ProteinFlow:蛋白质数据分析特征工程的高级框架。

IF 3.5 2区 生物学 Q2 BIOTECHNOLOGY & APPLIED MICROBIOLOGY
Yanlin Mi, Stefan-Bogdan Marcu, Venkata V. B. Yallapragada, Sabin Tabirca
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引用次数: 0

摘要

在蓬勃发展的蛋白质领域,有效分析复杂的蛋白质数据仍然是一项艰巨的挑战,需要先进的计算工具来进行数据处理、特征提取和解释。本研究介绍的 ProteinFlow 是一个创新框架,旨在彻底改变蛋白质数据分析中的特征工程。ProteinFlow 的突出特点是提高了数据收集和预处理的效率,并具有先进的特征提取功能,直接解决了多维蛋白质数据集固有的复杂性问题。通过比较分析,ProteinFlow 比传统方法有了显著改进,特别是缩短了数据预处理时间,扩大了生物重要特征的识别范围。该框架的并行数据处理策略和先进的算法不仅确保了快速的数据处理,还确保了从蛋白质序列、结构和相互作用中提取全面、有意义的见解。此外,ProteinFlow 还具有出色的可扩展性,能够在不影响性能的情况下管理大规模数据集,这在大数据时代是至关重要的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

ProteinFlow: An advanced framework for feature engineering in protein data analysis

ProteinFlow: An advanced framework for feature engineering in protein data analysis

In the burgeoning field of proteins, the effective analysis of intricate protein data remains a formidable challenge, necessitating advanced computational tools for data processing, feature extraction, and interpretation. This study introduces ProteinFlow, an innovative framework designed to revolutionize feature engineering in protein data analysis. ProteinFlow stands out by offering enhanced efficiency in data collection and preprocessing, along with advanced capabilities in feature extraction, directly addressing the complexities inherent in multidimensional protein data sets. Through a comparative analysis, ProteinFlow demonstrated a significant improvement over traditional methods, notably reducing data preprocessing time and expanding the scope of biologically significant features identified. The framework's parallel data processing strategy and advanced algorithms ensure not only rapid data handling but also the extraction of comprehensive, meaningful insights from protein sequences, structures, and interactions. Furthermore, ProteinFlow exhibits remarkable scalability, adeptly managing large-scale data sets without compromising performance, a crucial attribute in the era of big data.

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来源期刊
Biotechnology and Bioengineering
Biotechnology and Bioengineering 工程技术-生物工程与应用微生物
CiteScore
7.90
自引率
5.30%
发文量
280
审稿时长
2.1 months
期刊介绍: Biotechnology & Bioengineering publishes Perspectives, Articles, Reviews, Mini-Reviews, and Communications to the Editor that embrace all aspects of biotechnology. These include: -Enzyme systems and their applications, including enzyme reactors, purification, and applied aspects of protein engineering -Animal-cell biotechnology, including media development -Applied aspects of cellular physiology, metabolism, and energetics -Biocatalysis and applied enzymology, including enzyme reactors, protein engineering, and nanobiotechnology -Biothermodynamics -Biofuels, including biomass and renewable resource engineering -Biomaterials, including delivery systems and materials for tissue engineering -Bioprocess engineering, including kinetics and modeling of biological systems, transport phenomena in bioreactors, bioreactor design, monitoring, and control -Biosensors and instrumentation -Computational and systems biology, including bioinformatics and genomic/proteomic studies -Environmental biotechnology, including biofilms, algal systems, and bioremediation -Metabolic and cellular engineering -Plant-cell biotechnology -Spectroscopic and other analytical techniques for biotechnological applications -Synthetic biology -Tissue engineering, stem-cell bioengineering, regenerative medicine, gene therapy and delivery systems The editors will consider papers for publication based on novelty, their immediate or future impact on biotechnological processes, and their contribution to the advancement of biochemical engineering science. Submission of papers dealing with routine aspects of bioprocessing, description of established equipment, and routine applications of established methodologies (e.g., control strategies, modeling, experimental methods) is discouraged. Theoretical papers will be judged based on the novelty of the approach and their potential impact, or on their novel capability to predict and elucidate experimental observations.
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