accepted: January 01, 2017
Crossmark

Crossmark

CHEKING

READ FULL TEXT
Abstract

Keywords

mHealth Skin Disorder Mobile App

© 2018, Author(s). This is an open-access article distributed under the terms of the Creative Commons Attribution-NonCommercial 4.0 International License (http://creativecommons.org/licenses/by-nc/4.0/) which permits copy and redistribute the material just in noncommercial usages, provided the original work is properly cited.

Fulltext

Background: Skin image processing on smart phones has become one of the striking and serious research areas in the past few
years. A large number of people cannot benefit from the quality care that they need. Mobile application technology offers ways
to help with these challenges. An application (App) called UMSkinCheck was reported in 2012, which provides guidance on how
to check for skin lesions and moles and also includes information on skin cancer prevention. Last year, another skin cancer App
called mole detective was reported. This App gets pictures of skin moles and analyzes them and also calculates a person’s risk of skin cancer based on the characteristics of their mole undertaken by dermatologists. In 2016, the SkinVision App, which claims to assist in the early detection of melanoma, was created. This App uses a mathematical theory to analyze photos of skin lesions and moles taken by the user.

Objectives: We propose an automatic method for segmenting the skin lesions and extracting features that are associated to them as well as detection skin disorders. In the suggesting step, at first, the region of skin lesion is segmented from the whole skin image; next, some features like the mean, variance, RGB, and HSV parameters are extracted from the segmented region and then by using a classifier to detect skin disorders. We integrate these steps into a mobile App for primary processing and analysis of skin images anywhere and anytime.

Methods: Apps on mobile phones have wide applications in different scientific fields including medicine. By use of image processing algorithms and Java programming, physicians have been more successful in the diagnosis of different skin diseases and have achieved much better treatment results.

Results: Skin viewer and analyzer App can include some benefit features: such as monitoring, tracking, and understanding individuals’ skin health, having medical image processing operations, as well as allows the individuals to capture all of their moles and skin conditions to thoroughly understand their skin.

Conclusion: This important technology provides physicians with the ability to immediately view the skin and make a diagnosis.
Skin Apps offer a unique technology to detect early and potential signs of lesion disorder and skin cancer growth.

References

  • 1.

  • COMMENTS

    LEAVE A COMMENT HERE: