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Rationalized Development of a Campus-Wide Cell Line Dataset for Implementation in the Biobank LIMS System at Bioresource Center Ghent

机译:在根特生物资源中心的Biobank LIMS系统中实施的校园范围细胞系数据集的合理开发

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摘要

The Bioresource center Ghent is the central hospital-integrated biobank of Ghent University Hospital. Our mission is to facilitate translational biomedical research by collecting, storing and providing high quality biospecimens to researchers. Several of our biobank partners store large amounts of cell lines. As cell lines are highly important both in basic research and preclinical screening phases, good annotation, authentication, and quality of these cell lines is pivotal in translational biomedical science. A Biobank Information Management System (BIMS) was implemented as sample and data management system for human bodily material. The samples are annotated by the use of defined datasets, based on the BRISQ (Biospecimen Reporting for Improved Study Quality) and Minimum Information About Biobank data Sharing (MIABIS) guidelines completed with SPREC (Standard PREanalytical Coding) information. However, the defined dataset for human bodily material is not ideal to capture the specific cell line data. Therefore, we set out to develop a rationalized cell line dataset. Through comparison of different datasets of online cell banks (human, animal, and stem cell), we established an extended cell line dataset of 156 data fields that was further analyzed until a smaller dataset—the survey dataset of 54 data fields—was obtained. The survey dataset was spread throughout our campus to all cell line users to rationalize the fields of the dataset and their potential use. Analysis of the survey data revealed only small differences in preferences in data fields between human, animal, and stem cell lines. Hence, one essential dataset for human, animal and stem cell lines was compiled consisting of 33 data fields. The essential dataset was prepared for implementation in our BIMS system. Good Clinical Data Management Practices formed the basis of our decisions in the implementation phase. Known standards, reference lists and ontologies (such as ICD-10-CM, animal taxonomy, cell line ontology…) were considered. The semantics of the data fields were clearly defined, enhancing the data quality of the stored cell lines. Therefore, we created an essential cell line dataset with defined data fields, useable for multiple cell line users.
机译:根特生物资源中心是根特大学医院由中央医院整合的生物库。我们的任务是通过收集,存储和向研究人员提供高质量的生物标本,促进转化生物医学研究。我们的几个生物库合作伙伴存储大量细胞系。由于细胞系在基础研究和临床前筛选阶段都非常重要,因此这些细胞系的良好注释,认证和质量在转化生物医学科学中至关重要。建立了生物库信息管理系统(BIMS)作为人体材料的样品和数据管理系统。基于BRISQ(用于提高研究质量的生物样本报告)和关于完整的SPBC(标准分析前编码)信息的生物库数据共享的最低信息(MIABIS)准则,使用定义的数据集对样品进行注释。但是,为人体材料定义的数据集并不是捕获特定细胞系数据的理想方法。因此,我们着手开发合理的细胞系数据集。通过比较在线细胞库(人类,动物和干细胞)的不同数据集,我们建立了156个数据字段的扩展细胞系数据集,并对其进行了进一步分析,直到获得更小的数据集(54个数据字段的调查数据集)为止。调查数据集遍及我们的校园,分布在所有细胞系用户中,以合理化数据集的字段及其潜在用途。对调查数据的分析表明,人类,动物和干细胞系之间在数据领域的偏好只有很小的差异。因此,一个包含33个数据字段的人类,动物和干细胞系的基本数据集被编译。基本数据集已准备好在我们的BIMS系统中实施。良好的临床数据管理规范是我们在实施阶段做出决策的基础。考虑了已知的标准,参考列表和本体(例如ICD-10-CM,动物分类学,细胞系本体…)。数据字段的语义已明确定义,从而提高了存储单元格的数据质量。因此,我们创建了具有定义的数据字段的基本细胞系数据集,可用于多个细胞系用户。

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