LGMNJul 1, 2025

Quantum Approximate Optimization Algorithm for Spatiotemporal Forecasting of HIV Clusters

arXiv:2507.00848v16 citationsh-index: 1DATA
Originality Incremental advance
AI Analysis

This work addresses HIV surveillance and forecasting for public health officials, offering incremental improvements through quantum-enhanced methods.

The researchers tackled HIV cluster detection and prevalence forecasting using quantum-accelerated machine learning, achieving 92% accuracy in cluster detection with QAOA and 94% accuracy in prevalence prediction with a hybrid quantum-classical neural network.

HIV epidemiological data is increasingly complex, requiring advanced computation for accurate cluster detection and forecasting. We employed quantum-accelerated machine learning to analyze HIV prevalence at the ZIP-code level using AIDSVu and synthetic SDoH data for 2022. Our approach compared classical clustering (DBSCAN, HDBSCAN) with a quantum approximate optimization algorithm (QAOA), developed a hybrid quantum-classical neural network for HIV prevalence forecasting, and used quantum Bayesian networks to explore causal links between SDoH factors and HIV incidence. The QAOA-based method achieved 92% accuracy in cluster detection within 1.6 seconds, outperforming classical algorithms. Meanwhile, the hybrid quantum-classical neural network predicted HIV prevalence with 94% accuracy, surpassing a purely classical counterpart. Quantum Bayesian analysis identified housing instability as a key driver of HIV cluster emergence and expansion, with stigma exerting a geographically variable influence. These quantum-enhanced methods deliver greater precision and efficiency in HIV surveillance while illuminating critical causal pathways. This work can guide targeted interventions, optimize resource allocation for PrEP, and address structural inequities fueling HIV transmission.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes