Alz-QNet: A Quantum Regression Network for Studying Alzheimer's Gene Interactions
Debanjan Konar, Neerav Sreekumar, Richard Jiang, Vaneet Aggarwal

TL;DR
This paper introduces Alz-QNet, a quantum regression network designed to analyze gene interactions in Alzheimer's disease, providing new insights into gene regulation mechanisms in the disease's progression.
Contribution
The paper presents a novel quantum regression framework, Alz-QNet, integrating quantum gene regulatory networks to study gene interactions in Alzheimer's disease.
Findings
Identified key gene interactions influencing AD progression
Uncovered potential gene regulators for therapeutic targeting
Provided a quantum-based methodology for gene interaction analysis
Abstract
Understanding the molecular-level mechanisms underpinning Alzheimer's disease (AD) by studying crucial genes associated with the disease remains a challenge. Alzheimer's, being a multifactorial disease, requires understanding the gene-gene interactions underlying it for theranostics and progress. In this article, a novel attempt has been made using a quantum regression to decode how some crucial genes in the AD Amyloid Beta Precursor Protein (), Sterol regulatory element binding transcription factor 14 (), Yin Yang 1 (), and Phospholipase D Family Member 3 () etc. become influenced by other prominent switching genes during disease progression, which may help in gene expression-based therapy for AD. Our proposed Quantum Regression Network (Alz-QNet) introduces a pioneering approach with insights from the state-of-the-art Quantum Gene Regulatory Networks (QGRN) to…
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