Quantum-Enhanced Classification of Brain Tumors Using DNA Microarray Gene Expression Profiles
Journal:
arXiv
Published Date:
May 4, 2025
Abstract
DNA microarray technology enables the simultaneous measurement of expression
levels of thousands of genes, thereby facilitating the understanding of the
molecular mechanisms underlying complex diseases such as brain tumors and the
identification of diagnostic genetic signatures. To derive meaningful
biological insights from the high-dimensional and complex gene features
obtained through this technology and to analyze gene properties in detail,
classical AI-based approaches such as machine learning and deep learning are
widely employed. However, these methods face various limitations in managing
high-dimensional vector spaces and modeling the intricate relationships among
genes. In particular, challenges such as hyperparameter tuning, computational
costs, and high processing power requirements can hinder their efficiency. To
overcome these limitations, quantum computing and quantum AI approaches are
gaining increasing attention. Leveraging quantum properties such as
superposition and entanglement, quantum methods enable more efficient parallel
processing of high-dimensional data and offer faster and more effective
solutions to problems that are computationally demanding for classical methods.
In this study, a novel model called "Deep VQC" is proposed, based on the
Variational Quantum Classifier approach. Developed using microarray data
containing 54,676 gene features, the model successfully classified four
different types of brain tumors-ependymoma, glioblastoma, medulloblastoma, and
pilocytic astrocytoma-alongside healthy samples with high accuracy.
Furthermore, compared to classical ML algorithms, our model demonstrated either
superior or comparable classification performance. These results highlight the
potential of quantum AI methods as an effective and promising approach for the
analysis and classification of complex structures such as brain tumors based on
gene expression features.