使用自动化深度学习RNA 3D模型预测工具向一年级本科生教授RNA二级结构预测的跨学科方法。

IF 1.5 Q2 EDUCATION, SCIENTIFIC DISCIPLINES
Kamanasish Bhattacharjee, Adi Idris
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引用次数: 0

摘要

人工智能(AI)在生物制剂药物设计中的应用与生物技术行业的许多药物发现管道交织在一起。近年来,在RNA治疗药物设计中使用人工智能工具已经获得了牵引力,可以在短时间内开发出更有效的治疗方法,彻底改变快速反应治疗方法。事实上,机器学习(ML)和深度学习(DL)正在以十年前我们从未想过的方式简化RNA治疗设计。伴随着这些进步,大量用于药物设计的新人工智能工具继续以前所未有的速度冲击研究领域。作为生物教育工作者,我们有责任跟上生物技术领域的技术进步,因为我们有责任为下一代科学家做好准备,让他们在这个领域使用人工智能平台。小干扰RNA (siRNA)治疗设计仍然是一个复杂的挑战,尽管其中一些目前在临床用于各种遗传疾病。AI和ML模型的应用可以预测有效和持久的siRNA候选药物,用于治疗开发。此外,必须筛选siRNA候选物形成二级结构的倾向,因为这可能会降低靶向效力并导致不必要的免疫反应。尽管siRNA技术通常在生命科学学科的本科阶段教授,但在教学课程中使用人工智能和siRNA设计之间仍然存在脱节。我们之前描述了一种创新的方法,教学生使用称为Biomod AI的生成人工智能工具来设计sirna。在这里,我们设计了一个基于询问的非湿实验室工作坊,让学生探索使用基于dls的自动RNA 3D结构预测工具trRosettaRNA来确定sirna的二级结构。重要的是,这项活动的跨学科设计将人工智能和RNA科学概念以简化的形式融合在一个专门为一年级健康科学本科生量身定制的研讨会中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An interdisciplinary approach in teaching RNA secondary structure prediction to first-year undergraduate students using an automated deep learning RNA 3D model prediction tool.

The use of artificial intelligence (AI) in biologics drug design is interlaced into the fabric of the drug discovery pipeline for many in the biotechnology industry. The use of AI tools in RNA therapeutic drug design has gained traction in recent years to develop more effective therapeutics in a short period of time, revolutionizing rapid-response therapeutics. Indeed, machine learning (ML) and deep learning (DL) are streamlining RNA therapeutic design in ways we never thought were possible just a decade ago. These advances are accompanied by a plethora of new AI tools for drug design that continue to barrage the research space at unprecedented speed. As biology educators, we bear the responsibility for keeping up with technological advances in the biotechnology space, as it is up to us to prepare and equip the next generation of scientists with the use of AI platforms in this space. Small interfering RNA (siRNA) therapeutic design remains a complex challenge, despite several of them being currently in clinical use for various genetic diseases. The application of AI and ML models can predict potent and longer-lasting siRNA drug candidates for therapeutic development. Additionally, it is imperative that siRNA candidates are screened for their propensity to form secondary structures, as this can reduce targeting efficacy and result in unwanted immune responses. Though siRNA technology is commonly taught at the undergraduate level across life sciences disciplines, there remains a disconnect between the use of AI and siRNA design in the teaching curriculum. We previously described an innovative approach for teaching students the use of a generative AI tool called Biomod AI to design siRNAs. Here, we designed an inquiry-based non-wet-lab workshop for students to explore the use of an automated DL-based RNA 3D structure prediction tool called trRosettaRNA to determine the secondary structures of siRNAs. Importantly, the interdisciplinary design of this activity amalgamates both AI and RNA science concepts in a simplified format in a single workshop tailored for first-year health sciences undergraduate students.

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来源期刊
Journal of Microbiology & Biology Education
Journal of Microbiology & Biology Education EDUCATION, SCIENTIFIC DISCIPLINES-
CiteScore
3.00
自引率
26.30%
发文量
95
审稿时长
22 weeks
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