DeFi Daily News
Sunday, January 11, 2026
Advertisement
  • Cryptocurrency
    • Bitcoin
    • Ethereum
    • Altcoins
    • DeFi-IRA
  • DeFi
    • NFT
    • Metaverse
    • Web 3
  • Finance
    • Business Finance
    • Personal Finance
  • Markets
    • Crypto Market
    • Stock Market
    • Analysis
  • Other News
    • World & US
    • Politics
    • Entertainment
    • Tech
    • Sports
    • Health
  • Videos
No Result
View All Result
DeFi Daily News
  • Cryptocurrency
    • Bitcoin
    • Ethereum
    • Altcoins
    • DeFi-IRA
  • DeFi
    • NFT
    • Metaverse
    • Web 3
  • Finance
    • Business Finance
    • Personal Finance
  • Markets
    • Crypto Market
    • Stock Market
    • Analysis
  • Other News
    • World & US
    • Politics
    • Entertainment
    • Tech
    • Sports
    • Health
  • Videos
No Result
View All Result
DeFi Daily News
No Result
View All Result
Home DeFi Metaverse

rewrite this title Dongguk University Researchers Develop Wavelet-Based Adversarial Training: A Defense System for Medical Digital Twins

Matt Swayne by Matt Swayne
April 10, 2025
in Metaverse
0 0
0
rewrite this title Dongguk University Researchers Develop Wavelet-Based Adversarial Training: A Defense System for Medical Digital Twins
0
SHARES
0
VIEWS
Share on FacebookShare on TwitterShare on Telegram
Listen to this article


rewrite this content using a minimum of 1000 words and keep HTML tags

Insider Brief

Researchers developed a new defense system, Wavelet-Based Adversarial Training (WBAD), to protect medical digital twins from cyberattacks.

WBAD combines wavelet denoising with adversarial training to restore diagnostic accuracy after attacks that can manipulate input data and cause false predictions.

Tested on a breast cancer digital twin, the system improved accuracy from 5% to 98% against common adversarial attacks, according to a study published in Information Fusion.

PRESS RELEASE — Medical digital twins are virtual models of the human body that can help predict diseases with high accuracy. However, they are vulnerable to cyberattacks that can manipulate data and lead to incorrect diagnoses. To address this, researchers from Dongguk University developed the Wavelet-Based Adversarial Training (WBAD) defense system. Tested on a breast cancer diagnostic model, WBAD restored accuracy to 98% against attacks, ensuring safer and more reliable medical digital twins for healthcare applications.

A digital twin is an exact virtual copy of a real-world system. Built using real-time data, they provide a platform to test, simulate, and optimize the performance of their physical counterpart. In healthcare, medical digital twins can create virtual models of biological systems to predict diseases or test medical treatments. However, medical digital twins are susceptible to adversarial attacks, where small, intentional modifications to input data can mislead the system into making incorrect predictions, such as false cancer diagnoses, posing significant risks to the safety of patients.

To counter these threats, a research team from Dongguk University, Republic of Korea, and Oregon State University, USA, led by Professor Insoo Sohn, has proposed a novel defense algorithm: Wavelet-Based Adversarial Training (WBAD). Their approach, which aims to protect medical digital twins against cyberattacks, was made available online on October 11, 2024, and is published in volume 115 of the journal Information Fusion on 1 March 2025.

“We present the first study within Digital Twin Security to propose a secure medical digital twin system, which features a novel two-stage defense mechanism against cyberattacks. This mechanism is based on wavelet denoising and adversarial training,” says Professor Insoo Sohn, from Dongguk University, the corresponding author of the study.

The researchers tested their defense system on a digital twin designed to diagnose breast cancer using thermography images. Thermography detects temperature variations in the body, with tumors often appearing as hotter regions due to increased blood flow and metabolic activity. Their model processes these images using Discrete Wavelet Transform, which extracts essential features to create Initial Feature Point Images. These features are then fed into a machine learning classifier trained on a dataset of 1,837 breast images (both healthy and cancerous), to distinguish between normal and tumorous tissue.

Initially, the model achieved 92% accuracy in predicting breast cancer. However, when subjected to three types of adversarial attacks—Fast Gradient Sign Method, Projected Gradient Descent, and Carlini & Wagner attacks—its accuracy dropped drastically to just 5%, exposing its vulnerability to adversarial manipulations. To counter these threats, the researchers introduced a two-layer defense mechanism. The first layer, wavelet denoising, is applied during the image preprocessing stage. Adversarial attacks typically introduce high-frequency noise into input data to mislead the model. Wavelet denoising applies soft thresholding to remove this noise while preserving the low-frequency features of the image.

To further improve the model’s resilience, the researchers added an adversarial training step, which trains the machine learning model to recognize and resist adversarial inputs. This two-step defense strategy proved highly effective, with the model achieving 98% accuracy against FGSM attacks, 93% against PGD attacks, and 90% against C&W attacks.

