Blood Cancer Discovery Publication Further Validates Exscientia';s AI Precision Medicine Platform for Improving Patient Outcomes
Exscientia announces significant advancements in its AI-supported precision medicine platform, aimed at improving treatment efficacy for advanced blood cancer patients. A new publication in Blood Cancer Discovery highlights the integration of deep learning algorithms with patient tissue analysis, showcasing enhanced patient outcomes based on insights from over 1 billion cells. The EXALT-1 study demonstrated that 40% of patients had exceptional responses when treated based on AI recommendations, indicating a promising direction for personalized cancer therapies.
- Integration of deep learning with patient tissue analysis shows potential for improved patient outcomes.
- EXALT-1 trial indicates 40% of patients had exceptional treatment responses using AI-guided recommendations.
- Publication in a prestigious journal underscores the efficacy of the platform.
- None.
Findings support deep learning ex vivo drug screening with patient tissue as a promising tool to identify effective, individual treatments in advanced blood cancer over conventional methods
Custom deep learning algorithms and single-cell analysis of >1 billion patient cells reveals further potential for improved patient outcomes
VIENNA &
EXALT-1 was the first prospective trial to demonstrate significantly improved outcomes for late-stage haematological cancer patients using an AI-supported precision medicine platform to guide personalised treatment recommendations as compared to physician’s choice of treatment. In EXALT-1,
“Following results of the EXALT-1 study, these findings continue to validate that our AI-guided precision medicine platform has the ability to identify highly actionable clinical treatment recommendations for blood cancers, deepening our insights and enhancing the clinical predictive power of the platform to help patients,” said
“We believe performing drug screens directly in tumour tissues of cancer patients is a great step forward in understanding tumour complexity compared to traditional cell model systems. The fact that we can now harness the power of deep learning to turn these terabytes of images into actionable insights is very exciting indeed,” added Prof.
The impact of deep learning on the clinical predictive power of ex vivo drug screening was assessed in a post-hoc analysis of 66 patients over a period of three years in a combined data set of 1.3 billion patient cells across 136 ex vivo tested drugs across haematological diagnoses including acute myeloid leukaemia, T-cell lymphomas, diffuse large B-cell lymphomas, chronic lymphocytic leukaemia and multiple myeloma. Patients receiving treatments that were recommended by the platform’s immunofluorescence analysis or deep learning on cell morphologies showed an increased rate of achievement of exceptional clinical response, defined as a progression free survival period that lasted three times longer than expected for each patient’s respective disease. Post-hoc analyses confirmed that the clinical predictions became more accurate when also considering the drug toxicity on the healthy cells within the tested patient sample.
Exscientia’s precision medicine platform uses custom deep learning and computer vision techniques to extract meaningful single-cell data from high content images of individual patient tissue samples. This analysis generates clinically-relevant insights into which treatments will deliver the most benefit to an individual patient. Further evaluation of individual patient results through Exscientia’s genomics and transcriptomics capabilities may help
About
Visit us at https://www.exscientia.ai or follow us on Twitter @exscientiaAI.
Forward-Looking Statements
This press release contains certain forward-looking statements within the meaning of the “safe harbor” provisions of the Private Securities Litigation Reform Act of 1995, including statements with regard to Exscientia’s expectations with respect to the progress of development of candidate molecules, timing and progress of, and data reported from, preclinical studies and clinical trials of Exscientia’s product candidates, and Exscientia’s expectations regarding its precision medicine platform and AI-driven drug discovery platform. Words such as “anticipates,” "believes," “expects,” "intends," "projects," "anticipates," and "future" or similar expressions are intended to identify forward-looking statements. These forward-looking statements are subject to the uncertainties inherent in predicting future results and conditions, including the scope, progress and expansion of Exscientia’s product development efforts; the initiation, scope and progress of Exscientia’s and its partners’ clinical trials and ramifications for the cost thereof; clinical, scientific, regulatory and technical developments; and those inherent in the process of discovering, developing and commercialising product candidates that are safe and effective for use as human therapeutics, and in the endeavor of building a business around such product candidates.
View source version on businesswire.com: https://www.businesswire.com/news/home/20220919005867/en/
Investors:
investors@exscientia.ai
Media:
media@exscientia.ai
Source:
FAQ
What does the new publication about Exscientia's platform reveal?
What were the results of the EXALT-1 trial for Exscientia?
What are the implications of deep learning for cancer treatment, according to Exscientia?
How large was the patient sample analyzed in the recent Exscientia study?