Kazia Therapeutics Joins Australian Consortium to Develop AI-Driven, Personalized Therapy Strategies for Childhood Brain Cancers

Reuters
10/01
<a href="https://laohu8.com/S/KZA.AU">Kazia Therapeutics</a> Joins Australian Consortium to Develop AI-Driven, Personalized Therapy Strategies for Childhood Brain Cancers

Kazia Therapeutics Limited has announced its participation in a new Australian Medical Research Future Fund (MRFF) project aimed at improving treatment strategies for diffuse midline glioma (DMG), including diffuse intrinsic pontine glioma (DIPG). The three-year initiative, led by Professor Matt Dun of the University of Newcastle, will establish DMG-ADAPTS, an advanced AI-enabled clinical decision-making platform designed to optimize sequencing and timing of targeted therapies. Kazia will support the project by providing its investigational brain cancer drug paxalisib. The consortium will integrate multiomics data and non-invasive biomarkers to guide individualized therapy and anticipate resistance, with the goal of improving outcomes for children facing these aggressive brain tumors.

Disclaimer: This news brief was created by Public Technologies (PUBT) using generative artificial intelligence. While PUBT strives to provide accurate and timely information, this AI-generated content is for informational purposes only and should not be interpreted as financial, investment, or legal advice. Kazia Therapeutics Limited published the original content used to generate this news brief via PR Newswire (Ref. ID: CN88277) on October 01, 2025, and is solely responsible for the information contained therein.

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