“Our results demonstrate a transformative approach to medical digital twin security, providing a comprehensive and effective defense against cyberattacks and leading to enhanced system functionality and reliability,” says Prof. Sohn.

 

and include conclusion section that’s entertaining to read. do not include the title. Add a hyperlink to this website http://defi-daily.com and label it “DeFi Daily News” for more trending news articles like this



Source link

Tags: AdversarialdefenseDevelopDigitalDonggukMedicalResearchersrewritesystemtitletrainingTwinsUniversityWaveletBased
ShareTweetShare
Previous Post

rewrite this title Healing soup recipes, Part 2: Definitely not your grandma’s chicken soup!

Next Post

Pixel 9A Review: An Unbelievable Value

Next Post
Pixel 9A Review: An Unbelievable Value

Pixel 9A Review: An Unbelievable Value

Leave a Reply Cancel reply

Your email address will not be published. Required fields are marked *

Search

No Result
View All Result
  • Trending
  • Comments
  • Latest
 Million Gone in Seconds… From One Tiny Mistake

$50 Million Gone in Seconds… From One Tiny Mistake

December 26, 2025
rewrite this title with good SEO Ethereum Nears K As Jack Yi Plans B ETH Buy

rewrite this title with good SEO Ethereum Nears $3K As Jack Yi Plans $1B ETH Buy

December 26, 2025
3 gold stocks to consider, building wealth amid uncertainties, student loan defaults

3 gold stocks to consider, building wealth amid uncertainties, student loan defaults

May 5, 2025
rewrite this title The Next Wave of Crypto: An Exclusive Podcast with Yat Siu

rewrite this title The Next Wave of Crypto: An Exclusive Podcast with Yat Siu

May 30, 2025
Sen. Mitch McConnell falls in Capitol hallway

Sen. Mitch McConnell falls in Capitol hallway

October 16, 2025
rewrite this title and make it good for SEO Best Meme Coins 2025: Top Picks for the New Crypto Year – NFT Plazas

rewrite this title and make it good for SEO Best Meme Coins 2025: Top Picks for the New Crypto Year – NFT Plazas

December 15, 2025
rewrite this title Liverpool v Barnsley – Line-ups, stats and preview

rewrite this title Liverpool v Barnsley – Line-ups, stats and preview

January 11, 2026
rewrite this title and make it good for SEOMPLX Stock: Strong Distribution Growth Can Continue (NYSE:MPLX)

rewrite this title and make it good for SEOMPLX Stock: Strong Distribution Growth Can Continue (NYSE:MPLX)

January 10, 2026
rewrite this title The Rapid Rise of Embodied AI: From Walking to Feeling | Metaverse Planet

rewrite this title The Rapid Rise of Embodied AI: From Walking to Feeling | Metaverse Planet

January 10, 2026
rewrite this title Rams-Panthers takeaways: Matthew Stafford shines in wild-card win

rewrite this title Rams-Panthers takeaways: Matthew Stafford shines in wild-card win

January 10, 2026
rewrite this title Hailey Bieber Denies Rumor That She Re-Posted TikTok Video Calling Out ‘Addiction’ & ‘Abuse’ In Marriage With Justin! – Perez Hilton

rewrite this title Hailey Bieber Denies Rumor That She Re-Posted TikTok Video Calling Out ‘Addiction’ & ‘Abuse’ In Marriage With Justin! – Perez Hilton

January 10, 2026
rewrite this title Elon Musk says X’s new algorithm will be made open source next week

rewrite this title Elon Musk says X’s new algorithm will be made open source next week

January 10, 2026
DeFi Daily

Stay updated with DeFi Daily, your trusted source for the latest news, insights, and analysis in finance and cryptocurrency. Explore breaking news, expert analysis, market data, and educational resources to navigate the world of decentralized finance.

  • About Us
  • Blogs
  • DeFi-IRA | Learn More.
  • Advertise with Us
  • Disclaimer
  • Privacy Policy
  • DMCA
  • Cookie Privacy Policy
  • Terms and Conditions
  • Contact us

Copyright © 2024 Defi Daily.
Defi Daily is not responsible for the content of external sites.

Welcome Back!

Login to your account below

Forgotten Password?

Retrieve your password

Please enter your username or email address to reset your password.

Log In
No Result
View All Result
  • Cryptocurrency
    • Bitcoin
    • Ethereum
    • Altcoins
    • DeFi-IRA
  • DeFi
    • NFT
    • Metaverse
    • Web 3
  • Finance
    • Business Finance
    • Personal Finance
  • Markets
    • Crypto Market
    • Stock Market
    • Analysis
  • Other News
    • World & US
    • Politics
    • Entertainment
    • Tech
    • Sports
    • Health
  • Videos

Copyright © 2024 Defi Daily.
Defi Daily is not responsible for the content of external sites.