Detecting malignant dynamics on very few blood sample using signature coefficients
R\'emi Vaucher, St\'ephane Chr\'etien

TL;DR
This paper introduces a novel method combining Markov models and Signature theory to detect aggressive cancer tumors from very few blood samples, addressing data scarcity in early cancer detection.
Contribution
It proposes a new approach that leverages Signature theory and Markov modeling to improve early cancer detection from minimal blood sample data.
Findings
Method accurately detects aggressive tumors with limited samples
Signature features effectively handle irregularly sampled data
Numerical experiments confirm high detection efficiency
Abstract
Recent discoveries have suggested that the promising avenue of using circulating tumor DNA (ctDNA) levels in blood samples provides reasonable accuracy for cancer monitoring, with extremely low burden on the patient's side. It is known that the presence of ctDNA can result from various mechanisms leading to DNA release from cells, such as apoptosis, necrosis or active secretion. One key idea in recent cancer monitoring studies is that monitoring the dynamics of ctDNA levels might be sufficient for early multi-cancer detection. This interesting idea has been turned into commercial products, e.g. in the company named GRAIL. In the present work, we propose to explore the use of Signature theory for detecting aggressive cancer tumors based on the analysis of blood samples. Our approach combines tools from continuous time Markov modelling for the dynamics of ctDNA levels in the blood, with…
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Taxonomy
TopicsCancer Genomics and Diagnostics · Fractal and DNA sequence analysis · Generative Adversarial Networks and Image Synthesis
