高拷贝数探针选择和交叉绑定减少的计算框架

IF 4.1 Q2 CHEMISTRY, ANALYTICAL
Younghwan Kim, Swomitra Kumar Mohanty
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引用次数: 0

摘要

DNA探针设计在基于生物传感器的疾病诊断、基因表达分析和环境监测中起着至关重要的作用。传统的探针设计主要针对低拷贝基因序列,由于杂交事件有限,往往导致检测灵敏度低。本研究引入了一种新的探针设计策略,利用高度重复的DNA序列作为靶点来放大生物传感器信号,而不需要基于pcr的扩增。计算选择过程使用定制开发的生物信息学工具进行,以识别整个结核分枝杆菌基因组中的重复序列,独立于基因边界。然后使用BLAST将鉴定的序列与智人基因组进行交叉比对,以尽量减少宿主的交叉反应性。分析显示,在结核分枝杆菌中重复39次的23bp序列与人类DNA只有78%的序列一致性,并且在人类基因组中仅存在两个拷贝。这表明所选择的探针相对于人类cfDNA可能产生更强的结核分枝杆菌杂交信号,从而提高生物传感器的灵敏度。本研究中介绍的计算方法为设计高灵敏度生物传感器提供了一个强大的框架,使更有效的传染病诊断、环境监测和临床护理点检测成为可能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Computational Framework for High Copy-Number Probe Selection and Cross-Binding Reduction

Computational Framework for High Copy-Number Probe Selection and Cross-Binding Reduction

Computational Framework for High Copy-Number Probe Selection and Cross-Binding Reduction

Computational Framework for High Copy-Number Probe Selection and Cross-Binding Reduction

DNA probe design plays a critical role in biosensor-based disease diagnostics, gene expression analysis and environmental monitoring. Traditional probe designs primarily target lower-copy genetic sequences, often leading to low detection sensitivity due to limited hybridization events. This study introduces a novel probe design strategy that leverages highly repetitive DNA sequences as target sites to amplify biosensor signals without requiring PCR-based amplification. The computational selection process is conducted using a custom-developed bioinformatics tool to identify repetitive sequences across the entire Mycobacterium tuberculosis genome, independent of gene boundaries. The identified sequences are then cross-referenced against the Homo sapiens genome using BLAST to minimize host cross-reactivity. The analysis revealed that a 23 bp sequence repeated 39 times in M. tuberculosis exhibits only 78% sequence identity with human DNA and is present in just two copies within the human genome. This suggests that the selected probe may yield substantially stronger hybridization signals for M. tuberculosis relative to human cfDNA, thereby enhancing biosensor sensitivity. The computational methodology introduced in this study provides a robust framework for designing high-sensitivity biosensors, enabling more effective infectious disease diagnostics, environmental monitoring and clinical point-of-care testing.

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CiteScore
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