Large language models reshaping molecular biology and drug development

IF 3.2 4区 医学 Q2 BIOCHEMISTRY & MOLECULAR BIOLOGY Chemical Biology & Drug Design Pub Date : 2024-06-19 DOI:10.1111/cbdd.14568
Satvik Tripathi, Kyla Gabriel, Pushpendra Kumar Tripathi, Edward Kim
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Abstract

The utilization of large language models (LLMs) has become a significant advancement in the domains of medicine and clinical informatics, providing a revolutionary potential for scientific breakthroughs and customized therapies. LLM models are trained on large datasets and exhibit the capacity to comprehend and analyze intricate biological data, encompassing genomic sequences, protein structures, and clinical health records. With the utilization of their comprehension of the language of biology, they possess the ability to reveal concealed patterns and insights that may evade human researchers. LLMs have been shown to positively impact various aspects of molecular biology, including the following: genomic analysis, drug development, precision medicine, biomarker development, experimental design, collaborative research, and accessibility to specialized expertise. However, it is imperative to acknowledge and tackle the obstacles and ethical implications involved. The careful consideration of data bias and generalization, data privacy and security, explainability and interpretability, and ethical concerns around responsible application is vital. The successful resolution of these obstacles will enable us to fully utilize the capabilities of LLMs, leading to substantial progress in the fields of molecular biology and pharmaceutical research. This progression also has the ability to bolster influential impacts for both the individual and the broader community.

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大型语言模型重塑分子生物学和药物开发。
大型语言模型(LLM)的应用已成为医学和临床信息学领域的一大进步,为科学突破和定制疗法提供了革命性的潜力。LLM 模型在大型数据集上进行训练,能够理解和分析复杂的生物数据,包括基因组序列、蛋白质结构和临床健康记录。凭借对生物学语言的理解,它们有能力揭示人类研究人员可能忽略的隐藏模式和见解。事实证明,法学硕士对分子生物学的各个方面都有积极影响,包括:基因组分析、药物开发、精准医疗、生物标志物开发、实验设计、合作研究以及获得专业知识。然而,必须承认并解决其中涉及的障碍和伦理问题。仔细考虑数据偏差和泛化、数据隐私和安全、可解释性和可解读性以及负责任应用的伦理问题至关重要。成功解决这些障碍将使我们能够充分利用 LLM 的能力,从而在分子生物学和药物研究领域取得重大进展。这种进步还能够对个人和更广泛的社会产生影响。
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来源期刊
Chemical Biology & Drug Design
Chemical Biology & Drug Design 医学-生化与分子生物学
CiteScore
5.10
自引率
3.30%
发文量
164
审稿时长
4.4 months
期刊介绍: Chemical Biology & Drug Design is a peer-reviewed scientific journal that is dedicated to the advancement of innovative science, technology and medicine with a focus on the multidisciplinary fields of chemical biology and drug design. It is the aim of Chemical Biology & Drug Design to capture significant research and drug discovery that highlights new concepts, insight and new findings within the scope of chemical biology and drug design.
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