QUANT-PHLGFeb 26, 2025

Quantum Annealing Feature Selection on Light-weight Medical Image Datasets

arXiv:2502.19201v13 citationsh-index: 4Sci Rep
Originality Incremental advance
AI Analysis

This work addresses the computationally intensive feature selection problem for medical image analysis, but it is incremental due to limited applicability to real-world scenarios.

The paper tackled feature selection for light-weight medical image datasets by using quantum annealing on real quantum hardware, achieving effectiveness in a simplified toy problem with small-scale images.

We investigate the use of quantum computing algorithms on real quantum hardware to tackle the computationally intensive task of feature selection for light-weight medical image datasets. Feature selection is often formulated as a k of n selection problem, where the complexity grows binomially with increasing k and n. As problem sizes grow, classical approaches struggle to scale efficiently. Quantum computers, particularly quantum annealers, are well-suited for such problems, offering potential advantages in specific formulations. We present a method to solve larger feature selection instances than previously presented on commercial quantum annealers. Our approach combines a linear Ising penalty mechanism with subsampling and thresholding techniques to enhance scalability. The method is tested in a toy problem where feature selection identifies pixel masks used to reconstruct small-scale medical images. The results indicate that quantum annealing-based feature selection is effective for this simplified use case, demonstrating its potential in high-dimensional optimization tasks. However, its applicability to broader, real-world problems remains uncertain, given the current limitations of quantum computing hardware.

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