基于CRISPR- cas的海洋环境生物监测:通过深度学习实现CRISPR RNA设计优化。

IF 3.7 4区 生物学 Q2 GENETICS & HEREDITY
Benjamín Durán-Vinet, Karla Araya-Castro, Anastasija Zaiko, Xavier Pochon, Susanna A Wood, Jo-Ann L Stanton, Gert-Jan Jeunen, Michelle Scriver, Anya Kardailsky, Tzu-Chiao Chao, Deependra K Ban, Maryam Moarefian, Kiana Aran, Neil J Gemmell
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引用次数: 0

摘要

现在,地球上几乎所有的海洋都受到多种人为压力因素的影响,包括非本地物种的传播、有害的藻华和病原体。早期发现对于有效管理这些压力源和保护海洋系统及其提供的生态系统服务至关重要。分子工具已经成为海洋生物监测的一种很有前途的解决方案。最新的进展之一是利用CRISPR-Cas技术建立可编程、快速、超灵敏和特异性的诊断方法。基于crispr的诊断(CRISPR-Dx)有可能实现强大、可靠和经济的近实时生物监测。然而,在CRISPR-Dx成为海洋生物监测的主流工具之前,必须克服几个挑战。一个关键的未满足的挑战是需要设计、优化和实验验证CRISPR-Dx分析。人工智能最近被认为是解决这一挑战的一种潜在方法。这一观点综合了CRISPR-Dx和机器学习建模方法的最新进展,展示了CRISPR-Dx作为海洋生物监测应用的新兴分子工具的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CRISPR-Cas-Based Biomonitoring for Marine Environments: Toward CRISPR RNA Design Optimization Via Deep Learning.

Almost all of Earth's oceans are now impacted by multiple anthropogenic stressors, including the spread of nonindigenous species, harmful algal blooms, and pathogens. Early detection is critical to manage these stressors effectively and to protect marine systems and the ecosystem services they provide. Molecular tools have emerged as a promising solution for marine biomonitoring. One of the latest advancements involves utilizing CRISPR-Cas technology to build programmable, rapid, ultrasensitive, and specific diagnostics. CRISPR-based diagnostics (CRISPR-Dx) has the potential to allow robust, reliable, and cost-effective biomonitoring in near real time. However, several challenges must be overcome before CRISPR-Dx can be established as a mainstream tool for marine biomonitoring. A critical unmet challenge is the need to design, optimize, and experimentally validate CRISPR-Dx assays. Artificial intelligence has recently been presented as a potential approach to tackle this challenge. This perspective synthesizes recent advances in CRISPR-Dx and machine learning modeling approaches, showcasing CRISPR-Dx potential to progress as a rising molecular tool candidate for marine biomonitoring applications.

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来源期刊
CRISPR Journal
CRISPR Journal Biochemistry, Genetics and Molecular Biology-Biotechnology
CiteScore
6.30
自引率
2.70%
发文量
76
期刊介绍: In recognition of this extraordinary scientific and technological era, Mary Ann Liebert, Inc., publishers recently announced the creation of The CRISPR Journal -- an international, multidisciplinary peer-reviewed journal publishing outstanding research on the myriad applications and underlying technology of CRISPR. Debuting in 2018, The CRISPR Journal will be published online and in print with flexible open access options, providing a high-profile venue for groundbreaking research, as well as lively and provocative commentary, analysis, and debate. The CRISPR Journal adds an exciting and dynamic component to the Mary Ann Liebert, Inc. portfolio, which includes GEN (Genetic Engineering & Biotechnology News) and more than 80 leading peer-reviewed journals.
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