Bowel cancer is one of the most common and deadly types of cancer in Germany.
Every year, around 58,000 people are diagnosed with the disease. If detected early, bowel cancer is easily curable.
However, despite significant advances in screening and treatment, doctors still face challenges in diagnosis and prognosis.
This is where DECADE - Decentralised artificial intelligence for diagnosis, prognosis and response prediction in Colorectal Cancer - comes in.
Several German university hospitals are working together to investigate how the use of artificial intelligence (AI) and swarm learning (SL) can significantly improve the care and treatment of colorectal cancer patients in both early and advanced stages.
AI is already capable of analysing large amounts of data and recognising certain patterns.
The insights gained from this can help to better predict the course of the disease or to make more individualised diagnoses.
The aim of this research project is to use AI and SL to significantly improve the treatment of colorectal cancer patients.
Prof. Jakob N. Kather, project leader and Professor of Clinical Artificial Intelligence at the Else Kröner Fresenius Centre for Digital Health at the TU Dresden and the University Hospital Dresden, said at the start of the project: "AI tools have so far only been used hesitantly in routine clinical practice. One reason is that data exchange between hospitals is severely restricted by legal and ethical hurdles, especially in Germany. One solution to this problem is swarm learning. With swarm learning, several institutions can jointly train medical AI models without exchanging data. By using decentralised artificial intelligence and swarm learning, hope to improve diagnosis, prognosis and treatment planning for colorectal cancer patients.”
Training AI with decentralised patient data
In cancer research, privacy laws and ethical hurdles make it difficult to share sensitive patient data between different research institutions, even though many patients are in principle in favour of their data being used for research purposes.
Swarm learning makes it easier to meet privacy requirements.
Swarm learning is a special form of machine learning in which models are trained without exchanging actual data between participants.
The coordination and merging of models is done via a blockchain, eliminating the need for a central instance.
The DECADE project builds on this method to use SL-based AI technology to solve real-world clinical problems related to colorectal cancer.
"The legal requirements for protecting sensitive health data are high.This innovative method of swarm learning allows the benefits of collaboration and knowledge transfer between different research institutions to be realised without violating privacy regulations. In this way, AI models in cancer research can be further developed and improved to enable better diagnosis, prognosis and personalised treatment approaches for cancer patients," said Prof. Tom Lüdde, Director of the Department of Gastroenterology, Hepatology and Infectious Diseases at the University Hospital Düsseldorf.
The project partners will use SL to develop AI algorithms for diagnosing and subtyping colorectal cancer and predicting disease progression.
In doing so, they are setting a precedent for the use of SL in medicine that can serve as a template for any AI system in the healthcare sector.
After all, more powerful AI systems could help doctors detect bowel cancer at an earlier stage and treat it more effectively.
This could support medical staff and improve the care and treatment of colorectal cancer patients.
Source: Technische Universität Dresden
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