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Qlucore presents promising results in the field of lung cancer diagnosis
Qlucore, listed on
Nasdaq First North, can now present the first results from an EU-funded project
for improved diagnosis of lung cancer. The new classification model not only
separates different subgroups of primary lung cancer but also indicates whether
the tumor sample is a metastasis of breast, colorectal, or kidney cell cancer.
This information can have significant implications for treatment decisions in
future clinical applications.
A first-generation classification model for lung cancer has now been
developed and is performing well. The model is based on gene expression data
and is already available for use within Qlucore Insights. The initial model
facilitates a division into two main groups, lung adenocarcinoma and lung
squamous cell carcinoma, as well as three further groups based on whether the
tumor profile corresponds to metastases from breast, colorectal, or kidney cell
cancer. The model is designed to utilize tissue fixed with formalin (FFPE),
which is a common sample form in the pathological workflow for solid tumors. It
is clinically important to distinguish between primary lung cancer tumors and
tumors that have metastasized to the lung in order to optimize next step
investigations and treatment. Additional model generations are planned with
improvements and expansion to support more forms of metastases. The goal is to
further develop the solution into Qlucore Diagnostics, enabling CE marking and
clinical use.
In late 2021, Qlucore, together with Heidelberg University Hospital, received a
financial grant from the Eurostars Joint European Programme. This EU programme
provides financial support to promote European innovation and competitiveness.
The grant amounts to approximately SEK 5.1 million (500,000 euros). The new
model is a result of this collaboration.
"The collaboration with the team from Heidelberg University Hospital is
working very well, and we are pleased to see the first results from the
project," says Carl-Johan Ivarsson, CEO of Qlucore.
The new classification model is based on Qlucore's knowledge and workflows for
developing gene expression-based machine learning models (AI-based) and has
been trained on hundreds of carefully selected tissue samples from lung cancer.
Precision diagnostics for cancer have advanced rapidly in recent years, driven
by next-generation sequencing (NGS). Up until now, the focus has been on
mutations and variants in the genetic code, which have been used for patient
stratification and decisions on cancer treatment. However, there has been
increasing interest in techniques based on measurements of gene activity levels
(gene expression) as it provides additional opportunities to describe the type
of treatment a patient should receive.
Qlucore Insights
is intended for research and enables early testing and evaluation. Qlucore
Insights is provided to hospitals, clinics, and laboratories via
Qlucore's European sales force.
Qlucore Diagnostics
fills an important gap in the workflow for clinical precision diagnostics. With
disease-specific machine learning models that enable classification and a
feature supporting clinical decision-making, including user-friendly 3D
visualizations, it becomes possible to predict patients' responses to
treatment. Qlucore Diagnostics is the future solution for personalized cancer
treatment, and the goal is to obtain CE marking.