MNLGGNQUANT-PHAug 6, 2025

Alz-QNet: A Quantum Regression Network for Studying Alzheimer's Gene Interactions

arXiv:2508.04743v11 citationsh-index: 12Comput. Biol. Medicine
Originality Incremental advance
AI Analysis

This work addresses Alzheimer's disease, a multifactorial condition, by providing insights into gene interactions for theranostics, though it appears incremental as it builds on existing quantum gene regulatory networks.

The researchers tackled the challenge of understanding gene-gene interactions in Alzheimer's disease by developing Alz-QNet, a quantum regression network, which uncovered intricate interactions among key genes like APP and FGF14, potentially aiding in gene expression-based therapy.

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 ($APP$), Sterol regulatory element binding transcription factor 14 ($FGF14$), Yin Yang 1 ($YY1$), and Phospholipase D Family Member 3 ($PLD3$) 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 unravel the gene interactions involved in AD pathology, particularly within the Entorhinal Cortex (EC), where early pathological changes occur. Using the proposed Alz-QNet framework, we explore the interactions between key genes ($APP$, $FGF14$, $YY1$, $EGR1$, $GAS7$, $AKT3$, $SREBF2$, and $PLD3$) within the CE microenvironment of AD patients, studying genetic samples from the database $GSE138852$, all of which are believed to play a crucial role in the progression of AD. Our investigation uncovers intricate gene-gene interactions, shedding light on the potential regulatory mechanisms that underlie the pathogenesis of AD, which help us to find potential gene inhibitors or regulators for theranostics.

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