Skip to content
Medical Health Aged Care, Science

AI diagnoses major cancer with near perfect accuracy

Charles Darwin University 2 mins read

One of Australia's most common gynaecological cancers could be detected sooner and more accurately thanks to a specialised Artificial Intelligence (AI) model, new research shows.

Researchers from Daffodil International University in Bangladesh, Charles Darwin University, the University of Calgary and Australian Catholic University developed an AI model which can detect endometrial cancer with 99.26 per cent accuracy. 

Endometrial cancer is the most common gynecological cancer in Australia and one of the most diagnosed cancers in Australian women, according to the Cancer Council.  

The model, called ECgMPL, examines histopathological images, which are microscopic images of tissue used in disease analysis. The model enhances the quality of the images, identifies the most important areas and analyses the tissue. 

The current endometrial accuracy using automated diagnosis is reported to be approximately 78.91 per cent to 80.93 per cent.

Co-author and CDU Lecturer in Information Technology Dr Asif Karim said the model could enhance clinical processes. 

“The proposed ECgMLP model outperforms existing methods by achieving 99.26 per cent accuracy, surpassing transfer learning and custom models discussed in the research while being computationally efficient,” Dr Karim said. 

“Optimised through ablation studies, self-attention mechanisms, and efficient training, ECgMLP generalises well across multiple histopathology datasets thereby making it a robust and clinically applicable solution for endometrial cancer diagnosis.”

Co-author and CDU adjunct Associate Professor Niusha Shafiabady, who is also an Associate Professor at Australian Catholic University, said the model also had benefits outside of endometrial cancer diagnosis. 

“The same methodology can be applied for fast and accurate early detection and diagnosis of other diseases which ultimately leads to better patient outcomes,” Associate Professor Shafiabady said. 

“We evaluated the model on several histopathology image datasets. It diagnosed colorectoral cancer with 98.57 per cent accuracy, breast cancer with 98.20 per cent accuracy, and oral cancer with 97.34 per cent accuracy.

“The core AI model developed through this research can be adopted as the brain of a software system to be used to assist the doctors for decision-making in cancer diagnosis.”

ECgMLP: A novel gated MLP model for enhanced endometrial cancer diagnosis was published in the journal Computer Methods and Programs in Biomedicine Update.


Contact details:

Raphaella Saroukos she/her
Research Communications Officer
Marketing, Media & Communications
Larrakia Country
T: +61 8 8946 6721
E: [email protected]
W: cdu.edu.au

Media

More from this category

  • Medical Health Aged Care
  • 18/12/2025
  • 22:11
BeOne Medicines Ltd.

BeOne Medicines Granted U.S. FDA Fast Track Designation for BGB-B2033 as Treatment for Hepatocellular Carcinoma

BGB-B2033 is a bispecific antibody directed at GPC3 and 4-1BB; key targets in the most common liver cancer FDA Fast Track Designation reflects the…

  • Contains:
  • Medical Health Aged Care
  • 18/12/2025
  • 19:11
Takeda Pharmaceutical Company Limited

Takeda’s Zasocitinib Landmark Phase 3 Plaque Psoriasis Data Show Promise to Deliver Clear Skin in a Once-Daily Pill, Catalyzing a New Era of Treatment

Pivotal Phase 3 studies of once-daily oral zasocitinib met all primary and ranked secondary endpoints in patients with moderate-to-severe plaque psoriasis More than half…

  • Contains:
  • Medical Health Aged Care
  • 18/12/2025
  • 12:24
La Trobe University

Cell death discovery could aid cancer treatments

LaTrobe researchers have made a groundbreaking discovery about the way dying cells are cleared from our bodies, which could have important impacts on recovery from diseases including cancer infection and inflammatory diseases. Traditionally, it was believed dying cells were broken into smaller pieces by the cell’s own internal machinery, enabling the pieces to be more easily removed from the body. However the study, led by scientists at the La Trobe Institute for Molecular Science and Research Centre for Extracellular Vesicles found that the process of dying cell fragmentation is actually assisted by neighbouring cells. Published in Science Advances, the study…

Media Outreach made fast, easy, simple.

Feature your press release on Medianet's News Hub every time you distribute with Medianet. Pay per release or save with a subscription.