Unlocking Early Cancer Detection: Leveraging Machine Learning in Cell-Free DNA Analysis for Precision Oncology.
Journal:
AMIA ... Annual Symposium proceedings. AMIA Symposium
Published Date:
May 22, 2025
Abstract
This study introduces a groundbreaking approach to early cancer detection through the analysis of cell-free DNA (cfDNA), utilizing machine learning algorithms to navigate the complexities of low circulating tumor DNA (ctDNA) fractions and genetic heterogeneity. CfDNA, found in bodily fluids and comprising fragments from apoptotic or necrotic cells, offers a non-invasive means to identify cancer signals. With ctDNA-a subset of cfDNA from cancer cells-serving as a biomarker, the potential for detecting cancer at its earliest stages is vastly improved, enhancing treatment effectiveness and patient prognosis. However, the challenges of distinguishing cancer-specific signatures within cfDNA due to low ctDNA levels and the noise of genetic heterogeneity necessitate advanced methods beyond traditional mutation analysis. Leveraging high-throughput sequencing technologies and the precision of machine learning, our research aims to surmount these obstacles by identifying nuanced cancer signatures within cfDNA sequencing data. Machine learning's capability to model complex data relationships allows for the differentiation of subtle oncogenic patterns from background noise, thereby increasing the diagnostic accuracy of liquid biopsies. This paper outlines our exploration into employing machine learning for early cancer detection via cfDNA, detailing our method of transforming sequencing data into analyzable formats, enhancing signal detection through a sliding window technique, and predicting true tumor-origin fragments. By advancing cfDNA-based cancer diagnostics, this research not only signifies a leap towards more sensitive and specific early-stage cancer detection but also opens avenues for personalized oncology, where treatment strategies are informed by the unique genetic profile unveiled through cfDNA analysis. Our findings underscore the potential of integrating artificial intelligence with liquid biopsy technologies to revolutionize cancer diagnostics, offering new hope for early detection and personalized treatment pathways.